Quantitative analysis of chromium by fiber-optic laser-inducedbreakdown spectroscopy of steels for nuclear power plant based on support vector regression and random forest regression
SHI Mingxin1,2, WANG Aosong1, HUANG Dapeng1YU Han2, ZHANG Zhi2, WU Jian2
1. State Key Laboratory of Nuclear Safety Monitoring Technology and Equipment,China National Nuclear Engineering Co.,Ltd.,Shenzhen 518172,China; 2. School of Electrical Engineering,Xi′an Jiaotong University,Xi′an 710049,China
Abstract:The state detection technology of key equipment in nuclear power plants was an important guarantee for the safety and economy of nuclear power.Laser-induced breakdown spectroscopy (LIBS) was a new method for on-line measurement of elemental composition and structural states of materials.The fiber-optic laser-induced breakdown spectroscopy (fiber-optic LIBS,FO-LIBS) system which was based on the optical fiber transmission of the laser and plasma radiation was developed and the typical spectra of 20 standard steel samples and 3 steel samples to be tested were obtained.Based on support vector regression(SVR) and random forest regression(RFR),effective calibration models for quantitative measurement of Cr element were established.The optimal training effects of calibration models were obtained by screening the input spectral lines and determining the number of groups.The cross-validation results of support vector regression and the calibration results of random forest regression proved that the two algorithms both had excellent generalization ability.The determination coefficient (R2) of Cr element calibrated by the two methods reached more than 0.98 and the relative standard deviation could be limited to 10%.Based on the calibration model,the content of Cr element in three steel samples was obtained.SVR predicted 19.38%(standard value 19.33%),0.190%(standard value 0.110%) and 0.986%(standard value 0.990%),and RFR predicted 18.57%,0.16% and 0.951%,respectively.The research laid a theoretical foundation for the development of optical fiber LIBS equipment.
时铭鑫, 王傲松, 黄大鹏, 余涵, 张智, 吴坚. 基于支持向量机和随机森林算法结合光纤式激光诱导击穿光谱定量检测核电用钢中铬[J]. 冶金分析, 2021, 41(1): 30-40.
SHI Mingxin, WANG Aosong, HUANG DapengYU Han, ZHANG Zhi, WU Jian. Quantitative analysis of chromium by fiber-optic laser-inducedbreakdown spectroscopy of steels for nuclear power plant based on support vector regression and random forest regression. , 2021, 41(1): 30-40.
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