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Current and Future Cellular Systems. Technologies, Applications, and Challenges. Edition No. 1

  • Book

  • 336 Pages
  • January 2025
  • John Wiley and Sons Ltd
  • ID: 6005984
Comprehensive reference on the latest trends, solutions, challenges, and future directions of 5G communications and beyond

Current and Future Cellular Systems: Technologies, Applications, and Challenges covers the state of the art in architectures and solutions for 5G wireless communication and beyond. This book is unique because instead of focusing on singular topics, it considers various technologies being used in conjunction with 5G and beyond 5G technologies. All new and emerging technologies are covered, along with their problems and how quality of service (QoS) can be improved with respect to future requirements.

This book highlights the latest trends in resource allocation techniques due to different device (or user) characteristics, provides a special focus on wide bandwidth millimeter wave communications including circuitry, antennas, and propagation, and discusses the involvement of decision-making processes assisted by artificial intelligence/machine learning (AI/ML) in applications such as resource allocation, power allocation, QoS improvement, and autonomous vehicles. Readers will also learn to develop mathematical modeling, perform simulation setup, and configure parameters related to simulations.

Current and Future Cellular Systems includes information on: - The Internet of Vehicles (IoV), covering requirements, challenges, and limitations of Cellular Vehicle-to-Everything (C-V2X) with Resource Allocation (RA) techniques- Intelligent reflecting surfaces, unmanned aerial vehicles, power optimized frameworks, challenges in a sub-6 GHz band, and communication in a THz band- The role of IoT in healthcare, agriculture, smart home applications, networking requirements, and the metaverse- Quantum computing, cloud computing, spectrum sharing methods, and performance analysis of WiFi 6/7 for indoor and outdoor environments

Providing expansive yet accessible coverage of the subject by exploring both basic and advanced topics, Current and Future Cellular Systems serves as an excellent introduction to the fundamentals of 5G and its applications for graduate students, researchers, and industry professionals in the field of wireless communication technologies.

Table of Contents

About the Editors xvii

List of Contributors xix

Preface xxv

Glossary xxvii

Introduction xxix

1 Spectrum Sharing Schemes for 5G and Beyond in Wireless Communication 1
Aditya Bakshi, Akhil Gupta, and Arushi Pandey

1.1 Introduction 1

1.1.1 Motivation 2

1.1.2 Literature Review 2

1.2 Spectrum Sharing Technologies 6

1.2.1 Machine Learning in Spectrum Sharing 7

1.2.2 Cooperative and Cognitive Radio Networks 9

1.2.2.1 Integration of Cooperative and Cognitive Radio Networks 10

1.2.3 Interference Mitigation Strategies 10

1.3 Case Study and Performance Evaluation 12

1.4 Future Trends and Challenges 14

1.4.1 Challenges Facing Wireless Communication 15

1.5 Conclusion 16

References 17

2 Synergizing 5G, IoT, and Deep Learning: Pioneering Technological Integration for a Connected Future 21
Ankita Sharma and Shalli Rani

2.1 Introduction 21

2.2 Security Threats on 5G Network 22

2.3 Applications of 5G 24

2.4 Advanced Intrusion Detection Systems (IDS) 25

2.5 Integration of 5G-IoT-DL 25

2.6 Security Challenges 26

2.7 Role of ML and DL in 5G at Application and Infra Level 27

2.8 Conclusion 29

References 29

3 Driving Next Generation IoT with 5G and Beyond 33
Shishir Shrivastava, Ankita Rana, and Ashu Taneja

3.1 Introduction 33

3.2 Need for Technological Advancement 35

3.3 Existing Wireless Technologies 35

3.4 Challenges in Existing Technologies 37

3.5 Towards 5G Communication 39

3.5.1 MIMO and Massive MIMO 39

3.5.2 Millimeter Wave (mmWave) Communication 42

3.5.3 Small Cells 43

3.5.4 Visible Light Communication 44

3.6 IoT and its Evolution 45

3.7 Role of 5G in IoT 46

3.8 Integration of 5G IoT with Other Technologies 47

3.8.1 Ai/ml 50

3.8.2 Cloud Computing 50

3.8.3 Fog Computing 51

3.8.4 Digital Twin 52

3.8.4.1 Digital Twin Lifecycle: From Data to Transformation 53

3.9 Techniques to Improve the Performance of Wireless Networks 55

3.10 Performance Parameters of Next Generation Wireless Systems 58

3.10.1 The Elaborate Rhythm of Performance Indicators 60

3.11 Challenges and Future Directions 60

3.12 Conclusion 61

References 62

4 Emerging Communication Paradigms for 6G IoT: Challenges and Opportunities 65
Aditya Soni, Ashu Taneja, Neeti Taneja, and Laith Abualigah

4.1 Introduction 65

4.1.1 Breakthrough 6G Technologies 68

4.1.1.1 Holographic MIMO (Multiple Input Multiple Output) 68

4.1.1.2 Intelligent Reflecting Surfaces (IRSs) 68

4.1.1.3 Cell free Massive MIMO 69

4.1.1.4 Edge Computing 70

4.1.1.5 Terahertz (THz) Communication 70

4.1.1.6 Quantum Communication 71

4.2 Internet-of-Things and its Evolution 71

4.2.1 Role of 6G IoT 71

4.2.2 6G IoT Framework 72

4.3 Enabling 6G Technologies for IoT 73

4.3.1 Convergence with Other Key Technologies 75

4.3.1.1 Advancing Beyond Sub-6 GHz Towards THz Communication 76

4.3.1.2 Artificial Intelligence and Advanced Machine Learning 76

4.3.1.3 Compressive Sensing 76

4.3.1.4 Blockchain/Distributed Ledger Technology 77

4.3.1.5 Digital Twin 77

4.3.1.6 Intelligent Edge Computing 77

4.3.1.7 Dynamic Network Slicing 78

4.3.1.8 Big Data Analytics 78

4.3.1.9 Wireless Information and Power Transfer (WIPT) 78

4.3.1.10 Backscatter Communication 79

4.3.1.11 Communication-Computing-Control Convergence 79

4.4 Use Case Scenarios 80

4.4.1 Smart Healthcare 80

4.4.2 Smart Transportation 81

4.4.3 Smart Manufacturing 82

4.4.4 Smart Agriculture 83

4.4.5 Smart Classrooms 83

4.4.6 Smart Cities 84

4.5 Challenges Faced and the Solutions Offered 85

4.6 Conclusion 86

References 87

5 Securing the Internet of Things: Cybersecurity Challenges, Strategies, and Future Directions in the Era of 5G and Edge Computing 89
Geetanshi, Harshit Manocha, Himanshi Babbar, and Cherry Mangla

5.1 Introduction 89

5.1.1 History of IoT and Edge Computing in 5G 94

5.2 Literature Review 95

5.3 Applications in IoT and Edge Computing 95

5.4 Cybersecurity Management System for IoT Environments 97

5.4.1 Security Layers 97

5.5 Current Cyber Security Strategies in IoT 99

5.6 IoT Cybersecurity’s Role in Reshaping Machine Learning 100

5.6.1 Role of IoT in Artificial Intelligence 101

5.7 Real Life Scenario 102

5.8 Conclusions 105

References 105

6 Autonomous Systems for 5G Networks: A Comprehensive Analysis of Features Toward Generalization and Adaptability 107
Durga Shankar Baggam and Shalli Rani

6.1 Introduction 107

6.2 Survey Method 109

6.3 Background and Related Works 113

6.3.1 Autonomous System Architecture 114

6.3.1.1 Application Layer 120

6.3.1.2 Cognitive Layer 120

6.3.1.3 Perception Layer 120

6.3.1.4 Physical Layer 120

6.3.2 Sensors 121

6.3.3 Artificial Intelligence Techniques 121

6.3.4 Intelligent Transport System (ITS) 124

6.3.5 B5G-Based Vehicular Telecommunication 125

6.4 Discussion 126

6.4.1 Environmental Uncertainties 128

6.4.2 Security Challenges and Counter Measures 129

6.5 Conclusion 129

References 130

7 Integrated Trends, Opportunities, and Challenges of 5G and Internet of Things 139
Ekta Dixit and Shalli Rani

7.1 Introduction 139

7.1.1 Overview of 5G 140

7.1.2 Evolution from 1G to 5G 141

7.1.3 5G Architecture 141

7.1.4 Overview of IoT 143

7.1.5 Features of IoT 143

7.1.5.1 Avalability 143

7.1.5.2 Mobility 143

7.1.5.3 Scalabilty 143

7.1.5.4 Security 144

7.1.5.5 Context Awareness 144

7.1.6 IoT Architecture 144

7.1.6.1 Application Layer 144

7.1.6.2 Network Layer 144

7.1.6.3 Edge Layer 145

7.2 Requirements for Integration of 5G with IoT 145

7.2.1 Integrated 5G IoT Layered Architecture 145

7.3 Opportunities of 5G integrated IoT 146

7.3.1 Smart Cities 146

7.3.2 Smart Vehicles 146

7.3.3 Device to Device Communications 147

7.3.4 Business 147

7.3.5 Satelite and Aerial Research 147

7.3.6 Video Surveillance 147

7.4 Challenges of 5G Integrated IoT 147

7.4.1 Insufficient Control over Data Storage and Usage 148

7.4.2 Scalability 148

7.4.3 Heterogeneity of 5G and IoT Data 148

7.4.4 Blockchain Processing Time 148

7.4.5 5G mm-Wave Issues 149

7.4.6 Threat Protection of 5G IoT 149

7.5 Conclusion 149

References 150

8 Advancement in Resource Allocation for Future Generation of Communications 153
Garima Chopra and Suhaib Ahmed

8.1 Introduction 153

8.2 Current Trends in Multiple Access Techniques 154

8.3 Scheduling Algorithms for 5G/Beyond 5G 155

8.4 Factors Influencing Scheduling Algorithms 158

8.5 Resource Allocation for 5G Ultra-Dense Networks 160

8.6 Conclusion 162

References 162

9 Next-Gen Networked Healthcare: Requirements and Challenges 165
Kanica Sachdev and Brejesh Lall

9.1 Introduction 165

9.2 Applications 166

9.2.1 Remote Robotic-Assisted Surgery 167

9.2.2 Remote Diagnosis and Teleconsultation 167

9.2.3 In-Ambulance Treatment 168

9.2.4 Remote Patient Monitoring 169

9.2.5 Medical Big Data Management 170

9.2.6 Augmented Reality (AR) and Virtual Reality (VR) 170

9.2.7 Emergency Response Strategies 171

9.3 Technological Prerequisites 172

9.4 Challenges in 5G Integration in Healthcare 175

9.5 Conclusion 177

References 180

10 Dynamic Resource Orchestration for Computing, Data, and IoT in Networked Systems: A Data-Centric Approach 185
Suresh Limkar, Mohammad Alamgir Hossain, Sherif Tawfik Amin, and Yasir Ahmad

10.1 Introduction 185

10.1.1 Motivation 187

10.1.2 Objectives 187

10.2 Dynamic Resource Orchestration: Foundations 187

10.2.1 Resource Orchestration Concepts 187

10.2.2 Dynamic Resource Orchestration’s Evolution 188

10.2.3 Importance of a Data-Centric Perspective 188

10.3 Computing in Networked Systems 189

10.3.1 Cloud Computing Paradigm 189

10.3.2 Edge Computing and Fog Computing 191

10.3.3 Integration of Computing Resources 192

10.4 Data-Centric Orchestration 193

10.4.1 Data-Driven Resource Allocation 193

10.4.1.1 Data-Driven Decision-Making 193

10.4.1.2 Dynamic Scaling 194

10.4.1.3 Perceptive Formulas 194

10.4.1.4 Customization and Adaptability 194

10.4.2 Data Processing and Management 194

10.4.2.1 Data Locality and Optimization 194

10.4.2.2 Techniques for Data Movement 194

10.4.2.3 Data Lifecycle Management 194

10.4.2.4 AI and Data Analytics Integration 195

10.4.3 Security and Privacy Considerations 195

10.4.3.1 Completely Encryption 195

10.4.3.2 Identity and Access Management 195

10.4.3.3 Safe Data Processing 195

10.4.3.4 Regulatory Standard Compliance 195

10.4.3.5 Privacy-Preserving Techniques 195

10.4.3.6 Audit Trails and Monitoring 196

10.5 IoT Integration 196

10.5.1 Overview of IoT Architecture 196

10.5.2 IoT Resource Orchestration Challenges 197

10.5.2.1 Device Heterogeneity 197

10.5.2.2 Scalability and Data Volume 197

10.5.2.3 Low-Latency and Real-Time Processing 197

10.5.2.4 Compatibility and Standards 197

10.5.3 Combining Data and Computing 197

10.5.3.1 Data-Centric Orchestration 198

10.5.3.2 IoT with Machine Learning and AI 198

10.5.3.3 Dynamic Resource Allocation 198

10.5.3.4 IoT Security Measures 199

10.6 Methodologies for Dynamic Resource Orchestration 200

10.6.1 Methods of Machine Learning 200

10.6.1.1 Overview of Machine Learning for Resource Management 200

10.6.1.2 Predictive Resource 200

10.6.1.3 Fault Prediction and Anomaly Detection 200

10.6.2 Methods of Optimisation 201

10.6.2.1 Introducing Resource Orchestration’s Optimisation Techniques 201

10.6.3 Hybrid Models 201

10.6.3.1 Optimisation Through Machine Learning Hybrids 201

10.6.3.2 Combining Rule-Based and Learning-Based Methods: Advancing Hybrid Approaches 201

10.6.3.3 Continual Enhancement Through Responsive Feedback Mechanisms 202

10.6.3.4 Harnessing the Power of Adaptive Model Switching 202

10.7 Case Studies 202

10.7.1 Practical Applications 202

10.7.1.1 Aws 202

10.7.1.2 Autoscaling of Kubernetes Horizontal Pods 202

10.7.2 Achievements and Insights Acquired 203

10.7.2.1 Netflix: Using Machine Learning to Deliver Content 203

10.7.2.2 Google’s Expansion of Kubernetes: Enhancing Scalability 203

10.7.2.3 Achieving Dynamic Scalability with AWS Auto Scaling: An Airbnb Success Story 203

10.8 Conclusion 204

References 204

11 Cognitive Cellular Networks: Empowering Future Connectivity Through Artificial Intelligence 209
Mohammad Alamgir Hossain, Suresh Limkar, Sherif Tawfik Amin, and Yasir Ahmad

11.1 Introduction 209

11.1.1 Background 209

11.1.2 Key Objectives of the Chapter 210

11.2 Foundations of Cognitive Cellular Networks 211

11.2.1 Architecture of Cellular Networks 211

11.2.2 Radio Technologies Induced by Cognition 211

11.2.3 Artificial Intelligence Integration 212

11.3 AI Algorithms for Network Optimization 213

11.3.1 Machine Learning Models for Predictive Analysis 213

11.3.1.1 Machine Learning in Resource Allocation 213

11.3.1.2 Predictive Analytics for Traffic Management 213

11.3.1.3 Reinforcement Learning for Self-Optimizing Networks 213

11.3.1.4 Anomaly Detection to Strengthen Security 214

11.3.1.5 Artificial Neural Networks for Dynamic Optimization 214

11.3.1.6 Combining Genetic Algorithms with Cross-Layer Optimization 214

11.3.2 Spectrum Utilization and Management 214

11.3.2.1 Dynamic Spectrum Access 214

11.3.2.2 Brain CRT 215

11.3.2.3 Enhancing Spectrum Management with AI-Powered Solutions to Combat Interference 215

11.3.2.4 Achieving Regulatory Compliance in Spectrum Sharing 215

11.4 Reinforcement Learning in Autonomous Network Management 215

11.4.1 Essential Guidelines for Mastering Reinforcement Learning 216

11.4.2 Adaptive Decision-Making in Dynamic Environments 217

11.4.2.1 Time-Based Learning and the Trade-Off Between Exploration and Exploitation 217

11.4.2.2 Dynamic Approaches to State Representation and Policy Adaptation 218

11.4.3 Case Studies on Autonomous Network Management 218

11.5 Applications of Cognitive Cellular Networks 219

11.5.1 Upgraded Mobile Broadband 220

11.5.2 Massive Machine-Type Communication 220

11.5.3 Ultra-reliable Low-Latency Communication 221

11.5.4 Use Cases and Practical Implementations 221

11.6 Challenges and Future Directions 222

11.6.1 Scalability and Standardization 222

11.6.2 Future Trends in Cognitive Cellular Networks 222

11.7 Conclusion 223

References 224

12 Enhancing Scalability and Performance in Networked Applications Through Smart Computing Resource Allocation 227
Araddhana Arvind Deshmukh, Shailesh Pramod Bendale, Sheela Hundekari, Abhijit Chitre, Kirti Wanjale, Amol Dhumane, Garima Chopra, and Shalli Rani

12.1 Introduction 227

12.1.1 Scope and Objectives 229

12.1.2 Objectives 229

12.1.2.1 Key Goals of This Study 229

12.2 Foundations of Smart Computing Resource Allocation 230

12.2.1 Key Concepts in Resource Allocation 232

12.2.1.1 Dynamic Resource Allocation 232

12.2.1.2 Artificial Intelligence (AI) in Resource Management 232

12.2.1.3 Using Real-Time Analytics to Track Performance 232

12.2.1.4 Scalability and Elasticity Measures 232

12.2.1.5 Mechanisms of Adaptive Learning 233

12.2.1.6 Security-Driven Resource Allocation 233

12.2.2 The Evolution of Scalability and Performance in Networked Applications 233

12.2.2.1 Conventional Static Resource Allocation 233

12.2.2.2 The Arise of Scalability Issues 233

12.2.2.3 The Cloud Paradigm and Dynamic Resource Allocation 234

12.2.2.4 Using Smart Computing to Allocate Intelligent Resources 234

12.2.2.5 Real-Time Adaptation and Predictive Scaling 234

12.2.2.6 Scalability Beyond Traditionally Assigned Limitations 234

12.2.2.7 Automation and Autonomy’s Role 234

12.3 Dynamic Resource Allocation Strategies 235

12.3.1 Static vs. Dynamic Resource Allocation 237

12.3.1.1 Static Resource Allocation 237

12.3.1.2 Dynamic Resource Allocation 237

12.3.2 Adaptive Resource Allocation Algorithms 237

12.3.3 Machine Learning Approaches in Resource Allocation 238

12.4 Intelligent Load Balancing Techniques 238

12.4.1 Load Balancing in Networked Environments 239

12.4.2 Importance of Load Balancing in Scalability 240

12.4.2.1 Load Balancing with Machine Learning 240

12.4.2.2 Adaptive Load Balancing Algorithms 240

12.5 Real-Time Monitoring and Feedback Mechanisms 241

12.5.1 Proactive Monitoring for Allocation of Resources 241

12.5.2 Decision-Making and Feedback Loops 241

12.5.3 Real-Time Monitoring 242

12.6 Case Studies and Best Practices 243

12.6.1 Cloud-Based Resource Allocation 243

12.6.2 Edge Computing and Resource Optimization 243

12.6.3 High-Performance Computing (HPC) Environments 244

12.7 Security and Privacy Considerations 244

12.7.1 Ensuring Security in Resource Allocation 244

12.7.1.1 Overview of Security 244

12.7.2 Privacy Issues with Wise Resource Distribution 245

12.7.2.1 Overview of Privacy 245

12.7.3 Balancing Security and Performance 245

12.7.3.1 Understanding the Art of Balancing Responsibilities 245

12.8 Future Trends and Emerging Technologies 246

12.8.1 Resource Allocation and Edge AI 246

12.8.1.1 Understanding the Basics of Edge AI 246

12.8.2 Implications for Quantum Computing 246

12.8.2.1 A Comprehensive Look at the World of Quantum Computing 246

12.8.3 Allocating Resources with Blockchain 247

12.8.3.1 Overview of Blockchain 247

12.9 Conclusion 248

References 248

13 5G-Enabled Fusion: Navigating the Future Landscape of Cloud Computing, Internet of Things, and Recommender Systems 251
Sheetal Sharma

13.1 Basics of Cloud Computing 251

13.2 Internet of Things 254

13.3 5G Technology 257

13.4 Recommender System 258

13.5 Conclusion 262

References 262

14 Confluence of Cellular IoT and Data Science for Smart Application using 5G 267
Shruti and Shalli Rani

14.1 Introduction 267

14.2 Data Science and Cellular IoT 270

14.3 Research Problems in Data Science for Cellular IoT 272

14.4 Sensors in Cellular IoT Smart Farming 273

14.5 Related Work 275

14.6 Data Science for Agriculture 277

14.7 Challenges Faced by Cellular IoT Application in Data Science 278

14.8 Proposed Model and its Discussion 280

14.9 Conclusion 281

References 282

Index 285

Authors

Garima Chopra Chitkara University, India. Suhaib Ahmed Chitkara University, India. Shalli Rani Chitkara University Institute of Engineering and Technology, Chitkara University, Punjab, India.