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Erschienen in: Scientific and Technical Information Processing 6/2022

01.12.2022

On the Possibility of Determining the Values of Neural Network Weights in an Electrostatic Field

verfasst von: P. Sh. Geidarov

Erschienen in: Scientific and Technical Information Processing | Ausgabe 6/2022

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Abstract

At present, in typical architectures of feedforward neural networks, the values of the weights of the connections and thresholds of neurons are determined by adjusting the values of the weights, performed by means of typical learning algorithms. The architectures of feedforward neural networks implemented on the basis of metric recognition methods are also known, the values of the weights of neurons for which are precalculated analytically. The analytical calculation of the weight values is carried out on the basis of metric expressions and allows a workable neural network to be immediately obtained without training. In this case, the effectiveness of the obtained neural network depends on the selected set and the number of samples, as well as on the selected dimension of the table of weights. Such neural networks can also be trained with typical learning algorithms, which makes it possible to increase the efficiency of the neural network with the calculated weights through additional training of the neural network. Here, the process of calculating the weight values and the further training of the neural network is also faster than training the neural network in the traditional way; on the basis of these networks, the possibility of determining the weight values and thresholds of a neural network using the strength and potential of the electrostatic field is considered. That is, it is proposed to use the parameter values of the electrostatic field as weight values of a neural network. In other words, the possibility of creating a workable neural network without analytical calculations and without the use of learning algorithms is considered. This approach allows the process of determining the values of the neural network weights almost instantaneous. The technically possible implementations of this approach and the problematic aspects of using the parameters of the electrostatic field as weights of a neural network, as well as possible approaches to resolving these difficulties are considered.

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Literatur
1.
Zurück zum Zitat Gorban’, A.N., Dudin-Barkovskii, V.L., Kirdin, A.N., Mirkes, E.M., Novokhod’ko, A.Yu., Rossiev, D.A., Terekhov, S.A., Senashova, M.Yu., and Tsaregorodtsev, V.G., Neiroinformatika (Neuroinformatics), Novosibirsk: Nauka, 1998. Gorban’, A.N., Dudin-Barkovskii, V.L., Kirdin, A.N., Mirkes, E.M., Novokhod’ko, A.Yu., Rossiev, D.A., Terekhov, S.A., Senashova, M.Yu., and Tsaregorodtsev, V.G., Neiroinformatika (Neuroinformatics), Novosibirsk: Nauka, 1998.
2.
Zurück zum Zitat Kruglov, V.V. and Borisov, V.V., Iskusstvennye neironnye seti. Teoriya i praktika (Artificial Neural Networks: Theory and Practice), Moscow: Goryachaya Liniya-Telekom, 2001. Kruglov, V.V. and Borisov, V.V., Iskusstvennye neironnye seti. Teoriya i praktika (Artificial Neural Networks: Theory and Practice), Moscow: Goryachaya Liniya-Telekom, 2001.
7.
Zurück zum Zitat Le, T.T.L., The comparison of neural network CMAC and multilayer neural network in the task of detection of DOS attacks, Neirokomp’yutery: Razrab., Primenenie, 2016, no. 7, pp. 65–69. Le, T.T.L., The comparison of neural network CMAC and multilayer neural network in the task of detection of DOS attacks, Neirokomp’yutery: Razrab., Primenenie, 2016, no. 7, pp. 65–69.
8.
Zurück zum Zitat Golov, D.V. and Krasovskaya, L.V., Neural networks and recognition of handwritten digits based on artificial neural networks, Issled. Tekh. Nauk, 2014, no. 4, pp. 18–20. Golov, D.V. and Krasovskaya, L.V., Neural networks and recognition of handwritten digits based on artificial neural networks, Issled. Tekh. Nauk, 2014, no. 4, pp. 18–20.
10.
Zurück zum Zitat Lukina, A.S., Nekrasov, M.V., and Pakman, D.N., Processing of telemetric information of the spacecraft by neural networks based on the theory of Kalman filters, Tendentsii Razvit. Nauki Obraz., 2016, no. 13, pp. 43–45. https://doi.org/10.18411/lj2016-4-13 Lukina, A.S., Nekrasov, M.V., and Pakman, D.N., Processing of telemetric information of the spacecraft by neural networks based on the theory of Kalman filters, Tendentsii Razvit. Nauki Obraz., 2016, no. 13, pp. 43–45. https://​doi.​org/​10.​18411/​lj2016-4-13
11.
Zurück zum Zitat Khusainov, A.T., Assessment of predictability of the system for maintaining reservoir pressure by neural networks in oil fields, Akademicheskii Zh. Zapadnoi Sibiri, 2016, vol. 12, no. 3, p. 48. Khusainov, A.T., Assessment of predictability of the system for maintaining reservoir pressure by neural networks in oil fields, Akademicheskii Zh. Zapadnoi Sibiri, 2016, vol. 12, no. 3, p. 48.
12.
Zurück zum Zitat Bondarko, V.M., Bondarko, D.V., Solnushkin, S.D., and Chikhman, V.N., Simulation of the results of psychophysical experiments by neural networks, Neirokomp’yutery: Razrab., Primenenie, 2018, no. 5, pp. 31–33. Bondarko, V.M., Bondarko, D.V., Solnushkin, S.D., and Chikhman, V.N., Simulation of the results of psychophysical experiments by neural networks, Neirokomp’yutery: Razrab., Primenenie, 2018, no. 5, pp. 31–33.
19.
Zurück zum Zitat Gejdarov, P.Sh., Neural networks based on metric recognition methods as applied to problems with fuzzy inference, Iskusstvennyi Intellekt Prinyatie Reshenii, 2010, no. 2, pp. 77–88. Gejdarov, P.Sh., Neural networks based on metric recognition methods as applied to problems with fuzzy inference, Iskusstvennyi Intellekt Prinyatie Reshenii, 2010, no. 2, pp. 77–88.
25.
Zurück zum Zitat Birger, I.A., Tekhnicheskaya diagnostika (Technical Diagnostics), Moscow: Mashinostroenie, 1978. Birger, I.A., Tekhnicheskaya diagnostika (Technical Diagnostics), Moscow: Mashinostroenie, 1978.
28.
Zurück zum Zitat Biryukov, S.V., Fizicheskie osnovy izmereniya parametrov elektricheskikh polei (Physical Foundations of Measuring the Parameters of Electric Fields), Omsk: Sib. Avtomobil’no-Dorozhnyi Inst., 2008. Biryukov, S.V., Fizicheskie osnovy izmereniya parametrov elektricheskikh polei (Physical Foundations of Measuring the Parameters of Electric Fields), Omsk: Sib. Avtomobil’no-Dorozhnyi Inst., 2008.
Metadaten
Titel
On the Possibility of Determining the Values of Neural Network Weights in an Electrostatic Field
verfasst von
P. Sh. Geidarov
Publikationsdatum
01.12.2022
Verlag
Pleiades Publishing
Erschienen in
Scientific and Technical Information Processing / Ausgabe 6/2022
Print ISSN: 0147-6882
Elektronische ISSN: 1934-8118
DOI
https://doi.org/10.3103/S014768822205015X

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