Artificial Intelligence, Machine Learning and Blockchain in Digital Twin Computing
Editat de Parikshit Narendra Mahalle, Vijay Sonawaneen Limba Engleză Paperback – aug 2026
- Explores the seamless integration of artificial intelligence, machine learning, blockchain, and digital twin computing for enhanced system performance
- Features real-world examples from industries such as manufacturing, healthcare, and smart cities
- Highlights the latest research trends and emerging opportunities in the interdisciplinary field
- Offers solutions to challenges in implementing these technologies
- Discusses future trends and potential advancements in the field
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Specificații
ISBN-13: 9780443439148
ISBN-10: 0443439141
Pagini: 400
Dimensiuni: 191 x 235 mm
Greutate: 0.45 kg
Editura: ELSEVIER SCIENCE
ISBN-10: 0443439141
Pagini: 400
Dimensiuni: 191 x 235 mm
Greutate: 0.45 kg
Editura: ELSEVIER SCIENCE
Cuprins
PART 1: INTRODUCTION
1. Introduction to digital twin computing
2. Introduction to AI/ML
3. Basics of Blockchain Technology
PART 2: INTEGRATION OF AI/ML AND BLOCKCHAIN IN DIGITAL TWIN
4. Synergizing AI/ML and Digital Twin Computing
5. Leveraging Blockchain in Digital Twin Systems
6. Blockchain for collaborative AI/ML in DT computing
7. Blockchain for decentralized and secure AI/ML in DT computing
8. Blockchain for IoT-enabled digital twin
9. Converging Technologies for Innovation of Digital Twin
PART 3: EMERGING APPLICATIONS
10. Production optimization/lifecycle management in smart manufacturing (Factory digital twin)
11. Damage detection/predictive maintenance in smart infrastructures (road digital twin)
12. Predictive modeling and decision support in power stations (smart grid digital twin/power station digital twin)
13. Monitoring food quality evolution (Food product/food quality digital twin)
14. Prediction for progression/remediation of cancer (Cancer digital twin)
PART 4: ADVANCED TOPICS AND FUTURE DIRECTIONS
15. Emerging Trends in Digital Twin Technologies
16: Ethical consideration and regulatory challenges
17. Future Perspectives on AI/ML and Blockchain
18. Addressing Challenges and Solutions
1. Introduction to digital twin computing
2. Introduction to AI/ML
3. Basics of Blockchain Technology
PART 2: INTEGRATION OF AI/ML AND BLOCKCHAIN IN DIGITAL TWIN
4. Synergizing AI/ML and Digital Twin Computing
5. Leveraging Blockchain in Digital Twin Systems
6. Blockchain for collaborative AI/ML in DT computing
7. Blockchain for decentralized and secure AI/ML in DT computing
8. Blockchain for IoT-enabled digital twin
9. Converging Technologies for Innovation of Digital Twin
PART 3: EMERGING APPLICATIONS
10. Production optimization/lifecycle management in smart manufacturing (Factory digital twin)
11. Damage detection/predictive maintenance in smart infrastructures (road digital twin)
12. Predictive modeling and decision support in power stations (smart grid digital twin/power station digital twin)
13. Monitoring food quality evolution (Food product/food quality digital twin)
14. Prediction for progression/remediation of cancer (Cancer digital twin)
PART 4: ADVANCED TOPICS AND FUTURE DIRECTIONS
15. Emerging Trends in Digital Twin Technologies
16: Ethical consideration and regulatory challenges
17. Future Perspectives on AI/ML and Blockchain
18. Addressing Challenges and Solutions