结合EEMD的CNN-LSTM混合模型短期太阳辐射预报

Nguyen Thi Hoai Thu, Phạm Năng Văn, P. Bảo, Nguyen Vu Nhat Nam, Pham Quang Nhat Minh, T. Quang
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引用次数: 0

摘要

如今,太阳能、风能、潮汐能等可再生能源逐渐成为全球不可缺少的能源。就太阳能而言,太阳辐射是波动的,并取决于各种其他因素。因此,太阳辐射的短期预报在太阳能应用的许多领域,特别是在发电方面一直起着重要的作用。本文提出了一种卷积神经网络-长短期记忆(CNN-LSTM)网络结合集合经验模态分解(EEMD)方法对越南太阳辐射进行短期预报。首先,利用EEMD方法将原始辐照序列分解为内禀模态函数(IMFs);其次,将每个IMFs输入到一个结合CNN和LSTM网络的预测模型中,然后组成太阳辐照的最终预测。最后,将结果与CNN的单一模型、LSTM和双向LSTM等其他方法的结果进行比较,找出其优点。对比表明,该模型的性能优于其他模型,n-RMSE为0.098,而LSTM、Bi-LSTM和CNN的n-RMSE分别为0.187、0.169和0.177。
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Short-term Forecasting of Solar Radiation Using a Hybrid Model of CNN-LSTM Integrated with EEMD
Nowadays, renewable energy gradually become indispensable sources all over the world such as solar energy, wind energy, tidal energy, etc. In terms of solar energy, solar radiation fluctuates and depends on various other factors. Therefore, short-term forecasting of solar radiation plays a consistently important role in many fields of solar energy applications, especially in generating electricity. In this paper, we proposed a Convolutional Neural Network - Long-Short Term Memory (CNN-LSTM) network integrated with the Ensemble Empirical Mode Decomposition (EEMD) method to make a short-term forecast of solar irradiation in Vietnam. Firstly, we used EEMD method to separate the original irradiation series into intrinsic mode functions (IMFs). Secondly, each IMFs were fed into a predictive model that combined CNN and LSTM network and then composed into final forecasting of the solar irradiation. Finally, the results were compared with that of other methods such as the single model of CNN, LSTM and Bi-directional-LSTM to find out the benefits. The comparison illustrated that the performance of the proposed model was better than the others, namely the n-RMSE was 0.098 while that of LSTM, Bi-LSTM and CNN was 0.187, 0.169 and 0.177, respectively.
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