
Computer Vision and Machine Intelligence for Renewable Energy Systems
Elsevier (Publisher)
Published on 25. September 2024
Book
Paperback/Softback
388 pages
978-0-443-28947-7 (ISBN)
Description
Computer Vision and Machine Intelligence for Renewable Energy Systems offers a practical, systemic guide to the use of computer vision as an innovative tool to support renewable energy integration.
This book equips readers with a variety of essential tools and applications: Part I outlines the fundamentals of computer vision and its unique benefits in renewable energy system models compared to traditional machine intelligence: minimal computing power needs, speed, and accuracy even with partial data. Part II breaks down specific techniques, including those for predictive modeling, performance prediction, market models, and mitigation measures. Part III offers case studies and applications to a wide range of renewable energy sources, and finally the future possibilities of the technology are considered.
The very first book in Elsevier's cutting-edge new series Advances in Intelligent Energy Systems, Computer Vision and Machine Intelligence for Renewable Energy Systems provides engineers and renewable energy researchers with a holistic, clear introduction to this promising strategy for control and reliability in renewable energy grids.
This book equips readers with a variety of essential tools and applications: Part I outlines the fundamentals of computer vision and its unique benefits in renewable energy system models compared to traditional machine intelligence: minimal computing power needs, speed, and accuracy even with partial data. Part II breaks down specific techniques, including those for predictive modeling, performance prediction, market models, and mitigation measures. Part III offers case studies and applications to a wide range of renewable energy sources, and finally the future possibilities of the technology are considered.
The very first book in Elsevier's cutting-edge new series Advances in Intelligent Energy Systems, Computer Vision and Machine Intelligence for Renewable Energy Systems provides engineers and renewable energy researchers with a holistic, clear introduction to this promising strategy for control and reliability in renewable energy grids.
More details
Series
Language
English
Place of publication
Philadelphia
United States
Target group
Professional and scholarly
Product notice
Paperback (trade)
Unsewn / adhesive bound
Dimensions
Height: 279 mm
Width: 216 mm
Thickness: 20 mm
Weight
898 gr
ISBN-13
978-0-443-28947-7 (9780443289477)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Ashutosh Kumar Dubey | Abhishek Kumar | Umesh Chandra Pati
Computer Vision and Machine Intelligence for Renewable Energy Systems
E-Book
09/2024
Elsevier
€172.99
Available for download
Persons
Ashutosh Kumar Dubey is an Associate Professor in the Department of Computer Science and Engineering at Chitkara University, Himachal Pradesh, India. He is also a Postdoctoral Fellow of the Ingenium Research Group Lab, Universidad
de Castilla-La Mancha, Ciudad Real, Spain. Dr Abhishek Kumar is currently working as an Assistant Professor in Computer science & Engineering Department in Chandigarh University, Punjab, India. He is Doctorate in computer science from University of Madras and is doing Post-Doctoral Fellow in Ingenium Research Group Ingenium Research Group Lab, Universidad De Castilla-La Mancha, Ciudad Real, and Ciudad Real Spain. He has done MTech in Computer Sci. & Engineering and B.Tech in I.T. from, Rajasthan Technical University, Kota India. He has total Academic teaching experience of more than 13 years along with 2 years teaching assistantship. He is having more than 160 publications in reputed, peer reviewed National and International Journals, books & Conferences He has guided more than 30 MTech Projects at national and International level and 4 PhD Scholar, Completed their Degree under his Guidance. His research area includes- Artificial intelligence, Renewable Energy Image processing, Computer Vision, Data Mining, Machine Learning. He has been Session chair and keynote Speaker of many International conferences, webinars in India and Abroad. He has been the reviewer for IEEE and Inderscience Journal. He has authored/Co-Authored 7 books published internationally and edited 45 books (Published & ongoing with IET, Elsevier, Wiley, IGI GLOBAL Springer, Apple Academic Press, De-Gruyter and CRC etc. He has been member of various National and International professional societies in the field of engineering & research like Senior Member of IEEE , IAENG (International Association of Engineers), Associate Member of IRED (Institute of Research Engineers and Doctors).He is Patent holder and got Sir CV Raman National award for 2018 in young researcher and faculty Category from IJRP Group.
Umesh Chandra Pati is a Professor in the Department of Electronics and Communication Engineering at the National Institute of Technology, India. He has authored/edited two books and published over 100 articles in peer-reviewed international journals and conference proceedings. He has also guest-edited special issues of Cognitive Neurodynamics and International Journal of Signal and Imaging System Engineering. Dr. Pati has filed 2 Indian patents. Besides other sponsored projects, he is currently associated with a high value IMPRINT project "Intelligent Surveillance Data Retriever (ISDR) for Smart City Applications?, an initiative of the Ministries of Education, and Housing and Urban Affairs in the Government of India. His current areas of research include Computer Vision, Artificial Intelligence, the Internet of Things (IoT), Industrial Automation, and Instrumentation Systems.
Professor Fausto works as Professor at Universidad De Castilla-La Mancha, Spain. Honorary Senior Research Fellow at Birmingham University, UK, Lecturer at the Postgraduate European Institute. He has published more than 150 papers and is author and editor of 31 books (Elsevier, Springer, Pearson, Mc-GrawHill, Intech, IGI, Marcombo, AlfaOmega). He is Editor of 5 Int. Journals, Committee Member more than 40 Int. Conferences. He has been Principal Investigator in 4 European Projects, 6 National Projects, and more than 150 projects for Universities, Companies, etc. His main interests are: Artificial Intelligence, Maintenance, Management, Renewable Energy, Transport, Advanced Analytics, Data Science. He is an expert in the European Union in AI4People (EISMD), and ESF and Director of www.ingeniumgroup.eu. Dr. Vicente Garcia-Diaz is a Software Engineer and has a PhD in Computer Science. He is an Associate Professor in the Department of Computer Science at the University of Oviedo. He is also part of the editorial and advisory board of several journals and has been editor of several special issues in books and journals. He has supervised 80+ academic projects and published 80+ research papers in journals, conferences and books. His research interests include decision support systems, Domain-Specific languages and eLearning. Dr. Arun Lal Srivastav is an Associate Professor in the Department of Applied Sciences at Chitkara University, Himachal Pradesh, India.
de Castilla-La Mancha, Ciudad Real, Spain. Dr Abhishek Kumar is currently working as an Assistant Professor in Computer science & Engineering Department in Chandigarh University, Punjab, India. He is Doctorate in computer science from University of Madras and is doing Post-Doctoral Fellow in Ingenium Research Group Ingenium Research Group Lab, Universidad De Castilla-La Mancha, Ciudad Real, and Ciudad Real Spain. He has done MTech in Computer Sci. & Engineering and B.Tech in I.T. from, Rajasthan Technical University, Kota India. He has total Academic teaching experience of more than 13 years along with 2 years teaching assistantship. He is having more than 160 publications in reputed, peer reviewed National and International Journals, books & Conferences He has guided more than 30 MTech Projects at national and International level and 4 PhD Scholar, Completed their Degree under his Guidance. His research area includes- Artificial intelligence, Renewable Energy Image processing, Computer Vision, Data Mining, Machine Learning. He has been Session chair and keynote Speaker of many International conferences, webinars in India and Abroad. He has been the reviewer for IEEE and Inderscience Journal. He has authored/Co-Authored 7 books published internationally and edited 45 books (Published & ongoing with IET, Elsevier, Wiley, IGI GLOBAL Springer, Apple Academic Press, De-Gruyter and CRC etc. He has been member of various National and International professional societies in the field of engineering & research like Senior Member of IEEE , IAENG (International Association of Engineers), Associate Member of IRED (Institute of Research Engineers and Doctors).He is Patent holder and got Sir CV Raman National award for 2018 in young researcher and faculty Category from IJRP Group.
Umesh Chandra Pati is a Professor in the Department of Electronics and Communication Engineering at the National Institute of Technology, India. He has authored/edited two books and published over 100 articles in peer-reviewed international journals and conference proceedings. He has also guest-edited special issues of Cognitive Neurodynamics and International Journal of Signal and Imaging System Engineering. Dr. Pati has filed 2 Indian patents. Besides other sponsored projects, he is currently associated with a high value IMPRINT project "Intelligent Surveillance Data Retriever (ISDR) for Smart City Applications?, an initiative of the Ministries of Education, and Housing and Urban Affairs in the Government of India. His current areas of research include Computer Vision, Artificial Intelligence, the Internet of Things (IoT), Industrial Automation, and Instrumentation Systems.
Professor Fausto works as Professor at Universidad De Castilla-La Mancha, Spain. Honorary Senior Research Fellow at Birmingham University, UK, Lecturer at the Postgraduate European Institute. He has published more than 150 papers and is author and editor of 31 books (Elsevier, Springer, Pearson, Mc-GrawHill, Intech, IGI, Marcombo, AlfaOmega). He is Editor of 5 Int. Journals, Committee Member more than 40 Int. Conferences. He has been Principal Investigator in 4 European Projects, 6 National Projects, and more than 150 projects for Universities, Companies, etc. His main interests are: Artificial Intelligence, Maintenance, Management, Renewable Energy, Transport, Advanced Analytics, Data Science. He is an expert in the European Union in AI4People (EISMD), and ESF and Director of www.ingeniumgroup.eu. Dr. Vicente Garcia-Diaz is a Software Engineer and has a PhD in Computer Science. He is an Associate Professor in the Department of Computer Science at the University of Oviedo. He is also part of the editorial and advisory board of several journals and has been editor of several special issues in books and journals. He has supervised 80+ academic projects and published 80+ research papers in journals, conferences and books. His research interests include decision support systems, Domain-Specific languages and eLearning. Dr. Arun Lal Srivastav is an Associate Professor in the Department of Applied Sciences at Chitkara University, Himachal Pradesh, India.
Editor
Department of Computer Science and Engineering, Institute of Engineering and Technology, Chitkara University, India
Assistant Professor
Professor, National Institute of Technology, India
Professor, Universidad De Castilla-La Mancha, Spain
Associate Professor, Department of Computer Science, University of Oviedo, Spain
Chitkara University, Himachal Pradesh, Solan, India
Content
Part I Fundamentals of computer vision and machine learning for renewable energy systems
1. An overview of renewable energy sources: technologies, applications and role of artificial intelligence
2. Artificial intelligence for renewable energy strategies and techniques
3. Computer vision-based regression techniques for renewable energy: predicting energy output and performance
4. Utilization of computer vision and machine learning for solar power prediction
5. Exploring data-driven multivariate statistical models for the prediction of solar energy
6. Solar energy generation and power prediction through computer vision and machine intelligence
Part II Computer vision techniques for renewable energy systems
7. A machine intelligence model based on random forest for data-related renewable energy from wind farms in Brazil
8. Bioenergy prediction using computer vision and machine intelligence: modeling and optimization of bioenergy production
9. Artificial intelligence and machine intelligence: modeling and optimization of bioenergy production
10. Advancing bioenergy: leveraging artificial intelligence for efficient production and optimization
11. Image acquisition and processing techniques for crucial component of renewable energy technologies: mapping of rare earth element-bearing peralkaline granites
12. Energy storage using computer vision: control and optimization of energy storage
13. Classification techniques for renewable energy: identifying renewable energy sources and features
14. Machine learning in renewable energy: classification techniques for identifying sources and features
15. Advancing the frontier: hybrid renewable energy technologies for sustainable power generation
16. Transfer learning for renewable energy: fine-tuning and domain adaptation
Part III Renewable energy sources and computer vision opportunities
17. Exploring the artificial intelligence in renewable energy: a bibliometric study using R Studio and VOSviewer
18. Future directions of computer vision and AI for renewable energy: trends and challenges in renewable energy research and applications
1. An overview of renewable energy sources: technologies, applications and role of artificial intelligence
2. Artificial intelligence for renewable energy strategies and techniques
3. Computer vision-based regression techniques for renewable energy: predicting energy output and performance
4. Utilization of computer vision and machine learning for solar power prediction
5. Exploring data-driven multivariate statistical models for the prediction of solar energy
6. Solar energy generation and power prediction through computer vision and machine intelligence
Part II Computer vision techniques for renewable energy systems
7. A machine intelligence model based on random forest for data-related renewable energy from wind farms in Brazil
8. Bioenergy prediction using computer vision and machine intelligence: modeling and optimization of bioenergy production
9. Artificial intelligence and machine intelligence: modeling and optimization of bioenergy production
10. Advancing bioenergy: leveraging artificial intelligence for efficient production and optimization
11. Image acquisition and processing techniques for crucial component of renewable energy technologies: mapping of rare earth element-bearing peralkaline granites
12. Energy storage using computer vision: control and optimization of energy storage
13. Classification techniques for renewable energy: identifying renewable energy sources and features
14. Machine learning in renewable energy: classification techniques for identifying sources and features
15. Advancing the frontier: hybrid renewable energy technologies for sustainable power generation
16. Transfer learning for renewable energy: fine-tuning and domain adaptation
Part III Renewable energy sources and computer vision opportunities
17. Exploring the artificial intelligence in renewable energy: a bibliometric study using R Studio and VOSviewer
18. Future directions of computer vision and AI for renewable energy: trends and challenges in renewable energy research and applications