Machine Learning for Membrane Separation Applications
Autor Mashallah Rezakazemi, Kiran Mustafa, Rao Muhammad Mahtab Mahbooben Limba Engleză Paperback – iun 2025
This book will serve as a useful tool for researchers in academia and industry, but will also be an ideal reference for students and teachers in membrane science and technology who are looking for new ways to develop state-of-the-art membranes and membrane technologies for liquid and gas separations, such as wastewater treatment and CO2 mitigation.
- Provides detailed information on particular AI models for specific membrane processes
- Delivers hands on information on membrane materials, modifiers, design, and processes
- Includes state-of-the-art modern techniques for wastewater treatment CO2 mitigation
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Specificații
ISBN-13: 9780443274220
ISBN-10: 0443274223
Pagini: 300
Dimensiuni: 191 x 235 mm
Editura: ELSEVIER SCIENCE
ISBN-10: 0443274223
Pagini: 300
Dimensiuni: 191 x 235 mm
Editura: ELSEVIER SCIENCE
Cuprins
1. Introduction to Membrane Technology and Machine Learning
2. Fundamentals of Machine Learning
3. Membrane Fabrication Techniques
4. Membrane Characterization Techniques
5. Machine Learning Algorithms and Their Applicability to Membrane Processes
6. Gas Separation with Membranes
7. Water Treatment using Membrane Technology
8. Machine Learning in Membrane Fouling and Aging Predictions
9. Advanced Membrane Materials: A Machine Learning Perspective
10. Membrane Process Simulation and Machine Learning Integration
11. Challenges and Opportunities in Merging ML with Membrane Technology
12. Real-world Case Studies: Machine Learning in Membrane Applications
13. Conclusion and the Future of ML in Membrane Technology
2. Fundamentals of Machine Learning
3. Membrane Fabrication Techniques
4. Membrane Characterization Techniques
5. Machine Learning Algorithms and Their Applicability to Membrane Processes
6. Gas Separation with Membranes
7. Water Treatment using Membrane Technology
8. Machine Learning in Membrane Fouling and Aging Predictions
9. Advanced Membrane Materials: A Machine Learning Perspective
10. Membrane Process Simulation and Machine Learning Integration
11. Challenges and Opportunities in Merging ML with Membrane Technology
12. Real-world Case Studies: Machine Learning in Membrane Applications
13. Conclusion and the Future of ML in Membrane Technology