Quantitative analysis of coal industrial index based on data set partitioning method

You-quan Dou, Qing-song Wang, Sen Wang, Xi Shu, Ming-hui Ni, Li-Xiao Shen, Yan Li
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Abstract

In order to further improve the accuracy of quantitative analysis of coal quality by laser induced breakdown spectroscopy (LIBS), the influence of data set partitioning method on quantitative model was studied. The spectral data of 40 different coal samples were collected, and the Support Vector Regression (SVR) model and random forest (RF) model were established by Random Selection (RS), Kennard-Stone (KS) and Sample Partitioning based on joint X-Y distances (SPXY), respectively. The prediction results of ash, volatile matter and calorific value under the two models were compared. The results show that the regression model established by SPXY method combined with RF algorithm has better fitting prediction performance. The predicted root mean square errors (RMSEP) of ash, volatile matter and calorific value are 1.8872, 1.4537 and 0.9020, respectively, and the mean relative errors (MRE) are 6.96%, 3.87% and 2.14%, respectively.
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基于数据集划分方法的煤炭工业指数定量分析
为进一步提高激光诱导击穿光谱法(LIBS)煤质定量分析的准确性,研究了数据集划分方法对定量模型的影响。收集了 40 个不同煤样的光谱数据,分别采用随机选择法(RS)、肯纳-斯通法(KS)和基于 X-Y 联合距离的样本划分法(SPXY)建立了支持向量回归(SVR)模型和随机森林(RF)模型。比较了两种模型对灰分、挥发物和热值的预测结果。结果表明,SPXY 法结合 RF 算法建立的回归模型具有更好的拟合预测性能。灰分、挥发物和热值的预测均方根误差(RMSEP)分别为 1.8872、1.4537 和 0.9020,平均相对误差(MRE)分别为 6.96%、3.87% 和 2.14%。
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