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Discrete Neural Network of Bidirectional Associative Memory

The paper considers bidirectional associative memory, which is one of the known neural network paradigms. To simplify the implementation of the calculation of this paradigm, a discrete mathematical model of its functioning is proposed. Reducing the complexity is achieved by switching to integer calc...

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書誌詳細
主要な著者: Shaposhnikov, A. V., Шапошников, А. В., Ionisyan, A. S., Ионисян, А. С., Orazaev, A. R., Оразаев, А. Р.
フォーマット: Статья
言語:English
出版事項: 2023
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オンライン・アクセス:https://dspace.ncfu.ru/handle/20.500.12258/25212
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要約:The paper considers bidirectional associative memory, which is one of the known neural network paradigms. To simplify the implementation of the calculation of this paradigm, a discrete mathematical model of its functioning is proposed. Reducing the complexity is achieved by switching to integer calculations because Integer multiplication is several times simpler than real multiplication. The known neural network of bidirectional associative memory neural network was compared with the proposed one. The simulation was carried out in the VHDL language. For comparative evaluation, Spartan3E, Spartan6 and XC9500 chips were used. In the experimental part, it was shown that the hardware costs for the implementation of the neural network of bidirectional associative memory have decreased by more than 3 times compared to the known one. The proposed discrete model of BAM functioning does not narrow the scope of its application in comparison with the known model and can be used to build memory devices and restore distorted or noisy information.