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AI and Digitalization in Energy Management [Kietas viršelis]

Edited by (Arizona State University, W.P. Carey Business School, USA), Edited by (Qatar Environment & Energy Research Institute (QEERI), Qatar), Edited by (Qatar Environment & Energy Research Institute (QEERI), Qatar)
  • Formatas: Hardback, 480 pages, aukštis x plotis: 234x156 mm
  • Serija: Energy Engineering
  • Išleidimo metai: 01-Sep-2025
  • Leidėjas: Institution of Engineering and Technology
  • ISBN-10: 1839539798
  • ISBN-13: 9781839539794
  • Formatas: Hardback, 480 pages, aukštis x plotis: 234x156 mm
  • Serija: Energy Engineering
  • Išleidimo metai: 01-Sep-2025
  • Leidėjas: Institution of Engineering and Technology
  • ISBN-10: 1839539798
  • ISBN-13: 9781839539794

Energy management involves the planning and operation of energy production, consumption, distribution and storage, with objectives including resource conservation, climate protection and cost savings. Growth in renewable energy - essential for the transition to a decarbonised energy system - adds the challenge of intermittency, making energy management all the more important.

This book explores the role of digitalization and the growing interest in using AI for energy management. Edited by a team of senior scientists, with ample project and industry experience, the book systematically covers methods, applications including forecasting and maintenance, and economic aspects.

The chapters cover solar and meteorological data collection and simulation, digital twins and data wrangling, ML, game theory and AI for energy management, edge to cloud, federated learning and quantum computing for energy management. intra-hour solar forecasting, use of synchrophasor technology, AI-powered energy conversion and resilience, explainable AI, electric mobility integration, optimization for EV adoption, predictive PV maintenance, AI and robotics for PV inspection, and blockchain-based microgrids.

AI and Digitalization in Energy Management will prove a useful resource for researchers in universities, research institutes and in industry involved with clean energy and AI systems, grid operators, as well as energy policy makers and advanced students in energy engineering.



A systematic, scientific review of the use of AI for energy system management, focusing on clean generation. Edited by a team of senior scientists with industry experience, systematically covering methods, applications including forecasting and maintenance, and economic aspects.

Chapter 1: Introduction
Chapter 2: Sensor-based Collection of Solar and Meteorological Data
Chapter 3: Synthetic Data Generation Through PHIL Simulations
Chapter 4: Data Generation Through Digital Twins
Chapter 5: Data Wrangling
Chapter 6: Machine Learning
Chapter 7: Game Theory and AI For Strategic Energy Management
Chapter 8: Edge To Cloud
Chapter 9: AI in Energy Management: The Market View
Chapter 10: Federated Learning for energy management applications
Chapter 11: Quantum Computing for Energy Management: Semi Non-Technical Guide
for Practitioners
Chapter 12: Mapping All-Sky Images to GHI Measurements for Intra-hour Solar
Forecasting
Chapter 13: Realtime Measurement of Electrical Signal in Medium Voltage
Distribution Network using Synchrophasor Technology
Chapter 14: AI-Powered Power Conversion
Chapter 15: Empowering Resilience: AI and the Future of Microgrids
Chapter 16: Building Trust by Design Through Explainable AI for Resilient and
Cognitive Smart Grids
Chapter 17: Electric Mobility Integration: A Deep Dive into AI Solutions
Chapter 18: Optimization problems related to electric vehicle adoption
Chapter 19: Predictive Photovoltaic Maintenance Strategies
Chapter 20: AI and Robotic techniques for PV inspection
Chapter 21: Towards a Blockchain-based Smart Microgrid: A Peer to Peer
Renewable Energy Trading Framework
Chapter 22: Conclusions
Antonio Sanfilippo is chief scientist at Qatar Environment & Energy Research Institute (QEERI). Under his leadership, QEERI has established renewable and smart grid capabilities, including solar monitoring stations covering the whole country and a 100 kWp microgrid testbed. Prior to QEERI, Dr Sanfilippo was chief scientist at the Pacific Northwest National Laboratory (PNNL) in the US, where he received an Award for Exceptional Scientific Achievement.



Sertac Bayhan is a principal scientist at Qatar Environment and Energy Research Institute (QEERI) and a Professor at Gazi University. His research encompasses power electronics and their applications in next-generation power and energy systems. He is the recipient of many prestigious international awards, such as the Teaching Excellence Award from Texas A&M University and a Research Fellow Excellence Award. He has been elected as delegate of the Energy Cluster in IES.



Dragan Boscovic is a professor at Arizona State University's W. P. Carey Business School, USA. He also serves as the research director of the AZ Blockchain Applied Research Center and as CEO and founder of VizLore Group, a tech company specializing in pioneering IoT, data analytics, blockchain distributed computing, and digital asset management. He has 24 patents issued to his name and a track record in conceiving strategies and overseeing development, investment, and innovation efforts.