Deep Learning in Computational Mechanics

An Introductory Course

Description

This book provides a first course without requiring prerequisite knowledge. Fundamental concepts of machine learning are introduced before explaining neural networks. With this knowledge, prominent topics in deep learning for simulation are explored. These include surrogate modeling, physics-informed neural networks, generative artificial intelligence, Hamiltonian/Lagrangian neural networks, input convex neural networks, and more general machine learning techniques. The idea of the book is to provide basic concepts as simple as possible but in a mathematically sound manner. Starting point are one-dimensional examples including elasticity, plasticity, heat evolution, or wave propagation. The concepts are then expanded to state-of-the-art applications in material modeling, generative artificial intelligence, topology optimization, defect detection, and inverse problems.
Free shipping from
€ 19,95 within The Netherlands
Writer
Herrmann, Leon, Jokeit, Moritz, Weeger, Oliver, Kollmannsberger, Stefan
Title
Deep Learning in Computational Mechanics
Publisher
Springer International Publishing AG
Year
2025
Language
English
Pages
475
EAN
9783031895289
Binding format
Hardback

You will always receive the last edition from us!


Categories

Boekstra