论文标题

使用不同特征学习模型的两阶段短期风能预测算法

Two-stage short-term wind power forecasting algorithm using different feature-learning models

论文作者

Qin, Jiancheng, Yang, Jin, Chen, Ying, Ye, Qiang, Li, Hua

论文摘要

基于两阶段合奏的预测方法已在风能预测领域进行了广泛的研究。但是,深度学习的风力预测研究尚未研究两个方面。在第一阶段,尚未讨论考虑多个输入和多个输出的不同学习结构。在第二阶段,尚未研究模型外推问题。因此,我们为第一个阶段开发了四个深神经网络,以学习考虑输入和输出结构的数据功能。然后,我们使用不同的建模方法在第二阶段探索模型外推问题。考虑到过度拟合问题,我们建议使用第一阶段的验证设置进行一种新的基于窗口的算法,以更新两个阶段的训练数据,并具有两个不同的移动窗口过程。在三个风电场进行了实例,结果表明,与现有模型相比,具有单个输入多重输出结构的模型可获得更好的预测准确性。此外,与现有的机器学习方法相比,Ridge回归方法可产生更好的整体模型,可以进一步提高预测准确性。最后,与现有算法相比,提出的两阶段预测算法可以产生更准确和稳定的结果。

Two-stage ensemble-based forecasting methods have been studied extensively in the wind power forecasting field. However, deep learning-based wind power forecasting studies have not investigated two aspects. In the first stage, different learning structures considering multiple inputs and multiple outputs have not been discussed. In the second stage, the model extrapolation issue has not been investigated. Therefore, we develop four deep neural networks for the first stage to learn data features considering the input-and-output structure. We then explore the model extrapolation issue in the second stage using different modeling methods. Considering the overfitting issue, we propose a new moving window-based algorithm using a validation set in the first stage to update the training data in both stages with two different moving window processes.Experiments were conducted at three wind farms, and the results demonstrate that the model with single input multiple output structure obtains better forecasting accuracy compared to existing models. In addition, the ridge regression method results in a better ensemble model that can further improve forecasting accuracy compared to existing machine learning methods. Finally, the proposed two-stage forecasting algorithm can generate more accurate and stable results than existing algorithms.

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