Energy Optimization of Wind Turbines via a Neural Control Policy Based on Reinforcement Learning Markov Chain Monte Carlo Algorithm
Vahid Tavakol Aghaei, Arda A\u{g}ababao\u{g}lu, Biram Bawo, Peiman, Naseradinmousavi, Sinan Y{\i}ld{\i}r{\i}m, Serhat Ye\c{s}ilyurt, and Ahmet, Onat

TL;DR
This paper introduces a Bayesian reinforcement learning approach using MCMC to optimize energy output of small-scale vertical-axis wind turbines in urban environments with fluctuating wind conditions.
Contribution
It presents a model-free, gradient-free RL algorithm that effectively manages uncertainties and improves energy capture compared to traditional methods.
Findings
Outperforms classical maximum power point tracking.
Better captures wind transients for energy efficiency.
Handles uncertainties like component aging and modeling errors.
Abstract
This study focuses on the numerical analysis and optimal control of vertical-axis wind turbines (VAWT) using Bayesian reinforcement learning (RL). We specifically address small-scale wind turbines, which are well-suited to local and compact production of electrical energy on a small scale, such as urban and rural infrastructure installations. Existing literature concentrates on large scale wind turbines which run in unobstructed, mostly constant wind profiles. However urban installations generally must cope with rapidly changing wind patterns. To bridge this gap, we formulate and implement an RL strategy using the Markov chain Monte Carlo (MCMC) algorithm to optimize the long-term energy output of a wind turbine. Our MCMC-based RL algorithm is a model-free and gradient-free algorithm, in which the designer does not have to know the precise dynamics of the plant and its uncertainties.…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Wind Energy Research and Development · Energy, Environment, and Transportation Policies
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
