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首页> 外文期刊>Journal of Failure Analysis and Prevention >Developing a New Probabilistic Approach for Risk Analysis, Application in Underground Coal Mining
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Developing a New Probabilistic Approach for Risk Analysis, Application in Underground Coal Mining

机译:制定新的概率分析方法,在地下煤矿中的应用

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AbstractUnderground coal mining is one of the most hazardous activities in all around the word. Therefore, risk analysis has a remarkable role in the coal mining works. In this study, a new probabilistic approach is developed to evaluate the most important hazard of coal mining. For this aim, at first a fuzzy TOPSIS model is applied to rank the risks of the mining. By this way, it is possible to overcome the existing uncertainty of the risk ranking process. Application of the proposed procedure shows that the roof fall is the most important hazard in the Tabas Coal Mine in Iran. Afterward, this study tried to quantify the roof fall risk?as the most important hazard in underground coal mining. Due to the related uncertainties associated with every mine, it is very difficult to predict the roof fall. As a result, development of a methodology for evaluation of roof fall risk under uncertainty condition has a key role in safety of underground coal mines. In this paper, a new approach for analyzing the risk of roof fall is presented. For this aim, the major factors influencing the stability of the roof are utilized in a Bayesian network-based model. The proposed method is illustrated with an application in Tabas Coal Mine. The results show that that BN-based model is a capable method for adjusting to uncertainties in the roof fall risk evaluation.
机译:地下煤矿开采是世界上最危险的活动之一。因此,风险分析在煤矿工程中有着显著的作用。在这项研究中,一种新的概率方法被开发来评估最重要的煤矿开采危险。为此,首先应用模糊TOPSIS模型对采矿风险进行排序。通过这种方式,可以克服风险排序过程中存在的不确定性。建议程序的应用表明,冒顶是伊朗塔巴斯煤矿最重要的危险。之后,这项研究试图量化屋顶倒塌的风险?作为煤矿井下开采中最重要的危险源。由于与每个矿井相关的不确定性,很难预测冒顶。因此,不确定条件下冒顶风险评估方法的开发对地下煤矿的安全具有关键作用。本文提出了一种分析冒顶风险的新方法。为此,在基于贝叶斯网络的模型中利用了影响顶板稳定性的主要因素。通过在塔巴斯煤矿的应用,说明了该方法的有效性。结果表明,基于BN的模型是一种能够适应冒顶风险评估中不确定性的方法

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