Title :
Critic-Based Self-Tuning PI Structure for Active and Reactive Power Control of VSCs in Microgrid Systems
Author :
Seidi Khorramabadi, Sima ; Bakhshai, Alireza
Author_Institution :
Queen´s Centre for Energy & Power Electron. Res., Queen´s Univ., Kingston, ON, Canada
Abstract :
Traditional proportional integral (PI) control has been extensively used for power control of voltage source converters in microgrid systems. Previous studies show that fixed-gain PI controllers cannot easily adapt to power changes, disturbances, and parameters variation, especially in large microgrids; hence the need for continuous algorithms to adjust the controller gains over the transients cannot be neglected. In this paper, a novel online tuning algorithm for PI controllers is proposed and implemented in a microgrid system. In this algorithm, which is based on the neuro-dynamic programming concept, a fuzzy critic is employed to evaluate the credibility of the control system performance and provide an evaluation signal, which is then used in the gain-tuning process. The PI controller gains are updated in an optimization process based on steepest decent rule so that the evaluation signal produced by the critic is minimized. The developed control structure, which is named critic-based self-tuning PI controller, is tested in a microgrid system with different penetrations of distributed generators and operational scenarios. The simulation results verify that implementation of a heuristic gain-tuning algorithm results in a model-independent controller with increased adaptivity compared with conventional PI control. Furthermore, due to simple learning rules, the convergence time is significantly reduced and the transient response is improved. The proposed gain-tuning algorithm can also be applied to PI controllers in other applications of controllable systems.
Keywords :
PI control; adaptive control; approximation theory; convergence of numerical methods; distributed power generation; dynamic programming; fuzzy set theory; neurocontrollers; power convertors; power generation control; reactive power control; self-adjusting systems; transient response; PI controller gains; VSC; active power control; convergence time reduction; credibility evaluation; critic-based self-tuning PI structure; distributed generators; evaluation signal; fuzzy critic; heuristic gain-tuning algorithm; learning rules; microgrid systems; model-independent controller; neuro-dynamic programming concept; online tuning algorithm; operational scenarios; optimization process; proportional integral control; reactive power control; steepest decent rule; transient response improvement; voltage source converters; Microgrids; Pi control; Power conversion; Pragmatics; Tuning; Critic-based learning; fuzzy logic; microgrid control; online gain tuning; proportional integral (PI) control; voltage source converters (VSCs);
Journal_Title :
Smart Grid, IEEE Transactions on
DOI :
10.1109/TSG.2014.2354651