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An Event Reporting and Early-Warning Safety System Based on the Internet of Things for Underground Coal Mines: A Case Study

机译:基于物联网的地下煤矿事件报告与预警安全系统:案例研究

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Fatal accidents associated with underground coal mines require the implementation of high-level gas monitoring and miner’s localization approaches to promote underground safety and health. This study introduces a real-time monitoring, event-reporting and early-warning platform, based on cluster analysis for outlier detection, spatiotemporal statistical analysis, and an RSS range-based weighted centroid localization algorithm for improving safety management and preventing accidents in underground coal mines. The proposed platform seamlessly integrates monitoring, analyzing, and localization approaches using the Internet of Things (IoT), cloud computing, a real-time operational database, application gateways, and application program interfaces. The prototype has been validated and verified at the operating underground Hassan Kishore coal mine. Sensors for air quality parameters including temperature, humidity, CH 4 , CO 2 , and CO demonstrated an excellent performance, with regression constants always greater than 0.97 for each parameter when compared to their commercial equivalent. This framework enables real-time monitoring, identification of abnormal events (>90%), and verification of a miner’s localization (with <1.8 m of error) in the harsh environment of underground mines. The main contribution of this study is the development of an open source, customizable, and cost-effective platform for effectively promoting underground coal mine safety. This system is helpful for solving the problems of accessibility, serviceability, interoperability, and flexibility associated with safety in coal mines.
机译:与地下煤矿相关的致命事故需要实施高级别的瓦斯监测和矿工的本地化方法,以促进地下安全与健康。本研究引入了基于异常分析的聚类分析,时空统计分析和基于RSS范围的加权质心定位算法的实时监视,事件报告和预警平台,以改善地下煤矿的安全管理和预防事故地雷。所提出的平台使用物联网(IoT),云计算,实时操作数据库,应用程序网关和应用程序接口无缝集成了监视,分析和本地化方法。该原型已在运行中的地下Hassan Kishore煤矿进行了验证和验证。空气质量参数(包括温度,湿度,CH 4,CO 2和CO)的传感器表现出出色的性能,与商用参数相比,每个参数的回归常数始终大于0.97。该框架可在地下矿山的恶劣环境中进行实时监控,识别异常事件(> 90%)并验证矿工的定位(误差<1.8m)。这项研究的主要贡献是开发了可有效提升地下煤矿安全性的开源,可定制且经济高效的平台。该系统有助于解决与煤矿安全相关的可访问性,可维护性,互操作性和灵活性问题。

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