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Prediction of Coal Calorific Value Based on a Hybrid Linear Regression and Support Vector Machine Model

机译:基于混合线性回归和支持向量机模型的煤热值预测

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The gross calorific value (GCV) is an important property defining the efficiency of coal. There exist a number of correlations for estimating the GCV of a coal sample based upon its proximate and ultimate analyses. These correlations are mainly linear in character although there are indications that the relationship between the GCV and a few constituents of the proximate and ultimate analyses could be nonlinear, which has made artificial intelligence models as a useful tool for a more accurate GCV prediction. This paper focuses on an innovative method of GCV prediction using combination of Multivariate Linear Regression (MLR) as predictor and Support Vector Machine (SVM) as an error correction tool based on proximate and ultimate analyses. The GCV have been predicted using the MLR, ANN and the hybrid MLR–SVM models. In the analysis root mean squared error have been employed to compare performances of the models. Results demonstrated that both models have good prediction ability; however the hybrid MLR– SVM has better accuracy.
机译:的总热值(GCV)是定义煤的效率的重要性质。存在许多相关性的估计基于其近端和最终分析煤样的GCV。这些相关性主要是线性的字符虽然有迹象表明,GCV和近端和最终分析的几个成分之间的关​​系可以是非线性的,这使得人工智能模型作为一个更精确的预测GCV一个有用的工具。本文重点研究使用多元线性回归(MLR)作为预测器和支持向量机(SVM)的组合作为基于邻近和最终分析纠错工具GCV预测的一种创新的方法。该GCV一直用MLR,ANN和混合MLR-SVM模型预测。在分析根一直采用均方误差比较模型的演出。结果表明,这两个模型具有良好的预测能力;然而,混合动力MLR- SVM具有更好的精度。

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