Wavelet recurrent neural network with semi-parametric input data preprocessing for micro-wind power forecasting in integrated generation Systems

F. Bonanno, G. Capizzi, G. Lo Sciuto, C. Napoli
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引用次数: 33

Abstract

Wind power penetration is increasing more and more in the modern power system and an accurate wind power forecasting is now required to provide an help to the system operator to consider this renewable source in economic scheduling and other typical tasks of the electrical power system or in smart grid applications. The novelty of this Wavelet Recurrent Neural Network (WRNN) based approach consists on the model construction for micro wind generations. The WRNN does not provides only a prediction for the wavelet coefficients like in other previous studies of the authors in this research area but it is able to reconstruct directly the power signal from band-selected coefficients. The presented approach does not provides only an accurate forecasting model respect to the state of art in the field, but it is also useful for case studies which suffer of a major lack of wind data regarding the geographic site and of accurate and long historical study of the wind speed time series. In fact due to the proposed method of training based on a semiparametric input data preprocessing as Parzen windows then wind power output forecasting is improved.
基于半参数输入数据预处理的小波递归神经网络集成发电系统微风电功率预测
风电在现代电力系统中的渗透率越来越高,需要准确的风电功率预测,以帮助系统运营商在电力系统经济调度等典型任务或智能电网应用中考虑这一可再生能源。这种基于小波递归神经网络(WRNN)的方法的新颖之处在于对微风力发电的模型构建。WRNN不像作者在该研究领域的其他研究那样只提供小波系数的预测,而是能够直接从带选系数重构功率信号。所提出的方法不仅提供了一个准确的预测模型,就该领域的技术状况而言,而且对于那些主要缺乏有关地理位置的风数据以及准确和长期的风速时间序列历史研究的案例研究也很有用。事实上,由于所提出的基于半参数输入数据预处理的训练方法作为Parzen窗口,从而改进了风电输出预测。
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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