An unsupervised learning approach for predicting wind farm power and downstream wakes using weather patterns
Mariana C A Clare, Simon C Warder, Robert Neal, B Bhaskaran, and Matthew D Piggott

TL;DR
This paper introduces a novel unsupervised machine learning workflow that combines weather pattern clustering with numerical weather prediction models to efficiently and accurately predict long-term wind farm power output and downstream wakes across different regions.
Contribution
It develops a new methodology integrating weather pattern clustering with WRF simulations, improving long-term wind energy predictions with significantly reduced computational cost.
Findings
Clustering on wind velocity yields the most accurate predictions.
Using large-scale domains suffices for power output, smaller domains improve wake predictions.
Downstream wakes influence local weather patterns.
Abstract
Wind energy resource assessment typically requires numerical models, but such models are too computationally intensive to consider multi-year timescales. Increasingly, unsupervised machine learning techniques are used to identify a small number of representative weather patterns to simulate long-term behaviour. Here we develop a novel wind energy workflow that for the first time combines weather patterns derived from unsupervised clustering techniques with numerical weather prediction models (here WRF) to obtain efficient and accurate long-term predictions of power and downstream wakes from an entire wind farm. We use ERA5 reanalysis data clustering not only on low altitude pressure but also, for the first time, on the more relevant variable of wind velocity. We also compare the use of large-scale and local-scale domains for clustering. A WRF simulation is run at each of the cluster…
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Taxonomy
TopicsWind Energy Research and Development · Energy Load and Power Forecasting · Social Acceptance of Renewable Energy
