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基于最小二乘支持向量机的选煤厂日用水量短期预测
引用本文:郭小荟,马小平.基于最小二乘支持向量机的选煤厂日用水量短期预测[J].煤炭学报,2007,32(10):1093-1097.
作者姓名:郭小荟  马小平
作者单位:1中国矿业大学 信息与电气工程学院,江苏 徐州,221008 2徐州师范大学 计算机科学与技术学院,江苏 徐州,221116
摘    要:针对选煤厂日用水量时间序列的预测问题,提出应用最小二乘支持向量机(LSSVM)这一新的机器学习方法来实现日用水量的短期预测.借鉴多层动态自适应优化算法的思想,提出最小二乘支持向量机参数优化的多层动态交叉验证法;用微熵率法求得选煤厂日用水量时间序列的最佳嵌入维数和最佳延迟参数,重构相空间,建立了基于最小二乘支持向量机的选煤厂日用水量时间序列等维信息一步预测模型.预测结果表明:基于LSSVM的预测模型的预测精度比BP神经网络预测模型的预测精度要高,能够满足选煤厂日用水量预测的需要.

关 键 词:最小二乘支持向量机  选煤厂日用水量  参数优化  BP神经网络  预测  
文章编号:0253-9993(2007)10-1093-05
收稿时间:2006-12-01
修稿时间:2006年12月1日

Coal washery daily water consumption short-term prediction based on least squares support vector machines
GUO Xiao-hui,MA Xiao-ping.Coal washery daily water consumption short-term prediction based on least squares support vector machines[J].Journal of China Coal Society,2007,32(10):1093-1097.
Authors:GUO Xiao-hui  MA Xiao-ping
Abstract:Applied a novel machine learning algorithm-least squares support vector machines(LSSVM) into coal washery daily water consumption times series prediction.Firstly,referencing the principle of multi-layer adaptive best-fitting parameters search algorithm,a LSSVM's parameters optimization method which was called multi-layer dynamic cross-validation algorithm was proposed,and then the optimal embedding dimension and delay time were obtained by the differential entropy ratio method.In the reconstructed phase space,the equal-dimension and new information prediction model of coal washery daily water consumption time series was established based on LSSVM.The prediction results show that the precision of this model is superior to that based on BP neural network and can satisfy the need of real applications.
Keywords:least squares support vector machines  coal washery daily water consumption  parameters optimization  BP neural network  prediction
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