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A data-centric approach to generative modelling for 3D-printed steel

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Title: A data-centric approach to generative modelling for 3D-printed steel
Authors: Dodwell, T
Flemming, L
Buchanan, C
Kyvelou, P
Detommasoe, G
Gosling, P
Scheichl, R
Kendall, W
Gardner, L
Girolami, M
Oates, C
Item Type: Journal Article
Abstract: The emergence of additive manufacture (AM) for metallic material enables components of near arbitrary complexity to be produced. This has potential to disrupt traditional engineering approaches. However, metallic AM components exhibit greater levels of variation in their geometric and mechanical properties compared to standard components, which is not yet well understood. This uncertainty poses a fundamental barrier to potential users of the material, since extensive post-manufacture testing is currently required to ensure safety standards are met. Taking an interdisciplinary approach that combines probabilistic mechanics and uncertainty quantification, we demonstrate that intrinsic variation in AM steel can be well described by a generative statistical model that enables the quality of a design to be predicted before manufacture. Specifically, the geometric variation in the material can be described by an anisotropic spatial random field with oscillatory covariance structure, and the mechanical behaviour by a stochastic anisotropic elasto-plastic material model. The fitted generative model is validated on a held-out experimental dataset and our results underscore the need to combine both statistical and physics-based modelling in the characterization of new AM steel products.
Issue Date: 1-Nov-2021
Date of Acceptance: 13-Oct-2021
URI: http://hdl.handle.net/10044/1/92707
DOI: 10.1098/rspa.2021.0444
ISSN: 1364-5021
Publisher: The Royal Society
Journal / Book Title: Proceedings of the Royal Society A: Mathematical, Physical and Engineering Sciences
Volume: 477
Issue: 2255
Copyright Statement: © 2021 The Authors. Published by the Royal Society under the terms of the Creative Commons Attribution License http://creativecommons.org/licenses/by/4.0/, which permits unrestricted use, provided the original author and source are credited.
Sponsor/Funder: Lloyds Register Foundation
Funder's Grant Number: ATIPO000004844 (PO)
Keywords: Science & Technology
Multidisciplinary Sciences
Science & Technology - Other Topics
3D printing
Bayesian uncertainty quantification
elastoplasticity
probabilistic mechanics
stochastic finite elements
ADDITIVE MANUFACTURING PROCESSES
SURFACE METROLOGY
PARADIGM SHIFTS
DESIGN
OPPORTUNITIES
INFERENCE
01 Mathematical Sciences
02 Physical Sciences
09 Engineering
Publication Status: Published
Article Number: 20210444
Online Publication Date: 2021-11-10
Appears in Collections:Civil and Environmental Engineering
Faculty of Engineering



This item is licensed under a Creative Commons License Creative Commons