Title :
Multi-agent reinforcement learning design of load-frequency Control with frequency bias estimation
Author :
Daneshfar, F. ; Mansoori, F. ; Bevrani, H.
Abstract :
Conventional load-frequency control (LFC) systems use proportional-integral (PI) controllers. These controllers are designed based on a linear model and the nonlinearities of the system are not accounted for. Then they are incapable to gain good dynamical performance for a wide range of operating conditions. A control strategy for solving this problem in a multi-area power system is presented by using a multi-agent reinforcement learning (MARL) approach based on the frequency bias (β) estimation that genetic algorithm (GA) optimization is used to tune its parameters. This approach contains two agents in each control area, estimator agent and controller agent that communicate with each other. The proposed method does not depend on any knowledge of the system and finding area control error (ACE) signal based on the frequency biased estimation, improves the LFC performance. To demonstrate the capability of the proposed control structure, a three-control area power system simulation with two different scenarios is presented.
Keywords :
PI control; control engineering computing; control nonlinearities; control system synthesis; frequency control; frequency estimation; genetic algorithms; learning (artificial intelligence); linear systems; load regulation; multi-agent systems; power engineering computing; power system control; power system simulation; ACE signal; GA optimization; LFC performance; LFC system; MARL; PI controller; area control error signal; control structure; controller agent; controller design; dynamical performance; estimator agent; frequency bias estimation; genetic algorithm; linear model; load-frequency control; multiagent reinforcement learning design; multiarea power system; parameter tuning; proportional-integral controller; system nonlinearities; three-control area power system simulation; Automation; IP networks; Instruments; Load-frequency control; Multi-agent reinforcement learning; estimation;
Conference_Titel :
Control, Instrumentation and Automation (ICCIA), 2011 2nd International Conference on
Conference_Location :
Shiraz
Print_ISBN :
978-1-4673-1689-7
DOI :
10.1109/ICCIAutom.2011.6356675