A Gentle Introduction to Data, Learning, and Model Order Reduction
Techniques and Twinning Methodologies

Author(s)
Chinesta, Francisco
Cueto, Elías
Champaney, Victor
Ghnatios, Chady
Ammar, Amine
Hascoët, Nicolas
González, David
Alfaro, Icíar
Di Lorenzo, Daniele
Pasquale, Angelo
Baillargeat, Dominique
Language
EnglishAbstract
This open access book explores the latest advancements in simulation performance, driven by model order reduction, informed and augmented machine learning technologies and their combination into the so-called hybrid digital twins. It provides a comprehensive review of three key frameworks shaping modern engineering simulations: physics-based models, data-driven approaches, and hybrid techniques that integrate both. The book examines the limitations of traditional models, the role of data acquisition in uncovering underlying patterns, and how physics-informed and augmented learning techniques contribute to the development of digital twins. Organized into four sections—Around Data, Around Learning, Around Reduction, and Around Data Assimilation & Twinning—this book offers an essential resource for researchers, engineers, and students seeking to understand and apply cutting-edge simulation methodologies
Keywords
Data reduction; Machine learning; Model Order Reduction; Digital Twins; Hybrid modellingISBN
9783031875724, 9783031875717Publisher
Springer NaturePublisher website
http://www.springernature.com/oabooksPublication date and place
Cham, 2025Imprint
Springer Nature SwitzerlandSeries
Studies in Big Data,Classification
Artificial intelligence
Numerical analysis
Machine learning

