Abstract

Gas safety evaluation has always been vital for coal mine safety management. To enhance the accuracy of coal mine gas safety evaluation results, a new gas safety evaluation model is proposed based on the adaptive weighted least squares support vector machine (AWLS-SVM) and improved Dempster–Shafer (D-S) evidence theory. The AWLS-SVM is used to calculate the sensor value at the evaluation time, and the D-S evidence theory is used to evaluate the safety status. First, the sensor data of gas concentration, wind speed, dust, and temperature were obtained from the coal mine safety monitoring system, and the prediction results of sensor data are obtained using the AWLS-SVM; hence, the prediction results would be the input of the evaluation model. Second, because the basic probability assignment (BPA) function is the basis of D-S evidence theory calculation, the BPA function of each sensor is determined using the posterior probability modeling method, and the similarity is introduced for optimization. Then, regarding the problem of fusion failure in D-S evidence theory when fusing high-conflict evidence, using the idea of assigning weights, the importance of each evidence is allocated to weaken the effect of conflicting evidence on the evaluation results. To prevent the loss of the effective information of the original evidence followed by modifying the evidence source, a conflict allocation coefficient is introduced based on fusion rules. Ultimately, taking Qing Gang Ping coal mine located in Shaanxi province as the study area, a gas safety evaluation example analysis is performed for the assessment model developed in this paper. The results indicate that the similarity measures can effectively eliminate high-conflict evidence sources. Moreover, the accuracy of D-S evidence theory based on enhanced fusion rules is improved compared to the D-S evidence theory in terms of the modified evidence sources and the original D-S evidence theory. Since more sensors are fused, the evaluation results have higher accuracy. Furthermore, the multisensor data evaluation results are enhanced compared to the single sensor evaluation outcomes.

Highlights

  • China is a country with a large coal consumption and production where a large proportion of the production mines is related to the high gas mines. e gas accident is one of the major problems; it is necessary to investigate and solve this problem for China’s coal industry

  • Coal mine gas safety evaluation has always been a key tool for coal mine safety management

  • With the enormous development of artificial intelligence (AI), more and more practical applications are available with the artificial intelligent algorithm in the field of engineering [8,9,10,11,12], and numerous attempts have been carried out on coal spontaneous combustion [13, 14], gas explosions [15,16,17,18], etc

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Summary

Introduction

China is a country with a large coal consumption and production where a large proportion of the production mines is related to the high gas mines. e gas accident is one of the major problems; it is necessary to investigate and solve this problem for China’s coal industry. Coal mine gas safety evaluation has always been a key tool for coal mine safety management. In China, the coal mines are ordered to monitor the gas concentration, carbon monoxide concentration, carbon dioxide concentration, oxygen concentration, dust, wind speed, humidity, temperature, power state, and others by the National Coal Mine Safety Administration [1]. Rough monitoring those data automatically and identifying the gas safety state timely in the coal mine, outburst, gas accumulation, and explosion can be effectively prevented. Safety evaluation and risk assessment are important and systematic processes to assess the impact, occurrence, and Discrete Dynamics in Nature and Society consequences of human activities on a system with hazardous characteristics, and they are necessary tools for the company’s safety policy. E risk types and data sources are many and various, so are the safety evaluation techniques to assess risks.

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