Short-Term Wind Power Output Prediction Based on Temporal Graph Convolutional Networks

Xiaoqing Ji, Zhaoxia Li, Xiaoyan Jiang, Dechang Yang
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Abstract

Accurate short-term wind power output prediction is of great significance to the operation and dispatch of power systems. To improve the accuracy of short-term wind power output prediction, a prediction model based on the temporal graph convolutional network is proposed. First of all, a temporal convolutional network is used to mine the temporal features of wind power output. Moreover, a graphical convolutional network is utilized to capture the relevant features between wind power output and meteorological data. Furthermore, a hybrid structure is presented, in which the temporal and relevant features are converted into the actual wind power output values in the future. The simulation results show that the proposed method has good adaptability in the short-term wind power prediction tasks for different seasons and time-scales. Meanwhile, for noise-laden prediction scenarios, it has significant advantages compared with the existing methods.
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基于时间图卷积网络的短期风电输出预测
准确的风电短期输出预测对电力系统的运行和调度具有重要意义。为了提高风电短期输出预测的准确性,提出了一种基于时间图卷积网络的风电短期输出预测模型。首先,利用时间卷积网络挖掘风电输出的时间特征。此外,利用图形卷积网络捕获风电输出与气象数据之间的相关特征。在此基础上,提出了一种混合结构,将时间和相关特征转换为未来的实际风电输出值。仿真结果表明,该方法对不同季节和时间尺度的短期风电预测任务具有良好的适应性。同时,对于充满噪声的预测场景,与现有方法相比具有显著的优势。
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