Innocent Enyekwe, Wenlei Bai1 ,Kwang Y. Lee, Soumyadeep Nag
Abstract: To tackle the geographic drawbacks of pumped storage hydropower (PSH) plants, they often employ the use of closed-loop reservoirs. This reservoir setup always experiences changes in its net head while operating. The conventional proportional, integral, and derivative (PID) controller of its governor is optimized to handle a fixed system and is unable to handle the changing system dynamics due to the change in the net head of the turbine. Current approaches to tackle this include tuning and retuning the PID parameters or employing adaptive control strategies. This paper proposes the use of reinforcement learning (RL) approaches such as deep deterministic policy gradient (DDPG) to train an agent in place of the PID controller in the governor of a Pumped Storage Hydropower plant. The DDPG agent observes the state of the net available head and the deviation from reference speed to successfully track the optimal reference for the turbine by controlling the turbine's gate through the servomotor. The trained agent was able to achieve similar control capability as the PID controller but with the advantage of eliminating the need for tuning and returning parameters as in the PID controller as the system dynamics change.
Keywords: Reinforcement learning, Deep deterministic policy gradient, Pumped storage hydropower, Governor, PID controller.
Date Published: October 16, 2023 DOI: 10.11159/jmids.2023.004
View Article