利用多个ARIMA模型进行风能预测

Xiaoou Li, J. Sabas, Vicente Duarte Mendéz
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引用次数: 0

摘要

为了实现风电场的正确运行,必须建立准确的风能预测。将自回归综合移动平均(ARIMA)模型与人工神经网络(NN)相结合,获得了较好的预测精度。但当神经网络中存在数据缺失或局部极小值时,预测效果会变差。在本文中,我们将多模型和迁移学习技术应用于ARIMA。由于不同的风电场具有一些相似的特征,我们可以使用不同的ARIMA模型及其风电场的数据来获得预训练特征。然后通过迁移学习将这些ARIMA模型结合起来进行精细训练。该方法解决了ARIMA和NN预测精度低的问题。我们成功地将该方法应用于风能预测。实验结果表明,使用预训练的模型可以提高一个风电场的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wind energy forecasting using multiple ARIMA models
To achieve correct operation of wind farms, it is necessary to create accurate wind energy forecasting. Autoregressive integrated moving average (ARIMA) models were combined with artificial neural networks (NN) to obtain acceptable forecasting accuracy. But the forecasting results become worse when there are missing data or local minima in NN.In this paper, we use the multiple models and transfer-learning techniques to ARIMA. Since different wind farms have some similar features, we can use different ARIMA models and their wind farms’ data to get pre-training features . Then we do fine training by using the transfer-learning to combine these ARIMA models. This novel method can solve the low forecasting accuracy problems of ARIMA and NN. We successfully apply this method to wind energy forecasting. Experimental results show the forecasting accuracy of one wind farm is improved using the pre-trained models of the other two farms.
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