Identification of agricultural surface source pollution in plain river network areas based on 3D-EEMs and convolutional neural networks

Agricultural non-point sources, as major sources of organic pollution, continue to flow into the river network area of the Jiangnan Plain, posing a serious threat to the quality of water bodies, the ecological environment, and human health. Therefore, there is an urgent need for a method that can ac...

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Veröffentlicht in:Water science and technology 2024-04, Vol.89 (8), p.1961-1980
Hauptverfasser: Huan, Juan, Yuan, Jialong, Zhang, Hao, Xu, Xiangen, Shi, Bing, Zheng, Yongchun, Li, Xincheng, Zhang, Chen, Hu, Qucheng, Fan, Yixiong, Lv, Jiapeng, Zhou, Liwan
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Sprache:eng
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Zusammenfassung:Agricultural non-point sources, as major sources of organic pollution, continue to flow into the river network area of the Jiangnan Plain, posing a serious threat to the quality of water bodies, the ecological environment, and human health. Therefore, there is an urgent need for a method that can accurately identify various types of agricultural organic pollution to prevent the water ecosystems in the region from significant organic pollution. In this study, a network model called RA-GoogLeNet is proposed for accurately identifying agricultural organic pollution in the river network area of the Jiangnan Plain. RA-GoogLeNet uses fluorescence spectral data of agricultural non-point source water quality in Changzhou Changdang Lake Basin, based on GoogLeNet architecture, and adds an efficient channel attention (ECA) mechanism to its A-Inception module, which enables the model to automatically learn the importance of independent channel features. ResNet are used to connect each A-Reception module. The experimental results show that RA-GoogLeNet performs well in fluorescence spectral classification of water quality, with an accuracy of 96.3%, which is 1.2% higher than the baseline model, and has good recall and F1 score. This study provides powerful technical support for the traceability of agricultural organic pollution.
ISSN:0273-1223
1996-9732
DOI:10.2166/wst.2024.122