Aquify:AI-Enhanced Predictive Analytics Toolkit For Water Contamination
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Abstract |
Effective monitoring of water quality remains a problem, in real-time contamination detection and prediction. Despite advancements in the sector, many existing approaches continue to rely on labor-intensive laboratory testing, which limits their capacity to give rapid and accurate results. By leveraging advanced ML/DL models, it is possible to build a more robust and adaptable platform for real-time analysis, prediction, and decision support. Approaches based on models such as Random Forest, XGBoost, CNN, RNN, LSTM, and GRU have been good with the accuracy of water quality predictions. They help identify pollution sources and diagnose water quality issues, providing essential information to stakeholders in sustainable water resource management. The ML and DL approaches help improve water quality monitoring and boost future research in environmental sustainability and natural resource management. |
Year of Conference |
2024
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Conference Name |
5th International Conference on Circuits, Control, Communication and Computing, I4C 2024
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Number of Pages |
177-182,
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Publisher |
Institute of Electrical and Electronics Engineers Inc.
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ISBN Number |
979-833152853-9 (ISBN)
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URL |
https://ieeexplore.ieee.org/document/10748475
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DOI |
10.1109/I4C62240.2024.10748475
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Conference Proceedings
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