首页> 外文期刊>Journal of Cleaner Production >Risk assessment for long-distance gas pipelines in coal mine gobs based on structure entropy weight method and multi-step backward cloud transformation algorithm based on sampling with replacement
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Risk assessment for long-distance gas pipelines in coal mine gobs based on structure entropy weight method and multi-step backward cloud transformation algorithm based on sampling with replacement

机译:基于结构熵权法的煤矿加工长距离气管的风险评估与基于采样用替代品采样的多步后云变换算法

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Destruction of pipelines because of coal mine gob disasters may result in enormous financial loss and significantly affect public safety. Hence, risk assessment of gob pipelines is of immense significance for field personnel. Given the lack of statistical data and the limitations of expert experience, a prior single risk value is often insufficient to reflect the actual situation and cannot meet the needs of the site. The backward cloud transformation (BCT) algorithm is a method that can fully mine the local information contained in expert experience to restore the overall information. However, the existing BCT algorithm has no solution under certain conditions, which considerably limits its application. This study proposes a comprehensive risk assessment method by combining the structural entropy method with a multi-step backward cloud transformation algorithm based on sampling with replacement (MBCT-SR). First, a simplified model for rapid identification is used to determine whether it is worth calculating risk values. Second, a fault tree that fits the actual situation is established, and the weights of the indexes are determined by the structural entropy weight method. Third, the interval scores of the indexes are transformed into numerical features of the cloud model, which are then logically operated using virtual cloud algorithms. Finally, the risk values of the pipeline can be obtained, the cloud droplet diagram of the risk values is clearly shown by the forward cloud transformation (FCC) algorithm, and the risk level can be obtained by the probability that the cloud droplet falls into each risk level interval. To validate the utility of the proposed method, a case study of a coal mine gob around a long-distance gas pipeline was investigated. (C) 2019 Elsevier Ltd. All rights reserved.
机译:由于煤矿GOB灾害因煤矿而破坏管道可能导致巨大的经济损失,并显着影响公共安全。因此,GOB管道的风险评估对于现场人员来说具有巨大意义。鉴于缺乏统计数据和专家经验的局限性,先前的单一风险价值通常不足以反映实际情况,无法满足网站的需求。向后云转换(BCT)算法是一种方法,可以完全挖掘专家体验中包含的本地信息以恢复整体信息。然而,现有的BCT算法在某些条件下没有解决方案,这显着限制了其应用。本研究提出了一种通过基于使用替换(MBCT-SR)采样的多步后向云变换算法的结构熵方法来提出全面的风险评估方法。首先,用于快速识别的简化模型用于确定它是否值得计算风险值。其次,建立了拟合实际情况的故障树,并且索引的权重由结构熵权重法决定。第三,索引的间隔分数被转换为云模型的数值特征,然后使用虚拟云算法逻辑地操作。最后,可以获得管道的风险值,通过前向云转换(FCC)算法清楚地示出了风险值的云液滴图,风险级别可以通过云液滴落入每个概率来获得风险级别间隔。为了验证所提出的方法的效用,研究了对长途气体管道周围的煤矿GOB的案例研究。 (c)2019 Elsevier Ltd.保留所有权利。

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