Advances in Digitalization and Machine Learning for Integrated Building-Transportation Energy Systems examines the combined impact of buildings and transportation systems on energy demand and use. With a strong focus on AI and machine learning approaches, the book comprehensively discusses each part of the energy life cycle, considering source, grid, demand, storage, and usage. Opening with an introduction to smart buildings and intelligent transportation systems, the book presents the fundamentals of AI and its application in renewable energy sources, alongside the latest technological advances. Other topics presented include building occupants’ behavior and vehicle driving schedule with demand prediction and analysis, hybrid energy storages in buildings with AI, smart grid with energy digitalization, and prosumer-based P2P energy trading. The book concludes with discussions on blockchain technologies, Io T in smart grid operation, and the application of big data and cloud computing in integrated smart building-transportation energy systems. A smart and flexible energy system is essential for reaching Net Zero whilst keeping energy bills affordable. This title provides critical information to students, researchers and engineers wanting to understand, design, and implement flexible energy systems to meet the rising demand in electricity. – Introduces spatiotemporal energy sharing with new energy vehicles and human-machine interactions- Discusses the potential for electrification and hydrogenation in integrated building-transportation systems for sustainable development- Highlights key topics related to traditional energy consumers, including peer-to-peer energy trading and cost-benefit business models
Peter D. Lund & Jinglei Yang
Advances in Digitalization and Machine Learning for Integrated Building-Transportation Energy Systems [EPUB ebook]
Advances in Digitalization and Machine Learning for Integrated Building-Transportation Energy Systems [EPUB ebook]
购买此电子书可免费获赠一本!
语言 英语 ● 格式 EPUB ● ISBN 9780443131783 ● 编辑 Peter D. Lund & Jinglei Yang ● 出版者 Elsevier Science ● 发布时间 2023 ● 下载 3 时 ● 货币 EUR ● ID 9269493 ● 复制保护 Adobe DRM
需要具备DRM功能的电子书阅读器