Comparative analysis of surface water quality prediction performance and identification of key water parameters using different machine learning models based on big data
Nanjing University of Posts and Telecommunications · Jinan University · +4 more institutions
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562
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15Topics & keywords
Topics
Keywords
- Water quality
- Identification (biology)
- Key (lock)
- Surface water
- Machine learning
- Big data
- Computer science
- Data mining
UN Sustainable Development Goals
- Clean water and sanitation
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