Neural Networks for Improving Wind Power Efficiency: A Review

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7
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10

초록

The demand for wind energy harvesting has grown significantly to mitigate the global challenges of climate change, energy security, and zero carbon emissions. Various methods to maximize wind power efficiency have been proposed. Notably, neural networks have shown large potential in improving wind power efficiency. In this paper, we provide a review of attempts to maximize wind power efficiency using neural networks. A total of three neural-network-based strategies are covered: (i) neural-network-based turbine control, (ii) neural-network-based wind farm control, and (iii) neural-network-based wind turbine blade design. In the first topic, we introduce neural networks that control the yaw of wind turbines based on wind prediction. Second, we discuss neural networks for improving the energy efficiency of wind farms. Last, we review neural networks to design turbine blades with superior aerodynamic performances.

키워드

wind powerartificial neural networkdesign optimizationwind turbine controlwind farmsurrogateSPEED PREDICTIONMESH GENERATIONTURBINE CONTROLPITCH CONTROLSIMULATIONSTATEFLOW
제목
Neural Networks for Improving Wind Power Efficiency: A Review
저자
Shin, HeesooRuettgers, MarioLee, Sangseung
DOI
10.3390/fluids7120367
발행일
2022-12
유형
Review
저널명
Fluids
7
12