利用荧光光谱和基于梯度的深度学习识别和量化河口的多种污染源。

IF 5.3 3区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES Marine pollution bulletin Pub Date : 2024-11-16 DOI:10.1016/j.marpolbul.2024.117254
Zhuangming Zhao , Min Xu , Yu Yan , Shibo Yan , Qiaoyun Lin , Juan Xu , Jing Yang , Zhonghan Chen
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引用次数: 0

摘要

本研究开发了一种智能方法,用于识别和量化河口地区的水污染源。该方法对海水、雨水和这些地区典型的五种污染源等七种终端成分的激发-发射矩阵(EEM)荧光光谱进行了表征。建立了一个深度学习模型,用于识别和量化混合水体中的这些污染源。该模型输入了原始 EEM 或 EEM 与梯度输入的组合。结果表明,组合输入提高了分类和量化精度;虽然模型精度随着混合污染源数量的增加而下降,但组合输入仍将分类精度提高了3.1%至6.8%;当雨水和海水的比例低于70%时,原始输入的模型分类精度保持在57.4%,组合输入的模型分类精度保持在61.3%,污染源比例的均方根误差值分别为12.2%和11.4%。
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Identifying and quantifying multiple pollution sources in estuaries using fluorescence spectra and gradient-based deep learning
This study developed an intelligent method for identifying and quantifying water pollution sources in estuarine areas. It characterized the excitation-emission matrix (EEM) fluorescence spectra from seven end-members, including seawater, rainwater, and five pollution sources typical of these areas. A deep learning model was established to identify and quantify these pollution sources in mixed water bodies. The model was fed either the original EEM or a combined EEM and gradient input. The results indicated that the combined input enhanced classification and quantification accuracy; Although model accuracy declined with an increasing number of mixed pollution sources, the combined input still improved classification accuracy by 3.1 % to 6.8 %; When the proportion of rainwater and seawater was below 70 %, the model maintained a classification accuracy of 57.4 % with original input and 61.3 % with combined input, with root mean square error values for the pollution source proportion being 12.2 % and 11.4 %, respectively.
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来源期刊
Marine pollution bulletin
Marine pollution bulletin 环境科学-海洋与淡水生物学
CiteScore
10.20
自引率
15.50%
发文量
1077
审稿时长
68 days
期刊介绍: Marine Pollution Bulletin is concerned with the rational use of maritime and marine resources in estuaries, the seas and oceans, as well as with documenting marine pollution and introducing new forms of measurement and analysis. A wide range of topics are discussed as news, comment, reviews and research reports, not only on effluent disposal and pollution control, but also on the management, economic aspects and protection of the marine environment in general.
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