Produktbild: Integration of Cloud Computing with Internet of Things

Integration of Cloud Computing with Internet of Things Foundations, Analytics and Applications

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Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

13.04.2021

Herausgeber

Monika Mangla + weitere

Verlag

John Wiley & Sons

Seitenzahl

384

Maße (L/B/H)

26/18,3/2,5 cm

Gewicht

454 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-1-119-76887-6

Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

13.04.2021

Herausgeber

Verlag

John Wiley & Sons

Seitenzahl

384

Maße (L/B/H)

26/18,3/2,5 cm

Gewicht

454 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-1-119-76887-6

Herstelleradresse

Produktsicherheitsverantwortliche/r
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

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  • Produktbild: Integration of Cloud Computing with Internet of Things
  • Preface xv

    Acknowledgement xvii

    1 Internet of Things: A Key to Unfasten Mundane Repetitive Tasks 1
    Hemanta Kumar Palo and Limali Sahoo

    1.1 Introduction 1

    1.2 The IoT Scenario 2

    1.3 The IoT Domains 3

    1.3.1 The IoT Policy Domain 3

    1.3.2 The IoT Software Domain 5

    1.3.2.1 IoT in Cloud Computing (CC) 5

    1.3.2.2 IoT in Edge Computing (EC) 6

    1.3.2.3 IoT in Fog Computing (FC) 10

    1.3.2.4 IoT in Telecommuting 11

    1.3.2.5 IoT in Data-Center 12

    1.3.2.6 Virtualization-Based IoT (VBIoT) 12

    1.4 Green Computing (GC) in IoT Framework 12

    1.5 Semantic IoT (SIoT) 13

    1.5.1 Standardization Using oneM2M 15

    1.5.2 Semantic Interoperability (SI) 18

    1.5.3 Semantic Interoperability (SI) 19

    1.5.4 Semantic IoT vs Machine Learning 20

    1.6 Conclusions 21

    References 21

    2 Measures for Improving IoT Security 25
    Richa Goel, Seema Sahai, Gurinder Singh and Saurav Lall

    2.1 Introduction 25

    2.2 Perceiving IoT Security 26

    2.3 The IoT Safety Term 27

    2.4 Objectives 28

    2.4.1 Enhancing Personal Data Access in Public Repositories 28

    2.4.2 Develop and Sustain Ethicality 28

    2.4.3 Maximize the Power of IoT Access 29

    2.4.4 Understanding Importance of Firewalls 29

    2.5 Research Methodology 30

    2.6 Security Challenges 31

    2.6.1 Challenge of Data Management 32

    2.7 Securing IoT 33

    2.7.1 Ensure User Authentication 33

    2.7.2 Increase User Autonomy 33

    2.7.3 Use of Firewalls 34

    2.7.4 Firewall Features 35

    2.7.5 Mode of Camouflage 35

    2.7.6 Protection of Data 35

    2.7.7 Integrity in Service 36

    2.7.8 Sensing of Infringement 36

    2.8 Monitoring of Firewalls and Good Management 36

    2.8.1 Surveillance 36

    2.8.2 Forensics 37

    2.8.3 Secure Firewalls for Private 37

    2.8.4 Business Firewalls for Personal 37

    2.8.5 IoT Security Weaknesses 37

    2.9 Conclusion 37

    References 38

    3 An Efficient Fog-Based Model for Secured Data Communication 41
    V. Lakshman Narayana and R. S. M. Lakshmi Patibandla

    3.1 Introduction 41

    3.1.1 Fog Computing Model 42

    3.1.2 Correspondence in IoT Devices 43

    3.2 Attacks in IoT 45

    3.2.1 Botnets 45

    3.2.2 Man-In-The-Middle Concept 45

    3.2.3 Data and Misrepresentation 46

    3.2.4 Social Engineering 46

    3.2.5 Denial of Service 46

    3.2.6 Concerns 47

    3.3 Literature Survey 48

    3.4 Proposed Model for Attack Identification Using Fog Computing 49

    3.5 Performance Analysis 52

    3.6 Conclusion 54

    References 54

    4 An Expert System to Implement Symptom Analysis in Healthcare 57
    Subhasish Mohapatra and Kunal Anand

    4.1 Introduction 57

    4.2 Related Work 59

    4.3 Proposed Model Description and Flow Chart 60

    4.3.1 Flowchart of the Model 60

    4.3.1.1 Value of Symptoms 60

    4.3.1.2 User Interaction Web Module 60

    4.3.1.3 Knowledge-Base 60

    4.3.1.4 Convolution Neural Network 60

    4.3.1.5 CNN-Fuzzy Inference Engine 61

    4.4 UML Analysis of Expert Model 62

    4.4.1 Expert Module Activity Diagram 63

    4.4.2 Ontology Class Collaboration Diagram 65

    4.5 Ontology Model of Expert Systems 66

    4.6 Conclusion and Future Scope 67

    References 68

    5 An IoT-Based Gadget for Visually Impaired People 71
    Prakash, N., Udayakumar, E., Kumareshan, N., Srihari, K. and Sachi Nandan Mohanty

    5.1 Introduction 71

    5.2 Related Work 73

    5.3 System Design 74

    5.4 Results and Discussion 82

    5.5 Conclusion 84

    5.6 Future Work 84

    References 84

    6 IoT Protocol for Inferno Calamity in Public Transport 87
    Ravi Babu Devareddi, R. Shiva Shankar and Gadiraju Mahesh

    6.1 Introduction 87

    6.2 Literature Survey 89

    6.3 Methodology 94

    6.3.1 IoT Message Exchange With Cloud MQTT Broker Based on MQTT Protocol 98

    6.3.2 Hardware Requirement 98

    6.4 Implementation 103

    6.4.1 Interfacing Diagram 105

    6.5 Results 106

    6.6 Conclusion and Future Work 108

    References 109

    7 Traffic Prediction Using Machine Learning and IoT 111
    Daksh Pratap Singh and Dolly Sharma

    7.1 Introduction 111

    7.1.1 Real Time Traffic 111

    7.1.2 Traffic Simulation 112

    7.2 Literature Review 112

    7.3 Methodology 113

    7.4 Architecture 116

    7.4.1 API Architecture 117

    7.4.2 File Structure 117

    7.4.3 Simulator Architecture 118

    7.4.4 Workflow in Application 122

    7.4.5 Workflow of Google APIs in the Application 122

    7.5 Results 122

    7.5.1 Traffic Scenario 122

    7.5.1.1 Low Traffic 124

    7.5.1.2 Moderate Traffic 124

    7.5.1.3 High Traffic 125

    7.5.2 Speed Viewer 125

    7.5.3 Traffic Simulator 126

    7.5.3.1 1st View 126

    7.5.3.2 2nd View 128

    7.5.3.3 3rd View 128

    7.6 Conclusion and Future Scope 128

    References 129

    8 Application of Machine Learning in Precision Agriculture 131
    Ravi Sharma and Nonita Sharma

    8.1 Introduction 131

    8.2 Machine Learning 132

    8.2.1 Supervised Learning 133

    8.2.2 Unsupervised Learning 133

    8.2.3 Reinforcement Learning 134

    8.3 Agriculture 134

    8.4 ML Techniques Used in Agriculture 135

    8.4.1 Soil Mapping 135

    8.4.2 Seed Selection 140

    8.4.3 Irrigation/Water Management 141

    8.4.4 Crop Quality 143

    8.4.5 Disease Detection 144

    8.4.6 Weed Detection 145

    8.4.7 Yield Prediction 147

    8.5 Conclusion 148

    References 149

    9 An IoT-Based Multi Access Control and Surveillance for Home Security 153
    Yogeshwaran, K., Ramesh, C., Udayakumar, E., Srihari, K. and Sachi Nandan Mohanty

    9.1 Introduction 153

    9.2 Related Work 155

    9.3 Hardware Description 156

    9.3.1 Float Sensor 158

    9.3.2 Map Matching 158

    9.3.3 USART Cable 159

    9.4 Software Design 161

    9.5 Conclusion 162

    References 162

    10 Application of IoT in Industry 4.0 for Predictive Analytics 165
    Ahin Banerjee, Debanshee Datta and Sanjay K. Gupta

    10.1 Introduction 165

    10.2 Past Literary Works 168

    10.2.1 Maintenance-Based Monitoring 168

    10.2.2 Data Driven Approach to RUL Finding in Industry 169

    10.2.3 Philosophy of Industrial-IoT Systems and its Advantages in Different Domain 173

    10.3 Methodology and Results 176

    10.4 Conclusion 179

    References 180

    11 IoT and Its Role in Performance Enhancement in Business Organizations 183
    Seema Sahai, Richa Goel, Parul Bajaj and Gurinder Singh

    11.1 Introduction 183

    11.1.1 Scientific Issues in IoT 184

    11.1.2 IoT in Organizations 185

    11.1.3 Technology and Business 187

    11.1.4 Rewards of Technology in Business 187

    11.1.5 Shortcomings of Technology in Business 188

    11.1.6 Effect of IoT on Work and Organization 188

    11.2 Technology and Productivity 190

    11.3 Technology and Future of Human Work 193

    11.4 Technology and Employment 194

    11.5 Conclusion 195

    References 195

    12 An Analysis of Cloud Computing Based on Internet of Things 197
    Farhana Ajaz, Mohd Naseem, Ghulfam Ahamad, Sparsh Sharma and Ehtesham Abbasi

    12.1 Introduction 197

    12.1.1 Generic Architecture 199

    12.2 Challenges in IoT 202

    12.3 Technologies Used in IoT 203

    12.4 Cloud Computing 203

    12.4.1 Service Models of Cloud Computing 204

    12.5 Cloud Computing Characteristics 205

    12.6 Applications of Cloud Computing 206

    12.7 Cloud IoT 207

    12.8 Necessity for Fusing IoT and Cloud Computing 207

    12.9 Cloud-Based IoT Architecture 208

    12.10 Applications of Cloud-Based IoT 208

    12.11 Conclusion 209

    References 209

    13 Importance of Fog Computing in Emerging Technologies-IoT 211
    Aarti Sahitya

    13.1 Introduction 211

    13.2 IoT Core 212

    13.3 Need of Fog Computing 227

    References 230

    14 Convergence of Big Data and Cloud Computing Environment 233
    Ranjan Ganguli

    14.1 Introduction 233

    14.2 Big Data: Historical View 234

    14.2.1 Big Data: Definition 235

    14.2.2 Big Data Classification 236

    14.2.3 Big Data Analytics 236

    14.3 Big Data Challenges 237

    14.4 The Architecture 238

    14.4.1 Storage or Collection System 240

    14.4.2 Data Care 240

    14.4.3 Analysis 240

    14.5 Cloud Computing: History in a Nutshell 241

    14.5.1 View on Cloud Computing and Big Data 241

    14.6 Insight of Big Data and Cloud Computing 241

    14.6.1 Cloud-Based Services 242

    14.6.2 At a Glance: Cloud Services 244

    14.7 Cloud Framework 245

    14.7.1 Hadoop 245

    14.7.2 Cassandra 246

    14.7.2.1 Features of Cassandra 246

    14.7.3 Voldemort 247

    14.7.3.1 A Comparison With Relational Databases and Benefits 247

    14.8 Conclusions 248

    14.9 Future Perspective 248

    References 248

    15 Data Analytics Framework Based on Cloud Environment 251
    K. Kanagaraj and S. Geetha

    15.1 Introduction 251

    15.2 Focus Areas of the Chapter 252

    15.3 Cloud Computing 252

    15.3.1 Cloud Service Models 253

    15.3.1.1 Software as a Service (SaaS) 253

    15.3.1.2 Platform as a Service (PaaS) 254

    15.3.1.3 Infrastructure as a Service (IaaS) 255

    15.3.1.4 Desktop as a Service (DaaS) 256

    15.3.1.5 Analytics as a Service (AaaS) 257

    15.3.1.6 Artificial Intelligence as a Service (AIaaS) 258

    15.3.2 Cloud Deployment Models 259

    15.3.3 Virtualization of Resources 260

    15.3.4 Cloud Data Centers 261

    15.4 Data Analytics 263

    15.4.1 Data Analytics Types 263

    15.4.1.1 Descriptive Analytics 263

    15.4.1.2 Diagnostic Analytics 264

    15.4.1.3 Predictive Analytics 265

    15.4.1.4 Prescriptive Analytics 265

    15.4.1.5 Big Data Analytics 265

    15.4.1.6 Augmented Analytics 266

    15.4.1.7 Cloud Analytics 266

    15.4.1.8 Streaming Analytics 266

    15.4.2 Data Analytics Tools 266

    15.5 Real-Time Data Analytics Support in Cloud 266

    15.6 Framework for Data Analytics in Cloud 268

    15.6.1 Data Analysis Software as a Service (DASaaS) 268

    15.6.2 Data Analysis Platform as a Service (DAPaaS) 268

    15.6.3 Data Analysis Infrastructure as a Service (DAIaaS) 269

    15.7 Data Analytics Work-Flow 269

    15.8 Cloud-Based Data Analytics Tools 270

    15.8.1 Amazon Kinesis Services 271

    15.8.2 Amazon Kinesis Data Firehose 271

    15.8.3 Amazon Kinesis Data Streams 271

    15.8.4 Amazon Textract 271

    15.8.5 Azure Stream Analytics 271

    15.9 Experiment Results 272

    15.10 Conclusion 272

    References 274

    16 Neural Networks for Big Data Analytics 277
    Bithika Bishesh

    16.1 Introduction 277

    16.2 Neural Networks-An Overview 278

    16.3 Why Study Neural Networks? 279

    16.4 Working of Artificial Neural Networks 279

    16.4.1 Single-Layer Perceptron 279

    16.4.2 Multi-Layer Perceptron 280

    16.4.3 Training a Neural Network 281

    16.4.4 Gradient Descent Algorithm 282

    16.4.5 Activation Functions 284

    16.5 Innovations in Neural Networks 288

    16.5.1 Convolutional Neural Network (ConvNet) 288

    16.5.2 Recurrent Neural Network 289

    16.5.3 LSTM 291

    16.6 Applications of Deep Learning Neural Networks 292

    16.7 Practical Application of Neural Networks Using Computer Codes 293

    16.8 Opportunities and Challenges of Using Neural Networks 293

    16.9 Conclusion 296

    References 296

    17 Meta-Heuristic Algorithms for Best IoT Cloud Service Platform Selection 299
    Sudhansu Shekhar Patra, Sudarson Jena, G.B. Mund, Mahendra Kumar Gourisaria and Jugal Kishor Gupta

    17.1 Introduction 299

    17.2 Selection of a Cloud Provider in Federated Cloud 301

    17.3 Algorithmic Solution 307

    17.3.1 TLBO Algorithm (Teaching-Learning-Based Optimization Algorithm) 307

    17.3.1.1 Teacher Phase: Generation of a New Solution 308

    17.3.1.2 Learner Phase: Generation of New Solution 309

    17.3.1.3 Representation of the Solution 309

    17.3.2 JAYA Algorithm 309

    17.3.2.1 Representation of the Solution 311

    17.3.3 Bird Swarm Algorithm 311

    17.3.3.1 Forging Behavior 313

    17.3.3.2 Vigilance Behavior 313

    17.3.3.3 Flight Behavior 313

    17.3.3.4 Representation of the Solution 313

    17.4 Analyzing the Algorithms 314

    17.5 Conclusion 316

    References 316

    18 Legal Entanglements of Cloud Computing In India 319
    Sambhabi Patnaik and Lipsa Dash

    18.1 Cloud Computing Technology 319

    18.2 Cyber Security in Cloud Computing 322

    18.3 Security Threats in Cloud Computing 323

    18.3.1 Data Breaches 323

    18.3.2 Denial of Service (DoS) 323

    18.3.3 Botnets 323

    18.3.4 Crypto Jacking 324

    18.3.5 Insider Threats 324

    18.3.6 Hijacking Accounts 324

    18.3.7 Insecure Applications 324

    18.3.8 Inadequate Training 325

    18.3.9 General Vulnerabilities 325

    18.4 Cloud Security Probable Solutions 325

    18.4.1 Appropriate Cloud Model for Business 325

    18.4.2 Dedicated Security Policies Plan 325

    18.4.3 Multifactor Authentication 325

    18.4.4 Data Accessibility 326

    18.4.5 Secure Data Destruction 326

    18.4.6 Encryption of Backups 326

    18.4.7 Regulatory Compliance 326

    18.4.8 External Third-Party Contracts and Agreements 327

    18.5 Cloud Security Standards 327

    18.6 Cyber Security Legal Framework in India 327

    18.7 Privacy in Cloud Computing-Data Protection Standards 329

    18.8 Recognition of Right to Privacy 330

    18.9 Government Surveillance Power vs Privacy of Individuals 332

    18.10 Data Ownership and Intellectual Property Rights 333

    18.11 Cloud Service Provider as an Intermediary 335

    18.12 Challenges in Cloud Computing 337

    18.12.1 Classification of Data 337

    18.12.2 Jurisdictional Issues 337

    18.12.3 Interoperability of the Cloud 338

    18.12.4 Vendor Agreements 339

    18.13 Conclusion 339

    References 341

    19 Securing the Pharma Supply Chain Using Blockchain 343
    Pulkit Arora, Chetna Sachdeva and Dolly Sharma

    19.1 Introduction 343

    19.2 Literature Review 345

    19.2.1 Current Scenario 346

    19.2.2 Proposal 347

    19.3 Methodology 349

    19.4 Results 354

    19.5 Conclusion and Future Scope 358

    References 358

    Index 361