摘要
Recent work has validated a new method for estimating the grain size of microgranular materials in the range of tens to hundreds of micrometers using laser-induced breakdown spectroscopy(LIBS).In this situation,a piecewise univariate model must be constructed to estimate grain size due to the complex dependence of the plasma formation environment on grain size.In the present work,we tentatively construct a unified calibration model suitable for LIBS-based estimation of those grain sizes.Specifically,two unified multivariate calibration models are constructed based on back-propagation neural network(BPNN)algorithms using feature selection strategies with and without considering prior information.By detailed analysis of the performances of the two multivariate models,it was found that a unified calibration model can be successfully constructed based on BPNN algorithms for estimating the grain size in the range of tens to hundreds of micrometers.It was also found that the model constructed with a priorguided feature selection strategy had better prediction performance.This study has practical significance in developing the technology for material analysis using LIBS,especially when the LIBS signal exhibits a complex dependence on the material parameter to be estimated.
作者
张朝
李亚举
杨光辉
曾强
李小龙
陈良文
钱东斌
孙对兄
苏茂根
杨磊
张少锋
马新文
Zhao ZHANG;Yaju LI;Guanghui YANG;Qiang ZENG;Xiaolong LI;Liangwen CHEN;Dongbin QIAN;Duixiong SUN;Maogen SU;Lei YANG;Shaofeng ZHANG;Xinwen MA(Key Laboratory of Atomic and Molecular Physics and Functional Materials of Gansu Province,College of Physics and Electronic Engineering,Northwest Normal University,Lanzhou 730070,People’s Republic of China;Advanced Energy Science and Technology,Guangdong Laboratory,Huizhou 516000,People’s Republic of China;Institute of Modern Physics,Chinese Academy of Sciences,Lanzhou 730000,People’s Republic of China;University of the Chinese Academy of Sciences,Beijing 100049,People’s Republic of China;School of Nuclear Science and Technology,University of the Chinese Academy of Sciences,Beijing 100049,People’s Republic of China)
基金
supported in part by the National Key Research and Development Program of China(No.2017YFA0402300)
National Natural Science Foundation of China(Nos.U2241288 and 11974359)
Major Science and Technology Project of Gansu Province(No.22ZD6FA021-5)。