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A01=Fangxing Li
A01=Yan Du
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Author_Fangxing Li
Author_Yan Du
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Category1=Non-Fiction
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Category=THR
Category=THRD
Category=UYQ
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COP=Switzerland
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Deep Learning for Power System Applications: Case Studies Linking Artificial Intelligence and Power Systems

English

By (author): Fangxing Li Yan Du

This book provides readers with an in-depth review of deep learning-based techniques and discusses how they can benefit power system applications. Representative case studies of deep learning techniques in power systems are investigated and discussed, including convolutional neural networks (CNN) for power system security screening and cascading failure assessment, deep neural networks (DNN) for demand response management, and deep reinforcement learning (deep RL) for heating, ventilation, and air conditioning (HVAC) control.
Deep Learning for Power System Applications: Case Studies Linking Artificial Intelligence and Power Systems is an ideal resource for professors, students, and industrial and government researchers in power systems, as well as practicing engineers and AI researchers.
  • Provides a history of AI in power grid operation and planning;
  • Introduces deep learning algorithms and applications in power systems;
  • Includes several representative case studies.
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Current price €107.34
Original price €112.99
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A01=Fangxing LiA01=Yan DuAge Group_UncategorizedAuthor_Fangxing LiAuthor_Yan Duautomatic-updateCategory1=Non-FictionCategory=RNCategory=THRCategory=THRDCategory=UYQCategory=UYQMCOP=SwitzerlandDelivery_Pre-orderLanguage_EnglishPA=Not yet availablePrice_€100 and abovePS=Activesoftlaunch

Will deliver when available. Publication date 03 Dec 2024

Product Details
  • Dimensions: 155 x 235mm
  • Publication Date: 12 Nov 2024
  • Publisher: Springer International Publishing AG
  • Publication City/Country: Switzerland
  • Language: English
  • ISBN13: 9783031453595

About Fangxing LiYan Du

Fangxing Fran Li received his B.S.E.E. and M.S.E.E. degrees from Southeast University Nanjing in 1994 and 1997 respectively and his Ph.D. from Virginia Tech Blacksburg VA in 2001. He is the James McConnell Professor with the University of Tennessee Knoxville TN. His research interests include power system artificial intelligence renewable energy integration demand response power markets and power system control. He is a registered Professional Engineer (P.E.) in the State of North Carolina a Fellow of the IEEE (Class of 2017) the current Editor-In-Chief of IEEE Open Access Journal of Power and Energy (OAJPE) the current Chair of the IEEE/PES Power System Operation Planning and Economics (PSOPE) committee and the current Chair of the IEEE/PES Task Force on Machine Learning in Power Systems. He received the 2020 Best Paper Award from the Journal of Modern Power Systems and Clean Energy (MPCE) the Third Prize Paper Award from CSEE Journal of Powerand Energy Systems (JPES) in 2019 the 2019 IEEE/PES Technical Committee Prize Paper Award the Applied Energy Highly Cited Paper Awards three times for papers published in 2016 2020 and 2021 and six Best Conference Papers/Posters awards. As a Principal Investigator he received the prestigious 2020 R&D 100 Finalist honor for the project DCNNN (Deep Convolutional Neural Network for N-1) which is closely related to this book. Also as a Principal Investigator he received the prestigious R&D 100 Award in 2020 for the project CURENT LTB (Large-scale Test Bed). Yan Du received her B.S. degree from Tianjin University Tianjin in 2013 an M.S. degree from the Institute of Electrical Engineering Chinese Academy of Sciences Beijing in 2016 and her Ph.D. degree from The University of Tennessee (UT) in 2020. She received the UT EECS Department Outstanding Graduate Research Assistant award in 2019  the UT Chancellors Citation Award in Extraordinary Professional Promise in 2020 and the UT Min Kao Fellowship in 2019-2020. Presently she is a software engineer at Google Seattle WA. Her research interest is deep learning in power systems. As the lead developer she was a co-recipient of the prestigious R&D 100 Finalist honor in 2020 for the project DCNNN (Deep Convolutional Neural Network for N-1) which is closely related to this book.

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