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首页> 外文期刊>Journal of the Southern African Institute of Mining and Metallurgy >A Bayesian network approach for geotechnical risk assessment in underground mines
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A Bayesian network approach for geotechnical risk assessment in underground mines

机译:地下矿山岩土风险评估的贝叶斯网络方法

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摘要

Underground mining gives rise to geotechnical hazards. A formal geotechnical risk assessment can help to forecast and mitigate these hazards. Frequentist probability methods can be used when the hazard does not have many variables and a lot of data is available. However, often there is not enough data for probability distributions, such as in the case of new projects. The risk assessment is often subjective and qualitative, based on expert judgement. The purpose of this research is to present the use of Bayesian networks (BNs) as an alternative to existing risk assessment methods in underground mines by combining expert knowledge with data as it becomes available. Roof fall frequency forecasting using parameter learning is demonstrated with 1141 sets of roof fall data across 12 coal mines in the USA. The prediction is nearly identical for individual mines, but when multiple mines are evaluated it is difficult to find a single best fit distribution for annual roof fall frequency. The BN approach with TNormal distribution was twice as likely to fit the observed data compared to the Poisson distribution assumed in the past. A hybrid approach using BN combining multiple probability distribution curves from historical data to predict annual roof fall is proposed. The BN models can account for variability for multiple parameters without increasing the complexity of the calculation. BNs can work with varying amounts of data, which makes them a good tool for real-time risk assessment in mines.
机译:地下采矿引起了岩土危险。正式的岩土风险评估可以帮助预测和减轻这些危害。当危险没有很多变量并且有很多数据可用时,可以使用频繁的概率方法。但是,通常没有足够的数据用于概率分布,例如在新项目的情况下。根据专家判断,风险评估通常是主观的和定性的。这项研究的目的是通过将专家知识与数据相结合,将使用贝叶斯网络(BNS)作为现有风险评估方法的替代方法。使用参数学习的屋顶秋季频率预测,在美国的12个煤矿中,有1141套屋顶跌落数据被证明。对于单个矿山,预测几乎相同,但是当评估多个矿山时,很难为年度屋顶秋季频率找到单个最佳拟合分布。与过去假定的泊松分布相比,与观测到的数据相比,具有跨正态分布的BN方法的可能性是符合观察到的数据的两倍。提出了一种使用BN结合多个概率分布曲线从历史数据到预测年度屋顶下降的混合方法。 BN模型可以考虑多个参数的可变性,而不会增加计算的复杂性。 BNS可以使用不同数量的数据,这使它们成为矿山实时风险评估的好工具。

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