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Classification of coal seams with respect to their spontaneous heating susceptibility--a neural network approach

机译:关于煤层自发热敏感性的分类-神经网络方法

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The paper presents the application of adaptive resonance theory of artificial neural networks (ANN) for classification of coal seams with respect to their proneness to spontaneous heating. In order to apply this technique, 31 coal samples have been collected from different Indian coalfields covering both fiery and non-fiery coal seams of varying ranks spreading over 8 different mining companies. The intrinsic properties of these samples have been determined by carrying out proximate, ultimate and petrographic analyses. The susceptibility indices of these samples have been studied by five different methods, viz. crossing point temperature, differential thermal analysis, critical air blast analysis, wet oxidation potential difference analysis and differential scanning calorimetric studies. Exhaustive correlation studies between susceptibility indices and the intrinsic properties have been carried out for identifying the appropriate spontaneous heating susceptibility indices and intrinsic properties to be used for classification of coal seams. The identified parameters are used as inputs and adaptive resonance theory of ANN has been applied to classify the coal seams into four different categories. This classification system will help the planners and practising mining engineers to take ameliorative measures in advance to prevent the occurrence of fire in mines.
机译:本文介绍了基于人工神经网络的自适应共振理论(ANN)在煤层自发加热倾向性方面的应用。为了应用这种技术,已经从印度不同的煤田收集了31个煤样,覆盖了8个不同采矿公司的不同等级的火热和非火热煤层。这些样品的内在特性已通过进行近距离,最终和岩石学分析确定。这些样品的敏感性指数已通过五种不同的方法进行了研究。交叉点温度,差热分析,临界鼓风分析,湿氧化电位差分析和差示扫描量热研究。为了确定用于煤层分类的适当的自发热敏感性指数和内在性质,已经进行了敏感性指数和内在性质之间的详尽的相关性研究。所识别的参数用作输入,并且已将ANN的自适应共振理论应用于将煤层分为四个不同类别。该分类系统将帮助规划人员和实践中的采矿工程师提前采取改善措施,以防止矿井发生火灾。

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