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Explaining the relationship between common coal analyses and Afghan coal parameters using statistical modeling methods

机译:用统计建模方法解释普通煤分析与阿富汗煤参数之间的关系

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This study investigates the effects of proximate, ultimate and elemental analysis for Afghan coal samples on Hardgrove grindability index (HGI), Gross calorific value (GCV), and Ash fusion temperatures (AFTs) by using multivariable regression (MR) and Adaptive neuro-fuzzy inference system (ANFIS) to increase information about the properties of the Afghan coal. Statistical modeling (MR, and ANFIS) indicated that coal parameters (HGI, GCV, AFTs) can be predicted with high accuracy, where GCV, AFTs, and HGI were estimated by R~2 = 0.99, 0.95, and 0.94, respectively. The small difference between the estimated parameters and their actual values shows that these accurate results can be also applied to estimate coal properties in other coal resources of Afghanistan.
机译:这项研究使用多元回归(MR)和自适应神经模糊技术研究了阿富汗煤样品的近邻,极限和元素分析对Hardgrove可磨性指数(HGI),总热值(GCV)和灰熔融温度(AFTs)的影响推理系统(ANFIS),以增加有关阿富汗煤炭特性的信息。统计模型(MR和ANFIS)表明煤参数(HGI,GCV,AFTs)可以高精度预测,其中GCV,AFTs和HGI分别由R〜2 = 0.99、0.95和0.94估算。估计参数与其实际值之间的微小差异表明,这些准确的结果也可用于估计阿富汗其他煤炭资源中的煤炭特性。

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