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CONVERGENCE OF DEEP LEARNING IN CYBER-IOT SYSTEMS AND SECURITY In-depth analysis of Deep Learning-based cyber-IoT systems and security which will be the industry leader for the next ten years. 
The main goal of this book is to bring to the fore unconventional cryptographic methods to provide cyber security, including cyber-physical system security and IoT security through deep learning techniques and analytics with the study of all these systems. 
This book provides innovative solutions and implementation of deep learning-based models in cyber-IoT systems, as well as the exposed security issues in these systems. The 20 chapters are organized into four parts. Part I gives the various approaches that have evolved from machine learning to deep learning. Part II presents many innovative solutions, algorithms, models, and implementations based on deep learning. Part III covers security and safety aspects with deep learning. Part IV details cyber-physical systems as well as a discussion on the security and threats in cyber-physical systems with probable solutions. 
Audience 
Researchers and industry engineers in computer science, information technology, electronics and communication, cybersecurity and cryptography.
Contents
Preface xvii
 Part I: Various Approaches from Machine Learning to Deep Learning 1
 1 Web-Assisted Noninvasive Detection of Oral Submucous Fibrosis Using IoHT 3
 Animesh Upadhyaya, Vertika Rai, Debdutta Pal, Surajit Bose and Somnath Ghosh
 1.1 Introduction 3
 1.2 Literature Survey 6
 1.2.1 Oral Cancer 6
 1.3 Primary Concepts 7
 1.3.1 Transmission Efficiency 7
 1.4 Propose Model 9
 1.4.1 Platform Configuration 9
 1.4.2 Harvard Architectural Microcontroller Base Wireless Communication Board 10
 1.4.2.1 NodeMCU ESP8266 Microcontroller 10
 1.4.2.2 Gas Sensor 12
 1.4.3 Experimental Setup 13
 1.4.4 Process to Connect to Sever and Analyzing Data on Cloud 14
 1.5 Comparative Study 16
 1.6 Conclusion 17
 References 17
 2 Performance Evaluation of Machine Learning and Deep Learning Techniques: A Comparative Analysis for House Price Prediction 21
 Sajeev Ram Arumugam, Sheela Gowr, Abimala, Balakrishna and Oswalt Manoj
 2.1 Introduction 22
 2.2 Related Research 23
 2.2.1 Literature Review on Comparing the Performance of the ML/DL Algorithms 23
 2.2.2 Literature Review on House Price Prediction 25
 2.3 Research Methodology 26
 2.3.1 Data Collection 27
 2.3.2 Data Visualization 27
 2.3.3 Data Preparation 28
 2.3.4 Regression Models 29
 2.3.4.1 Simple Linear Regression 29
 2.3.4.2 Random Forest Regression 30
 2.3.4.3 Ada Boosting Regression 31
 2.3.4.4 Gradient Boosting Regression 32
 2.3.4.5 Support Vector Regression 33
 2.3.4.6 Artificial Neural Network 34
 2.3.4.7 Multioutput Regression 36
 2.3.4.8 Regression Using Tensorflow—Keras 37
 2.3.5 Classification Models 39
 2.3.5.1 Logistic Regression Classifier 39
 2.3.5.2 Decision Tree Classifier 39
 2.3.5.3 Random Forest Classifier 41
 2.3.5.4 Naïve Bayes Classifier 41
 2.3.5.5 K-Nearest Neighbors Classifier 42
 2.3.5.6 Support Vector Machine Classifier (SVM) 43
 2.3.5.7 Feed Forward Neural Network 43
 2.3.5.8 Recurrent Neural Networks 44
 2.3.5.9 LSTM Recurrent Neural Networks 44
 2.3.6 Performance Metrics for Regression Models 45
 2.3.7 Performance Metrics for Classification Models 46
 2.4 Experimentation 47
 2.5 Results and Discussion 48
 2.6 Suggestions 60
 2.7 Conclusion 60
 References 62
 3 Cyber Physical Systems, Machine Learning & Deep Learning— Emergence as an Academic Program and Field for Developing Digital Society 67
 P. K. Paul
 3.1 Introduction 68
 3.2 Objective of the Work 69
 3.3 Methods 69
 3.4 Cyber Physical Systems: Overview with Emerging Academic Potentiality 70
 3.5 ml and dl Basics with Educational Potentialities 72
 3.5.1 Machine Learning (ML) 72
 3.5.2 Deep Learning 73
 3.6 Manpower and Developing Scenario in Machine Learning and Deep Learning 74
 3.7 dl & ml in Indian Context 79
 3.8 Conclusion 81
 References 82
 4 Detection of Fake News and Rumors in the Social Media Using Machine Learning Techniques With Semantic Attributes 85
 Diganta Saha, Arijit Das, Tanmay Chandra Nath, Soumyadip Saha and Ratul Das
 4.1 Introduction 86
 4.2 Literature Survey 87
 4.3 Proposed Work 88
 4.3.1 Algorithm 89
 4.3.2 Flowchart 90
 4.3.3 Explanation of Approach 91
 4.4 Results and Analysis 92
 4.4.1 Datasets 92
 4.4.2 Evaluation 93
 4.4.2.1 Result of 1st Dataset 93
 4.4.2.2 Result of 2nd Dataset 94
 4.4.2.3 Result of 3rd Dataset 94
 4.4.3 Relative Comparison of Performance 95
 4.5 Conclusion 95
 References 96
 Part II: Innovative Solutions Based on Deep Learning 99
 5 Online Assessment System Using Natural Language Processing Techniques 101
 S. Suriya, K. Nagalakshmi and Nivetha S.
 5.1 Introduction 102
 5.2 Literature Survey 103
 5.3 Existing Algorithms 108
 5.4 Proposed System Design 111
 5.5 System Implementation 115
 5.6 Conclusion 120
 References 121
 6 On a Reference Architecture to Build Deep-Q Learning-Based Intelligent IoT Edge Solutions 123
 Amit Chakraborty, Ankit Kumar Shaw and Sucharita Samanta
 6.1 Introduction 124
 6.1.1 A Brief Primer on Machine Learning 124
 6.1.1.1 Types of Machine Learning 124
 6.2 Dynamic Programming 128
 6.3 Deep Q-Learning 129
 6.4 IoT 130
 6.4.1 Azure 130
 6.4.1.1 IoT on Azure 130
 6.5 Conclusion 144
 6.6 Future Work 144
 References 145
 7 Fuzzy Logic-Based Air Conditioner System 147
 Suparna Biswas, Sayan Roy Chaudhuri, Ayusha Biswas and Arpan Bhawal
 7.1 Introduction 147
 7.2 Fuzzy Logic-Based Control System 149
 7.3 Proposed System 149
 7.3.1 Fuzzy Variables 149
 7.3.2 Fuzzy Base Class 154
 7.3.3 Fuzzy Rule Base 155
 7.3.4 Fuzzy Rule Viewer 156
 7.4 Simulated Result 157
 7.5 Conclusion and Future Work 163
 References 163
 8 An Efficient Masked-Face Recognition Technique to Combat with COVID- 19 165
 Suparna Biswas
 8.1 Introduction 165
 8.2 Related Works 167
 8.2.1 Review of Face Recognition for Unmasked Faces 167
 8.2.2 Review of Face Recognition for Masked Faces 168
 8.3 Mathematical Preliminaries 169
 8.3.1 Digital Curvelet Transform (DCT) 169
 8.3.2 Compressive Sensing-Based Classification 170
 8.4 Proposed Method 171
 8.5 Experimental Results 173
 8.5.1 Database 173
 8.5.2 Result 175
 8.6 Conclusion 179
 References 179
 9 Deep Learning: An Approach to Encounter Pandemic Effect of Novel Corona Virus (COVID-19) 183
 Santanu Koley, Pinaki Pratim Acharjya, Rajesh Mukherjee, Soumitra Roy and Somdeep Das
 9.1 Introduction 184
 9.2 Interpretation With Medical Imaging 185
 9.3 Corona Virus Variants Tracing 188
 9.4 Spreading Capability and Destructiveness of Virus 191
 9.5 Deduction of Biological Protein Structure 192
 9.6 Pandemic Model Structuring and Recommended Drugs 192
 9.7 Selection of Medicine 195
 9.8 Result Analysis 197
 9.9 Conclusion 201
 References 202
 10 Question Answering System Using Deep Learning in the Low Resource Language Bengali 207
 Arijit Das and Diganta Saha
 10.1 Introduction 208
 10.2 Related Work 210
 10.3 Problem Statement 215
 10.4 Proposed Approach 215
 10.5 Algorithm 216
 10.6 Results and Discussion 219
 10.6.1 Result Summary for TDIL Dataset 219
 10.6.2 Result Summary for SQuAD Dataset 219
 10.6.3 Examples of Retrieved Answers 220
 10.6.4 Calculation of TP, TN, FP, FN, Accuracy, Precision, Recall, and F1 score 221
 10.6.5 Comparison of Result with other Methods and Dataset 222
 10.7 Analysis of Error 223
 10.8 Few Close Observations 223
 10.9 Applications 224
 10.10 Scope for Improvements 224
 10.11 Conclusions 224
 Acknowledgments 225
 References 225
 Part III: Security and Safety Aspects with Deep Learning 231
 11 Secure Access to Smart Homes Using Biometric Authentication With RFID Reader for IoT Systems 233
 K.S. Niraja and Sabbineni Srinivasa Rao
 11.1 Introduction 234
 11.2 Related Work 235
 11.3 Framework for Smart Home Use Case With Biometric 236
 11.3.1 RFID-Based Authentication and Its Drawbacks 236
 11.4 Control Scheme for Secure Access (CSFSC) 237
 11.4.1 Problem Definition 237
 11.4.2 Biometric-Based RFID Reader Proposed Scheme 238
 11.4.3 Reader-Based Procedures 240
 11.4.4 Backend Server-Side Procedures 240
 11.4.5 Reader Side Final Compute and Check Operations 240
 11.5 Results Observed Based on Various Features With Proposed and Existing Methods 242
 11.6 Conclusions and Future Work 245
 References 246
 12 MQTT-Based Implementation of Home Automation System Prototype With Integrated Cyber-IoT Infrastructure and Deep Learning-Based Security Issues 249
 Arnab Chakraborty
 12.1 Introduction 250
 12.2 Architecture of Implemented Home Automation 252
 12.3 Challenges in Home Automation 253
 12.3.1 Distributed Denial of Service and Attack 254
 12.3.2 Deep Learning-Based Solution Aspects 254
 12.4 Implementation 255
 12.4.1 Relay 256
 12.4.2 DHT 11 257
 12.5 Results and Discussions 262
 12.6 Conclusion 265
 References 266
 13 Malware Detection in Deep Learning 269
 Sharmila Gaikwad and Jignesh Patil
 13.1 Introduction to Malware 270
 13.1.1 Computer Security 270
 13.1.2 What Is Malware? 271
 13.2 Machine Learning and Deep Learning for Malware Detection 274
 13.2.1 Introduction to Machine Learning 274
 13.2.2 Introduction to Deep Learning 276
 13.2.3 Detection Techniques Using Deep Learning 279
 13.3 Case Study on Malware Detection 280
 13.3.1 Impact of Malware on Systems 280
 13.3.2 Effect of Malware in a Pandemic Situation 281
 13.4 Conclusion 283
 References 283
 14 Patron for Women: An Application for Womens Safety 285
 Riya Sil, Snatam Kamila, Ayan Mondal, Sufal Paul, Santanu Sinha and Bishes Saha
 14.1 Introduction 286
 14.2 Background Study 286
 14.3 Related Research 287
 14.3.1 A Mobile-Based Women Safety Application (I safe App) 287
 14.3.2 Lifecraft: An Android-Based Application System for Women Safety 288
 14.3.3 Abhaya: An Android App for the Safety of Women 288
 14.3.4 Sakhi—The Saviour: An Android Application to Help Women in Times of Social Insecurity 289
 14.4 Proposed Methodology 289
 14.4.1 Motivation and Objective 290
 14.4.2 Proposed System 290
 14.4.3 System Flowchart 291
 14.4.4 Use-Case Model 291
 14.4.5 Novelty of the Work 294
 14.4.6 Comparison with Existing System 294
 14.5 Results and Analysis 294
 14.6 Conclusion and Future Work 298
 References 299
 15 Concepts and Techniques in Deep Learning Applications in the Field of IoT Systems and Security 303
 Santanu Koley and Pinaki Pratim Acharjya
 15.1 Introduction 304
 15.2 Concepts of Deep Learning 307
 15.3 Techniques of Deep Learning 308
 15.3.1 Classic Neural Networks 309
 15.3.1.1 Linear Function 309
 15.3.1.2 Nonlinear Function 309
 15.3.1.3 Sigmoid Curve 310
 15.3.1.4 Rectified Linear Unit 310
 15.3.2 Convolution Neural Networks 310
 15.3.2.1 Convolution 311
 15.3.2.2 Max-Pooling 311
 15.3.2.3 Flattening 311
 15.3.2.4 Full Connection 311
 15.3.3 Recurrent Neural Networks 312
 15.3.3.1 LSTMs 312
 15.3.3.2 Gated RNNs 312
 15.3.4 Generative Adversarial Networks 313
 15.3.5 Self-Organizing Maps 314
 15.3.6 Boltzmann Machines 315
 15.3.7 Deep Reinforcement Learning 315
 15.3.8 Auto Encoders 316
 15.3.8.1 Sparse 317
 15.3.8.2 Denoising 317
 15.3.8.3 Contractive 317
 15.3.8.4 Stacked 317
 15.3.9 Back Propagation 317
 15.3.10 Gradient Descent 318
 15.4 Deep Learning Applications 319
 15.4.1 Automatic Speech Recognition (ASR) 319
 15.4.2 Image Recognition 320
 15.4.3 Natural Language Processing 320
 15.4.4 Drug Discovery and Toxicology 321
 15.4.5 Customer Relationship Management 322
 15.4.6 Recommendation Systems 323
 15.4.7 Bioinformatics 324
 15.5 Concepts of IoT Systems 325
 15.6 Techniques of IoT Systems 326
 15.6.1 Architecture 326
 15.6.2 Programming Model 327
 15.6.3 Scheduling Policy 329
 15.6.4 Memory Footprint 329
 15.6.5 Networking 332
 15.6.6 Portability 332
 15.6.7 Energy Efficiency 333
 15.7 IoT Systems Applications 333
 15.7.1 Smart Home 334
 15.7.2 Wearables 335
 15.7.3 Connected Cars 335
 15.7.4 Industrial Internet 336
 15.7.5 Smart Cities 337
 15.7.6 IoT in Agriculture 337
 15.7.7 Smart Retail 338
 15.7.8 Energy Engagement 339
 15.7.9 IoT in Healthcare 340
 15.7.10 IoT in Poultry and Farming 340
 15.8 Deep Learning Applications in the Field of IoT Systems 341
 15.8.1 Organization of DL Applications for IoT in Healthcare 342
 15.8.2 DeepSense as a Solution for Diverse IoT Applications 343
 15.8.3 Deep IoT as a Solution for Energy Efficiency 346
 15.9 Conclusion 346
 References 347
 16 Efficient Detection of Bioweapons for Agricultural Sector Using Narrowband Transmitter and Composite Sensing Architecture 349
 Arghyadeep Nag, Labani Roy, Shruti, Soumen Santra and Arpan Deyasi
 16.1 Introduction 350
 16.2 Literature Review 353
 16.3 Properties of Insects 355
 16.4 Working Methodology 357
 16.4.1 Sensing 357
 16.4.1.1 Specific Characterization of a Particular Species 357
 16.4.2 Alternative Way to Find Those Previously Sensing Parameters 357
 16.4.3 Remedy to Overcome These Difficulties 358
 16.4.4 Take Necessary Preventive Actions 358
 16.5 Proposed Algorithm 359
 16.6 Block Diagram and Used Sensors 360
 16.6.1 Arduino Uno 361
 16.6.2 Infrared Motion Sensor 362
 16.6.3 Thermographic Camera 362
 16.6.4 Relay Module 362
 16.7 Result Analysis 362
 16.8 Conclusion 363
 References 363
 17 A Deep Learning-Based Malware and Intrusion Detection Framework 367
 Pavitra Kadiyala and Kakelli Anil Kumar
 17.1 Introduction 367
 17.2 Literature Survey 368
 17.3 Overview of the Proposed Work 371
 17.3.1 Problem Description 371
 17.3.2 The Working Models 371
 17.3.3 About the Dataset 371
 17.3.4 About the Algorithms 373
 17.4 Implementation 374
 17.4.1 Libraries 374
 17.4.2 Algorithm 376
 17.5 Results 376
 17.5.1 Neural Network Models 377
 17.5.2 Accuracy 377
 17.5.3 Web Frameworks 377
 17.6 Conclusion and Future Work 379
 References 380
 18 Phishing URL Detection Based on Deep Learning Techniques 381
 S. Carolin Jeeva and W. Regis Anne
 18.1 Introduction 382
 18.1.1 Phishing Life Cycle 382
 18.1.1.1 Planning 383
 18.1.1.2 Collection 384
 18.1.1.3 Fraud 384
 18.2 Literature Survey 385
 18.3 Feature Generation 388
 18.4 Convolutional Neural Network for Classification of Phishing vs Legitimate URLs 388
 18.5 Results and Discussion 391
 18.6 Conclusion 394
 References 394
 Web Citation 396
 Part IV: Cyber Physical Systems 397
 19 Cyber Physical System—The Gen Z 399
 Jayanta Aich and Mst Rumana Sultana
 19.1 Introduction 399
 19.2 Architecture and Design 400
 19.2.1 Cyber Family 401
 19.2.2 Physical Family 401
 19.2.3 Cyber-Physical Interface Family 402
 19.3 Distribution and Reliability Management in CPS 403
 19.3.1 CPS Components 403
 19.3.2 CPS Models 404
 19.4 Security Issues in CPS 405
 19.4.1 Cyber Threats 405
 19.4.2 Physical Threats 407
 19.5 Role of Machine Learning in the Field of CPS 408
 19.6 Application 411
 19.7 Conclusion 411
 References 411
 20 An Overview of Cyber Physical System (CPS) Security, Threats, and Solutions 415
 Krishna Keerthi Chennam, Fahmina Taranum and Maniza Hijab
 20.1 Introduction 416
 20.1.1 Motivation of Work 417
 20.1.2 Organization of Sections 417
 20.2 Characteristics of CPS 418
 20.3 Types of CPS Security 419
 20.4 Cyber Physical System Security Mechanism—Main Aspects 421
 20.4.1 CPS Security Threats 423
 20.4.2 Information Layer 423
 20.4.3 Perceptual Layer 424
 20.4.4 Application Threats 424
 20.4.5 Infrastructure 425
 20.5 Issues and How to Overcome Them 426
 20.6 Discussion and Solutions 427
 20.7 Conclusion 431
 References 431
 Index 435

              
              

