A correlational research on developing an innovative integrated gas warning system: a case study in ZhongXing, China
Gas explosions and outbursts were the leading types of gas accidents in mining in China with gas concentration exceeding the threshold limit value (TLV) as the leading cause. Current research is focused mainly on using machine learning approaches for avoiding exceeding the TLV of the gas concentrati...
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Main Authors: | Robert M. X. Wu, Wanjun Yan, Zhongwu Zhang, Jinwen Gou, Jianfeng Fan, Bao Liu, Yong Shi, Bo Shen, Haijun Zhao, Yanyun Ma, Jeffrey Soar, Xiangyu Sun, Ergun Gide, Zhigang Sun, Peilin Wang, Xinxin Cui, Ya Wang |
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Format: | article |
Language: | EN |
Published: |
Taylor & Francis Group
2021
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Subjects: | |
Online Access: | https://doaj.org/article/1a9f36c461b14280ab660172c33d6b1c |
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