An Improved Yaw Control Algorithm for Wind Turbines via Reinforcement LearningOpen Website

Published: 01 Jan 2022, Last Modified: 01 Feb 2024ECML/PKDD (5) 2022Readers: Everyone
Abstract: Yaw misalignment, measured as the difference between the wind direction and the nacelle position of a wind turbine, has consequences on the power output, the safety and the lifetime of the turbine and its wind park as a whole. We use reinforcement learning to develop a yaw control agent to minimise yaw misalignment and optimally reallocate yaw resources, prioritising high-speed segments, while keeping yaw usage low. To achieve this, we carefully crafted and tested the reward metric to trade-off yaw usage versus yaw alignment (as proportional to power production), and created a novel simulator (environment) based on real-world wind logs obtained from a REpower MM82 2 MW turbine. The resulting algorithm decreased the yaw misalignment by 5.5% and 11.2% on two simulations of 2.7 h each, compared to the conventional active yaw control algorithm. The average net energy gain obtained was 0.31% and 0.33% respectively, compared to the traditional yaw control algorithm. On a single 2 MW turbine, this amounts to a 1.5 k–2.5 k euros annual gain, which sums up to very significant profits over an entire wind park.
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