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首页> 外文期刊>Geomatics,Natural Hazards & Risk >Prediction of floor water disasters based on fractal analysis of geologic structure and vulnerability index method for deep coal mining in the Yanzhou mining area
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Prediction of floor water disasters based on fractal analysis of geologic structure and vulnerability index method for deep coal mining in the Yanzhou mining area

机译:基于兖州矿区深煤矿地质结构和脆弱性指标方法的地板水灾害预测

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Floor water-inrush incidents in coal mines in China are major problems which pose a severe threat to the daily safety of mining operations. The traditional prediction approach used for the past 50?years is the water-inrush coefficient method (WCM), which only considers two factors and cannot be applied to deep coal mining. Coal floor water inrush is controlled by many factors. Based on data collection and fractal analysis of geological structures in the Yanzhou mining area, this study proposed a vulnerability index method by integrating two tools: the analytic hierarchy process (AHP) and geographic information systems (GIS). The proposed methods include: water inrush factor analysis, fractal analysis, establishment of thematic maps of each factor, normalization of thematic maps, threshold value determination using AHP, the vulnerability index method (VIM), and the demonstration of final prediction results. This study also analyzed 314 examples of coal floor water inrush disasters and a prediction line was determined for the WCM to develop an Integrated Prediction Method (IPM). It was found that the results from the vulnerability method and IPM were very different and the vulnerability method results were more similar to actual mining conditions.
机译:中国煤矿的地板水涌入事件是对矿业业务日常安全构成严重威胁的主要问题。过去50岁使用的传统预测方法是浪涌系数法(WCM),其只考虑两个因素,不能应用于深煤开采。煤地板涌水受到许多因素的控制。基于兖州矿区地质结构的数据收集和分形分析,本研究提出了一种脆弱性指数方法,通过整合两种工具:分析层次处理(AHP)和地理信息系统(GIS)。所提出的方法包括:水涌入因子分析,分形分析,建立各个因素的主题地图,主题映射的标准化,使用AHP的阈值确定,漏洞索引方法(Vim),以及最终预测结果的演示。本研究还分析了314型煤地涌水灾害灾害和预测线的例子,用于开发综合预测方法(IPM)。结果发现,漏洞方法和IPM的结果非常不同,漏洞方法结果与实际采矿条件更像。

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