基于“k-means - VSS - LMS”混合学习的RBF网络短期负荷预测方法

E. Mostafapour, M. Panahi, M. Farsadi
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引用次数: 4

摘要

本文研究了基于RBF网络的混合学习算法在短期负荷预测中的应用。该方法采用k-means算法寻找隐层径向基函数中心,采用自适应变步长算法训练输出层权值。通过与已有方案的比较,证明了该方法的准确性和快速性。结果表明,该方法的计算量较小,在输入数据量较大的情况下也能取得较好的效果。我们的模拟结果表明,与之前改进的k-means学习相比,处理时间提高了30%,预测精度提高了37%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid "k-means, VSS LMS" learning method for RBF network in short-term load forecasting
In this paper we investigate the performance of a hybrid learning algorithm for RBF network in the application of short-term load forecasting. In this method the algorithm for finding radial basis function centers of hidden layer is k-means and the algorithm for training the weights of output layer is adaptive variable step-size algorithm. We proved this method is both accurate and fast in comparison with other presented schemes. Also we demonstrated that this method requires less computational processing and can perform well when amount of the input data is large. Our simulation results show there is up to 30 percent improvement in processing time and 37% improvement in prediction accuracy when compared with previously improved k-means learning.
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