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Accurate quantification of alkalinity of sintered ore by random forest model based on PCA and variable importance (PCA-VI-RF)

机译:基于PCA的随机林模型精确定量烧结矿石碱度(PCA-VI-RF)

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The alkalinity of sintered ore has an important impact on the quality, output, and energy consumption of blast furnace smelting, and there is an urgent need for a method for accurate quantifying of the alkalinity of sintered ore. The present work explores the combination of the laser-induced breakdown spectroscopy (LIBS) technique and random forest (RF) based on principal component analysis (PCA) and variable importance for the quantitative analysis of the alkalinity of sintered ore. Sixteen sintered ore samples were used in this study, and the characteristic lines of LIBS spectra for sintered ore samples can be identified based on the National Institute of Standards and Technology (NIST) database. At first, abnormal spectra are identified and rejected by PCA coupled with Mahalanob is distance (MD). Then, the input variable for the RF calibration model is optimized according to the variable importance threshold obtained by the RF model, and two RF model parameters of n(tree) and m(try) are determined by out-of-bag estimate. Finally, the PCA-VI-RF model is built under the optimal model parameters. In order to verify the predictive ability of the quantitative model, the PCA-VI-RF model prediction results were compared with the RF model, partial least-squares model, and least-squares support vector machine model. The result demonstrated that PCA-VI-RF shows better analytical performance than other methods. Compared with the RF model with the original spectrum as input, the averaged relative errors of test results decreased from 5.82% to 3.94%, coefficients of determination (R-2) of the test set increased from 0.8957 to 0.9814, and the root mean square error decreased from 0.1502% to 0.0860%. The speed of modeling and prediction has also been greatly improved, and the modeling time was reduced from 4675.56 to 16.86 s. The stability of the PCA-VI-RF model was verified by the relative standard deviation (RSD) of the test data prediction results, and the RSD reached below 4.74%. This study shows LIBS combining PCA-VI-RF is an effective method for accurate quantification of the alkalinity of sintered ore. It has great significance for the potential application of real-time online analysis of the alkalinity of sintered ore. (C) 2020 Optical Society of America
机译:烧结矿石的碱度对高炉冶炼的质量,产出和能量消耗具有重要影响,迫切需要一种准确定量烧结矿石碱度的方法。本作者探讨了激光诱导的击穿光谱(LIBS)技术和随机森林(RF)的组合,基于主成分分析(PCA)和对烧结矿石碱度的定量分析的可变重要性。在该研究中使用了六个烧结矿石样品,并且可以根据国家标准和技术研究所(NIST)数据库,鉴定烧结矿石样品的LIBS光谱的特征线。首先,通过与Mahalanob耦合的PCA识别并拒绝异常光谱是距离(MD)。然后,根据由RF模型获得的可变重要性阈值优化RF校准模型的输入变量,并且通过袋外估计来确定N(树)和M(尝试)的两个RF模型参数。最后,PCA-VI-RF模型是在最佳模型参数下构建的。为了验证定量模型的预测能力,将PCA-VI-RF模型预测结果与RF模型,局部最小二乘模型和最小二乘支持向量机模型进行比较。结果表明,PCA-VI-RF显示出比其他方法更好的分析性能。与具有原始频谱的RF模型相比,测试结果的平均相对误差降低了5.82%至3.94%,试验集的测定系数(R-2)从0.8957增加到0.9814,而且根均线误差从0.1502%降至0.0860%。建模和预测的速度也得到了大大改善,建模时间从4675.56降至16.86秒。通过测试数据预测结果的相对标准偏差(RSD)验证了PCA-VI-RF模型的稳定性,RSD达到4.74%以下。本研究表明,组合PCA-VI-RF的LIB是用于精确定量烧结矿石的碱度的有效方法。对于烧结矿石碱度的实时在线分析具有重要意义。 (c)2020美国光学学会

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    《Applied optics》 |2020年第7期|共8页
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