Collective Large-scale Wind Farm Multivariate Power Output Control Based on Hierarchical Communication Multi-Agent Proximal Policy Optimization
Yubao Zhang, Xin Chen, Sumei Gong, Haojie Chen

TL;DR
This paper introduces a hierarchical communication multi-agent reinforcement learning approach to optimize power output in large-scale wind farms by controlling multiple variables and coordinating turbine groups.
Contribution
It proposes a novel multivariate control model and a hierarchical communication multi-agent PPO algorithm for large-scale wind farm power maximization.
Findings
Significantly increased power output compared to traditional methods.
Effective control transferred from small to large wind farms without increasing fatigue damage.
Applicable to large wind farms with minimal additional complexity.
Abstract
Wind power is becoming an increasingly important source of renewable energy worldwide. However, wind farm power control faces significant challenges due to the high system complexity inherent in these farms. A novel communication-based multi-agent deep reinforcement learning large-scale wind farm multivariate control is proposed to handle this challenge and maximize power output. A wind farm multivariate power model is proposed to study the influence of wind turbines (WTs) wake on power. The multivariate model includes axial induction factor, yaw angle, and tilt angle controllable variables. The hierarchical communication multi-agent proximal policy optimization (HCMAPPO) algorithm is proposed to coordinate the multivariate large-scale wind farm continuous controls. The large-scale wind farm is divided into multiple wind turbine aggregators (WTAs), and neighboring WTAs can exchange…
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Taxonomy
TopicsWind Turbine Control Systems · Energy Load and Power Forecasting · Microgrid Control and Optimization
