Deep learning in water protection of resources, environment, and ecology: achievement and challenges

The breathtaking economic development put a heavy toll on ecology, especially on water pollution. Efficient water resource management has a long-term influence on the sustainable development of the economy and society. Economic development and ecology preservation are tangled together, and the growt...

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Veröffentlicht in:Environmental science and pollution research international 2024-02, Vol.31 (10), p.14503-14536
Hauptverfasser: Fu, Xiaohua, Jiang, Jie, Wu, Xie, Huang, Lei, Han, Rui, Li, Kun, Liu, Chang, Roy, Kallol, Chen, Jianyu, Mahmoud, Nesma Talaat Abbas, Wang, Zhenxing
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Sprache:eng
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Zusammenfassung:The breathtaking economic development put a heavy toll on ecology, especially on water pollution. Efficient water resource management has a long-term influence on the sustainable development of the economy and society. Economic development and ecology preservation are tangled together, and the growth of one is not possible without the other. Deep learning (DL) is ubiquitous in autonomous driving, medical imaging, speech recognition, etc. The spectacular success of deep learning comes from its power of richer representation of data. In view of the bright prospects of DL, this review comprehensively focuses on the development of DL applications in water resources management, water environment protection, and water ecology. First, the concept and modeling steps of DL are briefly introduced, including data preparation, algorithm selection, and model evaluation. Finally, the advantages and disadvantages of commonly used algorithms are analyzed according to their structures and mechanisms, and recommendations on the selection of DL algorithms for different studies, as well as prospects for the application and development of DL in water science are proposed. This review provides references for solving a wider range of water-related problems and brings further insights into the intelligent development of water science.
ISSN:1614-7499
0944-1344
1614-7499
DOI:10.1007/s11356-024-31963-5