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The Short-Term Wind Power Prediction Based on the Neural Network of Logistic Mapping Phase Space Reconstruction

机译:基于逻辑映射相空间重构神经网络的短期风力预测

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It is difficult to be accurately predicted for wind power generation's random, intermittent and volatility. According to the strong chaotic characteristics of wind speed, the optimal time delay and embedding dimensions of wind speed are determined by using a short-term prediction of phase space reconstruction theory. After the sample space is reconstructed, the short-term wind speed is carried out by BP neural network. The experimental results show that the higher forecasting accuracy of short-term power generation can be obtained.
机译:难以准确地预测风力发电的随机,间歇性和波动性。根据风速的强混沌特性,通过使用相空间重建理论的短期预测来确定风速的最佳时间延迟和嵌入尺寸。重建样品空间后,短期风速由BP神经网络进行。实验结果表明,可以获得短期发电的预测准确性。

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