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Expected by: 01 September 2026
AI for Wind Turbine Performance and Condition Monitoring

AI for Wind Turbine Performance and Condition Monitoring

by Davide Astolfi, Silvia Iuliano, Alfredo Vaccaro

Wind power is unanimously recognized as one of the major drivers of the energy transition. Increasing renewable power generation introduces significant challenges for both the operation and planning of power systems, driven by the intrinsic uncertainty of stochastic renewable resources and by the growing spatial distribution of generation assets. Wind power presents a distinctive set of challenges in this context.

Wind turbines are complex machines operating under highly non-stationary conditions and are composed of tightly coupled mechanical, electrical, and electronic subsystems. In order to ensure reliable power system operation and to minimize the levelized cost of energy, it is essential to continuously monitor the health status of wind turbines, and to improve the efficiency of wind energy conversion as much as possible. Artificial intelligence has the potential to help address these challenges.

The objective of this book is to address the gap between domain expertise in wind energy and the rapid proliferation of machine learning techniques. While advanced data-driven models offer unprecedented flexibility and predictive capabilities, their increasing complexity can come at the cost of transparency, physical interpretability, and engineering insight. Bridging this gap demands a critical understanding of the problem at hand, a clear definition of the operational objective, and a conscious selection of the most appropriate techniques compatible with the available data sources.

Offering concise but thorough coverage of the topic, AI for Wind Turbine Performance and Condition Monitoring explores data sources from turbines and fleets, reviews the fundamentals of ML, then covers AI-based wind turbine performance analysis, AI-based detection of static misalignment and sensor errors, and condition monitoring for wind turbine maintenance.

Wind power researchers in academia and industry, grid operators, and maintenance managers will find this book offers a valuable overview and analysis of AI-based methodologies for wind generators.

About the Author

Davide Astolfi is an assistant professor in electrical systems for energy at the University of Brescia, Italy. He holds a PhD in physics and a PhD in industrial and information engineering. He serves on the editorial boards of several wind energy journals. He has more than a decade of experience in SCADA data analysis and artificial intelligence applications for wind turbine performance assessment and condition monitoring, collaborating with leading utility companies in the wind power sector.

Silvia Iuliano is a doctoral researcher at the University of Sannio, Italy. She received her BSc (Magna Cum Laude with Special Mention) and MSc (Magna Cum Laude) degrees in energy engineering from the University of Sannio. Her research interests include the optimization of distributed energy resources, voltage regulation in large power systems, and hybrid supervised and unsupervised machine-learning approaches for predicting the dynamic security state of the transmission power systems.

Alfredo Vaccaro is a full professor of power and energy systems at the University of Sannio, Benevento, Italy. He received his MSc (Hons.) degree in electronic engineering from the University of Salerno and his PhD in electrical and computer engineering from the University of Waterloo, Canada. His research interests include soft computing and interval-based methods applied to power system analysis, as well as self-organizing paradigms for smart grid computing.



Item Subjects:
Energy Engineering

Publication Year: 2026

Pages: 250

ISBN-13: 978-1-83724-694-6

Format: HBK

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