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Short-Term Wind Power Forecasting Based on Lifting Wavelet, SVM and Error Forecasting

机译:基于升降小波,SVM和错误预测的短期风力预测

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In this chapter, wind power short-term load forecasting method was presented based on the lifting wavelet transform, SVM, and error forecasting. The lifting wavelet was utilized to find out the characteristics of signals. The SVM was adopted to classify the input signals and forecast them well. And the error forecasting can improve the forecasting accuracy. In addition, the error forecasting is a very effective forecasting method which can greatly improve the forecasting accuracy, especially the accuracy of the peaks and valleys. Through analyzing the results of simulation, it can be seen that the combination of the three methods can get a satisfactory wind power short-term forecasting result.
机译:在本章中,基于提升小波变换,SVM和错误预测来提出风力短期负荷预测方法。提升小波用于找出信号的特性。采用SVM来分类输入信号并良好预测。并且错误预测可以提高预测精度。此外,错误预测是一个非常有效的预测方法,可以大大提高预测精度,尤其是峰和谷的准确性。通过分析模拟结果,可以看出三种方法的组合可以获得令人满意的风力发短期预测结果。

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