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Prediction of Methane Outbreaks in Coal Mines from Multivariate Time Series Using Random Forest

机译:基于随机森林的多元时间序列预测煤矿瓦斯暴发

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In recent years we have experienced unprecedented increase of use of sensors in many industrial applications. Examples of such are Health and Usage Monitoring Systems (HUMS) for vehicles, so-called intelligent buildings, or instrumentation on machinery in order to monitor performance, detect faults and gain insights in operational aspects. Modern sensors are capable of not only generating large volumes of data but as well transmitting that data through network and storing it for further analysis. Unfortunately, that collected data requires further analysis in order to provide useful information to the decision makers who want to reduce costs, improve safety, etc. Such analysis proved to be a challenge, as there are no generic methodologies that allow for automating data analysis and in practice costs required to analyze data are prohibitively high for many practical applications. This paper is a step in a direction of developing generic methods for sensor data analysis - it describes an application of a generic method that can be applied to arbitrary set of multivariate time series data in order to perform classification or regression tasks. The presented application relates to prediction of methane concentrations in coal mines based on time series data from various sensors. The method was tested within the framework of IJCRS'15 data mining competition and resulted in the winning model outperforming other solutions.
机译:近年来,我们在许多工业应用中经历了前所未有的传感器使用增长。这样的示例包括用于车辆,所谓的智能建筑的健康与使用情况监视系统(HUMS),或用于监视性能,检测故障并获得运营方面见识的机械仪表。现代传感器不仅能够生成大量数据,还能够通过网络传输该数据并将其存储以供进一步分析。不幸的是,收集到的数据需要进一步分析,以便为想要降低成本,提高安全性等的决策者提供有用的信息。由于没有通用的方法可以自动进行数据分析和分析,因此这种分析被证明是一项挑战。实际上,对于许多实际应用而言,分析数据所需的成本高得令人望而却步。本文是朝着开发用于传感器数据分析的通用方法的方向迈出的一步-它描述了一种通用方法的应用,该方法可应用于任意一组多元时间序列数据以执行分类或回归任务。所提出的申请涉及基于来自各种传感器的时间序列数据来预测煤矿中的甲烷浓度。该方法在IJCRS'15数据挖掘竞赛的框架内进行了测试,并导致胜出模型胜过其他解决方案。

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