About this Abstract |
Meeting |
2026 TMS Annual Meeting & Exhibition
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Symposium
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AI/ML/Data Informatics for Materials Discovery: Bridging Experiment, Theory, and Modeling
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Presentation Title |
Artificial Intelligence in Water and Wastewater Treatment: A Meta-analysis of Emerging Contaminants, Matrix Interference, and Real-time Quality Monitoring
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Author(s) |
Raghav Dosi, Kanika Dhiman |
On-Site Speaker (Planned) |
Raghav Dosi |
Abstract Scope |
Artificial intelligence is increasingly used in water and wastewater treatment, especially for modeling emerging contaminants like PFAS, nanoplastics, and pharmaceuticals. This meta-analysis evaluates over 200 studies applying AI/ML across various treatment systems, highlighting challenges in data heterogeneity, matrix interference, and real-time monitoring. We assess how AI models perform under complex environmental conditions, and how hybrid methods integrating sensor data, domain knowledge, and informed learning improve reliability.
Emphasis is placed on the role of AI/ML in optimizing functional materials such as adsorbents and membranes, and how data scarcity impacts model generalization. We also discuss FAIR data challenges and strategies like federated learning and transfer learning for overcoming fragmented datasets. By aligning AI tools with environmental materials science, this work bridges the gap between smart contaminant detection and next generation water treatment design. Our findings offer insight into advancing data driven material systems for real-time environmental sensing and resilient water infrastructure. |
Proceedings Inclusion? |
Planned: |
Keywords |
Environmental Effects, Machine Learning, Sustainability |