利用深度学习预测海上风电场的风速、潜在风力和相关不确定性

Doeun Choe, Gary Talor, Changkyun Kim
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引用次数: 0

摘要

浮式海上风力涡轮机为未来解决日益增长的可再生能源生产需求提供了巨大的潜力。此后,海上风力发电的预测成为定位和设计风力发电场和涡轮机的关键。本研究的目的是利用深度学习技术对局部风速进行预测,从而提高海上风力发电的预测能力。本文根据美国国家海洋和大气管理局收集的历史气象资料,对未来当地的风速进行了预测。然后,利用深度学习预测的未来风速数据,采用传统方法对风力发电进行预测。网络层的设计使用了长短期记忆(LSTM)和双向LSTM (BLSTM),已知它们在捕获长期时间依赖性方面是有效的。选定的网络经过微调,使用一部分天气数据进行训练,并使用另一部分数据进行测试。为了评估网络的性能,我们进行了一项参数研究,以找到训练数据的长度、预测精度和在给定预期预测精度和训练大小的情况下可靠的未来预测长度之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Wind Speed, Potential Wind Power, and the Associated Uncertainties for Offshore Wind Farm Using Deep Learning
Floating offshore wind turbines hold great potential for future solutions to the growing demand for renewable energy production. Thereafter, the prediction of the offshore wind power generation became critical in locating and designing wind farms and turbines. The purpose of this research is to improve the prediction of the offshore wind power generation by the prediction of local wind speed using a Deep Learning technique. In this paper, the future local wind speed is predicted based on the historical weather data collected from National Oceanic and Atmospheric Administration. Then, the prediction of the wind power generation is performed using the traditional methods using the future wind speed data predicted using Deep Learning. The network layers are designed using both Long Short-Term Memory (LSTM) and Bi-directional LSTM (BLSTM), known to be effective on capturing long-term time-dependency. The selected networks are fine-tuned, trained using a part of the weather data, and tested using the other part of the data. To evaluate the performance of the networks, a parameter study has been performed to find the relationships among: length of the training data, prediction accuracy, and length of the future prediction that is reliable given desired prediction accuracy and the training size.
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