CHF 262.00

Harmonic Estimation and Forecasting in Sparsely Monitored Uncertain Power Systems
Probabilistic and Machine Learning Approaches

Inglese · Copertina rigida

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Descrizione

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This book tackles the technical challenges of integrating renewable energy sources into power grids to reduce exposure to significant financial and operational risks. It does so by introducing advanced methods for harmonic estimation and forecasting in sparsely monitored and uncertain power networks, leveraging probabilistic and machine learning techniques.
With a focus on practical applications, the book introduces a Monte-Carlo-based simulation framework to address operational randomness and uncertainties, along with the development of a Norton equivalent model of wind farms for probabilistic harmonic propagation studies. The author also presents cost-effective methods for harmonic estimation in non-radial distribution networks and proposes a sequential artificial-neural-network-based approach for probabilistic harmonic forecasting in transmission networks with limited harmonic measurements. By significantly reducing the reliance on extensive power-quality-monitoring installations, these methods provide robust, accurate, and reliable harmonic data and enable more effective and informed decision-making for future power system operations.
Targeted at academic researchers, industrial engineers, and graduate students, this book matches theoretical advance with practical application. It supports the assessment of standard compliance and benchmarking, minimizes the need for power-quality-monitoring installations, accelerates the evaluation of harmonic propagation and mitigation strategies in uncertain, power-electronics-rich networks, and advances the forecasting of potential harmonic issues in future power systems.

Info autore










Dr. Yuqi Zhao holds B.Eng., M.Sc., and Ph.D. degrees in power system engineering from the University of Manchester, UK, where she was supervised by Prof. Jovica V. Milanovi¿. She is an active member of the IEEE PES, IET, and CIGRE and has undertaken a visiting research position at Universidad Politécnica de Madrid. In recognition of her academic excellence, Dr. Zhao received the Best Student Paper Award at the IET APSCOM 2018 conference. She has also gained professional experience as a power system engineer with both National Grid of UK and the State Grid Corporation of China. Dr. Zhao’s research contributions include multiple peer-reviewed publications in top-tier IEEE transactions journals and presentations at prestigious international conferences, such as the IEEE General Meeting, IEEE PowerTech, IEEE ICHQP, IEEE PMAPS, and CIRED. She has played an active role in multiple EU Horizon 2020 projects, including MIGRATE and CROSSBOW.


Riassunto

This book tackles the technical challenges of integrating renewable energy sources into power grids to reduce exposure to significant financial and operational risks. It does so by introducing advanced methods for harmonic estimation and forecasting in sparsely monitored and uncertain power networks, leveraging probabilistic and machine learning techniques.
With a focus on practical applications, the book introduces a Monte-Carlo-based simulation framework to address operational randomness and uncertainties, along with the development of a Norton equivalent model of wind farms for probabilistic harmonic propagation studies. The author also presents cost-effective methods for harmonic estimation in non-radial distribution networks and proposes a sequential artificial-neural-network-based approach for probabilistic harmonic forecasting in transmission networks with limited harmonic measurements. By significantly reducing the reliance on extensive power-quality-monitoring installations, these methods provide robust, accurate, and reliable harmonic data and enable more effective and informed decision-making for future power system operations.

Targeted at academic researchers, industrial engineers, and graduate students,
this book
matches theoretical advance with practical application. It supports the assessment of standard compliance and benchmarking, minimizes the need for power-quality-monitoring installations, accelerates the evaluation of harmonic propagation and mitigation strategies in uncertain, power-electronics-rich networks, and advances the forecasting of potential harmonic issues in future power systems.

Dettagli sul prodotto

Autori Yuqi Zhao
Editore Springer, Berlin
 
Contenuto Libro
Forma del prodotto Copertina rigida
Data pubblicazione 07.12.2025
Categoria Scienze naturali, medicina, informatica, tecnica > Tecnica > Elettronica, elettrotecnica, telecomunicazioni
 
EAN 9783031990472
ISBN 978-3-0-3199047-2
Numero di pagine 209
Illustrazioni XVII, 209 p. 85 illus., 78 illus. in color.
Dimensioni (della confezione) 15.5 x 1.4 x 23.5 cm
Peso (della confezione) 497 g
 
Serie Springer Theses
Categorie machine learning, Energietechnik, Elektrotechnik und Energiemaschinenbau, Ann, Power Quality, Power electronics, Electrical Power Engineering, Mechanical Power Engineering, Renewable energy sources, Artificial Neural Networks, Harmonic State Estimation, Power System Uncertainties, Sparsely Monitored Systems, Data Prediction, Equivalent Harmonic Modelling, Probabilistic Modelling, Power Systems Harmonics
 

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