Kazan (Volga region) Federal University, KFU
KAZAN
FEDERAL UNIVERSITY
 
NEURAL NETWORKS WITH PSEUDO-RANDOM DISTRIBUTION OF RELATIONSHIPS USING THE EXAMPLE OF MERCURY ELECTROLYZER OPERATION MODE MODELING
Form of presentationArticles in international journals and collections
Year of publication2019
Языканглийский
  • Medvedeva Olga Anatolievna, author
  • Bibliographic description in the original language Medvedeva Olga Anatolievna, Ivanov Aleksandr Nikolaevich, Morozkin Nikolay Danilovich, Svetlana Anatol'evna Mustafina. NEURAL NETWORKS WITH PSEUDO-RANDOM DISTRIBUTION OF RELATIONSHIPS USING THE EXAMPLE OF MERCURY ELECTROLYZER OPERATION MODE MODELING // INTERNATIONAL TRANSACTION JOURNAL OF ENGINEERING MANAGEMENT & APPLIED SCIENCES & TECHNOLOGIES. - 2019. - Vol.10, Is.16. - Art. №10A16A.
    Annotation This article analyzed the applicability of artificial neural networks to solve the problems of physicochemical process modeling using the example of the mercury electrolyzer operation mode used in caustic soda production. This paper also described the basic qualities of the existing neural networks and the ways of their training. The authors propose the solution to the problem of modeling based on the networks with pseudo-random distribution of connections. This paper described the architecture of these networks, three learning algorithms are proposed. The implementation of neural networks with pseudo-random distribution of connections was performed by Python programming language. The article presents the comparative learning results of different networks with different sets of hyperparameters. Also, the determination of the optimal settings of neural networks allows achieving high learning efficiency. The resulting neural network model described the electrolysis process adequately in accordance with the available source data.
    Keywords Neural networks Modeling, Machine learning, Hyperparameters, Electrolysis, Pseudorandom distribution of connections.
    The name of the journal INTERNATIONAL TRANSACTION JOURNAL OF ENGINEERING MANAGEMENT & APPLIED SCIENCES & TECHNOLOGIES
    URL http://tuengr.com/V10A/10A16A.pdf
    Please use this ID to quote from or refer to the card https://repository.kpfu.ru/eng/?p_id=216273&p_lang=2

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