Variable Speed Wind Turbine Controller Adaptation By Reinforcement Learning
Ikusi/ Ireki
Data
2016-12-30Egilea
Fernández Gauna, Borja
Fernández Gámiz, Unai
Graña Romay, Manuel María
Integrated Computer-Aided Engineering 24(1) : 27-39 (2017)
Laburpena
The control of Variable Speed Wind Turbines (VSWT) to achieve optimal balance of power generation stability and rotor angular speed is impeded by the non-linear dynamics of the turbine-wind interaction and sudden changes of wind direction and speed. Conventional approaches to design VSWT controllers are not adaptive. However, the wind shear phenomenon introduces a strongly non-stationary environment that requires adaptive control approaches with minimal human intervention, i.e. very little supervision of the adaptation process. Reinforcement Learning (RL) allows minimally supervised learning. Specifically, Actor-Critic is designed to deal with continuous valued state and action spaces. In this paper we apply an Actor-Critic RL architecture to improve the adaptation of the conventional VSWT controllers to changing wind conditions. Simulation results on a benchmark VSWT model under strongly changing wind conditions show that Actor Critic RL approach with functional approximation provide great enhancement over state-of-the-art VSWT controllers.