Computer Vision and Machine Intelligence for Renewable Energy Systems
Computer Vision and Machine Intelligence for Renewable Energy Systems
Pati, Umesh Chandra; Srivastav, Arun Lal; Garcia Marquez, Fausto Pedro; Kumar, Abhishek; Dubey, Ashutosh Kumar; Garcia-Diaz, Vicente
Elsevier - Health Sciences Division
10/2024
384
Mole
9780443289477
Pré-lançamento - envio 15 a 20 dias após a sua edição
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