采矿与安全工程学报 ›› 2013, Vol. 30 ›› Issue (6): 946-952.

• 论文 • 上一篇    

基于LMD-SVM的采煤工作面瓦斯涌出量预测

  

  1. 北京理工大学爆炸科学与技术国家重点实验室,北京 100081
  • 出版日期:2013-11-15 发布日期:2013-12-05
  • 作者简介:樊保龙 (1980-),男,山西省万荣市人,博士,从事煤矿井下瓦斯灾害方面的研究。 E-mail:fanbaolong6717@163.com Tel:13811856592

Forecasting model of coalface gas emission based on LMD-SVM method

  • Online:2013-11-15 Published:2013-12-05

摘要: 提出利用LMD(Local Mean Decomposition)方法获取生产函数分量(PF分量)进行SVM (Support Vector Machine)建模,用此方法对采煤工作面瓦斯涌出量进行预测。通过LMD对瓦斯涌出量的历史数据进行分解得到其PF分量,然后,对应于每个PF分量各利用SVM函数拟合方法进行外推预测,再把不同PF分量的预测结果进行叠加重构合成,进而获得瓦斯涌出量预测的理论结果值。通过对某煤矿监测历史数据进行实例分析,可见此方法预测效果比常规SVM方法预测精度高,LMD的引入可大幅度提高瓦斯涌出量的预测精度,表明此方法建立的采煤工作面瓦斯涌出量预测模型具有较好的合理性和可靠性。PF分量的获取和SVM方法小样本预测的结合,能够充分发掘数据本身所蕴含的物理机制和物理规律,这也十分符合利用数据自身驱动来获取其影响因素相互间的物理机制,从而为瓦斯涌出量预测精度的提高奠定较好基础。

关键词: 瓦斯涌出量, 预测, SVM-LMD, 采煤工作面

Abstract: In this paper, the method that using LMD (Local Mean Decomposition) to obtain production function components for SVM (Support Vector Machine) modeling was proposed, which was applied to forecast the gas emission volume in coalface. First, the historical data of gas emission volume were resolved by LMD to get the production function components, i.e. PF components. Then, extrapolation forecasting of each PF component was carried out by using SVM function fitting method,respectively. In addition, the forecasting results were reconstructed, and the forecasted theoretical values of gas emission volume were finally obtained. From the case study in one mine, the forecasting accuracy of the method proposed in this paper is higher than conventional SVM methods, and the established forecasting model of coalface gas emission based on this method has better rationality and reliability. Therefore, with the acquisition of production function components and small sample forecasting by SVM, the physical mechanisms and laws in data can be fully exploited, which accords well with the physical mechanism that using data themselves to get their interaction. This method provides a basis for improving the forecasting accuracy of gas emission volume.

Key words: gas emission volume, forecasting, SVM-LMD, coalface