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AI-Powered IoT in the Energy Industry: Digital Technology and Sustainable Energy Systems
Coles
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AI-Powered IoT in the Energy Industry: Digital Technology and Sustainable Energy Systems in Vernon, BC
By None
Current price: $291.95

Coles
AI-Powered IoT in the Energy Industry: Digital Technology and Sustainable Energy Systems in Vernon, BC
By None
Current price: $291.95
Loading Inventory...
Size: Paperback
*Product information may vary - to confirm product availability, pricing, shipping and return information please contact Coles
AI-Powered IoT in the Energy Industry: Digital Technology and Sustainable Energy Systems looks at opportunities to employ cutting-edge applications of artificial intelligence (AI), the Internet of Things (IoT), and Machine Learning (ML) in designing and modeling energy and renewable energy systems. The book's main objectives are to demonstrate how big data can help with energy efficiency and demand reduction, increase the usage of renewable energy sources, and assist in transitioning from a centralized system to a distributed, efficient, and embedded energy system. Contributions cover the fundamentals of the renewable energy sector, including solar, wind, biomass, and hydrogen, as well as building services and power generation systems. Chapters also examine renewable energy property prediction methods and discuss AI and IoT prediction models for biomass thermal properties.
Covers renewable energy sector fundamentals;
Explains the application of big data in distributed energy domains;
Discusses AI and IoT prediction methods and models.
AI-Powered IoT in the Energy Industry: Digital Technology and Sustainable Energy Systems looks at opportunities to employ cutting-edge applications of artificial intelligence (AI), the Internet of Things (IoT), and Machine Learning (ML) in designing and modeling energy and renewable energy systems. The book's main objectives are to demonstrate how big data can help with energy efficiency and demand reduction, increase the usage of renewable energy sources, and assist in transitioning from a centralized system to a distributed, efficient, and embedded energy system. Contributions cover the fundamentals of the renewable energy sector, including solar, wind, biomass, and hydrogen, as well as building services and power generation systems. Chapters also examine renewable energy property prediction methods and discuss AI and IoT prediction models for biomass thermal properties.
Covers renewable energy sector fundamentals;
Explains the application of big data in distributed energy domains;
Discusses AI and IoT prediction methods and models.


















