Learning Predictive Models for Underground Coal Mine Environment Using Sensor Data

A. Gul, Waheed Noor, Junaid Babar, Ali Nawaz, Syed Owais Athar
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Abstract

Reported casualties of mine workers is a routine affair, where a huge number of mine workers expire from mining incidents each year in underground coal mines due to harmful gases and suffocation. In this paper, a machine learning-based prediction system is designed to predict the possible hazed behaviour of the sensors to possibly prevent mine explosion or any other accident. An Arduino-based solution is placed in the mines where different sensors are mounted that can perceive the environmental factors, such as temperature and concentration, of different harmful gases. The data acquired from the sensor node is transmitted to the SD card module. The Alarm initiates a caution after sensing gas pressure above the critical state to save mine workers from any hazard. The sensor historical data is reorganized in a sliding window, and machine learning models are used to predict the next readings of each sensor.
利用传感器数据学习煤矿井下环境预测模型
报道煤矿工人的伤亡是家常便饭,每年都有大量的煤矿井下工人因有害气体和窒息而死于矿难。本文设计了一种基于机器学习的预测系统,用于预测传感器可能的混沌行为,以可能防止矿井爆炸或任何其他事故。基于arduino的解决方案被放置在矿井中,矿井中安装了不同的传感器,可以感知不同有害气体的温度和浓度等环境因素。从传感器节点采集到的数据传输到SD卡模块。报警器在检测到瓦斯压力超过临界状态后发出警告,以保护矿工免受任何危险。传感器历史数据在滑动窗口中重新组织,并使用机器学习模型来预测每个传感器的下一个读数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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