On-line least squares support vector machine algorithm in gas prediction

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作者
ZHAO XiaohuWANG GangZHAO KekeTAN Dejian School of Information Electronic EngineeringChina University of Mining TechnologyXuzhouJiangsu China [221008 ]
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TD712 [矿井瓦斯];
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Traditional coal mine safety prediction methods are off-line and do not have dynamic prediction functions.The Support Vector Machine(SVM) is a new machine learning algorithm that has excellent properties.The least squares support vector machine(LS-SVM) algorithm is an improved algorithm of SVM.But the common LS-SVM algorithm,used directly in safety predictions,has some problems.We have first studied gas prediction problems and the basic theory of LS-SVM.Given these problems,we have investigated the affect of the time factor about safety prediction and present an on-line prediction algorithm,based on LS-SVM.Finally,given our observed data,we used the on-line algorithm to predict gas emissions and used other related algorithm to compare its performance.The simulation results have verified the validity of the new algorithm.
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页码:194 / 198
页数:5
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