Application of bionic models for situation management / O. M. Gerget, N. A. Markova
Уровень набора: CEUR Workshop Proceedings, Online Proceedings for Scientific Conferences and WorkshopsЯзык: английский.Страна: .Серия: Plenary SessionРезюме или реферат: he article discusses the concept of choosing the sequence of control actions in order to minimize the possibility of the system statetransition to an adverse one. For this purpose, the bionic model based on the synthesis of information approach, neural networks anda genetic algorithm is developed. The functionality of each of the model elements and their interaction are presented in this paper.Special attention is paid to neuroevolutionary interaction. At the same time, information about control actions is encapsulated in thegene, which allowed increasing the functionality of the algorithm due to multidimensional data representation. The article describesthe principle of data representation in bionic models, which differs from the existing ones by the possibility of explicit or implicitrepresentation of the control action in the chromosome. In the explicit representation one neural network is formed, it describes theeffect of any of the control actions involved in the training. An implicit view creates a set of models, each of which describes the effectof only one control action. A brief description of the software implemented in the Python programming language is provided..Примечания о наличии в документе библиографии/указателя: [References: 16 tit.].Тематика: электронный ресурс | труды учёных ТПУ | information approach | neural networks | genetic algorithm | bionic model | choice of control actions | нейронные сети | бионические методы Ресурсы он-лайн:Щелкните здесь для доступа в онлайнTitle screen
[References: 16 tit.]
he article discusses the concept of choosing the sequence of control actions in order to minimize the possibility of the system statetransition to an adverse one. For this purpose, the bionic model based on the synthesis of information approach, neural networks anda genetic algorithm is developed. The functionality of each of the model elements and their interaction are presented in this paper.Special attention is paid to neuroevolutionary interaction. At the same time, information about control actions is encapsulated in thegene, which allowed increasing the functionality of the algorithm due to multidimensional data representation. The article describesthe principle of data representation in bionic models, which differs from the existing ones by the possibility of explicit or implicitrepresentation of the control action in the chromosome. In the explicit representation one neural network is formed, it describes theeffect of any of the control actions involved in the training. An implicit view creates a set of models, each of which describes the effectof only one control action. A brief description of the software implemented in the Python programming language is provided.
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