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Application of SVM in the estimation of GCV of coal and a comparison study of the accuracy and robustness of SVM

机译:SVM在煤GCV估计中的应用及SVM精度和鲁棒性的比较研究。

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Gross calorific value (GCV, HHV) is an important property of coal, but its time-consuming mensuration cannot always satisfy the practical demands. This paper investigates the application of statistics models to measure GCV quickly and accurately using coal components with mensuration that has been achieved in real time on-line in China to meet practical demands. Linear regression (LM), nonlinear regression equation (NLM), and artificial neural networks (ANN) have been developed for the estimation of GCV by researchers. In this paper, 1400 data points are used to predict the GCV of China coal. The estimating methodology progress is determined using the support vector machine (SVM), and the estimating robustness is evaluated. The comparison study manifested that the SVM model outperformed the three existing models in terms of accuracy and robustness. Meanwhile, the sampling method is improved, and the input variables are reduced to those that can be measured in real time on-line.
机译:总热值(GCV,HHV)是煤炭的重要属性,但其耗时的测定无法始终满足实际需求。本文研究了统计模型在使用煤含量测定法来快速,准确地测量GCV方面的应用,该方法已在中国实时在线实现,以满足实际需求。研究人员已经开发出线性回归(LM),非线性回归方程(NLM)和人工神经网络(ANN)来估算GCV。本文使用1400个数据点来预测中国煤炭的GCV。使用支持向量机(SVM)确定估计方法的进度,并评估估计的鲁棒性。对比研究表明,在准确性和鲁棒性方面,SVM模型优于现有的三个模型。同时,改进了采样方法,并将输入变量减少为可以实时在线测量的变量。

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