Data-Driven Wind Turbine Wake Modeling via Probabilistic Machine Learning
S. Ashwin Renganathan, Romit Maulik, Stefano Letizia, and Giacomo, Valerio Iungo

TL;DR
This paper develops a data-driven, probabilistic machine learning framework using LiDAR data to efficiently model wind turbine wake flows, significantly reducing computational costs compared to physics-based models.
Contribution
It introduces a novel combination of deep autoencoders, neural networks, and Gaussian process models with active learning for accurate, scalable wind wake prediction.
Findings
Accurate wake flow approximations at a fraction of high-fidelity simulation costs.
Effective use of variational Gaussian processes for large datasets.
Active learning improves Gaussian process predictive performance.
Abstract
Wind farm design primarily depends on the variability of the wind turbine wake flows to the atmospheric wind conditions, and the interaction between wakes. Physics-based models that capture the wake flow-field with high-fidelity are computationally very expensive to perform layout optimization of wind farms, and, thus, data-driven reduced order models can represent an efficient alternative for simulating wind farms. In this work, we use real-world light detection and ranging (LiDAR) measurements of wind-turbine wakes to construct predictive surrogate models using machine learning. Specifically, we first demonstrate the use of deep autoencoders to find a low-dimensional \emph{latent} space that gives a computationally tractable approximation of the wake LiDAR measurements. Then, we learn the mapping between the parameter space and the (latent space) wake flow-fields using a deep neural…
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Taxonomy
TopicsWind Energy Research and Development · Energy Load and Power Forecasting · Solar Radiation and Photovoltaics
MethodsGaussian Process
