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Intelligent identification of ethyl paraoxon and methyl parathion based on surface enhanced Raman spectroscopy

机译:基于表面增强拉曼光谱的智能识别对氧磷和甲基对硫磷

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Surface-enhanced Raman scatters (SERS) spectroscopy is a novel detection technology which has advantages of fingerprint, high sensitivity, simple pretreatment and strong anti-interference for water and has been widely used for the analysis of organophosphorus pesticide residues. Furthermore, the intelligent species identification and quantitative analysis of organophosphorus pesticides can be achieved by combing with chemometrics methods. In the actual detection, the classification accuracy of conventional algorithms are limited for the recognition of SERS spectra of some structural analogues. The paper introduces a novel algorithm by the fusion of boosting and support vector machine (SVM) to improve the recognition accuracy of similar SERS spectroscopy of pesticides (ethyl paraoxon and methyl parathion). In the paper, the spectra of the above two pesticides from 600 to1800 cm were firstly measured using dynamic SERS, and the baseline drift of spectra was deducted through adaptive penalty least-square method. The high frequency burr was reduced by the polynomial smoothing. Finally, the classification model was respectively constructed using SVM and AdaBoost-SVM which combined the discrete AdaBoost (the one implementation of boosting) with SVM, and the algorithm performance was quantitatively evaluated using the 5-fold interaction validation method with the classification accuracy. The experimental results show that the overall classification identification of Adaboost-SVM is significantly superior to SVM, and the accuracy increases by nearly 4.23%. Additionally, during the tuning of Co and gstep for the Adaboost-SVM, the effect on the classification performance is relatively small. The phenomenon demonstrates Adaboost-SVM has the excellent robustness.
机译:表面增强拉曼散射(SERS)光谱技术是一种新颖的检测技术,具有指纹图谱,灵敏度高,预处理简单,对水的抗干扰性强等优点,已被广泛用于有机磷农药残留的分析。此外,结合化学计量学方法可以实现有机磷农药的智能物种识别和定量分析。在实际检测中,为了识别某些结构类似物的SERS光谱,传统算法的分类精度受到限制。本文介绍了一种通过增强和支持向量机(SVM)融合的新算法,以提高类似农药SERS光谱(乙基对氧磷和甲基对硫磷)的识别精度。本文首先采用动态SERS技术对上述两种农药在600〜1800 cm范围内的光谱进行了测定,并采用自适应罚最小二乘法推导了光谱的基线漂移。通过多项式平滑减少了高频毛刺。最后,分别使用SVM和AdaBoost-SVM分别构建了分类模型,将离散AdaBoost(boosting的一种实现)与SVM相结合,并使用5倍交互验证方法以分类精度对算法性能进行了定量评估。实验结果表明,Adaboost-SVM的总体分类识别效果明显优于SVM,精度提高了近4.23 \%。此外,在调整Adaboost-SVM的Co和gstep期间,对分类性能的影响相对较小。该现象表明Adaboost-SVM具有出色的鲁棒性。

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