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Short term wind speed forecasting using wavelet transform and grey model improved by particle swarm optimization

机译:用小波变换和灰色模型改善粒子群优化的短期风速预测

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Nowadays wind energy is one of the most important source of renewable energy worldwide. Wind power generation is an important form of wind energy utilization. The energy problem has become increasingly prominent, which requires to speeding up the development of wind energy industry. However, the existing wind speed forecasting using grey model is inaccurate. Direct prediction of original wind speed sequence produces large error because of the randomness of wind power. To solve the above problems, a novel method for short term wind speed forecasting based on grey model is proposed in this paper. In order to reduce the error of short term wind speed forecasting, one of the most successful approaches is particle swarm optimization algorithm, which chooses the parameters of grey model to avoid the man-made blindness and enhances the efficiency and capability of forecasting. In the present paper, the wavelet de composition and reconstruction are used to separate the high frequency signal and the low frequency signal. To verify its efficiency, this proposed method is applied to a wind farm's wind speed forecasting in China. The result confirms that the performance of the method proposed in this paper is much more favor able in comparison with the original methods studied.
机译:如今,风能是全球可再生能源最重要的来源之一。风力发电是一种重要的风能利用形式。能源问题变得越来越突出,这需要加快风能产业的发展。然而,使用灰色模型的现有风速预测是不准确的。由于风能的随机性,原始风速序列的直接预测产生了很大的误差。为了解决上述问题,提出了一种基于灰色模型的短期风速预测的新方法。为了减少短期风速预测的误差,最成功的方法之一是粒子群优化算法,它选择灰色模型的参数,以避免人为失明并提高预测的效率和能力。在本文中,使用小波De组成和重建来分离高频信号和低频信号。为了验证其效率,这一提出的方法适用于风电场在中国的风速预测。结果证实,本文提出的方法的性能更有利于能够与所研究的原始方法相比。

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