
Handbook of Artificial Intelligence Applications in Energy Systems
Practical Techniques and Case Studies
- 1st Edition - September 1, 2026
- Author: Mir Sayed Shah Danish
- Language: English
- Paperback ISBN:9 7 8 - 0 - 4 4 3 - 3 6 6 8 8 - 8
- eBook ISBN:9 7 8 - 0 - 4 4 3 - 3 6 6 8 9 - 5
‘Handbook of Artificial Intelligence Applications in Energy Systems: Practical Techniques and Case Studies’ is a practical, step-by-step guidebook for integrating AI into energy… Read more
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‘Handbook of Artificial Intelligence Applications in Energy Systems: Practical Techniques and Case Studies’ is a practical, step-by-step guidebook for integrating AI into energy systems, from foundational theories to hands-on implementation strategies. This book begins with the foundational principles and history of AI in Energy Systems, including fundamental methods for data preprocessing. A variety of optimization and control strategies are introduced in detail, including advanced methods (Adam, RMSprop, AdaGrad); next, machine learning techniques, libraries, and implementation strategies are broken down in depth. Modeling methods, evaluation metrics, deployment, and interpretability are addressed, before deep learning neural networks from CNNs to GANs, and finally hardware and software requirements for deploying AI in energy systems, including GPU/TPU usage, distributed training, and data storage solution. Packed with case studies, worked numerical examples, and practical tips for research and implementation in the area, the ‘Handbook of Artificial Intelligence Applications in Energy Systems’ brings the reader quickly up to speed with the practical opportunities of this critical technology in modern energy systems.
• Introduces foundational methods for AI use in energy systems, step by step
• Works through a host of case studies, practical tests, and numerical examples to bed in knowledge
• Includes practical tips for research and industry application, and access to code files, answer keys, and original data
• Works through a host of case studies, practical tests, and numerical examples to bed in knowledge
• Includes practical tips for research and industry application, and access to code files, answer keys, and original data
Graduate and upper-level undergraduate students, researchers, and engineers looking to utilize artificial intelligence techniques in energy systems in practice
1. Introduction to Artificial Intelligence in Energy Systems
2. Applications in Energy Systems
3. Optimization Algorithms and Strategies in AI for Energy Systems
4. Machine Learning Techniques and Frameworks for Energy Systems
5. Energy Systems Modeling, Optimization, and Deployment
6. Deep Learning Deployment in Energy Systems
7. Technical Infrastructure Hardware and Software
8. Applied Numerical Example of AI in Energy Systems
9. Case Studies: AI Applications in Energy Systems
10. Conducting Practical Research in AI and Energy Systems
2. Applications in Energy Systems
3. Optimization Algorithms and Strategies in AI for Energy Systems
4. Machine Learning Techniques and Frameworks for Energy Systems
5. Energy Systems Modeling, Optimization, and Deployment
6. Deep Learning Deployment in Energy Systems
7. Technical Infrastructure Hardware and Software
8. Applied Numerical Example of AI in Energy Systems
9. Case Studies: AI Applications in Energy Systems
10. Conducting Practical Research in AI and Energy Systems
- Edition: 1
- Published: September 1, 2026
- Language: English
MD
Mir Sayed Shah Danish
Mir Sayed Shah Danish is currently an Assistant Professor at the Institute of Materials and Systems for Sustainability of Nagoya University, Japan. Dr Danish has a decade of teaching experience, has published over 100 peer-reviewed research articles, and edited/authored several books in Power Electronics and Energy Systems. With an industry background that spans technology and power infrastructure, Dr Danish has been responsible for public-sector power infrastructure projects with budgets totalling over 105-million USD, and was Lead Engineer at Grand Technology Resources (Afghanistan) from 2012-2017.
Affiliations and expertise
Assistant Professor, Institute of Materials and Systems for Sustainability, Nagoya University, Japan