Harnessing Artificial Intelligence / Machine Learning and IoT for Efficient Water Quality Monitoring and Membrane-Based Treatment
Current Trends and Future Developments in Bio-Membranes
Elsevier (Publisher)
Will be published approx. on 2. August 2027
Book
Paperback/Softback
425 pages
978-0-443-44518-7 (ISBN)
Description
Harnessing Artificial Intelligence / Machine Learning and IoT for Efficient Water Quality Monitoring and Membrane-Based Treatment: Current Trends and Future Developments in Bio-Membranes delves into the transformative potential of advanced technologies for sustainable water management. The book integrates AI, machine learning, and IoT to present innovative methodologies for real-time water quality monitoring, efficient wastewater treatment, and optimization of water filter membranes. Readers will discover effective solutions that ensure access to safe and clean water, addressing the pressing global water crisis head-on. The book is structured into five key sections exploring critical themes. Section I investigates the application of AI and machine learning in optimizing desalination processes. Section II highlights the challenges of biofouling in water treatment systems, showcasing IoT-enabled solutions and green membrane innovations. Section III focuses on smart effluent management systems driven by real-time data and machine learning algorithms. Section IV discusses green energy integration in water treatment practices, while Section V addresses the automation in adsorption processes, emphasizing AI's role in enhancing efficiency and sustainability.
More details
Language
English
Place of publication
Philadelphia
United States
Target group
Professional and scholarly
Product notice
Paperback (trade)
Unsewn / adhesive bound
Dimensions
Height: 235 mm
Width: 191 mm
Weight
449 gr
ISBN-13
978-0-443-44518-7 (9780443445187)
Copyright in bibliographic data is held by Nielsen Book Services Limited or its licensors: all rights reserved.
Schweitzer Classification
Persons
Arun M. Isloor is a Fellow of Royal Society of Chemistry and serving as a Professor in the Department of Chemistry, National Institute of Technology Karnataka, India, since last 16 years. His research interests includes Membrane technology, Nanomaterials, Medicinal Chemistry & Polymer chemistry. Angelo Basile is a Full Professor and a leading authority in membrane science and technology. Since 2014, he has served as Full Professor in Systems, Methods and Technologies of Chemical Engineering Processes at CNR-ITM in Rende, Italy. His work covers hydrogen purification and production using membrane reactors, CO? capture, process intensification, and the treatment of industrial effluents with advanced membrane operations. Basile has edited many scientific books and authored numerous book chapters, bridging complex research with clear knowledge for engineers and scientists. Motivated by the role of AI/ML in accelerating membrane process design and automation, he supports integrating data-driven methods for smart plants and reaction-separation optimisation.
Dr. Roopa B Hegde is an Associate Professor in the Department of Electronics and Communication Engineering at NITTE (Deemed to be University), NMAM Institute of Technology. Her expertise spans image processing, medical device development, pattern recognition, machine learning, and deep learning. A life member of the Indian Society for Technical Education (ISTE), she has received funding from the Karnataka State Council for Science and Technology and holds multiple patents. Dr. Hegde has been recognized for her research contributions, receiving awards such as the Best Paper Award at VSPICE 2020. She has numerous publications in esteemed international journals and conferences. Dr. Sneha Nayak is an assistant Professor at NMAM Institute of Technology, Nitte deemed to be University, Nitte, specialized in the field of Nanobiotechnology. Her research interests varies from green synthesis of metallic nanoparticles for environmental remediation applications to formulation of a herbal shampoo which aims at reaching out the shampoo benefits to a larger crowd. Dr. Sneha Nayak is a recipient of Research grant for scientist faculty (RGS/F) grant of Rs 500000 from VGST GoK for the year 2017-18 for the project entitled "Biosynthesis of nanoparticles and its application in detection of heavy metals in water samples and effluents?. She has published her research work in leading journals such as Bioresource Technology, Food and chemical Toxicology and marine pollution bulletin.
Amir Al Ahmed is working as a Research Scientist-I in the IRC-Renewable Energy and Power Systems (IRC-REPS), at King Fahd University of Petroleum & Minerals (KFUPM), Saudi Arabia. He completed his Ph.D. (2003) degree in Applied Chemistry from the Department of Applied Chemistry, AMU, India, followed by three consecutive postdoctoral fellowships in South Africa and Saudi Arabia. During this period, he worked on various multidisciplinary projects, in particular, conducting polymer, electrochemical sensors, nano-materials, polymeric membranes, electro-catalysis and solar cells. At present, his research activity is fundamentally focused on 3rd generation solar cell devices, such as, low band gap semiconductors, quantum dots, perovskites, and silicon nanowire based tandem cells. At the same time, he is also having projects on energy storage technologies, such as, electricity, hydrogen (in porous materials) and heat. He has worked on different NSTIP, KACST and Saudi Aramco funded projects in the capacity of a principle and co-investigator. Dr. Amir has 8 US patents.
Dr. Roopa B Hegde is an Associate Professor in the Department of Electronics and Communication Engineering at NITTE (Deemed to be University), NMAM Institute of Technology. Her expertise spans image processing, medical device development, pattern recognition, machine learning, and deep learning. A life member of the Indian Society for Technical Education (ISTE), she has received funding from the Karnataka State Council for Science and Technology and holds multiple patents. Dr. Hegde has been recognized for her research contributions, receiving awards such as the Best Paper Award at VSPICE 2020. She has numerous publications in esteemed international journals and conferences. Dr. Sneha Nayak is an assistant Professor at NMAM Institute of Technology, Nitte deemed to be University, Nitte, specialized in the field of Nanobiotechnology. Her research interests varies from green synthesis of metallic nanoparticles for environmental remediation applications to formulation of a herbal shampoo which aims at reaching out the shampoo benefits to a larger crowd. Dr. Sneha Nayak is a recipient of Research grant for scientist faculty (RGS/F) grant of Rs 500000 from VGST GoK for the year 2017-18 for the project entitled "Biosynthesis of nanoparticles and its application in detection of heavy metals in water samples and effluents?. She has published her research work in leading journals such as Bioresource Technology, Food and chemical Toxicology and marine pollution bulletin.
Amir Al Ahmed is working as a Research Scientist-I in the IRC-Renewable Energy and Power Systems (IRC-REPS), at King Fahd University of Petroleum & Minerals (KFUPM), Saudi Arabia. He completed his Ph.D. (2003) degree in Applied Chemistry from the Department of Applied Chemistry, AMU, India, followed by three consecutive postdoctoral fellowships in South Africa and Saudi Arabia. During this period, he worked on various multidisciplinary projects, in particular, conducting polymer, electrochemical sensors, nano-materials, polymeric membranes, electro-catalysis and solar cells. At present, his research activity is fundamentally focused on 3rd generation solar cell devices, such as, low band gap semiconductors, quantum dots, perovskites, and silicon nanowire based tandem cells. At the same time, he is also having projects on energy storage technologies, such as, electricity, hydrogen (in porous materials) and heat. He has worked on different NSTIP, KACST and Saudi Aramco funded projects in the capacity of a principle and co-investigator. Dr. Amir has 8 US patents.
Editor
Associate Professor, Department of Chemistry, National Institute of Technology Karnataka, India
Senior Researcher, ITM-CNR, University of Calabria, Italy
Electronics and Communication Engineering, NMAM Institute of Technology, Nitte (Deemed to be University), Nitte, India
Department of Biotechnology Engineering, NMAM Institute of Technology, Nitte (Deemed to be University), Nitte, India
Associate Professor, Center of Research Excellence in Renewable Energy, King Fahd University of Petroleum and Minerals, Dhahran, Saudi Arabia
Content
Section I. Drivers challenges and evolving technologies in desalination
1. Solving global water crisis using desalination systems- a machine learning approach
2. Machine learning assisted screening of next generation advanced materials for water desalination
3. Implications of IoT based smart architecture for water desalination: a case study
4. Performance modelling of desalination system using machine learning
5. Effective energy management in desalination systems using deep learning
Section II. Potential risks and challenges in biofouling monitoring technologies
6. Membrane innovations using IoT for achieving global water sustainability
7. Membrane fouling prediction using machine learning: a case study
8. A review on smart and robust technologies for water treatment and monitoring
9. Early prediction of membrane fouling using machine learning: a critical review
10. Design and development of green and sustainable membrane materials with antifouling capacity using IoT
Section III. Technology based monitoring for design of smart effluent management systems
11. Intelligent prediction of carbon footprint of treatment plants using Machine learning
12. Technical innovations in treatment plants: driving towards smart city inclination
13. Use of machine learning for real time data processing in treatment plants
14. Secure surveillance in treatment plants using IoT
15. A critical review on ML/AI/ smart technologies for monitoring treatment plant performance
Section IV. Green energy for water treatment: practices, awareness, and challenges
16. Artificial intelligence and IoT enabled smart systems in water treatment
17. Integration of green energy and pioneering energy-efficient technologies in treatment plants using machine learning
18. IoT based smart energy and water management: a case study
19. Role of artificial intelligence in renewable energy integration in treatment plants
20. Impact of renewable energy utilization and AI in next generation sustainable treatment plants: a review
Section V. Automation in adsorption process
21. Role of AI in adsorption process automation: recent advances and future prospects
22. Exploring AI for characteristic analysis of heavy metal adsorption
23. Simulation of heavy metal adsorption on novel nanocomposites using AI
24. Prediction of adsorption using AI models
25. Deep learning models for predicting gas adsorption capacity of novel materials
1. Solving global water crisis using desalination systems- a machine learning approach
2. Machine learning assisted screening of next generation advanced materials for water desalination
3. Implications of IoT based smart architecture for water desalination: a case study
4. Performance modelling of desalination system using machine learning
5. Effective energy management in desalination systems using deep learning
Section II. Potential risks and challenges in biofouling monitoring technologies
6. Membrane innovations using IoT for achieving global water sustainability
7. Membrane fouling prediction using machine learning: a case study
8. A review on smart and robust technologies for water treatment and monitoring
9. Early prediction of membrane fouling using machine learning: a critical review
10. Design and development of green and sustainable membrane materials with antifouling capacity using IoT
Section III. Technology based monitoring for design of smart effluent management systems
11. Intelligent prediction of carbon footprint of treatment plants using Machine learning
12. Technical innovations in treatment plants: driving towards smart city inclination
13. Use of machine learning for real time data processing in treatment plants
14. Secure surveillance in treatment plants using IoT
15. A critical review on ML/AI/ smart technologies for monitoring treatment plant performance
Section IV. Green energy for water treatment: practices, awareness, and challenges
16. Artificial intelligence and IoT enabled smart systems in water treatment
17. Integration of green energy and pioneering energy-efficient technologies in treatment plants using machine learning
18. IoT based smart energy and water management: a case study
19. Role of artificial intelligence in renewable energy integration in treatment plants
20. Impact of renewable energy utilization and AI in next generation sustainable treatment plants: a review
Section V. Automation in adsorption process
21. Role of AI in adsorption process automation: recent advances and future prospects
22. Exploring AI for characteristic analysis of heavy metal adsorption
23. Simulation of heavy metal adsorption on novel nanocomposites using AI
24. Prediction of adsorption using AI models
25. Deep learning models for predicting gas adsorption capacity of novel materials