Saved in:
Bibliographic Details
Main Authors: van Wees, Lloyd, Shankar, Karthik, Fuhg, Jan N., Bouklas, Nikolaos, Shade, Paul, Obstalecki, Mark, Kasemer, Matthew
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.03863
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914849672396800
author van Wees, Lloyd
Shankar, Karthik
Fuhg, Jan N.
Bouklas, Nikolaos
Shade, Paul
Obstalecki, Mark
Kasemer, Matthew
author_facet van Wees, Lloyd
Shankar, Karthik
Fuhg, Jan N.
Bouklas, Nikolaos
Shade, Paul
Obstalecki, Mark
Kasemer, Matthew
contents In this study, we present a methodology to predict the macroscopic yield surface of metals and metallic alloys with general crystallographic textures. In previous work, we have established the use of partially input convex neural networks (pICNN) as macroscopic yield functions of crystal plasticity simulations. However, this work was performed with an over-abundance of data, and on limited crystallographic textures. Here, we extend this study to approach more realistic material states (i.e., complex crystallographic textures), and consider data-availability as a major driver for our approach. We present our modified framework capable of handling generalized material states and demonstrate its effectiveness on samples with multi-modal textures deformed under plane stress conditions. We further describe an adaptive algorithm for the generation of training data as informed by the shape of yield surfaces to reduce the time for both the generation of training data as well as pICNN training. Finally, we will discuss errors in both training and test datasets, limitations, and future extensibility.
format Preprint
id arxiv_https___arxiv_org_abs_2404_03863
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Establishing the relationship between generalized crystallographic texture and macroscopic yield surfaces using partial input convex neural networks
van Wees, Lloyd
Shankar, Karthik
Fuhg, Jan N.
Bouklas, Nikolaos
Shade, Paul
Obstalecki, Mark
Kasemer, Matthew
Materials Science
In this study, we present a methodology to predict the macroscopic yield surface of metals and metallic alloys with general crystallographic textures. In previous work, we have established the use of partially input convex neural networks (pICNN) as macroscopic yield functions of crystal plasticity simulations. However, this work was performed with an over-abundance of data, and on limited crystallographic textures. Here, we extend this study to approach more realistic material states (i.e., complex crystallographic textures), and consider data-availability as a major driver for our approach. We present our modified framework capable of handling generalized material states and demonstrate its effectiveness on samples with multi-modal textures deformed under plane stress conditions. We further describe an adaptive algorithm for the generation of training data as informed by the shape of yield surfaces to reduce the time for both the generation of training data as well as pICNN training. Finally, we will discuss errors in both training and test datasets, limitations, and future extensibility.
title Establishing the relationship between generalized crystallographic texture and macroscopic yield surfaces using partial input convex neural networks
topic Materials Science
url https://arxiv.org/abs/2404.03863