Design and Comparison of Reinforcement-Learning-Based Time-Varying PID Controllers with Gain-Scheduled Actions
Yi‐Liang Yeh, Po-Kai Yang
Abstract
This paper presents innovative reinforcement learning methods for automatically tuning the parameters of a proportional integral derivative controller. Conventionally, the high dimension of the Q-table is a primary drawback when implementing a reinforcement learning algorithm. To overcome the obstacle, the idea underlying the n-armed bandit problem is used in this paper. Moreover, gain-scheduled actions are presented to tune the algorithms to improve the overall system behavior; therefore, the proposed controllers fulfill the multiple performance requirements. An experiment was conducted for the piezo-actuated stage to illustrate the effectiveness of the proposed control designs relative to competing algorithms.
Topics & Concepts
Reinforcement learningPID controllerComputer scienceDimension (graph theory)Control theory (sociology)Controller (irrigation)Table (database)ReinforcementObstacleControl (management)Control engineeringArtificial intelligenceEngineeringMathematicsLawBiologyStructural engineeringData miningAgronomyPure mathematicsPolitical scienceTemperature controlIterative Learning Control SystemsExtremum Seeking Control SystemsPiezoelectric Actuators and Control