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On-line Detection and Analysis of Alloy Steel Elements Based on the LIBS Technology and Random Forest Regression

机译:基于LIBS技术和随机森林回归的合金钢元素在线检测与分析

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The Laser Induced Breakdown Spectroscopy (LIBS) technology can be used to detect the elements in the alloy steel in real time. Quantitative analysis method of the traditional LIBS technology mainly has the calibration method and calibration free method, but there are two shortcomings: low prediction accuracy and over fitting. Random Forest Regression (RFR) algorithm can be used for classification and regression, can effectively avoid “overfitting” phenomenon. Therefore, in this paper, we combine the random forest regression algorithm with laser induced breakdown spectroscopy applied to the detection of the concentration of alloy steel elements in the metallurgy industry. At the same time, compared with partial least squares method based on the LIBS, the results show that the random forest algorithm combined with the LIBS technology has the higher prediction accuracy, lower root mean square error and better robustness.
机译:激光诱导击穿光谱(LIBS)技术可用于实时检测合金钢中的元素。传统LIBS技术的定量分析方法主要有校准方法和无校准方法,但存在两个缺点:预测精度低和拟合过度。随机森林回归(RFR)算法可用于分类和回归,可以有效避免“过度拟合”现象。因此,在本文中,我们将随机森林回归算法与激光诱导击穿光谱法相结合,用于冶金行业中合金钢元素浓度的检测。同时,与基于LIBS的偏最小二乘方法相比,结果表明,结合LIBS技术的随机森林算法具有较高的预测精度,较低的均方根误差和较好的鲁棒性。

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