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Predictive model of overburden deformation: based on machine learning and distributed optical fiber sensing technology

机译:覆盖层变形预测模型:基于机器学习和分布式光纤传感技术

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Purpose The purpose of this paper is to establish a strain prediction model of mining overburden deformation, to predict the strain in the subsequent mining stage. In this way, the mining area can be divided into zones with different degrees of risk, and the prevention measures can be taken for the areas predicted to have large deformation. Design/methodology/approach A similar-material model was built by geological and mining conditions of Zhangzhuang Coal Mine. The evolution characteristics of overburden strain were studied by using the distributed optical fiber sensing (DOFS) technology and the predictive model about overburden deformation was established by applying machine learning. The modeling method of the predictive model based on the similar-material model test was summarized. Finally, this method was applied to engineering. Findings The strain value predicted by the proposed model was compared with the actual measured value and the accuracy is as high as 97%, which proves that it is feasible to combine DOFS technology with machine learning and introduce it into overburden deformation prediction. When this method was applied to engineering, it also showed good performance. Originality/value This paper helps to promote the application of machine learning in the geosciences and mining engineering. It provides a new way to solve similar problems.
机译:目的本文的目的是建立采矿覆盖率变形的应变预测模型,以预测随后采矿阶段的菌株。以这种方式,矿区可以分为具有不同风险程度的区域,并且可以对预测具有大变形的区域采取预防措施。设计/方法/方法采用张庄煤矿的地质和采矿条件构建了类似的材料模型。通过使用分布式光纤传感(DOFS)技术研究了覆盖菌株的进化特性,通过应用机器学习建立了关于覆盖层变形的预测模型。总结了基于类似材料模型试验的预测模型的建模方法。最后,该方法应用于工程。发现所提出的模型预测的应变值与实际测量值进行比较,准确性高达97%,这证明将DOFS技术与机器学习结合并将其引入过载变形预测是可行的。当该方法应用于工程时,它也显示出良好的性能。原创性/价值本文有助于促进机器学习在地质和采矿工程中的应用。它提供了解决类似问题的新方法。

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