Short-term Photovoltaic Power Prediction Based on Daily Feature Matrix and Deep Neural Network

Ruonan Zheng, Guojie Li, Keyou Wang, Bei Han, Zhitong Chen, Mengyang Li
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引用次数: 3

Abstract

In order to reduce the error of short-term photovoltaic (PV) power forecast without irradiance data, a prediction model based on daily feature matrix and long short term-memory (LSTM) deep neural network is proposed. Firstly, various factors affecting PV output are analyzed to select model inputs effectively. On this basis, a new similar day selection method considering the internal and external factors under multi-source data integration scenarios is introduced. Based on weather forecast information and day-ahead PV power data, daily feature matrices can be constructed to determine similar days by calculating the distances between the matrices. Then, the similar historical PV power vector is used as an input of a LSTM deep neural network, combined with meteorological forecast information to realize the final power prediction. Finally, the feasibility of the proposed method can be validated with the actual data of residential PV systems in North America.
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基于日特征矩阵和深度神经网络的光伏短期功率预测
为了减少在没有辐照度数据的情况下光伏发电短期功率预测的误差,提出了一种基于日特征矩阵和长短期记忆深度神经网络的预测模型。首先,分析影响光伏产量的各种因素,有效选择模型输入。在此基础上,提出了一种多源数据集成场景下兼顾内外因素的相似日选择方法。基于天气预报信息和日前光伏发电数据,可以构建日特征矩阵,通过计算矩阵之间的距离来确定相似的天数。然后,将相似历史PV功率向量作为LSTM深度神经网络的输入,结合气象预报信息实现最终的功率预测。最后,用北美地区住宅光伏系统的实际数据验证了所提方法的可行性。
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