Evaluation of grain size grade of 12Cr1MoV steel based on portable laser-induced breakdown spectroscopy
LU Shengzi1, DONG Meirong*2, TANG Feiqiang2, WANG Lei1, SHANG Zihan2, CAI Junbin2
1. Guangdong Provincial Special Equipment Testing and Research Institute,Foshan 528251,China; 2. College of Electric Power,South China University of Technology,Guangzhou 510640,China
Abstract:Laser-induced breakdown spectroscopy (LIBS) is an atomic spectroscopy technique, and it has shown great potential in the field of metal failure detection.As one of the important indicators to measure metal aging,the detection of grain size grade by LIBS is of great significance for the prediction of failure characteristics.In this study,12Cr1MoV steel,which is widely used in industry,was selected and the grain size grade of the metal was evaluated using a portable LIBS device.Firstly,principal component analysis(PCA),linear discriminant analysis(LDA),recursive feature elimination(RFE)-LDA were used to reduce the dimensionality of the spectral data.Then the metal grain size grade evaluation model was established based on the data after dimensionality reduction using the support vector machine(SVM) and multilayer perceptron(MLP) classification algorithms.The influence of the remaining features on the classification performance of the model after the preliminary RFE screening of the data was explored.The results showed that the combination of RFE and LDA could improve the classification accuracy of the evaluation model,and it was found that the model constructed by further combination with MLP classification algorithm had the highest classification accuracy,which reached 94.05%.The proposed modeling scheme could effectively realize the evaluation of grain size grade of 12Cr1MoV steel based on portable LIBS equipment.
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