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    基于激光诱导击穿光谱法建立预测精炼钢渣中硅、钙、镁、铝含量模型的优化

    Optimization of Models for Prediction of Content of Silicon, Calcium, Magnesium and Aluminum in Refined Steel Slag Based on LIBS

    • 摘要: 针对目前冶金领域中尚无激光诱导击穿光谱法(LIBS)进行精炼钢渣成分快速分析的工业成型机现状,采用自主研发LIBS试验系统和分析软件建立了用于预测精炼钢渣中硅、钙、镁和铝含量的模型。试验先采用传统标准曲线法对结果进行预测,得到这4种元素的决定系数(R2)仅为0.833 1,0.829 4,0.803 2,0.691 3,预测值的相对误差绝对值为9.3%~26%。为了优化试验结果,试验采用化学计量学法中的标准正态变量变换(SNV)和偏最小二乘法(PLS)建立模型,预测结果的准确度有了明显提升。结果表明:在最优潜变量为15的条件下,铝元素的光谱数据经SNV预处理后,建立的PLS模型的预测效果较好,预测值的平均相对误差绝对值为6.0%,R2为0.950 2;硅、钙、镁的PLS模型预测效果较好,不需再进行SNV预处理,其预测值的相对误差绝对值为8.1%,1.5%,8.4%,R2分别为0.928 1,0.910 3,0.901 8,基本满足钢渣快速检测工作需求。

       

      Abstract: Considering that industrial forming machines based on rapid analysis of the components of refined steel slag with LIBS had not been applied in the metallurgical field, models for predicting the content of silicon, calcium, magnesium and aluminum in refined steel slag were established by using the independently developed LIBS test system and analysis software. The traditional standard curve method was used for prediction of the results first, giving results of coefficient of determination (R2) of the 4 elements of 0.833 1, 0.829 4, 0.803 2 and 0.691 3, with absolute values of relative error of the predictive values in the range of 9.3%-26%. In order to optimize testing results, standard normal variate transformetion (SNV) and partial least squares (PLS) in chemometrics were used to establish the model, and the accuracy of predictive results was significantly improved. The results showed that under the condition of optimal latent variable of 15, the PLS model established after SNV pretreatment with aluminum element spectral data had a better predictive effect, with absolute value of average relative error of 6.0% and a R2 of 0.950 2. The PLS model of silicon, calcium and magnesium had a good predictive effect without SNV conversion, the absolute values of relative errors of predictive values were 8.1%, 1.5% and 8.4%, and the R2 were 0.928 1, 0.910 3, and 0.901 8, respectively, basically meeting the requirements of the rapid detection of steel slag.

       

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