Reprint

Empowering Materials Processing and Performance from Data and AI

Edited by
September 2021
172 pages
  • ISBN978-3-0365-1899-2 (Hardback)
  • ISBN978-3-0365-1898-5 (PDF)

This book is a reprint of the Special Issue Empowering Materials Processing and Performance from Data and AI that was published in

Chemistry & Materials Science
Engineering
Physical Sciences
Summary

Third millennium engineering address new challenges in materials sciences and engineering. In particular, the advances in materials engineering combined with the advances in data acquisition, processing and mining as well as artificial intelligence allow for new ways of thinking in designing new materials and products. Additionally, this gives rise to new paradigms in bridging raw material data and processing to the induced properties and performance. This present topical issue is a compilation of contributions on novel ideas and concepts, addressing several key challenges using data and artificial intelligence, such as:- proposing new techniques for data generation and data mining;- proposing new techniques for visualizing, classifying, modeling, extracting knowledge, explaining and certifying data and data-driven models;- processing data to create data-driven models from scratch when other models are absent, too complex or too poor for making valuable predictions;- processing data to enhance existing physic-based models to improve the quality of the prediction capabilities and, at the same time, to enable data to be smarter; and- processing data to create data-driven enrichment of existing models when physics-based models exhibit limits within a hybrid paradigm.

Format
  • Hardback
License and Copyright
© 2022 by the authors; CC BY-NC-ND license
Keywords
plasticity; machine learning; constitutive modeling; machine learning; manifold learning; topological data analysis; GENERIC; soft living tissues; hyperelasticity; computational modeling; machine learning; data-driven mechanics; TDA; Code2Vect; nonlinear regression; effective properties; microstructures; model calibration; sensitivity analysis; elasto-visco-plasticity; Gaussian process; high-throughput experimentation; additive manufacturing; Ti–Mn alloys; spherical indentation; statistical analysis; Gaussian process regression; nanoporous metals; open-pore foams; FE-beam model; data mining; mechanical properties; hardness; machine learning; principal component analysis; structure–property relationship; microcompression; nanoindentation; machine learning; analytical model; finite element model; artificial neural networks; model correction; feature engineering; physics based; data driven; laser shock peening; residual stresses; data-driven; multiscale; nonlinear; stochastics; neural networks; n/a