Wang Qian, Li Guowen, Hang Yuhua, Chen Silei, Qiu Yan, Zhao Wanmeng
School of Sciences, Xi'an University of Technology, Xi'an 710048, China.
Suzhou Nuclear Power Research Institute Co., Ltd., Suzhou 215004, China.
Materials (Basel). 2023 Aug 12;16(16):5599. doi: 10.3390/ma16165599.
In this paper, laser-induced breakdown spectroscopy (LIBS) combined with a probabilistic neural network (PNN) was applied to classify engineering structural metal samples (valve stem, welding material, and base metal). Additionally, utilizing data from the plasma emission spectrum generated by laser ablation of samples with different aging times, an aging time prediction model based on a firefly optimized probabilistic neural network (FA-PNN) was established, which can effectively evaluate the service performance of structural materials. The problem of insufficient features obtained by principal component analysis (PCA) for predicting the aging time of materials is addressed by the proposal of a time-frequency feature extraction method based on short-time Fourier transform (STFT). The classification accuracy (ACC) of time-frequency features and principal component features was compared under PNN. The results indicate that, in comparison to the PCA feature extraction approach, the time-frequency feature extraction method based on STFT demonstrates higher accuracy in predicting the time of aging materials. Then, the relationship between classification accuracy (ACC) and settings of PNN was discussed. The ACC of the PNN model for both the material classification test set and the aging time test set achieved 100% with Firefly (FA) optimization algorithms. This result was also compared with the ACC of ANN, KNN, PLS-DA, and SIMCA for the aging time test set (95%, 87.5%, 85%, and 62.5%, respectively). The experimental results demonstrated that the classification model using LIBS combined with FA-PNN could realize better classification accuracy.
本文将激光诱导击穿光谱技术(LIBS)与概率神经网络(PNN)相结合,用于对工程结构金属样品(阀杆、焊接材料和母材)进行分类。此外,利用不同老化时间的样品激光烧蚀产生的等离子体发射光谱数据,建立了基于萤火虫优化概率神经网络(FA-PNN)的老化时间预测模型,该模型能够有效评估结构材料的服役性能。针对主成分分析(PCA)在预测材料老化时间时特征提取不足的问题,提出了一种基于短时傅里叶变换(STFT)的时频特征提取方法。在PNN下比较了时频特征和主成分特征的分类准确率(ACC)。结果表明,与PCA特征提取方法相比,基于STFT的时频特征提取方法在预测材料老化时间方面具有更高的准确率。然后,讨论了分类准确率(ACC)与PNN设置之间的关系。采用萤火虫(FA)优化算法时,PNN模型在材料分类测试集和老化时间测试集上的ACC均达到100%。该结果还与时频特征提取方法在老化时间测试集上的ACC进行了比较(分别为95%、87.5%、85%和62.5%)。实验结果表明,使用LIBS结合FA-PNN的分类模型能够实现更好的分类准确率。