The method of multi objective synthesis of stochastic robust control by multimass electromechanical systems under non-gausian random external disturbances

Authors

DOI:

https://doi.org/10.20998/2074-272X.2022.5.04

Keywords:

multimass electromechanical systems, stochastic robust control, multi objective synthesis, zero-sum vector game solution, computer simulation, experimental research

Abstract

Aim. Development of the method of multi objective synthesis of stochastic robust control by multimass electromechanical systems to satisfy various requirements for the operation of such systems in various modes under non-gausian random external disturbances. Methodology. The problem of multi objective synthesis of stochastic robust control by multimass electromechanical systems to satisfy various requirements for the operation of such systems in various modes under non-gausian random external disturbances solved based on the choosing of weight matrices in the robust control goal vector.The calculation of the target vector is performed based on the solution of the zero-sum vector antagonistic game. The components of the game payoff vector are variable quality indicators that are applied to the system operation in various modes. The calculation of the components of payoff vector game are performed based on the simulation of the initial system closed by the synthesized stochastic controllers in various operating modes and under various external influences and variations in the parameters of the uncertainty of the initial plant. Results. The results of multi objective synthesis of stochastic robust two-mass electromechanical servo systems modes under non-gausian random external disturbances in which differences requirements for the operation of such systems in various modes were satisfied are given. Based on the results of modeling and experimental studies it is established, that with the help of synthesized robust nonlinear controllers, it is possible to improve of quality indicators of two-mass electromechanical servo system in comparison with the system with standard regulators. Originality. For the first time the method of multi objective synthesis of stochastic robust control by multimass electromechanical systems to satisfy various requirements for the operation of multimass systems in various modes is developed. Practical value. From the point of view of the practical implementation the possibility of solving the problem of multi objective synthesis of stochastic robust control systems to satisfy various requirements for the operation of multimass electromechanical systems in various modes is shown.

Author Biographies

B. I. Kuznetsov, A. Pidhornyi Institute of Mechanical Engineering Problems of the National Academy of Sciences of Ukraine

Doctor of Technical Science, Professor

T. B. Nikitina, Educational scientific professional pedagogical Institute of Ukrainian Engineering Pedagogical Academy

Doctor of Technical Science, Professor

I. V. Bovdui, A. Pidhornyi Institute of Mechanical Engineering Problems of the National Academy of Sciences of Ukraine

PhD, Senior Research Scientist

O. V. Voloshko, A. Pidhornyi Institute of Mechanical Engineering Problems of the National Academy of Sciences of Ukraine

PhD, Junior Research Scientist

V. V. Kolomiets, Educational scientific professional pedagogical Institute of Ukrainian Engineering Pedagogical Academy

PhD, Assistant Professor

B. B. Kobylianskyi, Educational scientific professional pedagogical Institute of Ukrainian Engineering Pedagogical Academy

PhD, Associate Professor

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Published

2022-09-06

How to Cite

Kuznetsov, B. I., Nikitina, T. B., Bovdui, I. V., Voloshko, O. V., Kolomiets, V. V., & Kobylianskyi, B. B. (2022). The method of multi objective synthesis of stochastic robust control by multimass electromechanical systems under non-gausian random external disturbances. Electrical Engineering & Electromechanics, (5), 21–30. https://doi.org/10.20998/2074-272X.2022.5.04

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Section

Electrotechnical complexes and Systems