基于 3D-EEMs 和卷积神经网络的平原河网地区农业面源污染识别

Juan Huan, Jialong Yuan, Hao Zhang, Xiangen Xu, Bing Shi, Yong J. Zheng, Xincheng Li, Chen Zhang, Qucheng Hu, Yixiong Fan, Jiapeng Lv, Liwan Zhou
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引用次数: 0

摘要

农业非点源作为有机污染的主要来源,不断流入江南平原河网地区,对水体质量、生态环境和人类健康构成严重威胁。因此,迫切需要一种能够准确识别各类农业有机污染的方法,以防止该地区的水生态系统受到严重的有机污染。本研究提出了一种名为 RA-GoogLeNet 的网络模型,用于准确识别江南平原河网地区的农业有机污染。RA-GoogLeNet 采用常州长荡湖流域农业非点源水质荧光光谱数据,基于 GoogLeNet 架构,在其 A-Inception 模块中加入了 ECA 关注机制,使模型能够自动学习独立河道特征的重要性。各A-Reception模块之间使用ResNet连接。实验结果表明,RA-GoogLeNet 在水质荧光光谱分类中表现良好,准确率达到 96.3%,比基线模型高出 1.2%,并且具有良好的召回率和 F1 分数。该研究为农业有机污染溯源提供了有力的技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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 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 ECA attention 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.
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