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Uchenyye zapiski UlGU. Seriya "Matematika i informatsionnyye tekhnologii", 2019, Issue 2, Pages 36–53
(Mi ulsu81)
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This article is cited in 1 scientific paper (total in 1 paper)
Principal directions of developing the design methods for intelligent systems to control robots
V. V. Kozhevnikova, M. Yu. Leontievab, V. V. Prokhod'koa, V. A. Sergeevb, A. N. Fomina a Ulyanovsk State University, Ulyanovsk, Russia
b Ul'yanovsk Branch of Institute of Radioengineering and Electronics, Russian Academy of Sciences
Abstract:
Principal directions of developing the methods for designing intelligent systems of robot control assume technologies based on the use of artificial neural networks. The neural networks, where the model of a neuron was developed as the simplest processor element, performing the computation of the transfer function of a scalar product of an input data vector and a weight vector, can give interesting results regarding generation of dependencies and forecasting. However, their obvious drawback is the lack of an explicit algorithm of action. Memorization of information in the learning process occurs implicitly as a result of selection of the weight coefficients of the neural network, therefore the problem of cognition (the formation of new knowledge) on the basis of those obtained earlier in the learning process seems difficult to resolve. A positive solution to this problem will open the way to the creation of the full-fledged artificial mind. From this point of view the promising area is where the mathematical model of the neural networks is built on the basis of mathematical logic.
Keywords:
Intelligent control system, robots, cognitive automata, neural networks.
Received: 01.11.2019
Citation:
V. V. Kozhevnikov, M. Yu. Leontiev, V. V. Prokhod'ko, V. A. Sergeev, A. N. Fomin, “Principal directions of developing the design methods for intelligent systems to control robots”, Uchenyye zapiski UlGU. Seriya “Matematika i informatsionnyye tekhnologii”, 2019, no. 2, 36–53
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https://www.mathnet.ru/eng/ulsu81 https://www.mathnet.ru/eng/ulsu/y2019/i2/p36
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Abstract page: | 67 | Full-text PDF : | 63 | References: | 22 |
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