Prediction of Wind Power Generation based on Chaotic Phase Space Reconstruction Models

Dong Lei, W. Lijie, Huan Shi, Gao Shuang, Liao Xiaozhong
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引用次数: 17

Abstract

The development of wind generation has rapidly progressed over the last decade, but it must be integrated into power grids and electric utility systems. However, it cannot be dispatched like conventional generators because the power generated by the wind changes rapidly because of the continuous fluctuation of wind speed and direction. So it is very important to predict the wind power generation. This paper discusses why the wind power generation can be predicted in short-term, and how to setup the construction of an ANN (artificial neural network) prediction model of wind power based on chaotic time series. The analysis of modeling with low dimensions nonlinear dynamics indicates that time series of wind power generation have chaotic characteristics, and wind power can be predicted in short-term. Phase space reconstruction method can be used for ANN model design. The data from the wind farm located in the Saihanba China are used for this study.
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基于混沌相空间重构模型的风力发电预测
风力发电的发展在过去十年中取得了迅速的进展,但它必须与电网和电力公用事业系统相结合。但由于风速和风向的持续波动,风力发电的功率变化很快,因此不能像传统发电机那样调度。因此,对风力发电进行预测具有十分重要的意义。本文讨论了风力发电在短期内可以预测的原因,以及如何建立基于混沌时间序列的风力发电人工神经网络预测模型。低维非线性动力学建模分析表明,风力发电时间序列具有混沌特性,可以在短期内预测风力发电。相空间重构方法可用于人工神经网络模型设计。本研究使用了中国塞罕坝风电场的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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