Title :
An improved on-line extreme learning machine algorithm for sunspot number prediction
Author :
Li Bin ; Rong Xuewen
Author_Institution :
Sch. of Sci., Shandong Polytech. Univ., Jinan, China
Abstract :
The single hidden layer feed-forward neural networks has simple structure, good approximation performance on real applications. The on-line learning algorithms based on the single hidden layer feed-forward neural networks have the ability of real time on-line learning and are suitable to sequential learning environments and applications. The sunspot number prediction is an important content in the space environment forecast. According to the strong nonlinear characteristics and difficult mid long term prediction problem for sunspot, an improved on-line extreme learning machine with good approximation ability and generation performance is applied to sunspot number chaotic time series prediction in this paper, The improved algorithm updates the output-layer weights with a Givens QR decomposition based on the orthogonalized least squares algorithm. Simulation results show that the improved algorithm can avoid the singular of the hidden layer output matrix and obtain better network performance. The improved algorithm provides a comparing fast and real time on-line learning ability for sunspot chaotic time series space environmental prediction.
Keywords :
feedforward neural nets; learning (artificial intelligence); least squares approximations; real-time systems; sunspots; time series; QR decomposition; approximation performance; generation performance; improved online extreme learning machine algorithm; mid long term prediction problem; nonlinear characteristics; orthogonalized least squares algorithm; output-layer weights; real time learning; sequential learning environments; single hidden layer feedforward neural networks; space environment forecast; sunspot number chaotic time series prediction; Approximation algorithms; Electronic mail; Least squares approximations; Neural networks; Prediction algorithms; Time series analysis; Chaotic time series prediction; Extreme learning machine; On-line learning; Sunspot;
Conference_Titel :
Control and Decision Conference (CCDC), 2013 25th Chinese
Conference_Location :
Guiyang
Print_ISBN :
978-1-4673-5533-9
DOI :
10.1109/CCDC.2013.6561006