结合专家意见和仪器数据,利用贝叶斯网络进行采场塌陷风险评价

R. Mishra, R. Kiuru, L. Uotinen, M. Janiszewski, M. Rinne
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引用次数: 0

摘要

采场塌陷是矿山常见的造成财产损失和人身伤害的事故形式。对地下矿山采场塌陷事故进行风险评估有几种方法。本文提出了一种利用贝叶斯信念网络确定采场塌陷概率的替代方法。另一种方法旨在取代芬兰一个金属矿山的主观风险评估过程。首先,通过对地下矿山利益相关者的访谈,建立了地下矿山特有的采场坍塌破坏机制;利用专家意见,利用贝叶斯网络对这些失效模式进行了映射。从访谈中获得了专家意见,并定义了他们的相关性和相互依赖性。讨论了在贝叶斯网络中使用现场仪器获得的连续数据来验证专家意见模型并创建接近实时的风险监测系统。使用“假设”情景分析讨论了使用新证据更新故障概率的问题,并描述了在发生故障时使用反向推理进行事件调查。本文进一步阐述了如何将风险评估的贝叶斯模型纳入采矿,以证明缓解措施的合理性,并将其用作决策工具。当与矿井现有的数据采集系统相结合时,可以形成实时风险管理系统的骨干。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining expert opinion and instrumentation data using Bayesian networks to carry out stope collapse risk assessment
Stope collapse is a common form of accident resulting in property loss and bodily harm in mines. There are several methods to carry out risk assessment for stope collapse incident in an underground mine. This paper presents an alternate method to determine stope collapse probability using Bayesian belief networks. The alternate methodology is designed to replace a subjective risk assessment process in a metal mine in Finland. First, the stope collapse failure mechanism specific to the underground mine was established by carrying out interviews with stake holders in the underground mine. These failure modes have been mapped using Bayesian network with the use of expert opinion. The expert opinions were obtained from the interviews and their correlation and interdependencies have been defined. Use of continuous data obtained from site instrumentation in the Bayesian network has been discussed to validate the expert opinion model and to create a near real-time risk monitoring system. Updating of failure probabilities using new evidence has been discussed using a ‘what-if’ scenario analysis and use of backward inference to carry out incident investigation in the event of a failure has been described. The paper further elaborates on how Bayesian modelling for risk assessment can be incorporated in mining to justify mitigation measures and use this as a decision-making tool. When combined with existing data collection systems in the mine, this can form the backbone for a real-time risk management system.
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