Electric power communication bandwidth prediction based on adaptive extreme learning machine
by Li Di; Zheng Zheng; Song Wang; Ruidong Zhang; Min Xia; Kai Hu
International Journal of Embedded Systems (IJES), Vol. 10, No. 3, 2018

Abstract: Bandwidth demand forecasting is the basis and foundation of the power communication network planning. For the traditional neural network learning, there are many problems, such as slow convergence speed, more iterative times, and easy to fall into local optimum. An adaptive extreme learning machine model based on the theory of extreme learning machine and K nearest neighbour theory is proposed to predict the bandwidth of electric power communication. The adaptive metrics of inputs can solve the problems of amplitude changing and trend determination, and reduce the effect of the over-fitting of networks. The proposed algorithms are validated using real data of a province in China. The results show that this method is better than the traditional neural network, autoregressive models, self organisation models, and single extreme learning machine model. It can be used in electric power communication bandwidth prediction.

Online publication date: Wed, 16-May-2018

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