Risk Early Warning Evaluation of Coal Mine Water Inrush Based on Complex Network and Its Application
As one of the five major coal mine disasters, the water inrush disaster poses a serious threat to the safety of the country and people, so the prevention work for that becomes very important. However, there is no perfect assessment system that can better solve the complex dependence relationships am...
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Series: | Advances in Civil Engineering |
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doaj-5c9d103f7c1c4f14b31e8947c08fe3af2021-05-03T00:01:32ZengHindawi LimitedAdvances in Civil Engineering1687-80942021-01-01202110.1155/2021/9980948Risk Early Warning Evaluation of Coal Mine Water Inrush Based on Complex Network and Its ApplicationYanhui Li0Jianbiao Bai1Wei Yan2Xiangyu Wang3Bowen Wu4Shuaigang Liu5Jun Xu6Jiaxin Sun7School of MinesState Key Laboratory of Coal Resources and Safe MiningCollege of Energy and Mining EngineeringSchool of MinesSchool of MinesSchool of MinesSchool of ScienceXuzhou Construction Machinery Co.,LtdAs one of the five major coal mine disasters, the water inrush disaster poses a serious threat to the safety of the country and people, so the prevention work for that becomes very important. However, there is no perfect assessment system that can better solve the complex dependence relationships among disaster-causing factors of water inrush disasters. This study applied the knowledge of Complex Networks to research water inrush disaster, and based on that, the early warning evaluation system that combined ANP and Cloud model was established in order to solve the complex dependence problem and prevent the occurrence of water inrush. Moreover, this evaluation model was applied to the example Y coal mine to verify its superiority and feasibility. The results showed that the main cloud of goal was located at the yellow-strong warning level, and the first-level indicators were, respectively, at that the yellow-strong level of mining conditions, the yellow-strong warning level of hydrological factors, between the yellow-strong warning level and purple-general level of the geological structure, and among the blue-slightly weak warning level, purple-general level, and yellow-strong level of the human factor. The prediction results were consistent with the actual situation of the coal water inrush disaster in Y mine, which further proved that this early warning evaluation model is reliable. In response to the forecast results, the authors put forward relative improvements necessary to strengthen the prevention ability to disaster-causing factors among hydrological factors, mining conditions, and geological structure, which should comprehensively increase knowledge, technology, and management of workers to avoid leaving out disaster-causing factors. Meanwhile, the warning evaluation model also provides the relevant experience basis for other types of early warning assessment networks.http://dx.doi.org/10.1155/2021/9980948 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yanhui Li Jianbiao Bai Wei Yan Xiangyu Wang Bowen Wu Shuaigang Liu Jun Xu Jiaxin Sun |
spellingShingle |
Yanhui Li Jianbiao Bai Wei Yan Xiangyu Wang Bowen Wu Shuaigang Liu Jun Xu Jiaxin Sun Risk Early Warning Evaluation of Coal Mine Water Inrush Based on Complex Network and Its Application Advances in Civil Engineering |
author_facet |
Yanhui Li Jianbiao Bai Wei Yan Xiangyu Wang Bowen Wu Shuaigang Liu Jun Xu Jiaxin Sun |
author_sort |
Yanhui Li |
title |
Risk Early Warning Evaluation of Coal Mine Water Inrush Based on Complex Network and Its Application |
title_short |
Risk Early Warning Evaluation of Coal Mine Water Inrush Based on Complex Network and Its Application |
title_full |
Risk Early Warning Evaluation of Coal Mine Water Inrush Based on Complex Network and Its Application |
title_fullStr |
Risk Early Warning Evaluation of Coal Mine Water Inrush Based on Complex Network and Its Application |
title_full_unstemmed |
Risk Early Warning Evaluation of Coal Mine Water Inrush Based on Complex Network and Its Application |
title_sort |
risk early warning evaluation of coal mine water inrush based on complex network and its application |
publisher |
Hindawi Limited |
series |
Advances in Civil Engineering |
issn |
1687-8094 |
publishDate |
2021-01-01 |
description |
As one of the five major coal mine disasters, the water inrush disaster poses a serious threat to the safety of the country and people, so the prevention work for that becomes very important. However, there is no perfect assessment system that can better solve the complex dependence relationships among disaster-causing factors of water inrush disasters. This study applied the knowledge of Complex Networks to research water inrush disaster, and based on that, the early warning evaluation system that combined ANP and Cloud model was established in order to solve the complex dependence problem and prevent the occurrence of water inrush. Moreover, this evaluation model was applied to the example Y coal mine to verify its superiority and feasibility. The results showed that the main cloud of goal was located at the yellow-strong warning level, and the first-level indicators were, respectively, at that the yellow-strong level of mining conditions, the yellow-strong warning level of hydrological factors, between the yellow-strong warning level and purple-general level of the geological structure, and among the blue-slightly weak warning level, purple-general level, and yellow-strong level of the human factor. The prediction results were consistent with the actual situation of the coal water inrush disaster in Y mine, which further proved that this early warning evaluation model is reliable. In response to the forecast results, the authors put forward relative improvements necessary to strengthen the prevention ability to disaster-causing factors among hydrological factors, mining conditions, and geological structure, which should comprehensively increase knowledge, technology, and management of workers to avoid leaving out disaster-causing factors. Meanwhile, the warning evaluation model also provides the relevant experience basis for other types of early warning assessment networks. |
url |
http://dx.doi.org/10.1155/2021/9980948 |
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