Machine Learning in Water Treatment
- Nyhet
Inbunden, Engelska, 2025
Av Rakesh Namdeti, Arlene Abuda Joaquin, Oman) Namdeti, Rakesh (University of Technology and Applied Sciences - Salalah, Oman) Joaquin, Arlene Abuda (University of Technology and Applied Sciences - Salalah
3 959 kr
Produktinformation
- Utgivningsdatum2025-10-01
- FormatInbunden
- SpråkEngelska
- Antal sidor784
- FörlagJohn Wiley & Sons Inc
- ISBN9781394303496
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Rakesh Namdeti, PhD is a lecturer in the Department of Chemical Engineering at the University of Technology and Applied Sciences, Salalah. He has over 20 publications, including book chapters and articles in international journals of repute. His research interests include chemical processes, separation technology, and petroleum refining. Arlene Abuda Joaquin, PhD is lecturer in the Department of Chemical Engineering at the University of Technology and Applied Sciences, Salalah. She is credited with over 15 publications, including book chapters and articles in international journals. Her research focuses on water and wastewater treatment, water quality, and environmental pollution.
- Preface xxvii1 Overview of Wastewater Treatment and Water Purification 1Sivarethinamohan R.1.1 Clean Water: Its Significance for Society 11.2 Production of Clean Water 21.3 The Quality of Good Water 31.4 Standards for Drinking Water 31.5 The Significance of “Clean Water for All” 41.6 Value of Clean Water 41.7 Clean Water Conflict in the 21st Century 51.8 Water Pollutants’ Propensity to Harm Human Health 61.9 Impact of Clean Water on the General Well-Being of Humans 61.10 Why Communities Demand Clean Water for Socioeconomic Growth, Energy and Food Production, Survival and Health, and Healthy Ecosystems 71.11 Accomplishing SDGs 6.1 and 6.2 to Ensure Sustainable Water and Sanitation Management for All 81.12 Potential Clean Water Technologies in Use 81.13 Clean Water System 91.14 Steps Involved in Treating Wastewater 101.15 Water Purification Technology 111.16 Conclusion 12References 132 A Brief Study on Methods of Preparing Data for Machine Learning Models 15Chandra Pal M., Abhishek Dubey, Regula Thirupathi, Mohammed Ghouse Haneef Maqsood and Hansel Delos Santos2.1 Introduction 162.2 Data Collection and Integration 162.3 Data Cleaning 172.4 Data Transformation and Feature Engineering 182.5 Data Splitting 192.6 Handling Imbalanced Data 192.7 Dimensionality Reduction 202.8 Data Augmentation 202.9 Feature Scaling for Time Series Data 212.10 Conclusion 21References 223 Experimental Investigation of Greywater Treatment and Reuse Using a Wetland Adsorption System 23Nageswara Rao Lakkimsetty, Clement Varaprasad Karu and Dadamiah PMD Shaik3.1 Introduction 233.2 Materials 243.3 Analytical Techniques 243.4 Results and Discussion 253.5 Post and Pre-Treatment Analysis Results 253.6 Gas Chromatography and Mass Spectrometer (GC-MS) 263.7 Conclusions 29References 294 Water Purification and Wastewater Treatment Challenges 31Pradeep Kumar Ramteke and Ajit P. Rathod4.1 Introduction 324.2 Current State of Water Purification Technologies 344.3 Challenges in Water Purification 354.4 Wastewater Treatments: Current Practices and Innovation 364.5 Wastewater Treatments Have an Effect on Human Health and the Environment 384.6 Management of Treatment Byproducts 414.7 Impact of Climate Change on Water Resources 444.8 Sustainable Practices and Resource Recovery 464.9 Conclusion 47References 485 Innovative Wastewater Treatment Technology: Integrating Microalgae in Aeration Reactors with Advanced Oxidation for Enhanced Water Quality 55Nageswara Rao Lakkimsetty and G. Kavitha5.1 Introduction 555.2 Methodology 575.3 Results and Discussion 585.4 Conclusions 61References 616 Hydrogen Production from Wastewater by Photo-Electrolysis: A Brief Review 65Umareddy Meka6.1 Introduction 666.2 Hydrogen Production Technologies 676.3 Wastewater as a Resource for Hydrogen Production 696.4 Photo-Electrolysis 716.5 Recent Advances in Photo-Electrolysis 746.6 Applications and Future Prospects 766.7 Environmental and Economic Considerations 786.8 Conclusion 80References 817 Synopsis of Water Treatment Techniques 83Prachiprava Pradhan and Ajit P. Rathod7.1 Introduction 847.2 Pressure-Driven Membrane Technologies 857.3 Progress of Membrane Technologies for Water Treatment 867.4 Advancements in Membrane Technology for Wastewater Treatment 877.5 Conclusion 91References 918 Physical Water Treatment Principles 97Rajdeep Mallick, Soham Saha, Devanshi Datta, Susanket Pal and Subhasis Roy8.1 Introduction to Physical Water Treatment 978.2 Principles of Physical Water Treatment 1008.3 Advanced Physical Water Treatment Technologies 1128.4 Case Studies and Applications 1208.5 Conclusions 124Acknowledgement 124References 1259 Chemical Purification Procedures of Water 131Senthilnathan Nachiappan, Jayakaran Pachiyappan, Balakrishna Moorthy, Senthil Rathi Balasubramani and Karuppasamy Ramanathan9.1 Introduction to Water Purification 1319.2 Traditional Chemical Purification Methods 1339.3 Emerging Chemical Purification Technologies 1359.4 Nanotechnology in Water Purification 1399.5 Environmental and Health Impacts of Chemical Purification 1399.6 Regulatory Frameworks and Standards in Water Purification 1409.7 Future Directions and Research Opportunities 1409.8 Conclusions 141References 14210 Biological Treatment Methods for Remediating Wastewater 145Pradeep Kumar Ramteke and Ajit P. Rathod10.1 Introduction 14610.2 Fundamentals of Wastewater and Its Treatment 14810.3 Microbiology of Wastewater Treatment 15110.4 Differences between Anaerobic Treatment Methods and Aerobic Treatment Methods 15310.5 Biofilm-Based Treatment Processes 15410.6 Advanced Biological Treatment Technologies 15710.7 Case Studies and Practical Applications 15910.8 Challenges and Future Directions 16110.9 Conclusion 162References 16211 Techniques for Gathering, Preparing, and Managing Water Quality Data 169BVS Praveen, B. Ganesh, Raj Kumar Verma, M. Neha Shree and M. Sandeep Kumar11.1 Introduction 17011.2 Data Collection and Preprocessing for AI/ML Models 17211.3 Applying Machine Learning to Water Quality Analysis 17511.4 Deep Learning Approaches for Water Quality Data Management 18311.5 AI for Real-Time Water Quality Monitoring and Management 18511.6 Challenges and Future Directions in AI/ML for Water Quality Data 18611.7 Conclusions 187References 18712 Overview of Machine Learning and Its Uses 191Chandra Pal M., Abhishek Dubey, Suresh Kumar, Mohammed Maqsood and Mohammed Arshad Ali12.1 Introduction to the Key Concepts 19212.2 The Essential Building Blocks of ml 19412.3 Future Trends and Developments 200Bibliography 20113 Advanced Techniques for Water Quality Data Management Using Machine Learning 203BVS Praveen, Raj Kumar Verma, M. Neha Sree and Y. Varsha13.1 Introduction 20413.2 Overview of Machine Learning 20513.3 Advanced Machine Learning Techniques for Different Water Environments 20613.4 Challenges and Limitations on Water Quality in Machine Learning 21913.5 Conclusions 221References 22114 Water Treatment Process Optimization Techniques 225Prachiprava Pradhan and Ajit P. Rathod14.1 Introduction 22614.2 Optimization of Drinking Water Treatment Plant 22714.3 Water Treatment Process Optimization 23014.4 Conclusion 233References 23315 Optimization of Biological Treatment Processes Through Machine Learning for Remediating Wastewater 237Aparna Ray Sarkar and Dwaipayan Sen15.1 Introduction 23815.2 Conventional Activated Sludge Treatment (CAS) 23915.3 Sequencing Batch Reactor (SBR) 24015.4 Integrated Fixed Film Activated Sludge (IFAS) 24215.5 Moving Bed Media Bio Reactor (MBBR) 24415.6 Membrane Bioreactor (MBR) 24515.7 Machine Learning: A Tool to Explore Wastewater Remediation Process 24715.8 Application of ML in Bioremediation of Wastewater and Parametric Optimization 25915.9 Conclusion 262References 26216 Innovative Techniques for Enhancing Water Treatment Efficiency 265B. Sumalatha, D. Syam Babu, B. Sudarsini and M. Indira16.1 Introduction to Water Treatment Process and Optimization 26616.2 Importance and Goals of Process Optimization 26616.3 Overview of Water Treatment Process 26916.4 Performance Metrics and Evaluation Criteria 27116.5 Advanced Optimization Techniques 27416.6 Optimization of Specific Treatment Processes 27716.7 Machine Learning Optimization Approaches 27916.8 Challenges and Limitations 28216.9 Future Directions and Innovations 28216.10 Conclusions 283References 28317 Advancement in Machine Learning-Aided Advanced Oxidation Processes for Water Treatment 293Prashant Kumar, Suparna Bhattacharyya and Biswajit Debnath17.1 Introduction 29317.2 Fundamentals of Advanced Oxidation Processes and Machine Learning 29617.3 Machine Learning Applications in AOPs for Water Treatment 29817.4 Case-Studies and Successful Implementations 30317.5 Challenges and Future Directions 31517.6 Conclusion 316References 31618 Machine Learning Strategies for Wastewater Treatment Toward Zero Liquid Discharge in a Lignocellulosic Biorefinery 323P. Kalpana, S. Sharanya and P. Anand18.1 Introduction 32418.2 Processing of Biomass 32718.3 Development of Models in Treatment Process 33018.4 Implementation Steps for Machine Learning in ZLD 33518.5 Conclusion 338Acknowledgements 339References 33919 Machine Learning Techniques in Water Treatment 345Naveen Prasad B. S., Umareddy Meka, Rajasekaran R. and Saikat Banerjee19.1 Introduction 34519.2 Overview of Machine Learning 35119.3 Applications of ML in Water Treatment 35219.4 Data Sources and Preprocessing for Water Treatment 35719.5 Supervised Learning Techniques for Water Treatment 37119.6 Unsupervised Learning Techniques 37619.7 Deep Learning in Water Treatment 38019.8 Reinforcement Learning in Water Treatment 38819.9 Case Studies and Real-World Applications 39219.10 Challenges and Limitations of ML in Water Treatment 39519.11 Future Trends and Research Directions 40119.12 Conclusion 404References 40520 Bionanocomposites as Innovative Bioadsorbents for Wastewater Remediation: A Comprehensive Exploration 413Rebika Baruah and Archana Moni Das20.1 Introduction 41320.2 Research Methods 41520.3 Application of Bionanocomposites in the Wastewater Treatment 43220.4 Conclusion 447Acknowledgments 447References 44721 Utilizations of Machine Learning Algorithms in the Context of Biological Wastewater Treatment: Recent Developments and Future Prospects 453Sonanki Keshri and Ujwala N. Patil21.1 Introduction 45421.2 Principles of Water Treatment Methods 45621.3 Introduction to Machine Learning in Wastewater Treatment 45921.4 ml in Wastewater Treatment 46321.5 Case Studies and Practical Applications 46821.6 Applications in Water Quality Management 47021.7 Challenges and Limitations 47321.8 Future Prospects and Research Directions 47321.9 Final Conclusions 474References 47422 A Comprehensive Review on Machine Learning Techniques for Wastewater and Water Purification 483Sonanki Keshri and Sudha S.22.1 Introduction 48422.2 Synopsis of Water Treatment Techniques 48622.3 Machine Learning Algorithms and their Application in Wastewater Treatment 49222.4 Wastewater Treatment Modeling Using ml 49522.5 Application of ML in Water-Based Agriculture 50422.6 Challenges with ML Implementation in Water Treatment and Monitoring 50522.7 Recommendations for ML Implementation in Water Treatment and Monitoring 50622.8 Conclusions 507References 50823 Water and Wastewater Treatment and Technological Remedies for Preserving Water Quality and Implementation of Machine Learning 517Nishat Fatima and Prema P. M.23.1 Introduction 51723.2 Conventional Water and Wastewater Treatment Methods 51823.3 Technological Innovations for Water Quality Preservation 52323.4 ml in Water and Wastewater Treatment 53023.5 Conclusion 532References 53224 Experimental Study on Wastewater Treatment and Reuse Using a Biofiltration System with Machine Learning-Based Optimization 535Jayakaran Pachiyappan and Senthilnathan Nachiappan24.1 Introduction 53524.2 Objectives 53824.3 Scope of the Chapter 53824.4 Literature Review 53924.5 Methodology 54024.6 Results and Discussion 54224.7 Conclusion 544References 54425 A Review on Machine Learning in Environmental Engineering: A Focus on the Gray Water Treatment 547Vamsi Krishna Kudapa, Patchamatla J. Rama Raju, Arbind Ghataney and Nageswara Rao Lakkimsetty25.1 Introduction 54825.2 Gray Water Treatment by Using ML Techniques 54925.3 Usage of ML in Gray Water Treatment 55425.4 ANN-Based IoT Incorporation of Gray Water Treatment in Malaysia: A Case Study 55625.5 Case Study 2: Implementation of RF Model in Gray Water Treatment 55725.6 Challenges and Future Directions for ML-Based Gray Water Treatment 55725.7 Conclusion 558Bibliography 55826 Machine Learning Techniques for Wastewater Treatment and Water Purification: Review of State-Of-The-Art Practices and Applications 561Swarnadeep Saha, Protyasha Kundu, Sumanta Banerjee and Anindita Kundu26.1 Introduction 56226.2 Literature Survey 56426.3 ml Models 57026.4 Case Study I: Prediction of Water Quality Index Using ElasticNet 57626.5 Case Study II: Prediction of Water Potability Using Extra Trees Classifier 57926.6 Conclusion 581References 58327 Application of Predictive Modeling Approaches for Water Quality Prediction 587Ritam Das, Jumasri Ganguly, Saubhagya Mukherjee, Ivy Ray, Raj Kumar Arya and Pramita Sen27.1 Introduction 58827.2 Water Quality Measurement Parameters 59027.3 Overview of Predictive Modeling and Its Significance in WQ Prediction 59227.4 Brief Discussion on ML Models 59427.5 Steps of ML Algorithms in WQ Prediction 59927.6 Comparing Model Predictions with Experimental Results 60027.7 Challenges and Future Perspectives 604References 60428 Next-Generation Water Purification: Harnessing Machine Learning for Optimal Treatment and Monitoring 609Rompicherla Srividya, A.V. Raghavendra Rao, Boppena Karuna, Kolluru Sree Manaswini and Sravani Sameera Vanjarana28.1 Introduction to Machine Learning Techniques 61028.2 Supervised Learning Techniques 61128.3 Unsupervised Learning Techniques 61528.4 Reinforcement Learning Techniques 61928.5 Hybrid and Ensemble Techniques 62228.6 Deep Learning Techniques 62828.7 Emerging Techniques and Future Directions 630References 63029 Revolutionizing Water Treatment Facilities with Machine Learning: Techniques, Applications, and Case Studies 637A.V. Raghavendra Rao, Rompicherla Srividya, Sravani Sameera Vanjarana, B. Karuna and Archana Rao P.29.1 Introduction 63829.2 ml Techniques in Water Treatment 63929.3 Applications of ML in Water Treatment 64829.4 Case Studies 65129.5 Challenges and Opportunities 65429.6 Prospective Developments in ML for Water Treatment Facilities 65629.7 Conclusion 660References 66030 Advanced Techniques for Water Treatment Process Optimization 671V. Sravani Sameera, Rompicherla Srividya, Anup Ashok, KSNV Prasad, Boppena Karuna, Ganesh Botla and A.V. Raghavendra Rao30.1 Introduction 67130.2 ml Techniques for Optimization 67330.3 Integration of ML Models with Real-Time Monitoring 67930.4 Challenges and Limitations 68330.5 Hybrid Optimization Models 68630.6 Economic and Environmental Impacts 68930.7 Future Trends and Advancements 69230.8 Conclusions 696Bibliography 69731 Regression Models for Prediction and Evaluation of Water Contamination: A Comparative Study 707Vamsi Krishna Kudapa, Santhosh Chanemougam, Salman Ahmad and Nageswara Rao Lakkimsetty31.1 Introduction 70731.2 Regression Models for Water Quality Prediction 70831.3 Case Studies on Predictive Water Contamination via Regression 71431.4 Performance Evaluation Comparison for Different Models 71531.5 Conclusion 716Bibliography 71732 Implications of Regression Analysis for Predicting Water Contamination Levels 719Nirlipta Priyadarshini Nayak and Rahul Kumar Singh32.1 Introduction 71932.2 Regression Analysis for Water Quality Prediction 72132.3 Existing Regression Analysis Model 72332.4 Conclusion 724References 725Index 729