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An Ultrashort-Term Net Load Forecasting Model Based on Phase Space Reconstruction and Deep Neural Network

机译:基于相空间重构和深度神经网络的超短期净负荷预测模型

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Recently, a large number of distributed photovoltaic (PV) power generations have been connected to the power grid, which resulted in an increased fluctuation of the net load. Therefore, load forecasting has become more difficult. Considering the characteristics of the net load, an ultrashort-term forecasting model based on phase space reconstruction and deep neural network (DNN) is proposed, which can be divided into two steps. First, the phase space reconstruction of the net load time series data is performed using the C-C method. Second, the reconstructed data is fitted by the DNN to obtain the predicted value of the net load. The performance of this model is verified using real data. The accuracy is high in forecasting the net load under high PV penetration rate and different weather conditions.
机译:近来,大量分布式光伏(PV)发电已连接到电网,这导致净负载波动增加。因此,负荷预测变得更加困难。针对净负荷的特点,提出了一种基于相空间重构和深度神经网络的超短期预测模型,该模型可以分为两个步骤。首先,使用C-C方法执行净负荷时间序列数据的相空间重构。其次,由DNN拟合重建的数据以获得净负荷的预测值。使用实际数据验证了该模型的性能。在高PV渗透率和不同天气条件下预测净负荷时,准确性很高。

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