Produktbild: Quantum Computing Models for Cybersecurity and Wireless Communications

Quantum Computing Models for Cybersecurity and Wireless Communications

263,99 €

inkl. gesetzl. MwSt., Versandkostenfrei


Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

05.03.2025

Herausgeber

Budati Anil Kumar + weitere

Verlag

Wiley

Seitenzahl

384

Gewicht

680 g

Sprache

Englisch

ISBN

978-1-394-27139-9

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

05.03.2025

Herausgeber

Verlag

Wiley

Seitenzahl

384

Gewicht

680 g

Sprache

Englisch

ISBN

978-1-394-27139-9

Herstelleradresse

Libri GmbH
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

Noch keine Bewertungen vorhanden

Verfassen Sie die erste Bewertung zu diesem Artikel

Helfen Sie anderen Kundinnen und Kunden durch Ihre Meinung.

Kundinnen und Kunden meinen

Bewertungen (0)

Die Leseprobe wird geladen.
  • Produktbild: Quantum Computing Models for Cybersecurity and Wireless Communications
  • Preface xv

    Acknowledgment xvii

    1 Performance Evaluation of Avionics System Under Hardware-In- Loop Simulation Framework with Implementation of an AS9100 Quality Management System 1
    Rajesh Shankar Karvande and Tatineni Madhavi

    1.1 Introduction 2

    1.2 HILS Process and Quality Management System 4

    1.3 HILS Testing Phase 7

    1.4 AS9100 QMS Integrated with HILS Process 8

    1.5 Conclusion and Suggestions 10

    References 10

    2 YouTube Comment Summarizer and Time-Based Analysis 13
    Preeti Bailke, Rugved Junghare, Prajakta Kumbhare, Pratik Mandalkar, Pratik Mane and Netra Mohekar

    2.1 Introduction 13

    2.2 Literature Review 16

    2.3 Methodology 18

    2.3.1 YouTube Comments Data Collection 18

    2.3.1.1 YouTube Data API Integration 18

    2.3.1.2 get_video_comments Function 19

    2.3.1.3 Comment Processing 19

    2.3.1.4 Handling Pagination with get_all_video_ comments 20

    2.3.1.5 Excel File Creation with save_to_excel 20

    2.3.2 Datasets 20

    2.3.3 Extractive Summarization 21

    2.4 Result 30

    2.5 Performance 30

    2.6 Conclusion 31

    References 31

    3 Enhancing Gait Recognition Using YOLOv8 and Robust Video Matting for Low-Light and Adverse Conditions 33
    Premanand Ghadekar, Aadesh Chawla, Sakshi Bodhe, Sharvari Bawane and Dhruv Kshirsagar

    3.1 Introduction 34

    3.2 Related Works 34

    3.3 Methodology 36

    3.4 Comparision with Existing Systems 41

    3.5 Future Scope 48

    3.6 Conclusion 48

    Acknowledgment 49

    References 49

    4 An Ensemble-Based Machine Learning Framework for Breast Cancer Prediction 51
    Ramya Palaniappan, Maha Lakshmi, Namitha, Nirmala Devi and Naga Phani

    4.1 Introduction 52

    4.2 Related Works 53

    4.3 Proposed Framework 56

    4.3.1 ML Models and Ablation Study 56

    4.3.2 Building Ensemble Model Using AdaBoost 57

    4.4 Experimental Setup 58

    4.4.1 Dataset 58

    4.4.2 Data Visualization 59

    4.4.3 Data Pre-Processing Phase 60

    4.4.4 Proposed Methodology 61

    4.4.5 Performance Metrics 62

    4.5 Results and Discussion 63

    4.5.1 Comparison with Baseline Models 63

    4.5.2 Comparison with Existing Literature Works 66

    4.6 Existing Works 67

    4.7 Conclusion and Future Work 69

    Dataset 69

    References 69

    5 Proactive Fault Detection in Weather Forecast Control Systems Through Heartbeat Monitoring and Cloud-Based Analytics 73
    Shelly Prakash and Vaibhav Vyas

    5.1 Introduction 74

    5.1.1 Cloud Computing 75

    5.1.1.1 Fault, Error, Failure 75

    5.2 Related Work 77

    5.3 Proposed Proactive Fault Detection Architecture 81

    5.4 Conclusion 95

    References 95

    6 FlowGuard: Efficient Traffic Monitoring System 99
    Varsha Dange, Atharva Bonde, Om Borse, Harshal Chaudhari and Sanskar Chaudhari

    6.1 Introduction 99

    6.2 Literature Review 100

    6.3 Methodology 113

    6.3.1 Theory 113

    6.3.2 Requirement 114

    6.3.2.1 Hardware Requirements 114

    6.3.2.2 Software Requirements 116

    6.3.3 Workflow 117

    6.3.4 Flowchart 118

    6.4 Results and Discussions 118

    6.5 Conclusion 121

    6.6 Future Scope 121

    Acknowledgment 122

    References 122

    References for Pictures of Components Used 124

    7 A Survey on Heart Disease Prediction Using Ensemble Techniques in ml 125
    Sudhakar Vecha and M.V.P. Chandra Sekhara Rao

    7.1 Introduction 125

    7.2 Literature Survey 127

    7.3 Datasets 128

    7.4 Ensemble Learning in Heart Disease 129

    7.5 Challenges and Limitations 134

    7.6 Future Directions 134

    7.7 Conclusion 135

    References 135

    8 A Video Surveillance: Crowd Anomaly Detection and Management Alert System 139
    Anitha Ponraj, Umasree Mariappan, M. J. Sai Kiran, S. Tejeswar Reddy, N. Vinay and P. Bharath

    8.1 Introduction 140

    8.2 Related Work 140

    8.3 Dataset Description 143

    8.4 Problem Definition 143

    8.5 Proposed Methodology and System 144

    8.5.1 Proposed Methodology 144

    8.5.2 Proposed System 146

    8.6 Results 148

    8.7 Conclusion and Future Scope 150

    8.7.1 Conclusion 150

    8.7.2 Future Scope 151

    References 151

    9 Revolutionizing Learning with Qubits: A Review of Quantum Machine Learning Advances 153
    Shatakshi Bhusari, Aniket Badakh, Kalyani Daine, Nikita Gagare and Prasad Raghunath Mutkule

    9.1 Introduction 154

    9.1.1 Parallelism 154

    9.1.2 Quantum Speedup 155

    9.1.3 Quantum Entanglement 155

    9.1.4 Quantum Fourier Transform 155

    9.1.5 Quantum Machine Learning Algorithms 155

    9.1.6 Quantum Data Representation 155

    9.1.7 Quantum Sampling 155

    9.1.8 Quantum Annealing 156

    9.1.9 Hybrid Quantum-Classical Approaches 156

    9.2 Review of Literature 156

    9.2.1 Overview of Key Quantum Computing Principles 156

    9.2.1.1 Qubits (Quantum Bits) 157

    9.2.1.2 Quantum Gates 157

    9.2.1.3 Quantum Parallelism 157

    9.2.1.4 Quantum Measurement 157

    9.2.1.5 Quantum Fourier Transform 158

    9.2.1.6 Quantum Entanglement-Based Algorithms 158

    9.3 Basic Quantum Operations, Qubits, and Quantum Gates 158

    9.3.1 Basic Quantum Operations 158

    9.3.2 Quantum Bits (Qubits) 158

    9.3.3 Quantum Gates 159

    9.4 Quantum Machine Learning Algorithms 159

    9.4.1 Quantum Support Vector Machines (QSVM) 161

    9.4.2 Quantum Neural Networks (QNN) 161

    9.4.3 Quantum Clustering Algorithms 161

    9.4.4 Quantum Principal Component Analysis (QPCA) 162

    9.4.5 Quantum Boltzmann Machines 162

    9.4.6 Quantum Support Vector Clustering (QSVC) 162

    9.5 Quantum Hardware for Machine Learning 162

    9.6 Challenges in Building Scalable and Error-Resistant Quantum Hardware 163

    9.6.1 Decoherence and Quantum Error Correction 163

    9.6.2 Quantum Gate Fidelity 163

    9.6.3 Scalability 164

    9.6.4 Qubit Connectivity and Crosstalk 164

    9.6.5 Material Science and Qubit Implementation 164

    9.6.6 Quantum Interconnects 164

    9.6.7 Thermal Management 164

    9.6.8 Error Mitigation Strategies 164

    9.7 Challenges and Limitations in Quantum Machine Learning 165

    9.7.1 Quantum Computational Overheads 165

    9.7.2 Hybrid Quantum-Classical System Integration 165

    9.7.3 Limited Quantum Expressibility 165

    9.7.4 Data Preprocessing Challenges 165

    9.7.5 Quantum Algorithm Verification 166

    9.7.6 Quantum Resource Requirements 166

    9.7.7 Adaptation to Quantum Hardware Constraints 166

    9.7.8 Limited Quantum Hardware Availability 166

    9.7.9 Algorithmic Complexity 166

    9.7.10 Quantum Model Interpretability 166

    9.8 Future Directions 167

    9.9 Conclusion 167

    References 167

    10 Multi-Band Self-Grounding Antenna for Wireless Technologies 169
    Ch. Siva Rama Krishna, P. Livingston, S. Jaya Chandra, J. Hari Babu and K. Sai Babu

    10.1 Introduction 170

    10.1.1 Literature Review 170

    10.2 Design of Antenna 174

    10.2.1 Design and Results at Primary Level of Antenna 175

    10.2.2 Design and Results at Secondary Level of Antenna 175

    10.3 Actual Design of Antenna 176

    10.4 Results of Antenna 176

    10.4.1 Mathematical Analysis 178

    10.4.2 3D Polar Plot 178

    10.5 Conclusions 179

    References 180

    11 Navigating Network Security: A Study on Contemporary Anomaly Detection Technologies 183
    Sai Ramya, Smera C. and Sandeep J.

    11.1 Introduction 184

    11.2 Related Work 186

    11.3 Methodology 194

    11.4 Conclusion 197

    References 197

    12 File Fragment Classification: A Comprehensive Survey of Research Advances 201
    Teena Mary and Sreeja C.S.

    12.1 Introduction 201

    12.2 Methodology 203

    12.2.1 Selection Criteria 203

    12.2.2 Structure of the Paper 204

    12.3 Approaches for File Fragment Classification 204

    12.3.1 Signature-Based Approaches 204

    12.3.2 Content-Based Approaches 206

    12.3.3 Deep Learning-Based Approaches 207

    12.3.3.1 Convolutional Neural Networks (CNNs) 208

    12.3.3.2 Feed Forward Neural Networks (FFNNs) 209

    12.3.4 Hierarchical Classification Methods 209

    12.4 Survey Findings 210

    12.5 Challenges and Future Directions 214

    12.6 Conclusion 215

    References 216

    13 Deepfake Detection and Forensic Precision for Online Harassment 219
    K. Gouthami, K. Sunitha, D.U. Durgarani and M. Prathyusha

    13.1 Introduction 220

    13.2 Literature 221

    13.3 Theoretical Analysis and Software Simulation 222

    13.3.1 Theoretical Analysis 222

    13.3.2 Software Simulation 223

    13.3.3 Testing and Optimization 224

    References 225

    14 Design of Automatic Seed Sowing Machine 227
    Chiluka Ramesh, K. Sarada, V. Ajay Shankar and K. Ravi Kumar

    14.1 Introduction 228

    14.2 Literature Survey 229

    14.3 Proposed System 232

    14.4 Conclusions 235

    References 235

    15 In Motion: Exploring Urban Rides Through Data Analytics 237
    Rajkumar Sai Varun, Nimmagadda Narayana, Dudam Vipassana and Mohan Dholvan

    15.1 Introduction 237

    15.2 Literature Survey 238

    15.3 Proposed Methodology 240

    15.4 Result Analysis 247

    15.5 Conclusion 248

    References 249

    16 Design of Novel Chatbot Using Generative Artificial Intelligence 251
    Sk. Khader Zelani, Sk. Gousiya Begum, M. Chandana and N. Lakshmi Tirupatamma

    16.1 Introduction 252

    16.2 Conclusion and Future Scope 257

    References 257

    17 The Smart Nebulizer Cap for Enhanced Asthma Management 259
    Rossly Netala, Aadi Praharsha and Mohan Dholvan

    17.1 Introduction 259

    17.2 Literature Survey 261

    17.3 Methodology 262

    17.4 Conclusions 265

    References 265

    18 Design of a Digital VLSI Parallel Morphological Reconfigurable Processing Module for Binary and Grayscale Image Processing 267
    Y. Bhaskara Rao, K. Rajitha, D. Vijay Harsha Vardhan, N. Naga Raja Kumari and D. Vijaya Saradhi

    18.1 Introduction 268

    18.2 Literature Survey 269

    18.3 Design of a Digital VLSI Parallel Morphological Reconfigurable Processing Module for Binary and Grayscale Image Processing 271

    18.4 Result Analysis 274

    18.5 Conclusion 276

    References 277

    19 Intrusion Detection System Using Machine Learning 279
    Ballikura Dhanunjay, Earla Sanjay, Aakaram Karthik Raj and Mohan Dholvan

    19.1 Introduction 280

    19.2 Literature Survey 280

    19.3 Methodology 281

    19.4 Algorithm 283

    19.5 Implementation 285

    19.6 Results and Outputs 289

    19.6.1 User Interface 289

    19.7 Conclusion and Future Scope 290

    References 291

    20 Prediction of Arrival Delay Time in Freightage Rails 293
    Bobbala Shriya, Gudishetty Shrita, Vanga Pragnya Reddy and Nanda Kumar M.

    20.1 Introduction 294

    20.2 Literature Survey 295

    20.3 Methodology 297

    20.4 Experimental Results 302

    20.5 Conclusions 308

    References 309

    21 Predicting Flight Delays with Error Calculation Using Machine Learned Classifiers 311
    L. Sai Nageswara Raju, T. Naman Krishn Raj, Raipole Manihas Goud and Mohan Dholvan

    21.1 Introduction 311

    21.2 Literature Survey 312

    21.3 Proposed Methodology 314

    21.4 Result Analysis 322

    21.5 Conclusion 322

    References 323

    22 Design and Implementation of 8-Bit Ripple Carry Adder and Carry Select Adder at 32-nm CNTFET Technology: A Comparative Study 325
    Venkata Rao Tirumalasetty, K. Babulu and G. Appala Naidu

    22.1 Introduction 326

    22.2 Implementation of RCA & CSA 328

    22.3 Simulation Results 333

    22.4 Conclusion 335

    References 335

    23 XGBoost Classifier Based Water Quality Classification Using Machine Learning 337
    Nagidi Nikhitha, Sudini Poojitha, Vooturi Arjun, K. Sateesh Kumar and D. Mohan

    23.1 Introduction 338

    23.2 Related Work 338

    23.3 Proposed Methodology 339

    23.4 Results and Discussion 342

    23.5 Conclusion 345

    References 345

    Index 347