Scientific Machine Learning with Engineering Applications
Downloads: 47753
Last checked: Jun. 2nd '26
Date uploaded: Jun. 2nd '26
Seeders: 12332
Leechers: 11455
INFO HASH: E6F6820D2201FB0B4C6594474A49C121D1F28004
Scientific Machine Learning with Engineering Applications

https://WebToolTip.com
English | 2026 | ISBN-10: 3032203066 | 243 pages| Epub PDF (True) | 63 MB
This book equips readers with a rigorous and practical framework for solving complex engineering problems directly from governing equations using modern machine learning techniques. It bridges established principles from mechanics, numerical analysis, and scientific computing with emerging physics-based learning approaches, enabling reliable modeling, simulation, optimization, and inverse analysis beyond purely data-driven methods. A distinctive feature is its critical comparison of machine learning-based solvers with classical techniques such as the finite element method, isogeometric analysis, and meshfree methods, highlighting strengths, limitations, and domains of applicability. The scope ranges from foundational concepts to advanced engineering applications, supported by worked examples, reproducible code, and extensive references. The book is intended for graduate students, researchers, and practitioners in engineering, applied mathematics, and computational sciences who seek a principled entry point and a state-of-the-art reference for physics-based machine learning in modeling and simulation.