Двухэтапная процедура синтеза управления нелинейными нестационарными объектами с использованием многослойного персептрона
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Научный журнал Моделирование, оптимизация и информационные технологииThe scientific journal Modeling, Optimization and Information Technology
Online media
issn 2310-6018

Two-stage procedure for the synthesis of control of nonlinear non-stationary objects using a multilayer perceptron

Frolov S.V.   Sindeev S.V.   Korobov A.A.   Savinova K.S.   Potlov A.Y.  

UDC 62-54
DOI: 10.26102/2310-6018/2020.30.3.028

  • Abstract
  • List of references
  • About authors

The review of neurocontrol methods and analysis of their advantages and disadvantages is presented. The problem of searching of quasioptimal tuning parameters of neurocontrol for nonlinear non-stationary objects in the presence of random disturbances is formulated. A procedure for the synthesis of control for nonlinear non-stationary objects using a multi-layer perceptron, which consists of two stages, is presented. In the first stage the problem of finding a robust neurocontrol vector tuning parameters for adaptation algorithm based on the proposed set of variants of the model is solved. Founded tuning parameters for adaptation algorithm are used in the second stage - model-free neurocontrol, which searching for quasi-optimal tuning parameters for the algorithm of model-free neurocontrol. Stability of tuning parameters search procedure for the algorithm of model-free neurocontrol achieved by using the regularization method. Effectiveness and stability of the proposed procedure for the synthesis of control for nonlinear non-stationary objects are shown using the model example. In the numerical experiment, an object was chosen that was described by a nonlinear differential equation with coefficients that depend on time. At the first stage, 20 variants of the object model were randomly generated, the architecture of the neural network, the tuning coefficients of the adaptation algorithm were found. The neural network includes 2 neurons in the inner layer and uses a sigmoidal activation function. At the second stage, numerical studies of the adaptive control process were carried out. As a result of the adaptation algorithm, the degree of attenuation of transient processes exceeds 50% and the control process is stable with a significant deviation of the object's parameters from the nominal values. The presented method is effective for the control of multiply connected non-stationary nonlinear objects in robotics, transport systems, and chemical industries.

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Frolov Sergei V.
Doctor of Technical Sciences, Professor
Email: sergej.frolov@gmail.com

Tambov State Technical University

Tambov, Russian Federation

Sindeev Sergej V.
Ph.D. In Technology
Email: ssindeev@yandex.ru

Tambov State Technical University

Tambov, Russian Federation

Korobov Artyom A.

Email: korobov1991@mail.ru

Tambov State Technical University

Tambov, Russian Federation

Savinova Kristina S.

Email: savinova.k94@mail.ru

Tambov State Technical University

Tambov, Russian Federation

Potlov Anton Y.
PhD
Email: zerner@yandex.ru

Tambov State Technical University

Tambov, Russian Federation

Keywords: neurocontrol, neurocontroller, multi-layer perceptron, control system, adaptive control

For citation: Frolov S.V. Sindeev S.V. Korobov A.A. Savinova K.S. Potlov A.Y. Two-stage procedure for the synthesis of control of nonlinear non-stationary objects using a multilayer perceptron. Modeling, Optimization and Information Technology. 2020;8(3). Available from: https://moit.vivt.ru/wp-content/uploads/2020/08/FrolovSoavtors_3_20_1.pdf DOI: 10.26102/2310-6018/2020.30.3.028 (In Russ).

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