Smart Factories for Industry 5.0 Transformation (eBook, PDF)
Redaktion: Nidhya, R.; Balamurugan, S.; Anand, Rishabh; Karthik, S.; Kumar, Manish
263,99 €
263,99 €
inkl. MwSt.
Sofort per Download lieferbar
0 °P sammeln
263,99 €
Als Download kaufen
263,99 €
inkl. MwSt.
Sofort per Download lieferbar
0 °P sammeln
Jetzt verschenken
Alle Infos zum eBook verschenken
263,99 €
inkl. MwSt.
Sofort per Download lieferbar
Alle Infos zum eBook verschenken
0 °P sammeln
Smart Factories for Industry 5.0 Transformation (eBook, PDF)
Redaktion: Nidhya, R.; Balamurugan, S.; Anand, Rishabh; Karthik, S.; Kumar, Manish
- Format: PDF
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung
![](https://bilder.buecher.de/images/aktion/tolino/tolino-select-logo.png)
Bitte loggen Sie sich zunächst in Ihr Kundenkonto ein oder registrieren Sie sich bei
bücher.de, um das eBook-Abo tolino select nutzen zu können.
Hier können Sie sich einloggen
Hier können Sie sich einloggen
Sie sind bereits eingeloggt. Klicken Sie auf 2. tolino select Abo, um fortzufahren.
![](https://bilder.buecher.de/images/aktion/tolino/tolino-select-logo.png)
Bitte loggen Sie sich zunächst in Ihr Kundenkonto ein oder registrieren Sie sich bei bücher.de, um das eBook-Abo tolino select nutzen zu können.
This book serves as a comprehensive guide, exploring the technologies, design principles, and operational strategies behind smart factories.
In an era where industrial expertise meets digital innovation, the "smart factory" symbolizes a new wave of efficiency and advancement. Industry 5.0 represents a paradigm shift, integrating technologies like robotics, AI, IoT, and big data to enhance human-machine collaboration while improving sustainability, quality, and efficiency. It offers businesses valuable insights and real-world examples to navigate the opportunities and challenges of…mehr
- Geräte: PC
- mit Kopierschutz
- eBook Hilfe
- Größe: 24.36MB
Andere Kunden interessierten sich auch für
- The Digital Transformation of Logistics (eBook, PDF)96,99 €
- Factories of the Future (eBook, PDF)187,99 €
- Alessandro MassaroElectronics in Advanced Research Industries (eBook, PDF)133,99 €
- The Digital Transformation of Logistics (eBook, ePUB)96,99 €
- Integration of Mechanical and Manufacturing Engineering with IoT (eBook, PDF)150,99 €
- Factories of the Future (eBook, ePUB)187,99 €
- Subba RaoSmart Digital Manufacturing (eBook, PDF)22,99 €
-
-
-
This book serves as a comprehensive guide, exploring the technologies, design principles, and operational strategies behind smart factories.
In an era where industrial expertise meets digital innovation, the "smart factory" symbolizes a new wave of efficiency and advancement. Industry 5.0 represents a paradigm shift, integrating technologies like robotics, AI, IoT, and big data to enhance human-machine collaboration while improving sustainability, quality, and efficiency. It offers businesses valuable insights and real-world examples to navigate the opportunities and challenges of Industry 5.0.
This book goes beyond technical explanations to examine the broader impact of the Industry 5.0 revolution on global supply chains and socioeconomic change, encouraging readers to view technology as a force for good. It appeals to all levels of expertise, providing valuable insights for experienced professionals while serving as an introduction for newcomers. Above all, it invites readers to embrace the collaborative spirit and creativity of Industry 5.0, joining in the effort to build the smart factories that will drive the future of innovation.
Audience
Researchers, industry engineers, and technologists working in artificial intelligence and Industry 5.0 application areas such as healthcare, transportation, manufacturing, and more.
In an era where industrial expertise meets digital innovation, the "smart factory" symbolizes a new wave of efficiency and advancement. Industry 5.0 represents a paradigm shift, integrating technologies like robotics, AI, IoT, and big data to enhance human-machine collaboration while improving sustainability, quality, and efficiency. It offers businesses valuable insights and real-world examples to navigate the opportunities and challenges of Industry 5.0.
This book goes beyond technical explanations to examine the broader impact of the Industry 5.0 revolution on global supply chains and socioeconomic change, encouraging readers to view technology as a force for good. It appeals to all levels of expertise, providing valuable insights for experienced professionals while serving as an introduction for newcomers. Above all, it invites readers to embrace the collaborative spirit and creativity of Industry 5.0, joining in the effort to build the smart factories that will drive the future of innovation.
Audience
Researchers, industry engineers, and technologists working in artificial intelligence and Industry 5.0 application areas such as healthcare, transportation, manufacturing, and more.
Dieser Download kann aus rechtlichen Gründen nur mit Rechnungsadresse in D ausgeliefert werden.
Produktdetails
- Produktdetails
- Verlag: For Dummies
- Seitenzahl: 359
- Erscheinungstermin: 22. Januar 2025
- Englisch
- ISBN-13: 9781394200450
- Artikelnr.: 73168205
- Verlag: For Dummies
- Seitenzahl: 359
- Erscheinungstermin: 22. Januar 2025
- Englisch
- ISBN-13: 9781394200450
- Artikelnr.: 73168205
- Herstellerkennzeichnung Die Herstellerinformationen sind derzeit nicht verfügbar.
R. Nidhya, PhD, is an assistant professor in the Department of Computer Science & Engineering at the Madanapalle Institute of Technology & Science, affiliated with Jawaharlal Nehru Technical University, Anantapuram, India. Her research interests include wireless body area networks, machine learning, and IoT. Manish Kumar, PhD, is an assistant professor in the Department of Computer Science & Engineering at the Thapar Institute of Engineering and Technology, Patiala, Punjab, India. His research interests include soft computing applications for bioinformatics problems and computational intelligence. S. Karthik, PhD, is a professor and dean in the Department of Computer Science & Engineering at SNS College of Technology, Coimbatore, Tamil Nadu, India. His research interests include network security, web services, and wireless systems. Rishabh Anand, PhD, is a Global Service Delivery Manager with HCL Technologies Ltd. He earned his MBA in 2020 and is a certified DevOps project manager. S. Balamurugan, PhD, is the Director of Research and Development, Intelligent Research Consultancy Services (iRCS), Coimbatore, Tamilnadu, India. He is also Director of the Albert Einstein Engineering and Research Labs (AEER Labs), as well as Vice-Chairman, Renewable Energy Society of India (RESI), India. He has published 50+ books, 200+ international journals/conferences, and 35 patents.
Preface xi
1 Evolution of Industrial Revolution: Industry 5.0 and Beyond 1
S. Balamurugan and B. Surya
1.1 Brief History of Industrial Revolution 1
1.2 Acknowledgement 4
1.3 Bibliography and Further Reading 4
2 Personalized Healthcare Transformation via Novel Era of Artificial
Intelligence-Based Heuristic Concept 5
S. Pradeep, R. Sathish Kumar, M. Jagadesh and A. Karthikeyan
2.1 Introduction 7
2.2 Literature Survey 9
2.3 Digitization, Data Sources, and AI in Healthcare 13
2.4 AI Mainstreaming in Healthcare 15
2.5 Current Status, Integration, and Obstacles to the Usage of Personalized
Healthcare Transformation 17
2.6 Prerequisites for Radical Transformation in Healthcare 25
2.7 Personalized Healthcare Transformation Using MSOM-Based TOA 29
2.8 Results 34
2.9 Conclusion 41
3 A Survey on Security in Data Transmission Using Wireless Communication
Methods for IoT Edge Devices 45
V. Maruthi Prasad and B. Bharathi
3.1 Introduction 46
3.2 Literature Survey 47
3.3 Description of Data Protocols for IoT System 50
3.4 IoT Communication Parameters 59
3.5 Comparative of Communication Protocols for IoT Systems 64
3.6 Conclusion 67
4 Innovative Application of Conditional Deep Convolutional Generative
Adversarial Networks to Enhance Chronic Kidney Disease Diagnosis with
Uneven Datasets 71
Lakshmi Ramani Burra, Praveen Tumuluru, Janakiramaiah Bonam, S.
Hrushikesava Raju, Sunanda Nalajala and Surya Prasada Rao Borra
4.1 Introduction 72
4.2 Literature Survey 76
4.3 Methodology 78
4.4 Result Analysis 83
4.5 Conclusion 85
5 A Comprehensive Hybrid Implicit and Explicit Item-Based Collaborative
Filtering Approach with Bayesian Personalized Ranking for Enhancing Book
Recommendations 89
Adidam Surekha, Radhika Gouni, Satya Keerthi Gorripati, Venubabu Rachapudi,
S. Anjali Devi and Anupama Angadi
5.1 Introduction 90
5.2 Related Work 92
5.3 Methodology 95
5.4 Experimental Results and Analysis 99
5.5 Conclusion 102
6 An Efficient Cluster-Based Deep Learning Model for Multi-Attack
Classification in IDS Across Diverse Datasets 105
Rajesh Bingu, G. Harsha Vardhan Reddy, U. Jyothi Naga Pavan, S. Sneha Sai
Sri and N. V. Praveen Kumar
6.1 Introduction 106
6.2 Literature Survey 107
6.3 Proposed Model Design 110
6.4 Results and Discussion 115
6.5 Conclusion 118
7 Heart Failure Detection Through SMOTE for Augmentation and Machine
Learning Approach for Classification 123
G. Kiran Kumar, Anila M., Naga Raju Hari Manikyam, Venkata Nagaraju Thatha,
R. Vijaya Kumar Reddy and Krishna Reddy Papana
7.1 Introduction 124
7.2 Literature Survey 125
7.3 Proposed Methodology 126
7.4 Results and Discussion 128
7.5 Conclusion 132
8 Optimal Power Allocation in Cognitive Radio Networks Using
Teaching-Learning-Based Optimization 135
N. Lakshman Pratap, N. Sunanda and V. Suryanarayana Reddy
8.1 Introduction 136
8.2 Teaching-Learning-Based Optimization 137
8.3 Proposed Power Allocation Algorithm 140
8.4 Numerical Results 143
8.5 Conclusion 145
9 Using Historical Pattern Matching and Natural Language Processing in a
Hybrid Approach for Stock Market 147
K. Sri Niharika, C.H. Srisai Naga Satya Mani Pavan, T. Baby Aparna, Dinesh
Kumar Anguraj, S. Saathvik and Hari Kiran Vege
9.1 Introduction 148
9.2 Literature Review 149
9.3 Methodology 153
9.4 Data Sources and Collection 156
9.5 Experimental Setup 158
9.6 Discussion 160
9.7 Results 161
9.8 Conclusion 163
10 An Intelligent Framework for IoT-Based Health Care Monitoring Using
Fuzzy-Supported Machine Learning Algorithm 167
Mohanapriya M., Bharanidharan R., R. Santhosh and R. Reshma
10.1 Introduction 168
10.2 Literature Analysis 170
10.3 Integrated IoT-Based Healthcare Decision Making Model Using Machine
Learning (IHM-ML) 172
10.4 Result and Discussion 180
10.5 Conclusion and the Future Scope 184
11 Design Strategy for Narrowband Internet of Things with Its Scope and
Challenges of Security Solutions 187
R. Reshma, N. Mohanasundaram and R. Santhosh
11.1 Prologue Study 188
11.2 Fundamentals of NB-IoT Network Design 190
11.3 Security Challenges and Vulnerabilities in NB-IoT Systems 216
11.4 Scope of Machine Intelligence in NB-IoT Security 218
11.5 Conclusion and the Future Scope 220
12 Machine Learning in Healthcare: Unlocking Precision Diagnosis and
Continuous Monitoring Through Voice Analysis 229
Smilarubavathy G., Keerthana S. M., Nidhya R., Thanga Priscilla and
Pavithra D.
12.1 Introduction 230
12.2 Background 232
12.3 Methodology 232
12.4 Results 242
12.5 Discussion 243
13 Introduction of Advanced and Improved Transposition Algorithm 247
Dipesh Kumar, Nirupama Mandal and Yugal Kumar
13.1 Introduction 248
13.2 Literature Study 249
13.3 Implementation 257
13.4 Result 264
13.5 Conclusion and Future Direction 266
14 Performance Evaluation of Children at Risk for Schizophrenia Using
Ensemble Learning 269
Rathiya R., Kalamani M., Narmadha R. P., Sreenivasa Perumal L. and Kalpana
R.
14.1 Introduction 270
14.2 Literature Review 271
14.3 Methodology 274
14.4 Performance Analysis 276
14.5 Result Analysis 279
14.6 Conclusion 279
14.7 Future Work 280
15 Advanced Aquaculture Management: A Smart System for Optimizing Oxygen
Levels, Shrimp Health Monitoring 283
Prathyusha Kuncha, J. Manoranjini, Sirisha J., Suneetha Bandeela, Naveen
Kumar Penjarla and Simhadri Subhash Goud
15.1 Introduction 284
15.2 Literature Survey 286
15.3 System Model 288
15.4 Results and Discussion 292
15.5 Conclusion 296
16 Farming Revolution: Precision Agriculture and IoT for Sustainable Growth
299
Arepalli Gopi, Sudha L. R. and Iwin Thanakumar Joseph S.
16.1 Introduction 300
16.2 Data Storage and Analysis on Cloud Data 304
16.3 Architecture IoT with Agriculture 306
16.4 Results and Performance Validation 311
16.5 Conclusion 317
17 Comparative Analysis of the Identification and Categorization of the
Malaria Parasite Employing Recent Amalgamated Machine Learning
Methodologies 321
Tamal Kumar Kundu, Dinesh Kumar Anguraj, R. Nidhya and V. Maruthi Prasad
Introduction 322
17. Dataset Acquisition 325
17.2 Methodology 325
17.3 Literature Survey 326
17.4 Methodology 328
17.5 Results and Discussion 328
17.6 Conclusion 332
References 334
Index 337
1 Evolution of Industrial Revolution: Industry 5.0 and Beyond 1
S. Balamurugan and B. Surya
1.1 Brief History of Industrial Revolution 1
1.2 Acknowledgement 4
1.3 Bibliography and Further Reading 4
2 Personalized Healthcare Transformation via Novel Era of Artificial
Intelligence-Based Heuristic Concept 5
S. Pradeep, R. Sathish Kumar, M. Jagadesh and A. Karthikeyan
2.1 Introduction 7
2.2 Literature Survey 9
2.3 Digitization, Data Sources, and AI in Healthcare 13
2.4 AI Mainstreaming in Healthcare 15
2.5 Current Status, Integration, and Obstacles to the Usage of Personalized
Healthcare Transformation 17
2.6 Prerequisites for Radical Transformation in Healthcare 25
2.7 Personalized Healthcare Transformation Using MSOM-Based TOA 29
2.8 Results 34
2.9 Conclusion 41
3 A Survey on Security in Data Transmission Using Wireless Communication
Methods for IoT Edge Devices 45
V. Maruthi Prasad and B. Bharathi
3.1 Introduction 46
3.2 Literature Survey 47
3.3 Description of Data Protocols for IoT System 50
3.4 IoT Communication Parameters 59
3.5 Comparative of Communication Protocols for IoT Systems 64
3.6 Conclusion 67
4 Innovative Application of Conditional Deep Convolutional Generative
Adversarial Networks to Enhance Chronic Kidney Disease Diagnosis with
Uneven Datasets 71
Lakshmi Ramani Burra, Praveen Tumuluru, Janakiramaiah Bonam, S.
Hrushikesava Raju, Sunanda Nalajala and Surya Prasada Rao Borra
4.1 Introduction 72
4.2 Literature Survey 76
4.3 Methodology 78
4.4 Result Analysis 83
4.5 Conclusion 85
5 A Comprehensive Hybrid Implicit and Explicit Item-Based Collaborative
Filtering Approach with Bayesian Personalized Ranking for Enhancing Book
Recommendations 89
Adidam Surekha, Radhika Gouni, Satya Keerthi Gorripati, Venubabu Rachapudi,
S. Anjali Devi and Anupama Angadi
5.1 Introduction 90
5.2 Related Work 92
5.3 Methodology 95
5.4 Experimental Results and Analysis 99
5.5 Conclusion 102
6 An Efficient Cluster-Based Deep Learning Model for Multi-Attack
Classification in IDS Across Diverse Datasets 105
Rajesh Bingu, G. Harsha Vardhan Reddy, U. Jyothi Naga Pavan, S. Sneha Sai
Sri and N. V. Praveen Kumar
6.1 Introduction 106
6.2 Literature Survey 107
6.3 Proposed Model Design 110
6.4 Results and Discussion 115
6.5 Conclusion 118
7 Heart Failure Detection Through SMOTE for Augmentation and Machine
Learning Approach for Classification 123
G. Kiran Kumar, Anila M., Naga Raju Hari Manikyam, Venkata Nagaraju Thatha,
R. Vijaya Kumar Reddy and Krishna Reddy Papana
7.1 Introduction 124
7.2 Literature Survey 125
7.3 Proposed Methodology 126
7.4 Results and Discussion 128
7.5 Conclusion 132
8 Optimal Power Allocation in Cognitive Radio Networks Using
Teaching-Learning-Based Optimization 135
N. Lakshman Pratap, N. Sunanda and V. Suryanarayana Reddy
8.1 Introduction 136
8.2 Teaching-Learning-Based Optimization 137
8.3 Proposed Power Allocation Algorithm 140
8.4 Numerical Results 143
8.5 Conclusion 145
9 Using Historical Pattern Matching and Natural Language Processing in a
Hybrid Approach for Stock Market 147
K. Sri Niharika, C.H. Srisai Naga Satya Mani Pavan, T. Baby Aparna, Dinesh
Kumar Anguraj, S. Saathvik and Hari Kiran Vege
9.1 Introduction 148
9.2 Literature Review 149
9.3 Methodology 153
9.4 Data Sources and Collection 156
9.5 Experimental Setup 158
9.6 Discussion 160
9.7 Results 161
9.8 Conclusion 163
10 An Intelligent Framework for IoT-Based Health Care Monitoring Using
Fuzzy-Supported Machine Learning Algorithm 167
Mohanapriya M., Bharanidharan R., R. Santhosh and R. Reshma
10.1 Introduction 168
10.2 Literature Analysis 170
10.3 Integrated IoT-Based Healthcare Decision Making Model Using Machine
Learning (IHM-ML) 172
10.4 Result and Discussion 180
10.5 Conclusion and the Future Scope 184
11 Design Strategy for Narrowband Internet of Things with Its Scope and
Challenges of Security Solutions 187
R. Reshma, N. Mohanasundaram and R. Santhosh
11.1 Prologue Study 188
11.2 Fundamentals of NB-IoT Network Design 190
11.3 Security Challenges and Vulnerabilities in NB-IoT Systems 216
11.4 Scope of Machine Intelligence in NB-IoT Security 218
11.5 Conclusion and the Future Scope 220
12 Machine Learning in Healthcare: Unlocking Precision Diagnosis and
Continuous Monitoring Through Voice Analysis 229
Smilarubavathy G., Keerthana S. M., Nidhya R., Thanga Priscilla and
Pavithra D.
12.1 Introduction 230
12.2 Background 232
12.3 Methodology 232
12.4 Results 242
12.5 Discussion 243
13 Introduction of Advanced and Improved Transposition Algorithm 247
Dipesh Kumar, Nirupama Mandal and Yugal Kumar
13.1 Introduction 248
13.2 Literature Study 249
13.3 Implementation 257
13.4 Result 264
13.5 Conclusion and Future Direction 266
14 Performance Evaluation of Children at Risk for Schizophrenia Using
Ensemble Learning 269
Rathiya R., Kalamani M., Narmadha R. P., Sreenivasa Perumal L. and Kalpana
R.
14.1 Introduction 270
14.2 Literature Review 271
14.3 Methodology 274
14.4 Performance Analysis 276
14.5 Result Analysis 279
14.6 Conclusion 279
14.7 Future Work 280
15 Advanced Aquaculture Management: A Smart System for Optimizing Oxygen
Levels, Shrimp Health Monitoring 283
Prathyusha Kuncha, J. Manoranjini, Sirisha J., Suneetha Bandeela, Naveen
Kumar Penjarla and Simhadri Subhash Goud
15.1 Introduction 284
15.2 Literature Survey 286
15.3 System Model 288
15.4 Results and Discussion 292
15.5 Conclusion 296
16 Farming Revolution: Precision Agriculture and IoT for Sustainable Growth
299
Arepalli Gopi, Sudha L. R. and Iwin Thanakumar Joseph S.
16.1 Introduction 300
16.2 Data Storage and Analysis on Cloud Data 304
16.3 Architecture IoT with Agriculture 306
16.4 Results and Performance Validation 311
16.5 Conclusion 317
17 Comparative Analysis of the Identification and Categorization of the
Malaria Parasite Employing Recent Amalgamated Machine Learning
Methodologies 321
Tamal Kumar Kundu, Dinesh Kumar Anguraj, R. Nidhya and V. Maruthi Prasad
Introduction 322
17. Dataset Acquisition 325
17.2 Methodology 325
17.3 Literature Survey 326
17.4 Methodology 328
17.5 Results and Discussion 328
17.6 Conclusion 332
References 334
Index 337
Preface xi
1 Evolution of Industrial Revolution: Industry 5.0 and Beyond 1
S. Balamurugan and B. Surya
1.1 Brief History of Industrial Revolution 1
1.2 Acknowledgement 4
1.3 Bibliography and Further Reading 4
2 Personalized Healthcare Transformation via Novel Era of Artificial
Intelligence-Based Heuristic Concept 5
S. Pradeep, R. Sathish Kumar, M. Jagadesh and A. Karthikeyan
2.1 Introduction 7
2.2 Literature Survey 9
2.3 Digitization, Data Sources, and AI in Healthcare 13
2.4 AI Mainstreaming in Healthcare 15
2.5 Current Status, Integration, and Obstacles to the Usage of Personalized
Healthcare Transformation 17
2.6 Prerequisites for Radical Transformation in Healthcare 25
2.7 Personalized Healthcare Transformation Using MSOM-Based TOA 29
2.8 Results 34
2.9 Conclusion 41
3 A Survey on Security in Data Transmission Using Wireless Communication
Methods for IoT Edge Devices 45
V. Maruthi Prasad and B. Bharathi
3.1 Introduction 46
3.2 Literature Survey 47
3.3 Description of Data Protocols for IoT System 50
3.4 IoT Communication Parameters 59
3.5 Comparative of Communication Protocols for IoT Systems 64
3.6 Conclusion 67
4 Innovative Application of Conditional Deep Convolutional Generative
Adversarial Networks to Enhance Chronic Kidney Disease Diagnosis with
Uneven Datasets 71
Lakshmi Ramani Burra, Praveen Tumuluru, Janakiramaiah Bonam, S.
Hrushikesava Raju, Sunanda Nalajala and Surya Prasada Rao Borra
4.1 Introduction 72
4.2 Literature Survey 76
4.3 Methodology 78
4.4 Result Analysis 83
4.5 Conclusion 85
5 A Comprehensive Hybrid Implicit and Explicit Item-Based Collaborative
Filtering Approach with Bayesian Personalized Ranking for Enhancing Book
Recommendations 89
Adidam Surekha, Radhika Gouni, Satya Keerthi Gorripati, Venubabu Rachapudi,
S. Anjali Devi and Anupama Angadi
5.1 Introduction 90
5.2 Related Work 92
5.3 Methodology 95
5.4 Experimental Results and Analysis 99
5.5 Conclusion 102
6 An Efficient Cluster-Based Deep Learning Model for Multi-Attack
Classification in IDS Across Diverse Datasets 105
Rajesh Bingu, G. Harsha Vardhan Reddy, U. Jyothi Naga Pavan, S. Sneha Sai
Sri and N. V. Praveen Kumar
6.1 Introduction 106
6.2 Literature Survey 107
6.3 Proposed Model Design 110
6.4 Results and Discussion 115
6.5 Conclusion 118
7 Heart Failure Detection Through SMOTE for Augmentation and Machine
Learning Approach for Classification 123
G. Kiran Kumar, Anila M., Naga Raju Hari Manikyam, Venkata Nagaraju Thatha,
R. Vijaya Kumar Reddy and Krishna Reddy Papana
7.1 Introduction 124
7.2 Literature Survey 125
7.3 Proposed Methodology 126
7.4 Results and Discussion 128
7.5 Conclusion 132
8 Optimal Power Allocation in Cognitive Radio Networks Using
Teaching-Learning-Based Optimization 135
N. Lakshman Pratap, N. Sunanda and V. Suryanarayana Reddy
8.1 Introduction 136
8.2 Teaching-Learning-Based Optimization 137
8.3 Proposed Power Allocation Algorithm 140
8.4 Numerical Results 143
8.5 Conclusion 145
9 Using Historical Pattern Matching and Natural Language Processing in a
Hybrid Approach for Stock Market 147
K. Sri Niharika, C.H. Srisai Naga Satya Mani Pavan, T. Baby Aparna, Dinesh
Kumar Anguraj, S. Saathvik and Hari Kiran Vege
9.1 Introduction 148
9.2 Literature Review 149
9.3 Methodology 153
9.4 Data Sources and Collection 156
9.5 Experimental Setup 158
9.6 Discussion 160
9.7 Results 161
9.8 Conclusion 163
10 An Intelligent Framework for IoT-Based Health Care Monitoring Using
Fuzzy-Supported Machine Learning Algorithm 167
Mohanapriya M., Bharanidharan R., R. Santhosh and R. Reshma
10.1 Introduction 168
10.2 Literature Analysis 170
10.3 Integrated IoT-Based Healthcare Decision Making Model Using Machine
Learning (IHM-ML) 172
10.4 Result and Discussion 180
10.5 Conclusion and the Future Scope 184
11 Design Strategy for Narrowband Internet of Things with Its Scope and
Challenges of Security Solutions 187
R. Reshma, N. Mohanasundaram and R. Santhosh
11.1 Prologue Study 188
11.2 Fundamentals of NB-IoT Network Design 190
11.3 Security Challenges and Vulnerabilities in NB-IoT Systems 216
11.4 Scope of Machine Intelligence in NB-IoT Security 218
11.5 Conclusion and the Future Scope 220
12 Machine Learning in Healthcare: Unlocking Precision Diagnosis and
Continuous Monitoring Through Voice Analysis 229
Smilarubavathy G., Keerthana S. M., Nidhya R., Thanga Priscilla and
Pavithra D.
12.1 Introduction 230
12.2 Background 232
12.3 Methodology 232
12.4 Results 242
12.5 Discussion 243
13 Introduction of Advanced and Improved Transposition Algorithm 247
Dipesh Kumar, Nirupama Mandal and Yugal Kumar
13.1 Introduction 248
13.2 Literature Study 249
13.3 Implementation 257
13.4 Result 264
13.5 Conclusion and Future Direction 266
14 Performance Evaluation of Children at Risk for Schizophrenia Using
Ensemble Learning 269
Rathiya R., Kalamani M., Narmadha R. P., Sreenivasa Perumal L. and Kalpana
R.
14.1 Introduction 270
14.2 Literature Review 271
14.3 Methodology 274
14.4 Performance Analysis 276
14.5 Result Analysis 279
14.6 Conclusion 279
14.7 Future Work 280
15 Advanced Aquaculture Management: A Smart System for Optimizing Oxygen
Levels, Shrimp Health Monitoring 283
Prathyusha Kuncha, J. Manoranjini, Sirisha J., Suneetha Bandeela, Naveen
Kumar Penjarla and Simhadri Subhash Goud
15.1 Introduction 284
15.2 Literature Survey 286
15.3 System Model 288
15.4 Results and Discussion 292
15.5 Conclusion 296
16 Farming Revolution: Precision Agriculture and IoT for Sustainable Growth
299
Arepalli Gopi, Sudha L. R. and Iwin Thanakumar Joseph S.
16.1 Introduction 300
16.2 Data Storage and Analysis on Cloud Data 304
16.3 Architecture IoT with Agriculture 306
16.4 Results and Performance Validation 311
16.5 Conclusion 317
17 Comparative Analysis of the Identification and Categorization of the
Malaria Parasite Employing Recent Amalgamated Machine Learning
Methodologies 321
Tamal Kumar Kundu, Dinesh Kumar Anguraj, R. Nidhya and V. Maruthi Prasad
Introduction 322
17. Dataset Acquisition 325
17.2 Methodology 325
17.3 Literature Survey 326
17.4 Methodology 328
17.5 Results and Discussion 328
17.6 Conclusion 332
References 334
Index 337
1 Evolution of Industrial Revolution: Industry 5.0 and Beyond 1
S. Balamurugan and B. Surya
1.1 Brief History of Industrial Revolution 1
1.2 Acknowledgement 4
1.3 Bibliography and Further Reading 4
2 Personalized Healthcare Transformation via Novel Era of Artificial
Intelligence-Based Heuristic Concept 5
S. Pradeep, R. Sathish Kumar, M. Jagadesh and A. Karthikeyan
2.1 Introduction 7
2.2 Literature Survey 9
2.3 Digitization, Data Sources, and AI in Healthcare 13
2.4 AI Mainstreaming in Healthcare 15
2.5 Current Status, Integration, and Obstacles to the Usage of Personalized
Healthcare Transformation 17
2.6 Prerequisites for Radical Transformation in Healthcare 25
2.7 Personalized Healthcare Transformation Using MSOM-Based TOA 29
2.8 Results 34
2.9 Conclusion 41
3 A Survey on Security in Data Transmission Using Wireless Communication
Methods for IoT Edge Devices 45
V. Maruthi Prasad and B. Bharathi
3.1 Introduction 46
3.2 Literature Survey 47
3.3 Description of Data Protocols for IoT System 50
3.4 IoT Communication Parameters 59
3.5 Comparative of Communication Protocols for IoT Systems 64
3.6 Conclusion 67
4 Innovative Application of Conditional Deep Convolutional Generative
Adversarial Networks to Enhance Chronic Kidney Disease Diagnosis with
Uneven Datasets 71
Lakshmi Ramani Burra, Praveen Tumuluru, Janakiramaiah Bonam, S.
Hrushikesava Raju, Sunanda Nalajala and Surya Prasada Rao Borra
4.1 Introduction 72
4.2 Literature Survey 76
4.3 Methodology 78
4.4 Result Analysis 83
4.5 Conclusion 85
5 A Comprehensive Hybrid Implicit and Explicit Item-Based Collaborative
Filtering Approach with Bayesian Personalized Ranking for Enhancing Book
Recommendations 89
Adidam Surekha, Radhika Gouni, Satya Keerthi Gorripati, Venubabu Rachapudi,
S. Anjali Devi and Anupama Angadi
5.1 Introduction 90
5.2 Related Work 92
5.3 Methodology 95
5.4 Experimental Results and Analysis 99
5.5 Conclusion 102
6 An Efficient Cluster-Based Deep Learning Model for Multi-Attack
Classification in IDS Across Diverse Datasets 105
Rajesh Bingu, G. Harsha Vardhan Reddy, U. Jyothi Naga Pavan, S. Sneha Sai
Sri and N. V. Praveen Kumar
6.1 Introduction 106
6.2 Literature Survey 107
6.3 Proposed Model Design 110
6.4 Results and Discussion 115
6.5 Conclusion 118
7 Heart Failure Detection Through SMOTE for Augmentation and Machine
Learning Approach for Classification 123
G. Kiran Kumar, Anila M., Naga Raju Hari Manikyam, Venkata Nagaraju Thatha,
R. Vijaya Kumar Reddy and Krishna Reddy Papana
7.1 Introduction 124
7.2 Literature Survey 125
7.3 Proposed Methodology 126
7.4 Results and Discussion 128
7.5 Conclusion 132
8 Optimal Power Allocation in Cognitive Radio Networks Using
Teaching-Learning-Based Optimization 135
N. Lakshman Pratap, N. Sunanda and V. Suryanarayana Reddy
8.1 Introduction 136
8.2 Teaching-Learning-Based Optimization 137
8.3 Proposed Power Allocation Algorithm 140
8.4 Numerical Results 143
8.5 Conclusion 145
9 Using Historical Pattern Matching and Natural Language Processing in a
Hybrid Approach for Stock Market 147
K. Sri Niharika, C.H. Srisai Naga Satya Mani Pavan, T. Baby Aparna, Dinesh
Kumar Anguraj, S. Saathvik and Hari Kiran Vege
9.1 Introduction 148
9.2 Literature Review 149
9.3 Methodology 153
9.4 Data Sources and Collection 156
9.5 Experimental Setup 158
9.6 Discussion 160
9.7 Results 161
9.8 Conclusion 163
10 An Intelligent Framework for IoT-Based Health Care Monitoring Using
Fuzzy-Supported Machine Learning Algorithm 167
Mohanapriya M., Bharanidharan R., R. Santhosh and R. Reshma
10.1 Introduction 168
10.2 Literature Analysis 170
10.3 Integrated IoT-Based Healthcare Decision Making Model Using Machine
Learning (IHM-ML) 172
10.4 Result and Discussion 180
10.5 Conclusion and the Future Scope 184
11 Design Strategy for Narrowband Internet of Things with Its Scope and
Challenges of Security Solutions 187
R. Reshma, N. Mohanasundaram and R. Santhosh
11.1 Prologue Study 188
11.2 Fundamentals of NB-IoT Network Design 190
11.3 Security Challenges and Vulnerabilities in NB-IoT Systems 216
11.4 Scope of Machine Intelligence in NB-IoT Security 218
11.5 Conclusion and the Future Scope 220
12 Machine Learning in Healthcare: Unlocking Precision Diagnosis and
Continuous Monitoring Through Voice Analysis 229
Smilarubavathy G., Keerthana S. M., Nidhya R., Thanga Priscilla and
Pavithra D.
12.1 Introduction 230
12.2 Background 232
12.3 Methodology 232
12.4 Results 242
12.5 Discussion 243
13 Introduction of Advanced and Improved Transposition Algorithm 247
Dipesh Kumar, Nirupama Mandal and Yugal Kumar
13.1 Introduction 248
13.2 Literature Study 249
13.3 Implementation 257
13.4 Result 264
13.5 Conclusion and Future Direction 266
14 Performance Evaluation of Children at Risk for Schizophrenia Using
Ensemble Learning 269
Rathiya R., Kalamani M., Narmadha R. P., Sreenivasa Perumal L. and Kalpana
R.
14.1 Introduction 270
14.2 Literature Review 271
14.3 Methodology 274
14.4 Performance Analysis 276
14.5 Result Analysis 279
14.6 Conclusion 279
14.7 Future Work 280
15 Advanced Aquaculture Management: A Smart System for Optimizing Oxygen
Levels, Shrimp Health Monitoring 283
Prathyusha Kuncha, J. Manoranjini, Sirisha J., Suneetha Bandeela, Naveen
Kumar Penjarla and Simhadri Subhash Goud
15.1 Introduction 284
15.2 Literature Survey 286
15.3 System Model 288
15.4 Results and Discussion 292
15.5 Conclusion 296
16 Farming Revolution: Precision Agriculture and IoT for Sustainable Growth
299
Arepalli Gopi, Sudha L. R. and Iwin Thanakumar Joseph S.
16.1 Introduction 300
16.2 Data Storage and Analysis on Cloud Data 304
16.3 Architecture IoT with Agriculture 306
16.4 Results and Performance Validation 311
16.5 Conclusion 317
17 Comparative Analysis of the Identification and Categorization of the
Malaria Parasite Employing Recent Amalgamated Machine Learning
Methodologies 321
Tamal Kumar Kundu, Dinesh Kumar Anguraj, R. Nidhya and V. Maruthi Prasad
Introduction 322
17. Dataset Acquisition 325
17.2 Methodology 325
17.3 Literature Survey 326
17.4 Methodology 328
17.5 Results and Discussion 328
17.6 Conclusion 332
References 334
Index 337