Abstract

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.

Highlights

  • With the rapid development of the Chinese market economy, the utilization rate of primary energy has generally increased

  • The early warning evaluation system of the “Analytic Network Hierarchy Process (ANP)-Cloud” model based on Complex Network in water inrush disaster was established to solve the problem of complex dependence relationship among disaster-causing factors and prevent water inrush disaster

  • The usability and reliability of this warning evaluation model were verified in Y coal mine. e main conclusions are as follows: (1) e knowledge of the Complex Networks is used to establish a water inrush disaster network with 161 nodes and 149 connected edges. rough analyzing topological characteristics of the water inrush disaster network, 23 multiple importance nodes were obtained

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Summary

Introduction

With the rapid development of the Chinese market economy, the utilization rate of primary energy has generally increased. Wang et al proposed the risk assessment model of coal mine water inrush disaster based on a dynamic tree [17]. Wang et al proposed the evaluation method of the accident tree model in coal mine water inrush disaster [19]. By determining the relationship between disaster-causing factors can we better prepare for early warning assessment. There is no study on using the Complex Network method combined with ANP and Cloud model to measure the important influencing factors of water inrush disaster. Is study uses Complex Network model for the first time to deal with complex relationship problems between disaster-causing factors of water inrush to prevent the occurrence of water inrush disaster in coal mine. This study offers a theoretical basis and practical guiding significance for other coal mines on the early warning work to water inrush disaster

Complex Network
ANP and the Cloud Model
Constructing the Complex Network Model
Construction of the ANP-Cloud Evaluation Model
Index Weights Based on ANP
Application
Conclusions
Full Text
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