Muutke küpsiste eelistusi

Artificial Intelligence-Driven Models for Environmental Management [Kõva köide]

Edited by (Padm. Dr. V. B. Kolte College of Engineering, India)
  • Formaat: Hardback, 416 pages
  • Ilmumisaeg: 24-Jun-2025
  • Kirjastus: John Wiley & Sons Inc
  • ISBN-10: 1394282524
  • ISBN-13: 9781394282524
Teised raamatud teemal:
  • Formaat: Hardback, 416 pages
  • Ilmumisaeg: 24-Jun-2025
  • Kirjastus: John Wiley & Sons Inc
  • ISBN-10: 1394282524
  • ISBN-13: 9781394282524
Teised raamatud teemal:
"This book provides tools and methods to monitor and predict environmental pollutants faster and more accurately. It covers different AI models and tools for achieving sustainable environmental development along as well as recent research directions for environmental issues. The book introduces novel intelligent techniques needed to address environmental pollution for global environmental health and puts forth insights on the next generation of intelligent pollution monitoring techniques. Topics include:Application of AI in Environmental Sustainability; The Role of AI in Environmental Research and Sustainability; The Living Environment and New Era of AI Education for a Sustainable Future; Managing Natural Resources Through Innovation: The Importance of Sustainable AI; AI-powered Soil Management; AI for Evaluation of the Impacts of Environmental Pollution on Human Health; Man-made Environmental Pollution with an Eye to Future Reduction using AI Network Techniques; AI Technology for Protection of Water Supplies from Contamination to Produce Healthy Foods; AI and Waste Management Technologies for Sustainable Agriculture; The Environmental AI Economy on Natural Resources Management; Environmental, Social and Economic Aspects of Natural Resource: AI Law and Policy Implications to Protect the Earth; AI in Healthy Natural Resource Management: Healthy Soils for Healthy Food Productions; Future Directions of AI for Management of Natural Resources"--

Step-by-step guidelines for the development of artificial neural network-based environmental pollution models

Artificial Intelligence-Driven Models for Environmental Management delves into the application of AI across a plethora of areas in environmental management, including climate forecasting, natural resource optimization, waste management, and biodiversity conservation. This book shows how AI can help in monitoring, predicting, and mitigating environmental impacts with tremendous accuracy and speed by leveraging machine learning, deep learning, and other data-driven models. The methodologies explored in this volume reflect a synthesis of computational intelligence, data science, and ecological expertise, underscoring how AI-driven systems have been making strides in managing and preserving our planet's natural resources.

The text is structured to guide readers through numerous AI models and their practical environmental management applications, showcasing theoretical foundations as well as case studies. This book also addresses the challenges and ethical considerations related to deploying AI in ecological contexts, underscoring the importance of transparency, inclusivity, and alignment with sustainability goals.

Sample topics discussed in Artificial Intelligence-Driven Models for Environmental Management include:

  • Tools and methods for monitoring and predicting environmental pollutants faster and more accurately
  • AI technology for the protection of water supplies from contamination to produce healthier foods
  • Use of AI for the evaluation of the impacts of environmental pollution on human health
  • AI and waste management technologies for sustainable agriculture and soil management
  • The role of AI in environmental research and sustainability and key social and economic aspects of natural resource management through AI

Artificial Intelligence-Driven Models for Environmental Management is a timely, forward-thinking resource for a diverse readership, including researchers, policymakers, environmental scientists, and AI practitioners.

List of Contributors xxi

Preface xxiii

Part I Foundations of AI in Environmental Management 1

1 Application of AI in Environmental Sustainability 3
Pawan Whig, Shashi Kant Gupta, Rahul Reddy Nadikattu, and Pavika Sharma

1.1 Introduction 3

1.1.1 Importance of AI in Addressing Environmental Challenges 4

1.2 AI Applications in Environmental Monitoring 6

1.2.1 Remote Sensing and Satellite Imaging 6

1.2.2 IoT Sensors and Data Collection 7

1.2.3 Predictive Analytics for Environmental Health 8

1.2.4 Real-Time Monitoring of Air and Water Quality 8

1.3 AI in Climate Change Mitigation 9

1.3.1 Predicting and Analyzing Climate Trends 10

1.3.2 AI-Driven Carbon Footprint Reduction Strategies 10

1.3.3 Renewable Energy Optimization Through AI 11

1.3.4 AI in Forest Conservation and Reforestation 12

1.4 AI in Resource Management 13

1.4.1 Sustainable Agriculture and AI-Assisted Precision Farming 13

1.4.2 AI in Water Resource Management and Conservation 14

1.4.3 Waste Management and Recycling Optimization 15

1.4.4 Circular Economy and Resource Efficiency 16

1.5 AI in Biodiversity Conservation 17

1.5.1 Wildlife Monitoring and Poaching Prevention 18

1.5.2 AI-Assisted Habitat Restoration 18

1.5.3 Species Identification and Population Tracking 19

1.5.4 Marine Ecosystem Management Through AI 20

1.6 AI in Sustainable Urban Planning 21

1.6.1 Smart Cities and Sustainable Infrastructure 21

1.6.2 AI in Reducing Urban Energy Consumption 22

1.6.3 Optimizing Urban Traffic for Reduced Emissions 23

1.6.4 AI-Enabled Green Building Design 24

1.7 Ethical and Governance Considerations 25

1.7.1 Ethical Implications of AI in Environmental Management 25

1.7.2 AI and Environmental Justice 27

1.7.3 Regulatory Frameworks for AI in Sustainability 28

1.7.4 Data Privacy and Security in Environmental AI Applications 29

1.7.5 Case Study 30

1.7.5.1 Background 30

1.7.5.2 Conclusion 32

1.8 Challenges and Future Prospects 33

1.8.1 Technological and Resource Limitations 33

1.8.2 Potential Risks and Unintended Consequences 34

1.8.3 AIs Role in Achieving Global Sustainability Goals 35

1.8.4 Future Directions in AI for Environmental Sustainability 36

1.9 Conclusion 38

References 38

2 The Role of AI in Environmental Research and Sustainability 43
Iti Batra, Seema Nath Jain, Nikhitha Yathiraju, and Kavita Mittal

2.1 Introduction 43

2.1.1 Overview of AI in Environmental Research 44

2.1.2 Importance of AI in Sustainability Efforts 44

2.1.3 Scope and Objectives of the Study 45

2.2 AI Applications in Environmental Monitoring 46

2.2.1 Remote Sensing and Satellite Imaging 47

2.2.2 AI for Climate Modeling and Forecasting 48

2.2.3 Real-Time Environmental Data Collection 49

2.3 AI in Natural Resource Management 50

2.3.1 Optimizing Water and Energy Use 50

2.3.2 Smart Agriculture and Precision Farming 51

2.3.3 AI for Sustainable Fisheries and Forest Management 52

2.4 AI for Biodiversity and Ecosystem Conservation 53

2.4.1 AI-Powered Species Identification and Tracking 53

2.4.2 Monitoring and Protecting Endangered Species 54

2.4.3 Predictive Analytics in Habitat Restoration 55

2.5 AI in Urban Sustainability 56

2.5.1 AI in Smart Cities and Sustainable Urban Planning 56

2.5.2 Optimizing Transportation and Energy Grids 57

2.5.3 Waste Management and Recycling Innovations 58

2.6 Reducing Environmental Footprints with AI 59

2.6.1 AI for Energy Efficiency in Industries 59

2.6.2 AI and Carbon Emissions Reduction 60

2.6.3 AI in the Circular Economy and Waste Reduction 61

2.7 Ethical Considerations in AI-Driven Environmental Research 62

2.7.1 AI Ethics and Environmental Justice 62

2.7.2 Data Privacy and Security in Environmental Monitoring 63

2.7.3 Accountability and Transparency in AI Models 64

2.8 Case Study 65

2.8.1 Background 65

2.8.2 AI Implementation 65

2.8.3 Quantitative Analysis 66

2.8.4 Challenges and Opportunities 67

2.9 Conclusion 67

References 68

3 AI and Environmental Data Science 71
Ashima Bhatnagar Bhatia, Meghna Sharma, and Bhupesh Bhatia

3.1 Introduction 71

3.1.1 Background of AI in Environmental Science 71

3.1.2 Importance of Data Science in Environmental Studies 72

3.1.3 Objectives of the Study 73

3.2 Fundamentals of Artificial Intelligence 74

3.2.1 Overview of AI Techniques 74

3.2.2 Machine Learning vs. Traditional Approaches 74

3.2.3 Deep Learning and its Applications 75

3.3 Environmental Data Science 76

3.3.1 Definition and Scope 77

3.3.2 Types of Environmental Data 77

3.3.2.1 Satellite Imagery 77

3.3.2.2 Sensor Data 78

3.3.2.3 Climate and Weather Data 78

3.3.3 Data Collection and Management 79

3.4 AI Applications in Environmental Science 80

3.4.1 Predictive Modeling of Climate Change 80

3.4.2 Ecosystem Monitoring and Assessment 81

3.4.3 Biodiversity Conservation Efforts 82

3.4.4 Pollution Detection and Management 82

3.5 Case Studies 83

3.5.1 AI in Climate Resilience Planning 83

3.5.1.1 Case Study: City of San Franciscos Climate Resilience Strategy 83

3.5.2 Machine Learning for Wildlife Conservation 84

3.5.2.1 Case Study: African Wildlife Foundations (AWF) Anti-poaching
Initiative 84

3.5.3 Applications in Water Quality Monitoring 85

3.5.3.1 Case Study: The United Nations Water Quality and Ecosystems
Project 85

3.6 Challenges and Limitations 86

3.6.1 Data Quality and Availability 86

3.6.2 Interpretability of AI Models 86

3.6.3 Ethical Considerations 87

3.7 Case Study 88

3.7.1 Objective 88

3.7.2 Data Collection and AI Model Deployment 89

3.7.3 Results and Quantitative Analysis 89

3.7.4 Discussion 90

3.7.5 Challenges and Limitations 90

3.8 Future Directions 91

3.8.1 Emerging Trends in AI and Environmental Science 91

3.8.2 Integrating AI with Traditional Environmental Practices 92

3.8.3 Policy Implications and Recommendations 93

3.9 Conclusion 94

References 95

Part II AI in Natural Resource Management 99

4 Application of AI for Natural Source Management 101
Pawan Whig, Rahul Reddy Nadikattu, Shashi Kant Gupta, and Shrikaant
Kulkarni

4.1 Introduction 101

4.1.1 Importance of Natural Resource Management 101

4.1.2 Role of AI in Enhancing Resource Management 102

4.2 AI Technologies in NRM 103

4.2.1 Machine Learning Applications 103

4.2.2 Remote Sensing and Data Analysis 104

4.2.3 Predictive Analytics for Resource Forecasting 104

4.2.4 Geographic Information Systems (GIS) 105

4.3 Applications of AI in Specific Natural Resource Sectors 106

4.3.1 Water Resource Management 106

4.3.2 Forest Management and Conservation 106

4.3.3 Biodiversity Monitoring and Conservation 107

4.3.4 Agriculture and Land Use Optimization 107

4.4 Case Studies 108

4.4.1 AI in Water Quality Monitoring 108

4.4.2 Machine Learning for Forest Fire Prediction 108

4.4.3 AI-Driven Biodiversity Assessment 109

4.4.4 Smart Agriculture Solutions 109

4.5 Challenges and Limitations 110

4.5.1 Data Quality and Availability 110

4.5.2 Ethical Considerations 110

4.5.3 Implementation Barriers 111

4.5.4 Need for Interdisciplinary Collaboration 111

4.6 Future Directions 112

4.6.1 Innovations in AI Technologies 112

4.6.2 Enhancing Policy Frameworks 112

4.6.3 Public Engagement and Awareness 113

4.6.4 Integration of AI with Other Technologies 113

4.7 Case Study: Application of AI in NRM 114

4.7.1 Introduction 114

4.7.2 Objective 114

4.7.3 Approach 114

4.7.4 Results 115

4.7.4.1 Region A (Water Resource Management) 115

4.7.5 Discussion 115

4.7.6 Key Takeaways 115

4.7.7 Conclusion 116

4.7.8 Future Work 117

References 117

5 Future Prospects of AI for Management of Natural Resources 121
Meghna Sharma, Ashima Bhatnagar Bhatia, and Bhupesh Bhatia

5.1 Introduction 121

5.1.1 Importance of AI in Natural Resource Management 122

5.1.2 Objectives of the Study 122

5.2 Overview of AI Technologies 123

5.2.1 Machine Learning 123

5.2.2 Predictive Analytics 123

5.2.3 Real-Time Data Collection 124

5.2.4 Case Studies of AI Applications 124

5.3 AI in Water Management 125

5.3.1 Water Resource Allocation 125

5.3.2 Predicting Water Demand 126

5.3.3 Monitoring Water Quality 127

5.4 AI in Forestry 127

5.4.1 Forest Inventory and Monitoring 128

5.4.2 Predictive Modeling for Forest Health 128

5.4.3 Enhancing Reforestation Efforts 129

5.5 AI in Agriculture 129

5.5.1 Precision Agriculture 130

5.5.2 Crop Yield Prediction 130

5.5.3 Pest and Disease Management 131

5.6 AI in Biodiversity Conservation 131

5.6.1 Species Monitoring 132

5.6.2 Habitat Assessment 132

5.6.3 Predictive Conservation Planning 133

5.7 Challenges and Barriers to AI Implementation 134

5.7.1 Data Privacy Concerns 134

5.7.2 Ethical Considerations 134

5.7.3 The Digital Divide 135

5.8 Case Study 136

5.8.1 Objectives of the Case Study 136

5.8.2 Methodology 136

5.8.3 Quantitative Analysis 136

5.9 Conclusion 139

References 139

Part III AI Models for Climate Change Mitigation and Adaptation 143

6 AI in Climate Change Prediction 145
Seema Sharma, Anupriya Jain, Sachin Sharma, and Sonia Duggal

6.1 Introduction 145

6.1.1 Role of AI in Climate Science 145

6.1.2 How AI Enhances Climate Change Prediction 146

6.1.3 Real-World Applications of AI in Climate Prediction 147

6.1.4 AI and Climate Mitigation 147

6.1.5 Challenges and Limitations of AI in Climate Prediction 148

6.2 AI Technologies in Climate Prediction 148

6.2.1 Machine Learning for Climate Data Analysis 149

6.2.2 Deep Learning in Climate Models 149

6.2.3 AI-Powered Satellite Imagery Analysis 149

6.2.4 AI in Weather Forecasting and Extreme Event Prediction 150

6.3 AI Applications in Climate Science 150

6.3.1 Predicting Extreme Weather Events 150

6.3.2 Long-Term Climate Projections 151

6.3.3 AI in Ocean and Polar Ice Monitoring 151

6.3.4 AI in Air Quality and Pollution Forecasting 152

6.4 AI for Climate Mitigation and Adaptation 152

6.4.1 Optimizing Energy Consumption and Emission Reduction 153

6.4.2 AI in Renewable Energy Integration 153

6.4.3 AI in Smart Grids and Infrastructure 153

6.4.4 AI for Carbon Sequestration and Natural Resource Management 154

6.5 Case Studies 155

6.5.1 Googles AI for Weather Forecasting 155

6.5.2 IBMs Green Horizon Project for Air Quality Prediction 155

6.5.3 AI and Sea-Level Rise Monitoring by the European Space Agency 155

6.5.4 AI in Urban Climate Adaptation 156

6.6 Case Study: IBMs Green Horizon Project for Air Quality Prediction 156

6.6.1 Methodology 157

6.6.2 Results 157

6.6.3 Conclusion 158

6.6.4 Future Work 159

References 159

7 AI-Driven Environmental Real-Time Monitoring, and Screening 163
Kavita Mittal, Rahul Reddy Nadikattu, Pawan Whig, and Iti Batra

7.1 Introduction 163

7.1.1 Background and Importance of Environmental Monitoring 163

7.1.2 Overview of AI Technologies in Environmental Applications 164

7.1.3 Objectives of the Document 165

7.2 Understanding AI in Environmental Monitoring 166

7.2.1 Definition of AI and its Components 166

7.2.2 Key Technologies: Machine Learning, IoT, and Remote Sensing 167

7.2.3 Role of Big Data in Environmental Monitoring 167

7.3 Applications of AI in Real-Time Environmental Monitoring 168

7.3.1 Air Quality Monitoring 168

7.3.2 Water Quality Assessment 169

7.3.3 Soil Health Monitoring 170

7.3.4 Biodiversity Tracking and Conservation 170

7.4 AI Techniques for Screening Environmental Data 171

7.4.1 Data Collection and Integration 171

7.4.2 Predictive Analytics for Environmental Changes 172

7.4.3 Anomaly Detection in Environmental Data 173

7.4.4 Visualization Tools and Techniques 173

7.5 Case Studies of AI-Driven Environmental Monitoring 174

7.5.1 Successful Implementations in Urban Areas 174

7.5.1.1 Case Study: Barcelona, Spain 174

7.5.1.2 Case Study: Singapore 175

7.5.2 Rural Applications and Impact Assessments 175

7.5.2.1 Case Study: Precision Agriculture in India 175

7.5.2.2 Case Study: Wildlife Conservation in Africa 176

7.5.3 Lessons Learned from Global Practices 176

7.6 Challenges in Implementing AI for Environmental Monitoring 177

7.6.1 Technical Barriers and Data Quality Issues 177

7.6.2 Ethical Considerations and Privacy Concerns 178

7.6.3 Financial Constraints and Resource Allocation 178

7.6.4 Interoperability and Standardization Issues 179

7.7 Case Study 180

7.8 Implementation of the AI System 180

7.9 Quantitative Analysis 180

7.10 Conclusion 181

References 182

8 AI-Driven Environmental Problem Design for Sustainable Solutions 185
Rattan Sharma, Pawan Whig, and Shashi Kant Gupta

8.1 Introduction 185

8.1.1 Role of AI in Sustainability 186

8.1.2 Research Objectives and Scope 187

8.2 AI Technologies and Techniques 188

8.2.1 Machine Learning Algorithms 188

8.2.2 Data Mining and Predictive Analytics 189

8.2.3 Optimization Models 190

8.3 AI in Real-Time Monitoring Systems 191

8.4 Environmental Problem Design Using AI 192

8.4.1 Identifying Environmental Issues 192

8.5 AI for Resource Management and Efficiency 193

8.6 AI-Driven Solutions for Carbon Footprint Reduction 194

8.7 Case Studies: AI Applications in Waste Management and Energy
Conservation 195

8.7.1 AI-Enabled Sustainable Solutions 196

8.7.1.1 Optimizing Renewable Energy Systems 196

8.7.1.2 AI in Water Resource Management 197

8.7.1.3 Sustainable Agriculture through AI 198

8.7.1.4 AI for Ecosystem and Biodiversity Conservation 199

8.7.2 Challenges and Limitations of AI in Environmental Solutions 200

8.7.2.1 Data Availability and Quality Issues 200

8.7.2.2 Ethical and Socioeconomic Considerations 201

8.7.2.3 Technical and Implementation Barriers 201

8.7.2.4 Addressing Unintended Consequences 202

8.8 Case Study 203

8.8.1 AI Solution: Smart Irrigation System 203

8.8.2 Quantitative Analysis 204

8.8.3 Environmental Impact 205

8.8.4 Challenges 205

8.9 Conclusion 205

8.9.1 Future Directions and Opportunities 206

8.9.2 AI for Climate Change Adaptation and Mitigation 206

8.10 Conclusion 207

8.10.1 The Future of AI in Sustainable Development 207

References 208

9 AI in Soil Health Management for Health Food Production 211
Rashmi Gera and Anupriya Jain

9.1 Introduction 211

9.1.1 Importance of Soil Health in Agriculture 211

9.1.2 Role of AI in Agriculture 212

9.2 Understanding Soil Health 213

9.2.1 Key Indicators of Soil Health 213

9.2.2 Soil Composition and Structure 214

9.2.3 Impact of Soil Health on Food Production 214

9.3 AI Technologies in Soil Health Management 215

9.3.1 Remote Sensing and Soil Monitoring 215

9.3.2 Machine Learning for Soil Analysis 215

9.3.3 Predictive Analytics in Soil Health 216

9.4 AI Applications in Soil Health Management 216

9.4.1 Precision Soil Sampling 216

9.4.2 Real-Time Soil Condition Monitoring 217

9.4.3 Nutrient Management and Optimization 217

9.5 Case Studies 218

9.5.1 AI in Soil Fertility Assessment 218

9.5.2 Successful AI Implementations in Crop Management 218

9.5.3 AI-Driven Soil Remediation Strategies 218

9.6 Case Study 219

9.6.1 Objectives 219

9.6.2 Methodology 219

9.6.3 Results 220

9.6.4 Conclusion 220

9.6.5 Future Scope 221

References 222

Part IV AI in Pollution Control and Waste Management 225

10 AI for Evaluation of the Impacts of Environmental Pollution on Human
Health 227
Anumaan Whig, Vaibhav Gupta, and Pawan Whig

10.1 Introduction 227

10.1.1 Role of AI in Addressing Environmental Health Challenges 228

10.1.2 Importance of Data-Driven Approaches in Pollution and Health Studies
228

10.1.3 AI Applications in Environmental Monitoring 229

10.1.4 Real-time Air Quality Monitoring 229

10.1.5 Water Contamination Detection and Analysis 230

10.1.6 Remote Sensing for Pollution Tracking 230

10.1.7 AI in Health Impact Assessment 231

10.1.8 Machine Learning for Identifying Health-Pollution Correlations 232

10.1.9 Predictive Modeling of Health Risks from Pollution 232

10.2 Case Studies: Respiratory and Cardiovascular Diseases Linked to Air
Pollution 233

10.2.1 Data Sources and Integration 234

10.2.1.1 Environmental Sensors and GIS Data 235

10.2.2 Public Health Data and Electronic Health Records (EHRs) 235

10.2.3 Integration of Environmental and Health Data for AI Models 236

10.2.4 AI Techniques in Pollution and Health Evaluation 237

10.2.4.1 Supervised and Unsupervised Learning 238

10.2.5 Neural Networks and Deep Learning for Pattern Recognition 238

10.2.6 Geographic Information Systems (GIS) and AI for Spatial Analysis 239

10.3 Case Studies 240

10.3.1 AI-Based Air Pollution Analysis in Urban Areas 241

10.3.2 Water Quality and Health Impact Studies Using AI 241

10.3.3 Cross-Regional Pollution Impact Evaluations with AI 242

10.4 Case Study 243

10.4.1 Data Sources and AI Models 244

10.4.2 Methodology 244

10.4.3 Results and Quantitative Analysis 244

10.4.4 Policy Implications and Economic Impact 245

10.4.5 Future Directions 245

10.4.6 Emerging AI Trends in Environmental Health Research 245

10.4.7 Integrating AI into Public Health Policy 246

10.4.8 AI for Sustainable Urban and Environmental Planning 247

10.4.9 Conclusion 248

References 249

11 Artificial Intelligence for Air/Water Quality Prediction 253
Shashi Kant Gupta, Ashima Bhatnagar Bhatia, Vinay Aseri, and Shrikaant
Kulkarni

11.1 Introduction 253

11.1.1 Importance of Air and Water Quality Monitoring 254

11.1.2 Role of AI in Environmental Prediction 255

11.1.3 Overview of Air and Water Pollution 256

11.1.3.1 Common Air Pollutants and Their Sources 256

11.1.3.2 Common Water Pollutants and Their Sources 258

11.1.3.3 Impact on Health and the Environment 259

11.1.4 Artificial Intelligence Techniques for Prediction 260

11.1.4.1 Machine Learning Algorithms 261

11.1.4.2 Neural Networks 261

11.1.4.3 Support Vector Machines (SVMs) 261

11.1.4.4 Decision Trees 262

11.1.4.5 Deep Learning Approaches 262

11.1.4.6 Convolutional Neural Networks (CNNs) 262

11.1.4.7 Recurrent Neural Networks (RNNs) 263

11.1.5 Reinforcement Learning in Environmental Predictions 263

11.1.5.1 Mechanism of Reinforcement Learning 263

11.1.5.2 Applications in Environmental Predictions 264

11.1.5.3 Data Collection and Preprocessing 264

11.1.5.4 Data Cleaning and Feature Selection 266

11.1.5.5 Handling Missing and Incomplete Data 267

11.1.5.6 Ozone and Nitrogen Dioxide Prediction 270

11.1.5.7 Real-time Air Quality Monitoring Systems 271

11.1.5.8 Sensor Networks and IoT Integration 271

11.1.5.9 Predictive Models for Real-time Monitoring 272

11.1.5.10 Mobile and Cloud-based Solutions 272

11.1.5.11 Early Warning and Alert Systems 272

11.1.5.12 AI Models for Water Quality Prediction 273

11.1.5.13 Predictive Models for pH, Dissolved Oxygen, and Contaminants 273

11.2 Monitoring Waterborne Pollutants 274

11.2.1 Sensor Networks for Water Quality Monitoring 274

11.2.1.1 Predictive Maintenance for Sensor Networks 275

11.2.1.2 Early Warning Systems for Water Contamination 275

11.3 Case Studies and Applications 276

11.3.1 AI-Driven Air Quality Prediction Systems in Cities 277

11.3.1.1 Case Study: Beijing, China 277

11.3.1.2 Case Study: Los Angeles, USA 277

11.3.1.3 Case Study: River Thames, UK 278

11.3.1.4 Case Study: Ganges River, India 278

11.3.1.5 Smart City Case Study: Amsterdam, Netherlands 278

11.3.1.6 Smart City Case Study: Barcelona, Spain 279

11.4 Challenges and Limitations 279

11.4.1 Data Availability and Quality Issues 279

11.4.1.1 Insufficient Data 279

11.4.1.2 Data Quality Issues 280

11.4.1.3 Solutions and Strategies 280

11.4.2 Model Accuracy and Computational Limitations 280

11.4.3 Ethical Considerations in Environmental AI 281

11.4.3.1 Accountability and Transparency 281

11.4.3.2 Equity and Access 281

11.4.3.3 Data Privacy and Security 281

11.4.3.4 Solutions and Strategies 282

11.5 Case Study 282

11.5.1 Data Collection 282

11.5.2 Model Development 283

11.5.3 Quantitative Analysis 283

11.5.3.1 Model Performance 283

11.5.3.2 Results Interpretation 283

11.5.3.3 Implementation and Impact 284

11.5.3.4 Outcomes 284

11.6 Conclusion 285

References 285

12 AI Technology for Protection of Water Supplies from Contamination to
Produce Healthy Foods 289
Sonia Duggal and Anupriya Jain

12.1 Introduction 289

12.1.1 Importance of Protecting Water Supplies for Healthy Food Production
289

12.1.1.1 Impact of Water Contamination on Agriculture 290

12.1.1.2 Key Contaminants and Their Sources 290

12.1.2 Role of AI in Water Resource Management 291

12.1.2.1 AI for Real-Time Water Quality Monitoring 291

12.1.2.2 Predictive Modeling for Contamination Prevention 291

12.1.2.3 Optimizing Water Use in Agriculture 292

12.1.2.4 Early Warning Systems for Waterborne Contaminants 292

12.2 Water Contamination and its Impact on Food Production 292

12.2.1 Common Waterborne Contaminants 293

12.2.1.1 Pathogens 293

12.2.1.2 Chemicals and Pesticides 293

12.2.1.3 Heavy Metals 294

12.2.1.4 Industrial and Agricultural Waste 294

12.2.2 Effects of Contaminated Water on Agriculture and Food Safety 294

12.2.2.1 Reduced Crop Productivity 294

12.2.2.2 Contamination of Food Products 295

12.2.2.3 Impact on Livestock and Animal Products 295

12.2.2.4 Economic and Environmental Impact 296

12.3 AI Technologies for Water Quality Monitoring 296

12.3.1 Real-Time Sensor Networks 296

12.3.1.1 Key Parameters Monitored 297

12.3.1.2 Role of AI in Sensor Data Processing 297

12.3.1.3 IoT Integration for Real-Time Monitoring 297

12.3.2 Machine Learning for Water Contamination Detection 298

12.3.2.1 Types of Machine Learning Models Used 298

12.3.2.2 Application of Machine Learning in Water Contamination 298

12.3.2.3 Automation and Efficiency Gains 299

12.3.3 Predictive Analytics for Early Warning Systems 299

12.3.3.1 Data Sources for Predictive Models 299

12.3.3.2 How Predictive Analytics Works 300

12.3.3.3 Benefits of Early Warning Systems 300

12.4 AI-Driven Water Management in Agriculture 301

12.4.1 Optimizing Water Usage in Irrigation 301

12.4.1.1 Smart Irrigation Systems 301

12.4.1.2 Predictive Analytics for Irrigation 302

12.4.1.3 Drip Irrigation with AI 302

12.4.1.4 Water Conservation through Irrigation Optimization 302

12.4.2 AI for Monitoring Nutrient Levels and Soil Health 303

12.4.2.1 AI-Driven Soil Analysis 303

12.4.2.2 Soil Moisture and Temperature Monitoring 303

12.4.2.3 Remote Sensing and AI for Soil Health 304

12.4.3 AI for Precision Agriculture and Water Conservation 304

12.4.3.1 Precision Irrigation 304

12.4.3.2 AI-Enhanced Water Conservation Techniques 304

12.4.3.3 AI-Driven Water Use Efficiency (WUE) 305

12.4.3.4 Sustainable Agriculture and AI 305

12.5 Case Studies 305

12.5.1 Project Components 306

12.5.2 Results 306

12.5.3 Key Takeaways 306

12.6 AI in Precision Irrigation for Water Contamination Prevention 307

12.6.1 Technology and Implementation 307

12.6.2 Impact 307

12.7 Challenges and Limitations 307

12.8 Data Quality and Availability 308

12.8.1 Inconsistent and Incomplete Data 308

12.8.2 Lack of Historical Data 308

12.8.3 Data Sensitivity and Privacy Concerns 309

12.8.4 Implementation Costs and Technical Barriers 309

12.8.4.1 High Initial Costs 309

12.8.4.2 Technical Expertise and Capacity Building 309

12.8.5 Scalability and Adaptability 310

12.9 Regulatory and Ethical Considerations 310

12.9.1 Lack of Standardization 310

12.9.2 Ethical Issues in AI Development and Use 311

12.9.3 Data Ownership and Governance 311

12.9.4 Conclusion 311

12.10 Case Study 312

12.10.1 Project Overview 312

12.10.2 Objectives 312

12.10.3 Methodology 312

12.10.4 Quantitative Results 313

12.10.5 Challenges Faced 314

12.10.6 Conclusion 314

12.11 Future Directions in AI for Water and Food Safety 314

12.11.1 Integration of AI with IoT and Big Data 315

12.11.1.1 AI-Enabled IoT Networks for Real-Time Water Monitoring 315

12.11.1.2 Big Data for Predictive Analytics and Long-Term Planning 315

12.11.1.3 Cloud-Based Solutions for Data Sharing and Collaboration 316

12.11.2 AI for Climate-Resilient Water Management 316

12.11.2.1 AI for Drought and Flood Management 316

12.11.2.2 AI-Driven Climate Adaptation Strategies for Agriculture 316

12.11.3 Enhancing Global Water Safety through Collaborative AI Solutions
317

12.11.3.1 International Cooperation for Water Management 317

12.11.3.2 AI for Sustainable Agricultural Practices 317

12.11.3.3 AI-Driven Policy and Regulation 318

12.11.4 Conclusion 318

References 319

13 AI in Waste Management Technologies for Sustainable Agriculture 323
Nikhitha Yathiraju, Meghna Sharma, and Sonia Duggal

13.1 Introduction 323

13.1.1 Role of Waste in Agriculture 324

13.1.2 Artificial Intelligence in Waste Management 324

13.2 AI Applications in Agricultural Waste Management 325

13.2.1 Waste Monitoring and Prediction 325

13.2.2 Precision Waste Management 325

13.2.3 Waste-to-Energy Conversion 325

13.2.4 Circular Agriculture and Resource Recycling 326

13.3 Challenges and Future Prospects 326

13.4 Types of Agricultural Waste 327

13.4.1 Organic Waste (Crop Residues, Animal Manure) 327

13.4.2 Inorganic Waste (Plastics, Chemicals) 328

13.5 Impact of Improper Waste Management on the Environment 328

13.6 AI Technologies in Waste Management 330

13.6.1 Artificial Intelligence and Machine Learning in Agriculture 330

13.6.2 Role of Data Analytics and Automation 330

13.6.3 AI-Powered Monitoring Systems 331

13.7 AI Applications in Agricultural Waste Management 332

13.7.1 Waste Monitoring and Prediction 332

13.7.2 Precision Waste Management 333

13.7.3 Waste-to-Energy Conversion 334

13.7.4 Circular Agriculture and Resource Recycling 334

13.8 Benefits of AI in Sustainable Agriculture 335

13.8.1 Resource Optimization 335

13.8.2 Reduction of Greenhouse Gas Emissions 336

13.8.3 Enhanced Soil Health and Nutrient Management 337

13.8.4 Improved Water Conservation Practices 337

13.9 Case Study: Implementation of AI in Agricultural Waste Management for
Sustainable Agriculture 338

13.9.1 Objectives 338

13.9.1.1 AI Technologies Deployed 339

13.9.2 Methodology 339

13.9.2.1 Analysis of Results 339

13.9.3 Conclusion 341

13.9.4 Future Scope 341

References 342

14 The Internet of Things (IoTs) for Environmental Pollution 345
Pushan Kumar Dutta, Pawan Whig, Shashi Kant Gupta, and Vinay Aseri

14.1 Introduction 345

14.1.1 Overview of Environmental Pollution 346

14.1.1.1 Impact of Pollution on the Environment and Health 346

14.1.2 Importance of Technological Integration for Pollution Monitoring 346

14.1.2.1 Benefits of Integration 347

14.2 Geospatial Information Systems (GIS) in Environmental Pollution 348

14.2.1 Overview of GIS 348

14.2.1.1 Key Components of GIS 348

14.2.1.2 Applications of GIS in Environmental Pollution 349

14.2.2 Spatial Data Analysis for Pollution Tracking 349

14.2.2.1 Key Techniques for Spatial Data Analysis 349

14.2.2.2 Examples of Spatial Data Analysis in Pollution Tracking 350

14.2.3 Mapping Pollutants and Affected Areas 350

14.2.3.1 Types of Pollution Maps 350

14.2.3.2 Examples of Mapping in Environmental Pollution 351

14.2.3.3 Benefits of Pollution Mapping 351

14.3 Remote Sensing (RS) in Pollution Monitoring 352

14.3.1 Overview of Remote Sensing 352

14.3.1.1 Components of Remote Sensing 352

14.3.1.2 Advantages of Remote Sensing for Pollution Monitoring 353

14.3.2 Satellite and Aerial Imagery for Pollution Detection 353

14.4 Atmospheric Pollution Detection 354

14.5 Water Pollution Detection 354

14.6 Soil and Land Pollution 354

14.6.1 Real-time Monitoring of Environmental Conditions 355

14.6.1.1 Key Applications of Real-time Monitoring 355

14.6.1.2 Challenges in Real-time Remote Sensing 356

14.7 Internet of Things (IoT) in Environmental Pollution Management 357

14.7.1 Introduction to IoT in Environmental Systems 357

14.7.1.1 How IoT Works in Environmental Management 357

14.7.1.2 Advantages of IoT in Environmental Pollution Management 358

14.7.2 IoT Sensors for Real-time Data Collection 358

14.7.2.1 Types of IoT Sensors for Environmental Monitoring 358

14.7.2.2 Applications of IoT Sensors for Real-time Data Collection 359

14.7.3 Sensor Networks for Monitoring Air, Water, and Soil Pollution 360

14.7.3.1 Challenges and Future Directions 361

14.8 Integration of GIS, RS, and IoT for Pollution Control 361

14.8.1 The Synergy Between GIS, RS, and IoT 362

14.8.1.1 How They Work Together 362

14.8.1.2 Advantages of Integration 363

14.8.2 Case Studies of Integrated Systems in Pollution Monitoring 363

14.8.2.1 Case Study 1: Smart City Air Quality Monitoring in London 363

14.8.2.2 Case Study 2: Water Quality Monitoring in the Ganges River Basin
363

14.8.2.3 Case Study 3: Forest Fire and Air Quality Monitoring in California
364

14.8.3 Data Fusion and Interpretation Techniques 364

14.8.3.1 Techniques for Data Fusion 364

14.8.3.2 Interpretation Techniques 365

14.9 Applications and Case Studies 366

14.9.1 Urban Pollution Monitoring 366

14.9.1.1 Technological Applications 366

14.9.1.2 Case Study: Los Angeles Air Quality Management 366

14.9.2 Rural and Agricultural Pollution Tracking 367

14.9.2.1 Technological Applications 367

14.9.2.2 Case Study: Precision Agriculture in the Midwest USA 367

14.9.3 Industrial Pollution and Hazardous Waste Management 367

14.9.3.1 Technological Applications 368

14.9.3.2 Case Study: Industrial Emission Monitoring in Germany 368

14.9.4 Case Studies in Air, Water, and Soil Pollution 368

14.9.4.1 Case Study 1: Air Pollution in Beijing, China 368

14.9.4.2 Case Study 2: Water Quality Monitoring in the Amazon River Basin
369

14.9.4.3 Case Study 3: Soil Contamination Assessment in India 369

14.10 Advantages and Challenges 369

14.10.1 Benefits of Integrated Technologies 369

14.10.2 Technical and Operational Challenges 370

14.10.3 Ethical and Privacy Concerns in Environmental Monitoring 371

14.11 Case Study: Smart Environmental Monitoring in Barcelona, Spain 372

14.11.1 Objective 372

14.11.2 Methodology 373

14.11.3 Results 373

14.11.4 Discussion 374

14.11.5 Future Recommendations 374

14.12 Policy Implications and Environmental Management 375

14.12.1 Data-driven Decision-making for Policymakers 375

14.12.2 Role of Technology in Environmental Regulations 376

14.12.3 Long-term Sustainability and Governance 376

14.12.4 Conclusion 377

14.12.5 Future Trends 378

References 378

Index 383
Shrikaant Kulkarni, Ph.D., is a Research Professor at Sanjivani University, Kopargaon, India, and an Adjunct Professor at Faculty of Business, Victorian Institute of Technology, Melbourne, Australia. Dr. Kulkarni has been a senior academic and researcher for more than four decades. He has published over 100 research papers, 100+ book chapters, and edited 50+ reference books.