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1 symbolic field
символьное поле
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[Л.Г.Суменко. Англо-русский словарь по информационным технологиям. М.: ГП ЦНИИС, 2003.]Тематики
EN
Англо-русский словарь нормативно-технической терминологии > symbolic field
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2 symbolic field
Вычислительная техника: символьное поле -
3 symbolic field
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4 symbolic label
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5 character field
символьное поле
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[Л.Г.Суменко. Англо-русский словарь по информационным технологиям. М.: ГП ЦНИИС, 2003.]Тематики
EN
текстовое поле
символьное поле
Поле в документе или издании, предназначенное для ввода текстовой информации.
[ http://www.morepc.ru/dict/]Тематики
Синонимы
EN
Англо-русский словарь нормативно-технической терминологии > character field
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6 Artificial Intelligence
In my opinion, none of [these programs] does even remote justice to the complexity of human mental processes. Unlike men, "artificially intelligent" programs tend to be single minded, undistractable, and unemotional. (Neisser, 1967, p. 9)Future progress in [artificial intelligence] will depend on the development of both practical and theoretical knowledge.... As regards theoretical knowledge, some have sought a unified theory of artificial intelligence. My view is that artificial intelligence is (or soon will be) an engineering discipline since its primary goal is to build things. (Nilsson, 1971, pp. vii-viii)Most workers in AI [artificial intelligence] research and in related fields confess to a pronounced feeling of disappointment in what has been achieved in the last 25 years. Workers entered the field around 1950, and even around 1960, with high hopes that are very far from being realized in 1972. In no part of the field have the discoveries made so far produced the major impact that was then promised.... In the meantime, claims and predictions regarding the potential results of AI research had been publicized which went even farther than the expectations of the majority of workers in the field, whose embarrassments have been added to by the lamentable failure of such inflated predictions....When able and respected scientists write in letters to the present author that AI, the major goal of computing science, represents "another step in the general process of evolution"; that possibilities in the 1980s include an all-purpose intelligence on a human-scale knowledge base; that awe-inspiring possibilities suggest themselves based on machine intelligence exceeding human intelligence by the year 2000 [one has the right to be skeptical]. (Lighthill, 1972, p. 17)4) Just as Astronomy Succeeded Astrology, the Discovery of Intellectual Processes in Machines Should Lead to a Science, EventuallyJust as astronomy succeeded astrology, following Kepler's discovery of planetary regularities, the discoveries of these many principles in empirical explorations on intellectual processes in machines should lead to a science, eventually. (Minsky & Papert, 1973, p. 11)5) Problems in Machine Intelligence Arise Because Things Obvious to Any Person Are Not Represented in the ProgramMany problems arise in experiments on machine intelligence because things obvious to any person are not represented in any program. One can pull with a string, but one cannot push with one.... Simple facts like these caused serious problems when Charniak attempted to extend Bobrow's "Student" program to more realistic applications, and they have not been faced up to until now. (Minsky & Papert, 1973, p. 77)What do we mean by [a symbolic] "description"? We do not mean to suggest that our descriptions must be made of strings of ordinary language words (although they might be). The simplest kind of description is a structure in which some features of a situation are represented by single ("primitive") symbols, and relations between those features are represented by other symbols-or by other features of the way the description is put together. (Minsky & Papert, 1973, p. 11)[AI is] the use of computer programs and programming techniques to cast light on the principles of intelligence in general and human thought in particular. (Boden, 1977, p. 5)The word you look for and hardly ever see in the early AI literature is the word knowledge. They didn't believe you have to know anything, you could always rework it all.... In fact 1967 is the turning point in my mind when there was enough feeling that the old ideas of general principles had to go.... I came up with an argument for what I called the primacy of expertise, and at the time I called the other guys the generalists. (Moses, quoted in McCorduck, 1979, pp. 228-229)9) Artificial Intelligence Is Psychology in a Particularly Pure and Abstract FormThe basic idea of cognitive science is that intelligent beings are semantic engines-in other words, automatic formal systems with interpretations under which they consistently make sense. We can now see why this includes psychology and artificial intelligence on a more or less equal footing: people and intelligent computers (if and when there are any) turn out to be merely different manifestations of the same underlying phenomenon. Moreover, with universal hardware, any semantic engine can in principle be formally imitated by a computer if only the right program can be found. And that will guarantee semantic imitation as well, since (given the appropriate formal behavior) the semantics is "taking care of itself" anyway. Thus we also see why, from this perspective, artificial intelligence can be regarded as psychology in a particularly pure and abstract form. The same fundamental structures are under investigation, but in AI, all the relevant parameters are under direct experimental control (in the programming), without any messy physiology or ethics to get in the way. (Haugeland, 1981b, p. 31)There are many different kinds of reasoning one might imagine:Formal reasoning involves the syntactic manipulation of data structures to deduce new ones following prespecified rules of inference. Mathematical logic is the archetypical formal representation. Procedural reasoning uses simulation to answer questions and solve problems. When we use a program to answer What is the sum of 3 and 4? it uses, or "runs," a procedural model of arithmetic. Reasoning by analogy seems to be a very natural mode of thought for humans but, so far, difficult to accomplish in AI programs. The idea is that when you ask the question Can robins fly? the system might reason that "robins are like sparrows, and I know that sparrows can fly, so robins probably can fly."Generalization and abstraction are also natural reasoning process for humans that are difficult to pin down well enough to implement in a program. If one knows that Robins have wings, that Sparrows have wings, and that Blue jays have wings, eventually one will believe that All birds have wings. This capability may be at the core of most human learning, but it has not yet become a useful technique in AI.... Meta- level reasoning is demonstrated by the way one answers the question What is Paul Newman's telephone number? You might reason that "if I knew Paul Newman's number, I would know that I knew it, because it is a notable fact." This involves using "knowledge about what you know," in particular, about the extent of your knowledge and about the importance of certain facts. Recent research in psychology and AI indicates that meta-level reasoning may play a central role in human cognitive processing. (Barr & Feigenbaum, 1981, pp. 146-147)Suffice it to say that programs already exist that can do things-or, at the very least, appear to be beginning to do things-which ill-informed critics have asserted a priori to be impossible. Examples include: perceiving in a holistic as opposed to an atomistic way; using language creatively; translating sensibly from one language to another by way of a language-neutral semantic representation; planning acts in a broad and sketchy fashion, the details being decided only in execution; distinguishing between different species of emotional reaction according to the psychological context of the subject. (Boden, 1981, p. 33)Can the synthesis of Man and Machine ever be stable, or will the purely organic component become such a hindrance that it has to be discarded? If this eventually happens-and I have... good reasons for thinking that it must-we have nothing to regret and certainly nothing to fear. (Clarke, 1984, p. 243)The thesis of GOFAI... is not that the processes underlying intelligence can be described symbolically... but that they are symbolic. (Haugeland, 1985, p. 113)14) Artificial Intelligence Provides a Useful Approach to Psychological and Psychiatric Theory FormationIt is all very well formulating psychological and psychiatric theories verbally but, when using natural language (even technical jargon), it is difficult to recognise when a theory is complete; oversights are all too easily made, gaps too readily left. This is a point which is generally recognised to be true and it is for precisely this reason that the behavioural sciences attempt to follow the natural sciences in using "classical" mathematics as a more rigorous descriptive language. However, it is an unfortunate fact that, with a few notable exceptions, there has been a marked lack of success in this application. It is my belief that a different approach-a different mathematics-is needed, and that AI provides just this approach. (Hand, quoted in Hand, 1985, pp. 6-7)We might distinguish among four kinds of AI.Research of this kind involves building and programming computers to perform tasks which, to paraphrase Marvin Minsky, would require intelligence if they were done by us. Researchers in nonpsychological AI make no claims whatsoever about the psychological realism of their programs or the devices they build, that is, about whether or not computers perform tasks as humans do.Research here is guided by the view that the computer is a useful tool in the study of mind. In particular, we can write computer programs or build devices that simulate alleged psychological processes in humans and then test our predictions about how the alleged processes work. We can weave these programs and devices together with other programs and devices that simulate different alleged mental processes and thereby test the degree to which the AI system as a whole simulates human mentality. According to weak psychological AI, working with computer models is a way of refining and testing hypotheses about processes that are allegedly realized in human minds.... According to this view, our minds are computers and therefore can be duplicated by other computers. Sherry Turkle writes that the "real ambition is of mythic proportions, making a general purpose intelligence, a mind." (Turkle, 1984, p. 240) The authors of a major text announce that "the ultimate goal of AI research is to build a person or, more humbly, an animal." (Charniak & McDermott, 1985, p. 7)Research in this field, like strong psychological AI, takes seriously the functionalist view that mentality can be realized in many different types of physical devices. Suprapsychological AI, however, accuses strong psychological AI of being chauvinisticof being only interested in human intelligence! Suprapsychological AI claims to be interested in all the conceivable ways intelligence can be realized. (Flanagan, 1991, pp. 241-242)16) Determination of Relevance of Rules in Particular ContextsEven if the [rules] were stored in a context-free form the computer still couldn't use them. To do that the computer requires rules enabling it to draw on just those [ rules] which are relevant in each particular context. Determination of relevance will have to be based on further facts and rules, but the question will again arise as to which facts and rules are relevant for making each particular determination. One could always invoke further facts and rules to answer this question, but of course these must be only the relevant ones. And so it goes. It seems that AI workers will never be able to get started here unless they can settle the problem of relevance beforehand by cataloguing types of context and listing just those facts which are relevant in each. (Dreyfus & Dreyfus, 1986, p. 80)Perhaps the single most important idea to artificial intelligence is that there is no fundamental difference between form and content, that meaning can be captured in a set of symbols such as a semantic net. (G. Johnson, 1986, p. 250)Artificial intelligence is based on the assumption that the mind can be described as some kind of formal system manipulating symbols that stand for things in the world. Thus it doesn't matter what the brain is made of, or what it uses for tokens in the great game of thinking. Using an equivalent set of tokens and rules, we can do thinking with a digital computer, just as we can play chess using cups, salt and pepper shakers, knives, forks, and spoons. Using the right software, one system (the mind) can be mapped into the other (the computer). (G. Johnson, 1986, p. 250)19) A Statement of the Primary and Secondary Purposes of Artificial IntelligenceThe primary goal of Artificial Intelligence is to make machines smarter.The secondary goals of Artificial Intelligence are to understand what intelligence is (the Nobel laureate purpose) and to make machines more useful (the entrepreneurial purpose). (Winston, 1987, p. 1)The theoretical ideas of older branches of engineering are captured in the language of mathematics. We contend that mathematical logic provides the basis for theory in AI. Although many computer scientists already count logic as fundamental to computer science in general, we put forward an even stronger form of the logic-is-important argument....AI deals mainly with the problem of representing and using declarative (as opposed to procedural) knowledge. Declarative knowledge is the kind that is expressed as sentences, and AI needs a language in which to state these sentences. Because the languages in which this knowledge usually is originally captured (natural languages such as English) are not suitable for computer representations, some other language with the appropriate properties must be used. It turns out, we think, that the appropriate properties include at least those that have been uppermost in the minds of logicians in their development of logical languages such as the predicate calculus. Thus, we think that any language for expressing knowledge in AI systems must be at least as expressive as the first-order predicate calculus. (Genesereth & Nilsson, 1987, p. viii)21) Perceptual Structures Can Be Represented as Lists of Elementary PropositionsIn artificial intelligence studies, perceptual structures are represented as assemblages of description lists, the elementary components of which are propositions asserting that certain relations hold among elements. (Chase & Simon, 1988, p. 490)Artificial intelligence (AI) is sometimes defined as the study of how to build and/or program computers to enable them to do the sorts of things that minds can do. Some of these things are commonly regarded as requiring intelligence: offering a medical diagnosis and/or prescription, giving legal or scientific advice, proving theorems in logic or mathematics. Others are not, because they can be done by all normal adults irrespective of educational background (and sometimes by non-human animals too), and typically involve no conscious control: seeing things in sunlight and shadows, finding a path through cluttered terrain, fitting pegs into holes, speaking one's own native tongue, and using one's common sense. Because it covers AI research dealing with both these classes of mental capacity, this definition is preferable to one describing AI as making computers do "things that would require intelligence if done by people." However, it presupposes that computers could do what minds can do, that they might really diagnose, advise, infer, and understand. One could avoid this problematic assumption (and also side-step questions about whether computers do things in the same way as we do) by defining AI instead as "the development of computers whose observable performance has features which in humans we would attribute to mental processes." This bland characterization would be acceptable to some AI workers, especially amongst those focusing on the production of technological tools for commercial purposes. But many others would favour a more controversial definition, seeing AI as the science of intelligence in general-or, more accurately, as the intellectual core of cognitive science. As such, its goal is to provide a systematic theory that can explain (and perhaps enable us to replicate) both the general categories of intentionality and the diverse psychological capacities grounded in them. (Boden, 1990b, pp. 1-2)Because the ability to store data somewhat corresponds to what we call memory in human beings, and because the ability to follow logical procedures somewhat corresponds to what we call reasoning in human beings, many members of the cult have concluded that what computers do somewhat corresponds to what we call thinking. It is no great difficulty to persuade the general public of that conclusion since computers process data very fast in small spaces well below the level of visibility; they do not look like other machines when they are at work. They seem to be running along as smoothly and silently as the brain does when it remembers and reasons and thinks. On the other hand, those who design and build computers know exactly how the machines are working down in the hidden depths of their semiconductors. Computers can be taken apart, scrutinized, and put back together. Their activities can be tracked, analyzed, measured, and thus clearly understood-which is far from possible with the brain. This gives rise to the tempting assumption on the part of the builders and designers that computers can tell us something about brains, indeed, that the computer can serve as a model of the mind, which then comes to be seen as some manner of information processing machine, and possibly not as good at the job as the machine. (Roszak, 1994, pp. xiv-xv)The inner workings of the human mind are far more intricate than the most complicated systems of modern technology. Researchers in the field of artificial intelligence have been attempting to develop programs that will enable computers to display intelligent behavior. Although this field has been an active one for more than thirty-five years and has had many notable successes, AI researchers still do not know how to create a program that matches human intelligence. No existing program can recall facts, solve problems, reason, learn, and process language with human facility. This lack of success has occurred not because computers are inferior to human brains but rather because we do not yet know in sufficient detail how intelligence is organized in the brain. (Anderson, 1995, p. 2)Historical dictionary of quotations in cognitive science > Artificial Intelligence
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7 system
1) система || системный3) вчт операционная система; программа-супервизор5) вчт большая программа6) метод; способ; алгоритм•system halted — "система остановлена" ( экранное сообщение об остановке компьютера при наличии серьёзной ошибки)
- CPsystem- H-system- h-system- hydrogen-air/lead battery hybrid system- Ksystem- Lsystem- L*a*b* system- master/slave computer system- p-system- y-system- Δ-system -
8 control
1) управление; регулирование || управлять; регулировать2) контроль || контролировать3) управляющее устройство; устройство управления; регулятор4) профессиональное мастерство, квалификация, техническая квалификация5) pl органы управления•"in control" — "в поле допуска" ( о результатах измерения)
to control closed loop — управлять в замкнутой системе; регулировать в замкнутой системе
- 2-handed controlsto control open loop — управлять в разомкнутой системе; регулировать в разомкнутой системе
- 32-bit CPU control
- acceptance control
- access control
- acknowledge control
- active process control
- adaptable control
- adaptive constraint control
- adaptive control for optimization
- adaptive control
- adaptive feed rate control
- adaptive quality control
- adjustable feed control
- adjustable rotary control
- adjustable speed control
- adjusting control
- adjustment control
- AI control
- air logic control
- analog data distribution and control
- analogical control
- analytical control
- application control
- arrows-on-curves control
- autodepth control
- autofeed control
- automated control of a document management system
- automated technical control
- automatic backlash control
- automatic control
- automatic editing control
- automatic gain control
- automatic gripper control
- automatic level control
- automatic process closed loop control
- automatic remote control
- automatic sensitivity control
- automatic sequence control
- automatic speed control
- automatic stability controls
- auxiliaries control
- balanced controls
- band width control
- bang-bang control
- bang-bang-off control
- basic CNC control
- batch control
- bibliographic control
- bin level control
- boost control
- built-in control
- button control
- cam control
- cam throttle control
- camshaft control
- carriage control
- Cartesian path control
- Cartesian space control
- cascade control
- C-axis spindle control
- cell control
- center control
- central control
- central supervisory control
- centralized control
- centralized electronic control
- central-station control
- changeover control
- chip control
- circumferential register control
- close control
- closed cycle control
- closed loop control
- closed loop machine control
- closed loop manual control
- closed loop numerical control
- closed loop position control
- clutch control
- CNC control
- CNC indexer control
- CNC programmable control
- CNC symbolic conversational control
- CNC/CRT control
- CNC/MDI control
- coarse control
- coded current control
- coded current remote control
- color control
- combination control
- command-line control
- compensatory control
- composition control
- compound control
- computed-current control
- computed-torque control
- computer control
- computer numerical control
- computer process control
- computer-aided measurement and control
- computer-integrated manufacturing control
- computerized control
- computerized numerical control
- computerized process control
- constant surface speed control
- constant value control
- contactless control
- contact-sensing control
- contamination control
- continuous control
- continuous path control
- continuous process control
- contour profile control
- contouring control
- conventional hardware control
- conventional numerical control
- conventional tape control
- convergent control
- conversational control
- conversational MDI control
- coordinate positioning control
- coordinate programmable control
- copymill control
- counter control
- crossed controls
- current control
- cycle control
- dash control
- data link control
- data storage control
- deadman's handle controls
- depth control
- derivative control
- dial-in control
- differential control
- differential gaging control
- differential gain control
- differential temperature control
- digital brushless servo control
- digital control
- digital position control
- digital readout controls
- dimensional control
- direct computer control
- direct control
- direct digital control
- direct numerical control
- direction control
- directional control
- dirt control
- discontinuous control
- discrete control
- discrete event control
- discrete logic controls
- dispatching control
- displacement control
- distance control
- distant control
- distributed control
- distributed numerical control
- distributed zone control
- distribution control
- dog control
- drum control
- dual control
- dual-mode control
- duplex control
- dust control
- dynamic control
- eccentric control
- edge position control
- EDP control
- electrical control
- electrofluidic control
- electromagnetic control
- electronic control
- electronic level control
- electronic speed control
- electronic swivel control
- elevating control
- emergency control
- end-point control
- engineering change control
- engineering control
- entity control
- environmental control
- error control
- error plus error-rate control
- error-free control
- external beam control
- factory-floor control
- false control
- feed control
- feed drive controls
- feedback control
- feed-forward control
- field control
- fine control
- finger-tip control
- firm-wired numerical control
- fixed control
- fixed-feature control
- fixture-and-tool control
- flexible-body control
- floating control
- flow control
- fluid flow control
- follow-up control
- foot pedal control
- force adaptive control
- forecasting compensatory control
- fork control
- four quadrant control
- freely programmable CNC control
- frequency control
- FROG control
- full computer control
- full order control
- full spindle control
- gage measurement control
- gain control
- ganged control
- gap control
- gear control
- generative numerical control
- generic path control
- geometric adaptive control
- graphic numerical control
- group control
- grouped control
- guidance control
- hairbreath control
- hand control
- hand feed control
- hand wheel control
- hand-held controls
- handle-type control
- hand-operated controls
- hardened computer control
- hardwared control
- hardwared numerical control
- heating control
- heterarchical control
- hierarchical control
- high-integrity control
- high-level robot control
- high-low control
- high-low level control
- high-technology control
- horizontal directional control
- humidity control
- hybrid control
- hydraulic control
- I/O control
- immediate postprocess control
- inching control
- in-cycle control
- independent control
- indexer control
- indirect control
- individual control
- industrial processing control
- industrial-style controls
- infinite control
- infinite speed control
- in-process control
- in-process size control
- in-process size diameters control
- input/output control
- integral CNC control
- integral control
- integrated control
- intelligent control
- interacting control
- interconnected controls
- interlinking control
- inventory control
- job control
- jogging control
- joint control
- joystick control
- just-in-time control
- language-based control
- laser health hazards control
- latching control
- lead control
- learning control
- lever control
- lever-operated control
- line motion control
- linear control
- linear path control
- linearity control
- load control
- load-frequency control
- local control
- local-area control
- logic control
- lubricating oil level control
- machine control
- machine programming control
- machine shop control
- macro control
- magnetic control
- magnetic tape control
- main computer control
- malfunction control
- management control
- manual control
- manual data input control
- manual stop control
- manually actuatable controls
- manufacturing change control
- manufacturing control
- master control
- material flow control
- MDI control
- measured response control
- mechanical control
- memory NC control
- memory-type control
- metering control
- metrological control of production field
- microbased control
- microcomputer CNC control
- microcomputer numerical control
- microcomputer-based sequence control
- microprocessor control
- microprocessor numerical control
- microprogrammed control
- microprogramming control
- milling control
- model reference adaptive control
- model-based control
- moisture control
- motion control
- motor control
- motor speed control
- mouse-driven control
- movable control
- multicircuit control
- multidiameter control
- multilevel control
- multimachine tool control
- multiple control
- multiple-processor control
- multiposition control
- multistep control
- multivariable control
- narrow-band proportional control
- navigation control
- NC control
- neural network adaptive control
- noise control
- noncorresponding control
- noninteracting control
- noninterfacing control
- nonreversable control
- nonsimultaneous control
- numerical contouring control
- numerical control
- numerical program control
- odd control
- off-line control
- oligarchical control
- on-board control
- one-axis point-to-point control
- one-dimensional point-to-point control
- on-line control
- on-off control
- open loop control
- open loop manual control
- open loop numerical control
- open-architecture control
- operating control
- operational control
- operator control
- optical pattern tracing control
- optimal control
- optimalizing control
- optimizing control
- oral numerical control
- organoleptic control
- overall control
- overheat control
- override control
- p. b. control
- palm control
- parameter adaptive control
- parameter adjustment control
- partial d.o.f. control
- path control
- pattern control
- pattern tracing control
- PC control
- PC-based control
- peg board control
- pendant control
- pendant-actuated control
- pendant-mounted control
- performance control
- photoelectric control
- physical alignment control
- PIC control
- PID control
- plugboard control
- plug-in control
- pneumatic control
- point-to-point control
- pose-to-pose control
- position/contouring numerical control
- position/force control
- positional control
- positioning control
- positive control
- postprocess quality control
- power adaptive control
- power control
- power feed control
- power-assisted control
- powered control
- power-operated control
- precision control
- predictor control
- preselective control
- preset control
- presetting control
- pressbutton control
- pressure control
- preview control
- process control
- process quality control
- production activity control
- production control
- production result control
- programmable adaptive control
- programmable cam control
- programmable control
- programmable logic adaptive control
- programmable logic control
- programmable machine control
- programmable microprocessor control
- programmable numerical control
- programmable sequence control
- proportional plus derivative control
- proportional plus floating control
- proportional plus integral control
- prototype control
- pulse control
- pulse duration control
- punched-tape control
- purpose-built control
- pushbutton control
- quality control
- radio remote control
- radium control
- rail-elevating control
- ram stroke control
- ram-positioning control
- rapid-traverse controls for the heads
- rate control
- ratio control
- reactive control
- real-time control
- reduced-order control
- register control
- registration control
- relay control
- relay-contactor control
- remote control
- remote program control
- remote switching control
- remote valve control
- remote-dispatch control
- resistance control
- resolved motion rate control
- retarded control
- reversal control
- revolution control
- rigid-body control
- robot control
- robot perimeter control
- robot teach control
- rod control
- safety control
- sampled-data control
- sampling control
- schedule control
- SCR's control
- second derivative control
- selective control
- selectivity control
- self-acting control
- self-adaptive control
- self-adjusting control
- self-aligning control
- self-operated control
- self-optimizing control
- self-programming microprocessor control
- semi-automatic control
- sensitivity control
- sensor-based control
- sequence control
- sequence-type control
- sequential control
- series-parallel control
- servo control
- servo speed control
- servomotor control
- servo-operated control
- set value control
- shaft speed control
- shape control
- shift control
- shop control
- shower and high-pressure oil temperature control
- shut off control
- sight control
- sign control
- single variable control
- single-flank control
- single-lever control
- size control
- slide control
- smooth control
- software-based NC control
- softwared numerical control
- solid-state logic control
- space-follow-up control
- speed control
- stabilizing control
- stable control
- standalone control
- start controls
- static control
- station control
- statistical quality control
- steering control
- step-by-step control
- stepless control
- stepped control
- stick control
- stock control
- stop controls
- stop-point control
- storage assignment control
- straight cut control
- straight line control
- stroke control
- stroke length control
- supervisor production control
- supervisory control
- swarf control
- switch control
- symbolic control
- synchronous data link control
- table control
- tap-depth controls
- tape control
- tape loop control
- teach controls
- temperature control
- temperature-humidity air control
- template control
- tension control
- test control
- thermal control
- thermostatic control
- three-axis contouring control
- three-axis point-to-point control
- three-axis tape control
- three-mode control
- three-position control
- throttle control
- thumbwheel control
- time control
- time cycle control
- time optimal control
- time variable control
- time-critical control
- time-proportional control
- timing control
- token-passing access control
- tool life control
- tool run-time control
- torque control
- total quality control
- touch-panel NC control
- touch-screen control
- tracer control
- tracer numerical control
- trajectory control
- triac control
- trip-dog control
- TRS/rate control
- tuning control
- turnstile control
- two-axis contouring control
- two-axis point-to-point control
- two-dimension control
- two-hand controls
- two-position control
- two-position differential gap control
- two-step control
- undamped control
- user-adjustable override controls
- user-programmable NC control
- variable flow control
- variable speed control
- variety control
- varying voltage control
- velocity-based look-ahead control
- vise control
- vision responsive control
- visual control
- vocabulary control
- vocal CNC control
- vocal numerical control
- voltage control
- warehouse control
- washdown control
- water-supply control
- welding control
- wheel control
- wide-band control
- zero set control
- zoned track controlEnglish-Russian dictionary of mechanical engineering and automation > control
-
9 device
1) прибор; устройство; установка2) компонент; элемент4) фигура речи5) девиз; лозунг•- λ-device- λ-shaped negative-resistance device
- absolute pointing device
- absolute value device
- accumulation-mode charge-coupled device
- acoustic correlation device
- acoustic delay device
- acoustic imaging device
- acoustic-surface-wave device
- acoustic-surface-wave interaction charge-coupled device
- acoustic-volume-wave device
- acoustic-wave device
- acoustooptic device
- acoustoresistive device
- active device
- active medium propagation device
- adaptive device
- add-on device
- all-junction device
- aluminum-gate MOS device
- amorphous semiconductor memory device
- amorphous semiconductor switching device
- analog device
- answer device
- antihunt device
- anti-inrush device
- antijamming device
- anti-pumping device
- antisidetone device
- antistatic device
- antistrike device
- AO device
- arc-control device
- array device
- attached device
- attention device
- audible signal device
- audio device
- audio-response device
- augmentative device
- autocorrelation device
- automatic holding device
- automatic-alarm-signal keying device
- avalanche device
- avalanche-effect device
- backup device
- band-compression device
- beam-expanding device
- beam-lead device
- beam-manipulating device
- beam-narrowing device
- beam-transforming device
- bidirectional device
- bipolar device
- bistable device
- bistable optical device
- block device
- BlueTooth device
- bogey electron device
- bubble device
- bubble domain device
- bubble lattice storage device
- bubble memory device
- bucket-brigade charge-coupled device
- bucket-brigade device
- built-in pointing device
- bulk channel charge-coupled device
- bulk-acoustic-wave device
- bulk-charge-coupled device
- bulk-effect device
- bulk-property device
- bulk-type acoustooptic device
- bunching device
- buried channel charge-coupled device
- burst device
- bus-powered device
- callback port protection device
- calling device
- carrier-operated antinoise device
- cascade charge-coupled device
- cascaded thermoelectric device
- center-bonded device
- CFAR device
- character device
- charge-control device
- charge-coupled device
- charge-coupled imaging device
- charge-coupled line imaging device
- charge-coupled storage device
- charge-injection device
- charge-injection imaging device
- charge-transfer device
- charge-trapping device
- chip device
- chip-and-wire device
- clip-on pointing device
- clustered devices
- CMOS device
- coder device
- coherent electroluminescence device
- color imaging device
- COM device
- complex programmable logic device
- compound device
- computer output microfilm device
- conductively connected charge-coupled device
- constant false-alarm ratio device
- consumer device
- contiguous-disk bubble domain device
- controlled avalanche device
- controlled-surface device
- correlation device
- countermeasure devices
- coupling device
- cross-correlation device
- cross-field device
- cryogenic device
- current-access magnetic bubble device
- current-controlled device
- current-controlled differential-negative-resistance device
- current-controlled DNR device
- current-mode logic device
- current-operated device
- custom device
- data entry device
- data preparation device
- data recording device
- deception devices
- decision-making device
- decoding device
- dedicated device
- deformable-mirror device
- DEFT device
- delay device
- dense device
- depletion-mode device
- detecting device
- DI device
- dielectric isolation device
- diffused device
- digit delay device
- digital device
- digital micromirror device
- diode-array imaging device
- direct electronic Fourier transform device
- direct-access storage device
- direct-view device
- direct-viewing device
- discrete device
- disk device
- display device
- distributed diode device
- distributed interaction device
- division device
- D-MOS device
- domain propagation device
- domain-tip device
- double-negative-resistance-device
- double-quantum stimulated-emission device
- dynamically configurable device
- eavesdropping device
- E-beam fabricated device
- EBS device
- edge-bonded device
- EL device
- elastooptic device
- electrically programmable logic device
- electroluminescence device
- electromagnetic device
- electron device
- electron-beam semiconductor device
- electronic device
- electronic imaging device
- electron-optical device
- electrooptical device
- elementary MOS device
- embedded device
- encoding device
- end device
- energy conversion device
- enhancement-mode device
- epiplanar device
- epitaxial-device
- error-sensing device
- exchange-coupled thin-film memory device
- external control device
- false-echo devices
- Faraday-rotation device
- fast-discharge device
- ferrite device
- ferroelectric device
- FET device
- fiber-laser device
- field-access memory device
- field-effect device
- field-effect transistor device
- field-emission device
- field-programmable interconnect device
- file device
- file-protection device
- fixed tap-weight bucket-brigade device
- floating-gate device
- fluidic-device
- follow-up device
- four-layer device
- four-terminal device
- Frame Relay access device
- free-electron device
- freestanding pointing device
- FS device
- full-speed device
- functional device
- galvanomagnetic device
- galvanomagnetic semiconductor device
- gate-array device
- graphic input device
- graphic output device
- gripping device
- groove locating device
- guided-wave acoustooptic device
- guided-wave AO Bragg device
- Gunn device
- Gunn-effect device
- gyromagnetic device
- Hall device
- Hall-effect device
- harbor echo ranging and listening device
- head-cleaning device
- heteroepitaxial device
- heterojunction device
- high-technology device
- high-threshold device
- homing device
- hot-electron device
- human interface device
- hybrid ferromagnet-semiconductor device
- hybrid integrated-circuit device
- hybrid-type device
- I/O device
- identification device
- image-storage device
- imaging device
- implanted device
- incidental radiation device
- industrial data collection device
- infrared charge-coupled device
- input device
- input-output device
- insulated-gate device
- integrated electron device
- integrated injection device
- integrated optic device
- integrating device
- interface device
- interlocking device
- ion-implantation device
- ion-implanted bubble device
- ion-injection electrostatic plasma confinement device
- jelly-bean device
- Josephson device
- Josephson-effect device
- junction device
- junction-gate device
- keying device
- known-good device
- large-area p-n junction device
- laser annealing device
- laser device
- laser welding device
- laser-beam machining device
- leaded device
- leadless device
- left ventricular assist device
- light-detecting device
- light-emitting device
- linear beam device
- linear imaging device
- locked dynamically configurable device
- logic device
- long-channel device
- low-speed device
- low-threshold device
- LS device
- magnetic bubble device
- magnetic detecting device
- magnetic device
- magnetic flux quantum device
- magnetic tunnel junction memory device
- magnetic-wave device
- magnetoelastic-wave device
- magnetoelectronic device
- magnetooptic bubble-domain device
- magnetostatic-wave device
- magnetostrictive device
- magnetotunneling device
- majority-carrier device
- make-and-break device
- manipulating device
- marginal device
- maser device
- matching device
- measurement device
- mechanical switching device
- memory device
- MEMS device
- MEMS-based device
- metal-gate device
- metal-insulator-metal device
- metal-insulator-piezoelectric semiconductor device
- metal-oxide-silicon device
- metal-semiconductor device
- microcomputer device
- microdiscrete device
- microelectromechanical system device
- microelectromechanical system-based device
- microelectronic device
- microfluidic device
- MIDI device
- minority-carrier device
- MIPS device
- MIS device
- MNOS device
- molecule-sized device
- MOS color imaging device
- MOS device
- MOS memory device
- MSW device
- M-type device
- multiaperture device
- multijunction device
- multilayered memory device
- multilevel storage device
- multiple-tap bucket-brigade device
- multiple-unit semiconductor device
- multiport device
- multistable device
- multiterminal device
- n-channel device
- negation device
- negative-resistance device
- night viewing device
- n-n heterojunction device
- noise-rejection device
- nonburst device
- noninverting parametric device
- nonreciprocal field-displacement device
- n-p-n device
- n-terminal device
- one-port device
- open-collector device
- optically coupled device
- optically pumped device
- optoelectronic device
- O-type device
- output device
- overlay device
- oxide-passivated device
- P&P device
- parallel device
- parametric device
- passivated device
- passive device
- pattern recognition device
- p-channel device
- p-channel MOS device
- periodic permanent magnet focusing device
- persistent current device
- persistent-image device
- personal communication device
- photoconducting device
- photoelectric device
- photoemissive device
- photosensitive device
- photovoltaic device
- picking device
- piezoelectric device
- piezomagnetic device
- planar device
- planar-doped barrier device
- plasma device
- plasma-coupled semiconductor device
- plotting device
- plug-and-play device
- plug-in device
- PMOS device
- p-n junction device
- PnP device
- p-n-p device
- p-n-p-n device
- point-contact superconducting device
- pointing device
- polysilicon charge-coupled device
- port protection device
- p-p heterojunction device
- PPM focusing device
- programmable device
- programmable logic device
- protective device
- punch-through device
- pyroelectric thermal imaging device
- quantum-dot resonant tunneling device
- quasioptical device
- quenched domain mode device
- radiation-measuring device
- random-access device
- rapid single flux quantum device
- readout device
- reciprocal device
- recognition device
- rectifying device
- regulating device
- relative pointing device
- restricted radiation device
- reverberation device
- ringing device
- robot control device
- rotating-field bubble device
- rotating-field bubble domain device
- RSFQ device
- safety device
- SAW device
- Schottky barrier semiconductor device
- Schottky device
- Schottky-barrier-gate Gunn-effect digital device
- SCSI device
- security device
- self-powered device
- self-reacting device
- self-synchronous device
- semiconductor device
- semiconductor switching device
- semiconductor-magnetic device
- sensing device
- serial device
- shallow-base device
- short-channel device
- short-circuit-stable device
- silicon imaging device
- silicon-gate MOS memory device
- silicon-on-insulating substrate device
- single-junction device
- single-tap bucket-brigade device
- single-unit semiconductor device
- slot device
- snap-on pointing device
- solid-state device
- SOS device
- sound-absorbing device
- spark-quenching device
- speech recognition device
- spin-wave device
- square-law device
- starting device
- static discharge device
- storage device
- storage display device
- storage-charge device
- stream device
- stream-oriented device
- stroke input device
- superconducting device
- superconducting quantum device
- superconducting quantum interference device
- surface acoustic-wave device
- surface charge-transfer device
- surface mount device
- surface-controlled device
- switching device
- symbolic device
- tape device
- tape-moving device
- TE device
- tensoelectric device
- terminal device
- thermoelectric cooling device
- thermoelectric device
- thermoelectric heating device
- thick-film device
- thin-film device
- Tokamak device
- transferred-electron device
- transferred-electron microwave device
- transit-time device
- traveling magnetic domain memory device
- traveling-wave Gunn effect device
- trip-free mechanical switching device
- tse device
- tube device
- tunnel device
- tunnel emission device
- twisted nematic device
- two-junction bipolar device
- two-port device
- two-terminal device
- ULA device
- uncommitted logic array device
- unidirectional device
- unilateral device
- unpacked device
- vacuum tunnel device
- variable grating mode device
- variable inductance cryogenic device
- vertical junction device
- VGM device
- V-groove MOS device
- virtual device
- visual signal device
- VMOS device
- V-MOS device
- voice-operated device
- voice-operated gain-adjusting device
- voltage-controlled device
- voltage-controlled differential-negative-resistance device
- voltage-controlled DNR device
- voltage-operated device
- wafer printing device
- wireless device
- X-ray detecting device
- YIG deviceThe New English-Russian Dictionary of Radio-electronics > device
-
10 method
метод; способ- method of moments
- method of spin-density functional
- access method
- aluminum resist method
- angle-lapping method
- aperture field method
- B-method
- balanced method
- basic direct access method
- basic sequential access method
- basic telecommunication access method
- batch method
- Bayesian methods
- box-diffusion method
- Box-Wilson method
- Bridgman method
- Bridgman-Stockbarger method
- bright-field method
- cavity method
- Chalmers method
- chemical-reaction method
- chemical vapor infiltration method
- Cochran-Orcutt method
- coherent-pulse method
- collocation method
- common access method
- compensation method
- conditional maximum likelihood method
- conjugate gradients method
- constant-temperature method
- contact method
- convex combination method
- critical path method
- crucibleless method
- crystal-pulling method
- cylinder method
- Czochralski method
- dark-field method
- decoupled method
- Delphi method
- deposition method
- derivate approximation method
- desiccant packing method
- destructive method
- differential-conductivity method
- differential Doppler method
- diffraction method
- diffused-collector method
- diffused-meltback method
- diffusion method
- direct method
- dispersion and mask method
- dispersion and mask template method
- distribution-free method
- dot-alloying method
- double-doping method
- double-exposure method
- dynamic bubble collapse method
- edge enhancement method
- electronic-recording method
- electron-lithography method
- electron-orbit method
- Engle-Granger method
- epitaxial-diffused method
- equisignal-zone method
- equivalent-current-sheet method
- estimation method
- etching method
- etch-pit method
- evaporation method
- event-driven method
- FDTD method
- field matching method
- filter method of single-sideband signals generation
- finite-difference method
- finite-difference time domain method
- finite-element method
- flame-fusion method
- flip-chip method
- floating-probe method
- floating-zone method
- four-point probe method
- frequency-domain method
- fusion method
- fuzzy method
- Galerkin's method
- Gauss-Newton method
- Gauss-Seidel method
- generalized method of moments
- generalized instrumental variables method
- geometrical optics method
- goal-driven method
- gradient method
- Green function method
- growth method
- heavy ball method
- heuristic method
- hierarchical direct access method
- hierarchical indexed direct access method
- hierarchical indexed sequential access method
- hierarchical sequential access method
- Horner method
- hot-probe method
- hypothetico-deductive method
- incomplete Choleski-decomposition method
- indexed sequential-access method
- indirect method
- induced electromotive force method
- induced EMF method
- induced magnetomotive force method
- induced MMF method
- insertion method
- in situ method
- instrumental variables method
- intaglio method
- intelligent decision support method
- interference method
- introspective method
- ion-drift method
- ion-implantation method
- isothermal method
- isothermal dipping method
- jack-knife method
- Jackson method
- Johansen method
- Kiefer-Wolfowitz method
- k-means method
- k-partan method
- Krüger-Finke method
- Kyropoulos method
- laborious method
- learning subspace method
- least distance method
- least-squares method
- Levenberg-Marquardt method
- lithographic method
- lobe switching method
- logistic method
- Marquardt method
- masking method
- matrix method
- maximum entropy method
- maximum likelihood method
- meltback method
- melt-freeze method
- melt-quench method
- memory operating characteristic method
- modified partan method
- molecular-field method
- Monte Carlo method
- morphological method
- Newton method
- Newton-Raphson method
- nodal method
- nondestructive method
- null method
- offset carrier method
- offset subcarrier method
- OLS method
- operations research method
- ordered elimination method
- ordinary least squares method
- orthogonalized plane wave method
- outer product of gradient method
- overcompensated method
- over-under probe method
- oxide resist method
- pair-exchange method
- partan method
- path compression method
- path-of-steepest-ascent method
- path sensitizing method
- pedestal method
- perturbation method
- phase-contrast method
- phase-plane method
- phasing method of single-sideband signals generation
- photoconductive decay method
- photolithographic method
- planographic method
- powder method
- principal components method
- probe method
- pseudopotential method
- queued access method
- queued indexed sequential access method
- queued sequential access method
- queued telecommunication access method
- random-walk method
- ray-optics method
- recalculation method
- receiver operating characteristic method
- recrystallization method
- rejection-mask method
- resonance method
- rotary-crystallizer method
- rotating crystal method
- roulette wheel method
- schlieren method
- scientific method
- sector method
- sequential-access method
- silk-screening method
- simplex method
- simulated annealing method
- skip-field method
- slow-cooling method
- solder-reflow method
- solid-state diffusion method
- speckle method
- spectral-domain method
- spray-processing method
- staining method
- state-space method
- static baycenter method
- stationary-phase method
- strain-annealed method
- sublimation-condensation method
- surface-potential equilibration method
- symbolic layout method
- symmetric displacement method
- temperature differential method
- temperature-variation method
- thermal-gradient method
- time-domain method
- Todama method
- traveling-solvent method
- trial-and-error method
- two-wattmeter method
- van der Pol method
- vapor-liquid-solid method
- variable-metric method
- vector-potential method
- Verneuil method
- vernier pulse-timing method
- virtual storage access method
- virtual telecommunications access method
- VLS method
- Warnier-Orr method
- wire-wrap method
- zero method -
11 method
метод; способ- aluminum resist method
- angle-lapping method
- aperture field method
- balanced method
- basic direct access method
- basic sequential access method
- basic telecommunication access method
- batch method
- Bayesian methods
- B-method
- box-diffusion method
- Box-Wilson method
- Bridgman method
- Bridgman-Stockbarger method
- bright-field method
- cavity method
- Chalmers method
- chemical vapor infiltration method
- chemical-reaction method
- Cochran-Orcutt method
- coherent-pulse method
- collocation method
- common access method
- compensation method
- conditional maximum likelihood method
- conjugate gradients method
- constant-temperature method
- contact method
- convex combination method
- critical path method
- crucibleless method
- crystal-pulling method
- cylinder method
- Czochralski method
- dark-field method
- decoupled method
- Delphi method
- deposition method
- derivate approximation method
- desiccant packing method
- destructive method
- differential Doppler method
- differential-conductivity method
- diffraction method
- diffused-collector method
- diffused-meltback method
- diffusion method
- direct method
- dispersion and mask method
- dispersion and mask template method
- distribution-free method
- dot-alloying method
- double-doping method
- double-exposure method
- dynamic bubble collapse method
- edge enhancement method
- electronic-recording method
- electron-lithography method
- electron-orbit method
- Engle-Granger method
- epitaxial-diffused method
- equisignal-zone method
- equivalent-current-sheet method
- estimation method
- etching method
- etch-pit method
- evaporation method
- event-driven method
- FDTD method
- field matching method
- filter method of single-sideband signals generation
- finite-difference method
- finite-difference time domain method
- finite-element method
- flame-fusion method
- flip-chip method
- floating-probe method
- floating-zone method
- four-point probe method
- frequency-domain method
- fusion method
- fuzzy method
- Galerkin's method
- Gauss-Newton method
- Gauss-Seidel method
- generalized instrumental variables method
- generalized method of moments
- geometrical optics method
- goal-driven method
- gradient method
- Green function method
- growth method
- heavy ball method
- heuristic method
- hierarchical direct access method
- hierarchical indexed direct access method
- hierarchical indexed sequential access method
- hierarchical sequential access method
- Horner method
- hot-probe method
- hypothetico-deductive method
- in situ method
- incomplete Choleski-decomposition method
- indexed sequential-access method
- indirect method
- induced electromotive force method
- induced EMF method
- induced magnetomotive force method
- induced MMF method
- insertion method
- instrumental variables method
- intaglio method
- intelligent decision support method
- interference method
- introspective method
- ion-drift method
- ion-implantation method
- isothermal dipping method
- isothermal method
- jack-knife method
- Jackson method
- Johansen method
- Kiefer-Wolfowitz method
- k-means method
- k-partan method
- Krüger-Finke method
- Kyropoulos method
- laborious method
- learning subspace method
- least distance method
- least-squares method
- Levenberg-Marquardt method
- lithographic method
- lobe switching method
- logistic method
- Marquardt method
- masking method
- matrix method
- maximum entropy method
- maximum likelihood method
- meltback method
- melt-freeze method
- melt-quench method
- memory operating characteristic method
- method of edge waves
- method of moments
- method of spin-density functional
- modified partan method
- molecular-field method
- Monte Carlo method
- morphological method
- Newton method
- Newton-Raphson method
- nodal method
- nondestructive method
- null method
- offset carrier method
- offset subcarrier method
- OLS method
- operations research method
- ordered elimination method
- ordinary least squares method
- orthogonalized plane wave method
- outer product of gradient method
- overcompensated method
- over-under probe method
- oxide resist method
- pair-exchange method
- partan method
- path compression method
- path sensitizing method
- path-of-steepest-ascent method
- pedestal method
- perturbation method
- phase-contrast method
- phase-plane method
- phasing method of single-sideband signals generation
- photoconductive decay method
- photolithographic method
- planographic method
- powder method
- principal components method
- probe method
- pseudopotential method
- queued access method
- queued indexed sequential access method
- queued sequential access method
- queued telecommunication access method
- random-walk method
- ray-optics method
- recalculation method
- receiver operating characteristic method
- recrystallization method
- rejection-mask method
- resonance method
- rotary-crystallizer method
- rotating crystal method
- roulette wheel method
- schlieren method
- scientific method
- sector method
- sequential-access method
- silk-screening method
- simplex method
- simulated annealing method
- skip-field method
- slow-cooling method
- solder-reflow method
- solid-state diffusion method
- speckle method
- spectral-domain method
- spray-processing method
- staining method
- state-space method
- static baycenter method
- stationary-phase method
- strain-annealed method
- sublimation-condensation method
- surface-potential equilibration method
- symbolic layout method
- symmetric displacement method
- temperature differential method
- temperature-variation method
- thermal-gradient method
- time-domain method
- Todama method
- traveling-solvent method
- trial-and-error method
- two-wattmeter method
- van der Pol method
- vapor-liquid-solid method
- variable-metric method
- vector-potential method
- Verneuil method
- vernier pulse-timing method
- virtual storage access method
- virtual telecommunications access method
- VLS method
- Warnier-Orr method
- wire-wrap method
- zero methodThe New English-Russian Dictionary of Radio-electronics > method
-
12 symbology
матричная символика
Стандартные средства представления данных в форме многоугольных или круговых элементов в формализованных комбинациях для их воспроизведения специальной системой считывания.
Примечание
К матричным относятся символики «Максикод» («Maxicode»), «Ультракод» («Ultracode») и др.
[ ГОСТ 30721-2000]
[ ГОСТ Р 51294.3-99]Тематики
EN
DE
FR
символика
Любая из символик штрихового кода и матричных символик.
[ ГОСТ 30721-2000]
[ ГОСТ Р 51294.3-99]Тематики
EN
DE
FR
символика штрихового кода
Стандартные средства представления данных в форме штрихового кода.
Примечание
Спецификации символики устанавливают особые правила построения или структуру символа.
[ ГОСТ 30721-2000]
[ ГОСТ Р 51294.3-99]Тематики
EN
DE
FR
04.02.27 долговременная маркировка [ permanent marking]: Изображение, полученное с помощью интрузивного или неинтрузивного маркирования, которое должно оставаться различимым, как минимум, в течение установленного срока службы изделия.
Сравнить с терминологической статьей «соединение» по ИСО/МЭК19762-11).
______________
1)Терминологическая статья 04.02.27 не связана с указанной терминологической статьей.
<2>4 Сокращения
ECI интерпретация в расширенном канале [extended channel interpretation]
DPM прямое маркирование изделий [direct part marking]
BWA коррекция ширины штриха [bar width adjustment]
BWC компенсация ширины штриха [barwidth compensation]
CPI число знаков на дюйм [characters per inch]
PCS сигнал контраста печати [print contrast signal]
ORM оптический носитель данных [optically readable medium]
FoV поле обзора [field of view]
Алфавитный указатель терминов на английском языке
(n, k)symbology
04.02.13
add-on symbol
03.02.29
alignment pattern
04.02.07
aperture
02.04.09
auto discrimination
02.04.33
auxiliary character/pattern
03.01.04
background
02.02.05
bar
02.01.05
bar code character
02.01.09
bar code density
03.02.14
barcode master
03.02.19
barcode reader
02.04.05
barcode symbol
02.01.03
bar height
02.01.16
bar-space sequence
02.01.20
barwidth
02.01.17
barwidth adjustment
03.02.21
barwidth compensation
03.02.22
barwidth gain/loss
03.02.23
barwidth increase
03.02.24
barwidth reduction
03.02.25
bearer bar
03.02.11
binary symbology
03.01.10
characters per inch
03.02.15
charge-coupled device
02.04.13
coded character set
02.01.08
column
04.02.11
compaction mode
04.02.15
composite symbol
04.02.14
contact scanner
02.04.07
continuous code
03.01.12
corner marks
03.02.20
data codeword
04.02.18
data region
04.02.17
decodability
02.02.28
decode algorithm
02.02.01
defect
02.02.22
delineator
03.02.30
densitometer
02.02.18
depth of field (1)
02.04.30
depth of field (2)
02.04.31
diffuse reflection
02.02.09
direct part marking
04.02.24
discrete code
03.01.13
dot code
04.02.05
effective aperture
02.04.10
element
02.01.14
erasure
04.02.21
error correction codeword
04.02.19
error correction level
04.02.20
even parity
03.02.08
field of view
02.04.32
film master
03.02.18
finder pattern
04.02.08
fixed beam scanner
02.04.16
fixed parity
03.02.10
fixed pattern
04.02.03
flat-bed scanner
02.04.21
gloss
02.02.13
guard pattern
03.02.04
helium neon laser
02.04.14
integrated artwork
03.02.28
intercharacter gap
03.01.08
intrusive marking
04.02.25
label printing machine
02.04.34
ladder orientation
03.02.05
laser engraver
02.04.35
latch character
02.01.24
linear bar code symbol
03.01.01
magnification factor
03.02.27
matrix symbology
04.02.04
modular symbology
03.01.11
module (1)
02.01.13
module (2)
04.02.06
modulo
03.02.03
moving beam scanner
02.04.15
multi-row symbology
04.02.09
non-intrusive marking
04.02.26
odd parity
03.02.07
omnidirectional
03.01.14
omnidirectional scanner
02.04.20
opacity
02.02.16
optically readable medium
02.01.01
optical throw
02.04.27
orientation
02.04.23
orientation pattern
02.01.22
oscillating mirror scanner
02.04.19
overhead
03.01.03
overprinting
02.04.36
pad character
04.02.22
pad codeword
04.02.23
permanent marking
04.02.27
photometer
02.02.19
picket fence orientation
03.02.06
pitch
02.04.26
pixel
02.04.37
print contrast signal
02.02.20
printability gauge
03.02.26
printability test
02.02.21
print quality
02.02.02
quiet zone
02.01.06
raster
02.04.18
raster scanner
02.04.17
reading angle
02.04.22
reading distance
02.04.29
read rate
02.04.06
redundancy
03.01.05
reference decode algorithm
02.02.26
reference threshold
02.02.27
reflectance
02.02.07
reflectance difference
02.02.11
regular reflection
02.02.08
resolution
02.01.15
row
04.02.10
scanner
02.04.04
scanning window
02.04.28
scan, noun (1)
02.04.01
scan, noun (2)
02.04.03
scan reflectance profile
02.02.17
scan, verb
02.04.02
self-checking
02.01.21
shift character
02.01.23
short read
03.02.12
show through
02.02.12
single line (beam) scanner
02.04.11
skew
02.04.25
slot reader
02.04.12
speck
02.02.24
spectral response
02.02.10
spot
02.02.25
stacked symbology
04.02.12
stop character/pattern
03.01.02
structured append
04.02.16
substitution error
03.02.01
substrate
02.02.06
symbol architecture
02.01.04
symbol aspect ratio
02.01.19
symbol character
02.01.07
symbol check character
03.02.02
symbol density
03.02.16
symbology
02.01.02
symbol width
02.01.18
tilt
02.04.24
transmittance (l)
02.02.14
transmittance (2)
02.02.15
truncation
03.02.13
two-dimensional symbol (1)
04.02.01
two-dimensional symbol (2)
04.02.02
two-width symbology
03.01.09
variable parity encodation
03.02.09
verification
02.02.03
verifier
02.02.04
vertical redundancy
03.01.06
void
02.02.23
wand
02.04.08
wide: narrow ratio
03.01.07
X dimension
02.01.10
Y dimension
02.01.11
Z dimension
02.01.12
zero-suppression
03.02.17
<2>Приложение ДА1)
______________
1)
Источник: ГОСТ Р ИСО/МЭК 19762-2-2011: Информационные технологии. Технологии автоматической идентификации и сбора данных (АИСД). Гармонизированный словарь. Часть 2. Оптические носители данных (ОНД) оригинал документа
Англо-русский словарь нормативно-технической терминологии > symbology
-
13 analysis
1) анализ2) исследование, изучение4) расчет ( обычно проверочный)5) состав6) теория•-
activation analysis
-
algorithmic analysis
-
amino acid analysis
-
approximate analysis
-
Auger-electron analysis
-
backward analysis
-
base ratio analysis
-
behavioral analysis
-
bending analysis
-
bottom-up analysis
-
boundary-element analysis
-
brittle coating analysis
-
buckling analysis
-
bulk analysis
-
carbon group analysis
-
cepstral analysis
-
chemical analysis
-
chromatographic analysis
-
circuit analysis
-
circuit malfunotion analysis
-
closed boundary analysis
-
clustering analysis
-
cluster analysis
-
coal-sizing analysis
-
combustion analysis
-
comfirmatory analysis
-
comparative analysis
-
compensation analysis
-
component analysis of casing head gas
-
computer aided analysis
-
core analysis
-
correlation analysis
-
coupled-mode analysis
-
covariance analysis
-
criticality analysis
-
cross correlation analysis
-
cross-field analysis
-
cryoscopic analysis
-
crystal analysis
-
cylindrical mirror Auger analysis
-
data analysis
-
depth-area-duration analysis
-
destructive analysis
-
diagnostic analysis
-
differential thermal analysis
-
diffraction analysis
-
dilatometric analysis
-
discourse analysis
-
discriminant analysis
-
dispersion analysis
-
distortion analysis
-
dynamic force analysis
-
ecological analysis
-
economic analysis
-
elastic-plastic stress analysis
-
electron diffraction analysis
-
electron microprobe analysis
-
electron probe analysis
-
emission analysis
-
end-point analysis
-
energy-dispersive analysis
-
environmental analysis
-
error analysis
-
event-sequence analysis
-
extinction analysis
-
factor analysis
-
failure analysis
-
failure cause analysis
-
fast neutron activation analysis
-
field analysis
-
fine-mesh analysis
-
fingerprint analysis
-
finite-element analysis
-
float-and-sink analysis
-
fluorescence analysis
-
formation damage analysis
-
four-dimensional analysis
-
Fourier analysis
-
fractional analysis
-
frequency analysis
-
frequency-domain analysis
-
frequency-response analysis
-
frontal analysis
-
fuel analysis
-
gamma-ray analysis
-
gradation analysis of soil
-
grading analysis
-
gravimetric analysis
-
grid-point analysis
-
group analysis
-
harmonic analysis
-
Hempel analysis
-
heteroduplex analysis
-
hot-extraction gas analysis
-
hydrograph analysis
-
immunoblot analysis
-
infrared analysis
-
Interactive analysis
-
interactive image analysis
-
ion microprobe mass analysis
-
ladle analysis
-
large-sample analysis
-
least-square analysis
-
limit state analysis
-
linear analysis
-
logical analysis
-
logic analysis
-
magnetometric analysis
-
malfunction analysis
-
market analysis
-
mass spectrographic analysis
-
mass spectrometric analysis
-
mathematical analysis
-
matrix analysis
-
measure analysis
-
mechanical analysis
-
mesh analysis
-
microprobe analysis
-
microprobe-inclusion analysis
-
microscopical analysis
-
microstructure analysis
-
mobility-shift analysis
-
modal analysis
-
model-based analysis
-
model analysis
-
moire stress analysis
-
molecular spectrum analysis
-
multilevel analysis
-
multivariate analysis
-
NDT analysis
-
nearest neighbor analysis
-
nephelometric analysis
-
network analysis
-
neutron diffraction analysis
-
nodal analysis
-
noise analysis
-
nondestructive test analysis
-
noninvasive analysis
-
numerical analysis
-
observational analysis
-
octave analysis
-
oil type analysis
-
on-line analysis
-
operations analysis
-
opticospectral analysis
-
parametric analysis
-
particle-size analysis
-
periodogram analysis
-
perturbation analysis
-
petrographic analysis
-
phase shift analysis of the scattering
-
phase-plane analysis
-
photoelastic-coating analysis
-
photoelasticity analysis
-
polarographic analysis
-
pore-size analysis
-
postaccident criticality analysis
-
posttest analysis
-
predictive analysis
-
pretest analysis
-
probit analysis
-
proximate analysis
-
qualitative analysis
-
quantitative analysis
-
radioactive tracer analysis
-
radiographic analysis
-
RAM analysis
-
rapid analysis
-
real-time analysis
-
regression analysis
-
release analysis
-
reliability analysis
-
reliability availability maintainability analysis
-
revolving field analysis
-
ring analysis
-
Rutherford scattering analysis
-
safety transit analysis
-
sample analysis
-
sampling analysis
-
scale analysis
-
screen analysis
-
sea-level analysis
-
sedimentation analysis
-
shear analysis
-
sieve analysis
-
signature analysis
-
simulated network analysis
-
single burst analysis
-
slag analysis
-
small signal analysis
-
solar resource analysis
-
spatial frequency analysis
-
spectral analysis
-
spectrophotometric analysis
-
speculative analysis
-
spot test analysis
-
stack-gas analysis
-
standing wave analysis
-
statistical analysis
-
stiffness analysis
-
strain-gage analysis
-
strength analysis
-
stress analysis
-
structural analysis
-
subsynoptic-scale analysis
-
symbolic analysis
-
syntactic analysis
-
systems analysis
-
system analysis
-
tapping analysis
-
temporal pulse analysis
-
tensor analysis
-
test sieve analysis
-
thermal analysis
-
thermoeconomic analysis
-
thermographic analysis
-
thermogravimetric analysis
-
thermomagneto-gravimetric analysis
-
three-dimensional analysis
-
time series analysis
-
timing analysis
-
top-down analysis
-
trace analysis
-
transient analysis
-
triangular hydrograph analysis
-
ultimate analysis
-
upper-level analysis
-
variance analysis
-
vault-pathways analysis
-
vector analysis
-
wandering spot analysis
-
water analysis
-
wave analysis
-
weather analysis
-
wet analysis
-
worst-case analysis
-
X-ray absorption analysis
-
X-ray analysis
-
X-ray crystal analysis
-
X-ray dispersive analysis
-
X-ray emission analysis
-
X-ray image analysis
-
X-ray spectrum analysis
-
X-ray structure analysis
-
Zuber's hydrodynamic analysis -
14 model
1) модель (1. упрощённое представление объекта, процесса или явления; структурная аналогия 2. макет 3. образец; эталон; шаблон 4. пример; тип 5. стиль; дизайн) || моделировать (1. создавать упрощённое представление объекта, процесса или явления; пользоваться структурной аналогией 2. макетировать 3. создавать образец, эталон или шаблон 4. пользоваться примером; относить к определённому типу) || модельный (1. относящийся к упрощённому представлению объекта, процесса или явления; использующий структурную аналогию 2. макетный 3. образцовый; эталонный; шаблонный 4. примерный; типовой)2) служить моделью; выполнять функции модели3) создавать по образцу, эталону или шаблону4) придерживаться определённого стиля; следовать выбранному дизайну•- 2-D model
- adaptive expectations model
- additive model of neural network
- analog model
- antenna scale model
- application domain model
- AR model
- ARCH model
- ARDL model
- ARIMA model
- ARMA model
- atmospheric density model
- autoregressive conditional heteroscedastic model
- autoregressive distributed lags model
- autoregressive integrated moving average model
- autoregressive moving average model
- band model
- behavioral model
- Benetton model
- Berkeley short-channel IGFET model
- binary model
- binary choice model
- Bohr-Sommerfeld model
- Bohr-Sommerfeld model of atom
- Box-Jenkins model
- Bradley-Terry-Luce model
- brain-state-in-a-box model
- breadboard model
- Brookings models
- BSB model
- business model
- CAD model
- capability maturity model
- carrier-storage model
- causal model
- censored model
- centralized model
- charge-control model
- Chen model
- classical normal linear regression model
- classical regression model
- client-server model
- CMY model
- CMYK model
- cobweb model
- collective-electron model
- color model
- compact model
- component object model
- computer model
- computer-aided-design model
- conceptual model of hypercompetition
- conceptual data model
- conductor impedance model
- congruent model
- connectionist model
- continuum model
- Cox proportional hazards regression model
- data model
- Davidson-Hendry-Srba-Yeo model
- descriptive model
- design model
- deterministic model
- DHSY model
- discrete choice model
- distributed component object model
- distributed computing model
- distributed lags model
- distributed system object model
- distribution-free model
- document object model
- domain model
- domain architecture model
- duration model
- dynamic model
- EER-model
- energy-gap model
- entity-relationship model
- ER-model
- error correction model
- errors-in-variables model
- experimental model
- extended entity-relationship model
- extended relational model
- extended relational data model
- extensional model
- ferromagnetic Fermi-liquid model
- file level model
- financial model
- finite-population model
- fixed-effects model
- flat Earth model
- flat free model of advertising
- formalized model
- fractal model
- frame model
- fuzzy model
- GARCH model
- generalized autoregressive conditional heteroscedastic model
- generalized linear model
- geometric model
- geometrical lags model
- gross-level model
- ground-environment model
- Haken-Kelso-Bunz model
- Heisenberg model
- heuristic model
- hierarchical data model
- HLS model
- holographic model
- HSB model
- HSV model
- Hubbard model
- huge model
- hybrid-pi model
- hypothesis model
- ideal model
- imaging model
- indexed colors model
- information model
- information-logical model
- intensional model
- intercept-only model
- ionospheric model
- irreversible growth model
- Ising model
- ISO/OSI reference model
- Klein model
- Kronig-Penney model
- L*a*b* model
- large model
- large-signal device model
- LCH model
- learning, induction and schema abstraction model
- life cycle model
- limited dependent variable model
- linear model
- linear probability model
- LISA model
- logical model
- logical-linguistic model
- logistic model
- logit model
- loglinear model
- Londons' model of superconductivity
- lookup-table model
- Lorentz model
- low-signal device model
- machine model
- macrolevel model
- magnetic hysteresis model
- magnetohydrodynamic plasma model
- mathematical model
- matrix-memory model
- medium model
- memory model
- MHD plasma model
- microlevel model
- Minsky model
- Minsky frame model
- mixed model
- molecular-field model
- moving average model
- multiple regression model
- multiplicative model
- nested model
- network model
- network data model
- non-nested model
- non-parametric model
- N-state Potts model
- N-tier model
- null model
- object model
- object data model
- one-dimensional model
- one-fluid plasma model
- operations model
- optimizing model
- parabolic-ionosphere model
- parametric model
- parsimonious model
- partial adjustment model
- phenomenological model
- physical model
- pilot model
- Pippard nonlocal model
- plant model
- Poisson model
- polar model
- polynomial lags model
- postrelational model
- postrelational data model
- Potts model
- predictive model
- Preisach model
- preproduction model
- price model of advertising
- probabilistic model
- probit model
- proportional hazard model
- proportional-odds model
- prototype model
- quadratic model
- qualitative dependent variable model
- quantum mechanical model of superconductivity
- quasi-equilibrium model
- quasi-linear model
- random coefficients model
- random-effects model
- register model
- relational model
- relational data model
- relative model
- representative model
- response-surface model
- RGB model
- Ridley-Watkins-Hilsum model
- rival models
- Rössler model
- RWH model
- saturated model
- scalar model
- SCSI architecture model
- semantic model
- semiotic model
- sharply bounded ionosphere model
- simulation model
- single-ion model
- Skyrme model
- small model
- small-signal device model
- solid model
- spherical Earth model
- state-space model
- statistical model
- stochastic model
- Stoner-Wohlfart model
- structural model
- stuck-at-fault model
- surface model
- symbolic model
- symbolic-form model
- synergetic model
- system model
- system object model
- test model
- thermodynamical model
- three-tier model
- tobit model
- transistor model
- translog model
- tropospheric model
- true model
- truncated model
- two-dimensional model
- two-dimensional regression model
- two-fluid model of superconductivity
- two-fluid plasma model
- two-tier model
- Van der Ziel's noise model
- variable parameter model
- vector model
- wire-frame model
- working model -
15 model
1) модель (1. упрощённое представление объекта, процесса или явления; структурная аналогия 2. макет 3. образец; эталон; шаблон 4. пример; тип 5. стиль; дизайн) || моделировать (1. создавать упрощённое представление объекта, процесса или явления; пользоваться структурной аналогией 2. макетировать 3. создавать образец, эталон или шаблон 4. пользоваться примером; относить к определённому типу) || модельный (1. относящийся к упрощённому представлению объекта, процесса или явления; использующий структурную аналогию 2. макетный 3. образцовый; эталонный; шаблонный 4. примерный; типовой)2) служить моделью; выполнять функции модели3) создавать по образцу, эталону или шаблону4) придерживаться определённого стиля; следовать выбранному дизайну•- 2-D model
- adaptive expectations model
- additive model of neural network
- analog model
- antenna scale model
- application domain model
- AR model
- ARCH model
- ARDL model
- ARIMA model
- ARMA model
- atmospheric density model
- autoregressive conditional heteroscedastic model
- autoregressive distributed lags model
- autoregressive integrated moving average model
- autoregressive model
- autoregressive moving average model
- band model
- behavioral model
- Benetton model
- Berkeley short-channel IGFET model
- binary choice model
- binary model
- Bohr-Sommerfeld model of atom
- Bohr-Sommerfeld model
- Box-Jenkins model
- Bradley-Terry-Luce model
- brain-state-in-a-box model
- breadboard model
- Brookings models
- BSB model
- business model
- CAD model
- capability maturity model
- carrier-storage model
- causal model
- censored model
- centralized model
- charge-control model
- Chen model
- classical normal linear regression model
- classical regression model
- client-server model
- CMY model
- CMYK model
- cobweb model
- collective-electron model
- color model
- compact model
- component object model
- computer model
- computer-aided-design model
- conceptual data model
- conceptual model of hypercompetition
- conductor impedance model
- congruent model
- connectionist model
- continuum model
- Cox proportional hazards regression model
- data model
- Davidson-Hendry-Srba-Yeo model
- descriptive model
- design model
- deterministic model
- DHSY model
- discrete choice model
- distributed component object model
- distributed computing model
- distributed lags model
- distributed system object model
- distribution-free model
- document object model
- domain architecture model
- domain model
- duration model
- dynamic model
- EER-model
- energy-gap model
- entity-relationship model
- ER-model
- error correction model
- errors-in-variables model
- experimental model
- extended entity-relationship model
- extended relational data model
- extended relational model
- extensional model
- ferromagnetic Fermi-liquid model
- file level model
- financial model
- finite-population model
- fixed-effects model
- flat Earth model
- flat free model of advertising
- formalized model
- fractal model
- frame model
- fuzzy model
- GARCH model
- generalized autoregressive conditional heteroscedastic model
- generalized linear model
- geometric model
- geometrical lags model
- gross-level model
- ground-environment model
- Haken-Kelso-Bunz model
- Heisenberg model
- heuristic model
- hierarchical data model
- HLS model
- holographic model
- HSB model
- HSV model
- Hubbard model
- huge model
- hybrid-pi model
- hypothesis model
- ideal model
- imaging model
- indexed colors model
- information model
- information-logical model
- intensional model
- intercept-only model
- ionospheric model
- irreversible growth model
- Ising model
- ISO/OSI reference model
- Klein model
- Kronig-Penney model
- L*a*b* model
- large model
- large-signal device model
- LCH model
- learning, induction and schema abstraction model
- life cycle model
- limited dependent variable model
- linear model
- linear probability model
- LISA model
- logical model
- logical-linguistic model
- logistic model
- logit model
- loglinear model
- Londons' model of superconductivity
- lookup-table model
- Lorentz model
- low-signal device model
- machine model
- macrolevel model
- magnetic hysteresis model
- magnetohydrodynamic plasma model
- mathematical model
- matrix-memory model
- medium model
- memory model
- MHD plasma model
- microlevel model
- Minsky frame model
- Minsky model
- mixed model
- molecular-field model
- moving average model
- multiple regression model
- multiplicative model
- nested model
- network data model
- network model
- non-nested model
- non-parametric model
- N-state Potts model
- N-tier model
- null model
- object data model
- object model
- one-dimensional model
- one-fluid plasma model
- operations model
- optimizing model
- parabolic-ionosphere model
- parametric model
- parsimonious model
- partial adjustment model
- phenomenological model
- physical model
- pilot model
- Pippard nonlocal model
- plant model
- Poisson model
- polar model
- polynomial lags model
- postrelational data model
- postrelational model
- Potts model
- predictive model
- Preisach model
- preproduction model
- price model of advertising
- probabilistic model
- probit model
- proportional hazard model
- proportional-odds model
- prototype model
- quadratic model
- qualitative dependent variable model
- quantum mechanical model of superconductivity
- quasi-equilibrium model
- quasi-linear model
- random coefficients model
- random-effects model
- register model
- relational data model
- relational model
- relative model
- representative model
- response-surface model
- RGB model
- Ridley-Watkins-Hilsum model
- rival models
- Rössler model
- RWH model
- saturated model
- scalar model
- SCSI architecture model
- semantic model
- semiotic model
- sharply bounded ionosphere model
- simulation model
- single-ion model
- Skyrme model
- small model
- small-signal device model
- solid model
- spherical Earth model
- state-space model
- statistical model
- stochastic model
- Stoner-Wohlfart model
- structural model
- stuck-at-fault model
- surface model
- symbolic model
- symbolic-form model
- synergetic model
- system model
- system object model
- test model
- thermodynamical model
- three-tier model
- tobit model
- transistor model
- translog model
- tropospheric model
- true model
- truncated model
- two-dimensional model
- two-dimensional regression model
- two-fluid model of superconductivity
- two-fluid plasma model
- two-tier model
- Van der Ziel's noise model
- variable parameter model
- vector model
- wire-frame model
- working modelThe New English-Russian Dictionary of Radio-electronics > model
-
16 Bibliography
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17 logic
в) логическая схема; логические схемы- active logic
- application logic
- assertion-level logic - base-coupled logic
- binary logic
- bipolar logic
- bit-serial logic
- bubble logic
- buffered logic
- buried-load logic
- business logic
- cache logic
- cellular logic
- charge-coupled logic
- charge-coupled device logic
- chroma invert logic
- clocked logic
- closed C-MOS logic
- collector-coupled logic
- combination logic
- compatible logic - complementary transistor-resistor logic
- computer logic
- control logic
- core logic
- core-transistor logic
- current-hogging logic - current-mode logic
- current-sinking logic
- current-sourcing logic
- degating logic
- designer choice logic - double-railed logic
- dynamic logic - emitter-function logic
- extensional logic
- field-effect transistor logic
- first-order logic
- first-order predicate logic
- formal logic
- full logic
- functional logic
- fuse-programmable array logic
- fuzzy logic
- glue logic - hardware logic
- hard-wired logic
- high-level logic - integrated-circuit logic - latching logic
- local-control logic
- locked-pair logic
- look-ahead carry logic - low-voltage logic - magnetic domain-wall logic
- magnetoelectronic logic
- magnetooptical logic
- majority logic
- mathematical logic - micropower logic
- microwatt logic
- microwave logic
- modal logic
- multiaperture-device logic
- multiemitter-transistor logic
- multilevel logic
- multiphase logic
- multitarget acquisition logic
- multivalued logic
- nanosecond logic
- negative logic
- neighborhood logic - n-level logic
- one-line delay logic
- operation logic
- optical logic
- optoelectronic logic
- pass-transistor logic
- positive logic
- positive true logic
- predicate logic
- programmable logic
- programmable array logic
- quadded logic
- Rambus signaling logic
- random logic
- rapid single flux quantum logic
- reacquisition logic
- Reed-Müller logic
- register transfer logic - resistor-coupled transistor logic - sampling-type logic
- saturated logic
- save-carry logic - Schottky transistor-transistor logic - shared logic
- solid logic
- solid-state logic
- standard logic
- static logic
- stored logic - ternary logic
- tertiary logic
- threshold logic
- tightly-packed logic
- track monitoring logic
- transistor logic - tunnel-diode logic - virtual logic
- voltage-stage logic
- wired program logic -
18 logic
в) логическая схема; логические схемы•- active logic
- application logic
- assertion-level logic
- assisted Gunning transceiver logic
- asynchronous logic
- base-coupled logic
- binary logic
- bipolar logic
- bit-serial logic
- bubble logic
- buffered logic
- buried-load logic
- business logic
- cache logic
- cellular logic
- charge-coupled device logic
- charge-coupled logic
- chroma invert logic
- clocked logic
- closed C-MOS logic
- collector-coupled logic
- combination logic
- compatible current-sinking logic
- compatible logic
- complementary constant-current logic
- complementary resistor-diode-transistor logic
- complementary transistor-resistor logic
- complementary-transistor logic
- computer logic
- control logic
- core logic
- core-transistor logic
- current-hogging injection logic
- current-hogging logic
- current-merged logic
- current-mode logic
- current-sinking logic
- current-sourcing logic
- degating logic
- designer choice logic
- digital summation threshold logic
- diode logic
- diode-transistor logic
- direct-coupled field-effect-transistor logic
- direct-coupled logic
- direct-coupled transistor logic
- direct-coupled unipolar transistor logic
- distributed logic
- domain-tip-propagation logic
- domain-wall logic
- double-railed logic
- dynamic logic
- emitter-coupled current-steering logic
- emitter-coupled logic temperature compensated
- emitter-coupled logic
- emitter-coupled transistor logic
- emitter-emitter coupled logic
- emitter-follower logic
- emitter-function logic
- extensional logic
- field-effect transistor logic
- first-order logic
- first-order predicate logic
- formal logic
- full logic
- functional logic
- fuse-programmable array logic
- fuzzy logic
- glue logic
- Gunning transceiver logic
- half-line delay logic
- hardware logic
- hard-wired logic
- high-level logic
- high-level transistor-transistor logic
- high-noise immunity logic
- high-power logic
- high-threshold logic
- Horn clause logic
- integrated injection logic
- integrated Schottky logic
- integrated-circuit logic
- intensional logic
- isoplanar integrated injection logic
- Josephson logic
- latching logic
- local-control logic
- locked-pair logic
- look-ahead carry logic
- low-level logic
- low-power diode-transistor logic
- low-power logic
- low-power resistor-transistor logic
- low-power Schottky transistor-transistor logic
- low-threshold logic
- low-voltage logic
- low-voltage transistor-transistor logic
- machine logic
- magnetic domain-wall logic
- magnetoelectronic logic
- magnetooptical logic
- majority logic
- mathematical logic
- merged transistor logic
- metal-oxide-semiconductor transistor logic
- microcontrol logic
- micropower logic
- microwatt logic
- microwave logic
- modal logic
- multiaperture-device logic
- multiemitter-transistor logic
- multilevel logic
- multiphase logic
- multitarget acquisition logic
- multivalued logic
- nanosecond logic
- negative logic
- negative true logic
- neighborhood logic
- n-level logic
- one-line delay logic
- operation logic
- optical logic
- optoelectronic logic
- pass-transistor logic
- positive logic
- positive true logic
- predicate logic
- programmable array logic
- programmable logic
- quadded logic
- Rambus signaling logic
- random logic
- rapid single flux quantum logic
- reacquisition logic
- Reed-Müller logic
- register transfer logic
- resistor-capacitor diode-transistor logic
- resistor-capacitor transistor logic
- resistor-coupled transistor logic
- resistor-transistor logic
- RSFQ logic
- sampling-type logic
- saturated logic
- save-carry logic
- Schottky transistor logic
- Schottky transistor-transistor logic
- Schottky-diode FET logic
- self-aligned superinjection logic
- sequential logic
- shared logic
- solid logic
- solid-state logic
- standard logic
- static logic
- stored logic
- substrate-fed logic
- symbolic logic
- symmetrical emitter-coupled logic
- synchronous logic
- ternary logic
- tertiary logic
- threshold logic
- tightly-packed logic
- track monitoring logic
- transistor current-steering logic
- transistor logic
- transistor-coupled logic
- transistor-diode logic
- transistor-resistor logic
- transistor-transistor logic
- tri-state logic
- tunnel-diode charge-transformer logic
- tunnel-diode coupled logic
- tunnel-diode logic
- tunnel-diode transistor logic
- unsaturated logic
- variable-threshold logic
- vertical injection logic
- virtual logic
- voltage-stage logic
- wired program logicThe New English-Russian Dictionary of Radio-electronics > logic
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19 algebra
algebra with minimality condition — алгебра с условием минимальности, алгебра с условием обрыва убывающих цепей
algebra with maximality condition — алгебра с условием максимальности, алгебра с условием обрыва возрастающих цепей
-
20 adjunction
1) дополнение
2) сопряжение
3) присоединение ∙ adjunction of an identity element ≈ присоединение единицы adjunction of an integral ≈ матем. присоединение интеграла - adjunction complex - adjunction formula - adjunction isomorphism - adjunction morphism - adjunction of integral - adjunction space - algebraic adjunction - extension by adjunction - field adjunction - ring adjunction - rule of adjunction - set of adjunction - symbolic adjunctionБольшой англо-русский и русско-английский словарь > adjunction
- 1
- 2
См. также в других словарях:
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