风电预测机器学习模型的实证研究

Yiqian Liu, Huajie Zhang
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引用次数: 10

摘要

风电功率预测在可再生风电利用中具有重要意义。为了提高风电预测的准确性,人们进行了大量的研究,并取得了令人满意的效果。然而,目前还没有对机器学习方法进行完整的性能评估。本文对风力发电预测的机器学习方法进行了广泛的实证研究。本研究考虑了九种不同的模型,其中还包括深度学习技术的应用和评估。实验数据由基于加拿大安大略省风力发电场的七个数据集组成。结果表明,支持向量机的综合性能最好,其次是人工神经网络,k-NN方法适用于较长的提前预测。尽管研究发现深度学习在基本预测方面没有改善,但它显示了更抽象的预测任务的潜力,比如空间相关性预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Empirical Study on Machine Learning Models for Wind Power Predictions
Wind power prediction is of great importance in the utilization of renewable wind power. A lot of research has been done attempting to improve the accuracy of wind power predictions and has achieved desirable performance. However, there is no complete performance evaluation of machine learning methods. This paper presents an extensive empirical study of machine learning methods for wind power predictions. Nine various models are considered in this study which also includes the application and evaluation of deep learning techniques. The experimental data consists of seven datasets based on wind farms in Ontario, Canada. The results indicate that SVM, followed by ANN, has the best overall performance, and that k-NN method is suitable for longer ahead predictions. Despite the findings that deep learning fails to give improvement in basic predictions, it shows the potential for more abstract prediction tasks, such as spatial correlation predictions.
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