高斯特征提取荧光光谱法对地下水中低浓度苯酚和甲苯的鉴定与定量

IF 4.3 2区 化学 Q1 SPECTROSCOPY
Yuxi Jiang , Ruifang Yang , Nanjing Zhao , Gaofang Yin , Hengxin Song , Gaoyong Shi , Peng Huang , Ming Gao
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引用次数: 0

摘要

地下水是一种重要的淡水资源,它面临着化学工业园区排放有害化合物(如苯酚和甲苯)带来的越来越大的污染风险。检测低浓度的这些污染物对于确保水质和防止长期危害至关重要。提出了一种荧光光谱与高斯特征提取相结合的地下水中苯酚和甲苯的鉴别定量方法。首先测量了苯酚和甲苯的荧光激发发射矩阵(EEM)光谱,然后利用高斯函数进行特征提取。然后将提取的特征分别通过支持向量机(SVM)和偏最小二乘(PLS)回归进行定性识别和定量确定。为了进行定性识别,将高斯特征提取与原始特征和基于pca的特征提取方法进行了比较。为了量化,将其与峰值选取和基于pca的特征提取方法进行了比较。结果表明,经过高斯特征提取后,性能有了明显提高。对单组分样品的鉴别准确率可达95.24%,对混合样品的鉴别准确率可达90%。在混合物样品的定量分析中,苯酚浓度为2µg/L及以上和甲苯浓度为600µg/L时,平均相对误差控制在10%左右,而苯酚浓度为1µg/L时,相对误差控制在30%左右。该方法提高了识别和定量性能,为地下水中低浓度污染物的早期检测和定量提供了可靠的工具,具有很大的环境保护潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Identification and quantification of low concentration phenol and toluene in groundwater by fluorescence spectroscopy with Gaussian feature extraction

Identification and quantification of low concentration phenol and toluene in groundwater by fluorescence spectroscopy with Gaussian feature extraction
Groundwater, a vital freshwater resource, faces increasing contamination risks from chemical industrial parks discharging hazardous compounds such as phenol and toluene. Detecting these pollutants at low concentrations is essential to ensure water quality and protect against long-term hazards. A method combining fluorescence spectroscopy and Gaussian feature extraction is proposed for the identification and quantification of phenol and toluene in groundwater. Fluorescence excitation-emission matrix (EEM) spectra of phenol and toluene are first measured, followed by feature extraction using a Gaussian function. The extracted features are then employed for qualitative identification and quantitative determination via support vector machine (SVM) and partial least squares (PLS) regression, respectively. For qualitative identification, Gaussian feature extraction is compared with original feature and PCA-based feature extraction methods. For quantification, it is compared with peak picking and PCA-based feature extraction methods. The results show that after Gaussian feature extraction, the performance is significantly improved. The identification accuracy for single-component samples reached 95.24 %, while for mixture samples, the accuracy was 90 %. In quantitative analysis of mixture samples, the average relative error for phenol concentrations of 2 µg/L or higher and toluene concentrations of 600 µg/L was controlled around 10 %, while for phenol concentrations at 1 µg/L, the relative error was about 30 %. This approach enhances both identification and quantification performance, providing a reliable tool for the early detection and quantification of low-concentration contaminants in groundwater, with great potential for environmental protection.
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来源期刊
CiteScore
8.40
自引率
11.40%
发文量
1364
审稿时长
40 days
期刊介绍: Spectrochimica Acta, Part A: Molecular and Biomolecular Spectroscopy (SAA) is an interdisciplinary journal which spans from basic to applied aspects of optical spectroscopy in chemistry, medicine, biology, and materials science. The journal publishes original scientific papers that feature high-quality spectroscopic data and analysis. From the broad range of optical spectroscopies, the emphasis is on electronic, vibrational or rotational spectra of molecules, rather than on spectroscopy based on magnetic moments. Criteria for publication in SAA are novelty, uniqueness, and outstanding quality. Routine applications of spectroscopic techniques and computational methods are not appropriate. Topics of particular interest of Spectrochimica Acta Part A include, but are not limited to: Spectroscopy and dynamics of bioanalytical, biomedical, environmental, and atmospheric sciences, Novel experimental techniques or instrumentation for molecular spectroscopy, Novel theoretical and computational methods, Novel applications in photochemistry and photobiology, Novel interpretational approaches as well as advances in data analysis based on electronic or vibrational spectroscopy.
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