PSO based Hybrid PID-FLC Sugeno Control for Excitation System of Large Synchronous Motor

Hung Quoc Duong, Quang Hong Nguyen, Duy Tien Nguyen, Lanh Van Nguyen

Abstract


This paper proposes a hybrid control system integrating a PID controller and a fuzzy logic controller, using the particle swarm optimization (PSO) algorithm to optimize control parameters. The control object is an excitation system for a large synchronous motor, which is widely used in large power transmission systems. In practice, the change in load and excitation source can affect the operating mode of the motor. Therefore, a hybrid controller is designed to stabilize the power factor, resulting in better working performance. In the control algorithm, a PID controller is initially designed using PSO to optimize the control coefficients. The FLC-Sugeno control is then integrated with the PID, in which PSO is utilized to optimize membership functions. Numerical simulation results demonstrate the advantages of the proposed approach.

 

Doi: 10.28991/ESJ-2022-06-02-01

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Keywords


Synchronous Motor; Excitation System; Particle Swarm Optimization; PSO; Fuzzy Logic Controller.

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DOI: 10.28991/ESJ-2022-06-02-01

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