Application of preconditioned Generalized radial Basis Function Network to prediction of photovoltaic power generation

H. Mori, Masato Takahashi
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引用次数: 5

Abstract

In this paper, an efficient method is proposed for short-time generation output prediction of PV systems. The prediction of time-series of PV generation output is too complicated to handle. The proposed method focuses on the improvement of the prediction model accuracy with a hybrid intelligent system. It consists of the precondition of input data and the predictor of multi-step ahead PV generation output. The former deals with clustering of input data to improve the performance of the predictor. It is very useful to classify data into some clusters and construct the prediction model at each cluster so that the prediction is improved due to the data similarity in the cluster. As the clustering method, DA (Deterministic Annealing) Clustering of global clustering is used due to the good performance. On the other hand, the latter makes use of an advanced GRBFN (Generalized Radial Basis Function Network) of ANN (Artificial Neural Network) as the predictor. As a result, the proposed method provides better results than the conventional ones. The effectiveness of the proposed method is demonstrated to real data of short time prediction of PV systems.
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预置广义径向基函数网络在光伏发电预测中的应用
本文提出了一种有效的光伏发电系统短时出力预测方法。光伏发电输出时间序列的预测过于复杂,难以处理。该方法着重于利用混合智能系统提高预测模型的精度。它由输入数据的前提条件和多步超前光伏发电输出的预测器组成。前者处理输入数据的聚类,以提高预测器的性能。将数据分成若干类,并在每个类上构建预测模型,从而利用类内数据的相似性来提高预测精度,是非常有用的。聚类方法采用全局聚类中的DA (Deterministic退火)聚类,具有良好的性能。另一方面,后者利用人工神经网络(ANN)的一种先进的GRBFN(广义径向基函数网络)作为预测器。结果表明,该方法比传统方法具有更好的效果。通过光伏系统短期预测的实际数据验证了该方法的有效性。
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