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首页> 外文期刊>Energy Conversion & Management >Smart deep learning based wind speed prediction model using wavelet packet decomposition, convolutional neural network and convolutional long short term memory network
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Smart deep learning based wind speed prediction model using wavelet packet decomposition, convolutional neural network and convolutional long short term memory network

机译:基于小波包分解,卷积神经网络和卷积长期短期记忆网络的基于智能深度学习的风速预测模型

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摘要

High precision and reliable wind speed forecasting is important for the management of the wind power. This paper develops a novel wind speed prediction model based on the WPD (Wavelet Packet Decomposition), CNN (Convolutional Neural Network) and CNNLSTM (Convolutional Long Short Term Memory Network). In the proposed WPD-CNNLSTM-CNN model, the WPD is employed to decompose the original wind speed time series into a number of sub-layers; the CNN with 1D convolution operator is used to forecast the obtained high-frequency sublayers; and the CNNLSTM is adopted to complete the forecasting of the low-frequency sub-layer. To verify and compare the prediction performance of the proposed model, eight models are used. According to the results of four experimental tests, it can be observed that: (1) the proposed model is robust and effective in predicting the 1D wind speed time series, besides, among the involved eight models, the proposed model can perform best in wind speed 1-step to 3-step predictions; (2) when the wind speed experiences sudden change, the proposed model can have better prediction performance than the other involved models.
机译:高精度和可靠的风速预测对于风力发电的管理非常重要。本文基于WPD(小波包分解),CNN(卷积神经网络)和CNNLSTM(卷积长期短期记忆网络)开发了一种新颖的风速预测模型。在提出的WPD-CNNLSTM-CNN模型中,使用WPD将原始风速时间序列分解为多个子层。带一维卷积算子的CNN用于预测获得的高频子层;采用CNNLSTM完成对低频子层的预测。为了验证和比较所提出模型的预测性能,使用了八个模型。根据四个实验测试的结果,可以观察到:(1)所提出的模型在预测一维风速时间序列方面是鲁棒且有效的,此外,在涉及的八个模型中,所提出的模型在风中表现最佳。加快1步到3步的预测速度; (2)当风速突然变化时,所提出的模型具有比其他模型更好的预测性能。

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