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contributor authorBuehler, Markus J.
date accessioned2023-04-06T12:51:01Z
date available2023-04-06T12:51:01Z
date copyright10/6/2022 12:00:00 AM
date issued2022
identifier issn218936
identifier otherjam_89_12_121009.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4288623
description abstractDynamic fracture is an important area of materials analysis, assessing the atomiclevel mechanisms by which materials fail over time. Here, we focus on brittle materials failure and show that an atomistically derived progressive transformer diffusion machine learning model can effectively describe the dynamics of fracture, capturing important aspects such as crack dynamics, instabilities, and initiation mechanisms. Trained on a small dataset of atomistic simulations, the model generalizes well and offers a rapid assessment of dynamic fracture mechanisms for complex geometries, expanding well beyond the original set of atomistic simulation results. Various validation cases, progressively more distinct from the data used for training, are presented and analyzed. The validation cases feature distinct geometric details, including microstructures generated by a generative neural network used here to identify novel bioinspired material designs for mechanical performance. For all cases, the model performs well and captures key aspects of material failure.
publisherThe American Society of Mechanical Engineers (ASME)
titleModeling Atomistic Dynamic Fracture Mechanisms Using a Progressive Transformer Diffusion Model
typeJournal Paper
journal volume89
journal issue12
journal titleJournal of Applied Mechanics
identifier doi10.1115/1.4055730
journal fristpage121009
journal lastpage12100911
page11
treeJournal of Applied Mechanics:;2022:;volume( 089 ):;issue: 012
contenttypeFulltext


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