Zhang Ying, Kong Laiqiang
College of Information Engineering, Shanghai Maritime University, Shanghai 201306, China.
Logistics Engineering College, Shanghai Maritime University, Shanghai 201306, China.
ISA Trans. 2022 Sep;128(Pt B):181-206. doi: 10.1016/j.isatra.2021.11.008. Epub 2021 Nov 18.
With the increasing influence of new energy power system, the prediction of Photovoltaic (PV) output power becomes more and more important In this paper, it is the first time to put forward a hybrid modeling method combining long-short term memory recurrent neural network (LSTM) and stochastic differential equation (SDE). This method realizes the prediction of PV output power in different seasons and overcomes the uncertainty of PV power generation. Wavelet analysis and automatic encoder are used to decompose data and extract important features. According to the detailed signal sequence and the approximate signal sequence, the LSTM prediction model is established. Meanwhile, the mathematical model of SDE is established according to the detailed signal sequence. Finally, the output sequences of the two models are reconstructed by wavelet transform. This hybrid model can not only realize the point prediction of PV output power according to the predicted mean value, but also achieve the interval prediction under different confidence levels according to the randomness. In this paper, the proposed method is applied to predict the PV output power of CHINT photovoltaic power generation system with installed capacity of 10MW in different seasons, and the weather forecast data with errors of ±10%, ±20% and ±30% are used. Experimental results prove the effectiveness of the method. In the summer model considering forecast errors within ±20% of weather forecast data, the RMSEs of BP neural network, LSTM and convolutional neural network (CNN) are 5.9468, 5.6762 and 5.8004 respectively. However, the RMSE of the mean prediction with the confidence level of 90% under the proposed method is 4.4647. With this method, the results of interval prediction and point prediction of PV output power can provide better decision support for the stable and safe operation of PV grid connection. They have higher reference value for energy dispatching departments.
随着新能源电力系统影响力的不断增大,光伏(PV)输出功率的预测变得越来越重要。本文首次提出了一种结合长短期记忆循环神经网络(LSTM)和随机微分方程(SDE)的混合建模方法。该方法实现了不同季节光伏输出功率的预测,克服了光伏发电的不确定性。利用小波分析和自动编码器对数据进行分解并提取重要特征。根据细节信号序列和近似信号序列建立LSTM预测模型。同时,根据细节信号序列建立SDE的数学模型。最后,通过小波变换对两个模型的输出序列进行重构。这种混合模型不仅可以根据预测均值实现光伏输出功率的点预测,还可以根据随机性实现不同置信水平下的区间预测。本文将所提方法应用于预测容量为10MW的正泰光伏发电系统在不同季节的光伏输出功率,并使用了误差为±10%、±20%和±30%的天气预报数据。实验结果证明了该方法的有效性。在考虑天气预报数据误差在±20%以内的夏季模型中,BP神经网络、LSTM和卷积神经网络(CNN)的均方根误差(RMSE)分别为5.9468、5.6762和5.8004。然而,所提方法在90%置信水平下的均值预测RMSE为4.4647。采用该方法,光伏输出功率的区间预测和点预测结果可为光伏并网的稳定安全运行提供更好的决策支持。它们对能源调度部门具有较高的参考价值。