Green Machine Learning and Big Data for Smart Grids: Practices and Applications: Advances in Intelligent Energy Systems
Editat de V. Indragandhi, R. Elakkiya, V. Subramaniyaswamyen Limba Engleză Paperback – 13 noi 2024
Uses for control of physical components including inverters and converters are examined, along with policy implications. Importantly, real-world case studies and chapter objectives are combined to signpost essential information, and to support understanding and implementation.
- Packages core concepts of green machine learning and smart grids in a clear, understandable way
- Includes real-world, practical applications and case studies for replication and innovative solution development
- Introduces readers with a range of expertise to best practices and the latest technological advances
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Specificații
ISBN-13: 9780443289514
ISBN-10: 0443289514
Pagini: 400
Dimensiuni: 152 x 229 mm
Greutate: 0.45 kg
Editura: ELSEVIER SCIENCE
Seria Advances in Intelligent Energy Systems
ISBN-10: 0443289514
Pagini: 400
Dimensiuni: 152 x 229 mm
Greutate: 0.45 kg
Editura: ELSEVIER SCIENCE
Seria Advances in Intelligent Energy Systems
Cuprins
1. Introduction to Green Machine and Machine Learning in Smart Grids
2. Characteristics and Essential Technologies of Green Machine Learning in the Energy Sector
3. Smart Grid Stability Prediction through Big Data Analytics
4. Descriptive, Predictive, Prescriptive and Diagnostic Analytical Models for Managing Power Systems
5. Integrating Green Machine Learning and Big Data Framework for Renewable Energy Grids
6. Green Machine Learning with Big Data for Grid Operations
7. Big Data Green Machine Learning for Smart Metering
8. Analysis and Real-time Implementation of Power Line Disturbances Test in Smart Grids
9. Analysis and Implementation of Power Optimizer Using Sliding Mode Control enabled String Inverter for Renewable Applications
10. Smart Edge Devices for Electric Grid Computing
11. Combined Flyback Converter and Forward Converter Based Active Cell Balancing in Lithium-Ion Battery Cell for Smart Electric Vehicle Application
12. Predictive Modelling in Asset and Workforce Management
13. Sustainability Consideration of Smart Grid with Big Data Analytics in Social, Economic, Technical and Policy Aspects
14. Real-Time of Big Data and Analytics in Smart Grid and Energy Management Applications
15. Challenges and Future Directions
2. Characteristics and Essential Technologies of Green Machine Learning in the Energy Sector
3. Smart Grid Stability Prediction through Big Data Analytics
4. Descriptive, Predictive, Prescriptive and Diagnostic Analytical Models for Managing Power Systems
5. Integrating Green Machine Learning and Big Data Framework for Renewable Energy Grids
6. Green Machine Learning with Big Data for Grid Operations
7. Big Data Green Machine Learning for Smart Metering
8. Analysis and Real-time Implementation of Power Line Disturbances Test in Smart Grids
9. Analysis and Implementation of Power Optimizer Using Sliding Mode Control enabled String Inverter for Renewable Applications
10. Smart Edge Devices for Electric Grid Computing
11. Combined Flyback Converter and Forward Converter Based Active Cell Balancing in Lithium-Ion Battery Cell for Smart Electric Vehicle Application
12. Predictive Modelling in Asset and Workforce Management
13. Sustainability Consideration of Smart Grid with Big Data Analytics in Social, Economic, Technical and Policy Aspects
14. Real-Time of Big Data and Analytics in Smart Grid and Energy Management Applications
15. Challenges and Future Directions