%0 Journal Article
%T Multivariate chaotic time series prediction based on extreme learning machine
基于极端学习机的多变量混沌时间序列预测
%A Wang Xin-Ying
%A Han Min
%A
王新迎
%A 韩敏
%J 物理学报
%D 2012
%I
%X For multivariate chaotic time series prediction problem, a prediction based on input variable selection and extreme learning machine is proposed in this paper. The multivariate chaotic time series is reconstructed in phase space, and a mutual information based method is used to select the input variables, which have high statistics information with the output variables. The extreme learning machine is conducted to model the multivariate chaotic time series in the phase space by utilizing its approximation capability. In order to improve the prediction accuracy, a model selection algorithm is conducted for extreme learning machine to choose an expected minimum risk prediction model. Simulation results based on Lorenz, R ssler multivariate chaotic time series and R ssler hyperchaotic time series show the effectiveness of the proposed method.
%K chaotic time series prediction
%K input variables selection
%K extreme learning machine
%K model selection
混沌时间序列预测
%K 输入变量选择
%K 极端学习机
%K 模型选择
%U http://www.alljournals.cn/get_abstract_url.aspx?pcid=6E709DC38FA1D09A4B578DD0906875B5B44D4D294832BB8E&cid=47EA7CFDDEBB28E0&jid=29DF2CB55EF687E7EFA80DFD4B978260&aid=78F360FC29C479117B950B05920348F7&yid=99E9153A83D4CB11&vid=1D0FA33DA02ABACD&iid=5D311CA918CA9A03&sid=5AE70010FEC5831E&eid=F547598732C92EEC&journal_id=1000-3290&journal_name=物理学报&referenced_num=0&reference_num=12