A forecasting and forewarning model for methane hazard in working face of coal mine based on LS-SVM

Shu-gang CAO , Yan-bao LIU , Yan-ping WANG
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引用次数: 57

Abstract

To improve the precision and reliability in predicting methane hazard in working face of coal mine, we have proposed a forecasting and forewarning model for methane hazard based on the least square support vector (LS-SVM) multi-classifier and regression machine. For the forecasting model, the methane concentration can be considered as a nonlinear time series and the time series analysis method is adopted to predict the change in methane concentration using LS-SVM regression. For the forewarning model, which is based on the forecasting results, by the multi-classification method of LS-SVM, the methane hazard was identified to four grades: normal, attention, warning and danger. According to the forewarning results, corresponding measures are taken. The model was used to forecast and forewarn the K9 working face. The results obtained by LS-SVM regression show that the forecasting have a high precision and forewarning results based on a LS-SVM multi-classifier are credible. Therefore, it is an effective model building method for continuous prediction of methane concentration and hazard forewarning in working face.

基于LS-SVM的煤矿工作面甲烷危害预测预警模型
为了提高煤矿工作面甲烷危害预测的精度和可靠性,提出了一种基于最小二乘支持向量(LS-SVM)多分类器和回归机的煤矿工作面甲烷危害预测预警模型。对于预测模型,甲烷浓度可以看作是一个非线性时间序列,采用时间序列分析方法,利用LS-SVM回归预测甲烷浓度的变化。基于预测结果建立的预警模型,采用LS-SVM的多重分类方法,将甲烷危险度划分为正常、注意、预警和危险4个等级。根据预警结果,采取了相应的措施。利用该模型对K9工作面进行预测预警。LS-SVM回归结果表明,LS-SVM多分类器预测精度高,预警结果可信。因此,是工作面甲烷浓度连续预测和危害预警的有效建模方法。
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