Huang Yuting, Yuan Bingxue, Wang Xueqing, Dai Yongsheng, Wang Dongmei, Gong Zhengjun, Chen Junmin, Shen Li, Fan Meikun, Li Zhilin
Faculty of Geosciences and Environmental Engineering, Southwest Jiaotong University, Chengdu, 610031, China.
Faculty of Geosciences and Environmental Engineering, Southwest Jiaotong University, Chengdu, 610031, China.
Water Res. 2023 Apr 1;232:119662. doi: 10.1016/j.watres.2023.119662. Epub 2023 Jan 23.
The spectral fingerprint is a significant concept in nontarget screening of environmental samples to direct identification efforts to relevant and important features. Surface-enhanced Raman scattering (SERS) has long been recognized as an optical method that can provide fingerprint-like chemical information at the single-molecule level. Here, the advanced one-dimensional convolutional neural network (1D-CNN) approach was applied to accurately identify the SERS spectral signature of industrial wastewaters for source tracing. A total of 66,000 SERS spectra were acquired from wastewaters of 22 factories across 10 industrial categories at three excitation wavelengths after data augmentation. The dataset was used to train a 1D-CNN model consisting of three convolutional layers to achieve adequate feature extraction of SERS spectra. As a proof-of-concept, multimixed wastewater samples were used to simulate practical pollution scenarios and evaluate the application potential of the model. The SERS-1D-CNN platform can identify the amount and factory information of wastewaters in multimixed samples, which achieves a recognition accuracy rate of 97.33%. The results suggest that even in a complex and unknown water environment, the 1D-CNN model can accurately identify industrial wastewaters in precollected datasets, exhibiting excellent potential in pollution source tracing.
光谱指纹图谱是环境样品非靶向筛查中的一个重要概念,可将识别工作指向相关且重要的特征。表面增强拉曼散射(SERS)长期以来一直被认为是一种能够在单分子水平提供类似指纹图谱化学信息的光学方法。在此,采用先进的一维卷积神经网络(1D-CNN)方法来准确识别工业废水的SERS光谱特征以进行溯源。在数据增强后,从10个工业类别的22家工厂的废水中,在三个激发波长下共采集了66,000条SERS光谱。该数据集用于训练一个由三个卷积层组成的1D-CNN模型,以实现对SERS光谱的充分特征提取。作为概念验证,使用多混合废水样本模拟实际污染场景并评估该模型的应用潜力。SERS-1D-CNN平台能够识别多混合样本中废水的量和工厂信息,识别准确率达到97.33%。结果表明,即使在复杂且未知的水环境中,1D-CNN模型也能准确识别预收集数据集中的工业废水,在污染源追踪方面展现出卓越的潜力。