LGOM矿区传统开发中高能矿震破坏强度评估的机器学习方法

Michał Witkowski
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引用次数: 0

摘要

本文介绍了一种机器学习(ML)研究方法的比较分析,用于评估位于Legnica-Głogów铜区(LGOM)矿区的传统砌体建筑因强烈采矿震动而发生采矿破坏的风险。2002年2月20日、2004年5月16日和2006年5月21日地震后发生的损失报告数据库构成了分析的基础。基于这些数据,利用概率神经网络(PNN)和支持向量机(SVM)方法建立了分类模型。先前的研究结果允许在模型中包括建筑物的结构和几何特征,以及防止采矿震动的保护措施。该模型的概率符号使得在分析位于异震冲击区的大量建筑结构时有效地评估损伤概率成为可能。所进行的分析的结果证实了这一论点,即所提出的方法可能允许以适当的概率估计采矿厂为修复对LGOM矿区传统开发的预期损害而应确保的财政支出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning (ML) Methods in Assessing the Intensity of Damage Caused by High-Energy Mining Tremors in Traditional Development of LGOM Mining Area
The paper presents a comparative analysis of Machine Learning (ML) research methods allowing to assess the risk of mining damage occurring in traditional masonry buildings located in the mining area of Legnica-Głogów Copper District (LGOM) as a result of intense mining tremors. The database of reports on damage that occurred after the tremors of 20 February 2002, 16 May 2004 and 21 May 2006 formed the basis for the analysis. Based on these data, classification models were created using the Probabilistic Neural Network (PNN) and the Support Vector Machine (SVM) method. The results of previous research studies allowed to include structural and geometric features of buildings,as well as protective measures against mining tremors in the model. The probabilistic notation of the model makes it possible to effectively assess the probability of damage in the analysis of large groups of building structures located in the area of paraseismic impacts. The results of the conducted analyses confirm the thesis that the proposed methodology may allow to estimate, with the appropriate probability, the financial outlays that the mining plant should secure for the repair of the expected damage to the traditional development of the LGOM mining area.
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