Keywords: polynomial neural networks, system identification,, machine learning, modeling
DYNAMICAL SYSTEMS MODELING BASED ON POLYNOMIAL NEURAL NETWORKS
UDC 519.62, 004.032.26
DOI:
In the article, a polynomial neural network architecture is presented. This architecture is utilized for dynamical systems identification. The given approach is based on matrix representation of Lie transform, that is useful for investigation of nonlinear systems of ordinary differential equations. The polynomial neural network, in this case, can play a role of an effective and efficient method of investigation of dynamical systems. Moreover, it joints advantages of parallel computing architecture with the strong mathematical theory of differential equations. The key concepts and formulations are briefly described. The numerical matrix integration of the systems of differential equations is also presented. As an example, the identification of the simple model problem is considered as well as an application of the technique for modeling of vessel motion is presented. In the conclusion the limitations and further development of the method is indicated.
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Keywords: polynomial neural networks, system identification,, machine learning, modeling
For citation: Sholokhova A.A., Ivanov A.N. DYNAMICAL SYSTEMS MODELING BASED ON POLYNOMIAL NEURAL NETWORKS. Modeling, Optimization and Information Technology. 2017;5(4). URL: https://moit.vivt.ru/wp-content/uploads/2017/10/SholohovaIvanov_4_1_17.pdf DOI: (In Russ).
Published 31.12.2017