Application of Reinforcement Learning-Based Adaptive PID Controller for Automatic Generation Control of Multi-Area Power System
No Thumbnail Available
Date
2025
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Institute of Electrical and Electronics Engineers Inc.
Abstract
This paper presents an application of an actor-critic reinforcement learning (RL) algorithm-based adaptive proportional-integral-derivative (PID) controller for automatic generation control of multi-area power systems. The proposed approach has several advantages over other deep RL algorithm-driven PID controllers, such as simplicity in structure, elimination of pre-learning requirements, and prior tuning of PID parameters. Online adaption of PID parameters is achieved through actor-critic policy. The proposed method implements a single radial basis function (RBF) based neural network for actor and critic networks. Three different case studies are demonstrated with proper illustration and analysis of the result to present the effectiveness and robustness of the proposed control strategy against various uncertainties. The outcomes of the proposed controller are compared with the conventional PID controller tuned by the Particle Swarm Optimization (PSO) algorithm. The results seem competent enough to maintain the frequency within an acceptable limit under various uncertainties. Note to Practitioners - This paper describes the application of an online adaptive PID controller for automatic generation control of power systems. The controller is designed using a model-free reinforcement learning algorithm, which enables it to control the system without requiring prior knowledge of the system dynamics. Additionally, the controller does not need any global optimization algorithm for tuning the parameters (K<inf>P</inf>, K<inf>I</inf>, K<inf>D</inf>) beforehand. This controller can be implemented for both linear and non-linear systems. © 2004-2012 IEEE.
Description
Keywords
Adaptive control systems, Controllers, Electric control equipment, Electric power system control, Global optimization, Learning algorithms, Linear systems, Online systems, Parameter estimation, Particle swarm optimization (PSO), Proportional control systems, Radial basis function networks, Reinforcement learning, Two term control systems, Uncertainty analysis, Actor-Critic methods, Automatic Generation, Automatic generation control, Generation controls, Multi area power systems, Proportional integral derivatives, Proportional-integral-derivatives controllers, Reinforcement learning algorithms, Reinforcement learnings, Uncertainty, Three term control systems
Citation
IEEE Transactions on Automation Science and Engineering, 2025, 22, , pp. 1057-1068
