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  5. A spatiotemporal deep learning framework for prediction of crack dynamics in heterogeneous solids: Efficient mapping of concrete microstructures to its fracture properties

A spatiotemporal deep learning framework for prediction of crack dynamics in heterogeneous solids: Efficient mapping of concrete microstructures to its fracture properties

Publication date
2024-12-06
Document type
Forschungsartikel
Author
Najafi Koopas, Rasoul  
Rezaei, Shahed
Rauter, Natalie  
Ostwald, Richard 
Lammering, Rolf
Organisational unit
Festkörpermechanik  
DTEC.bw  
DOI
10.1016/j.engfracmech.2024.110675
URI
https://openhsu.ub.hsu-hh.de/handle/10.24405/21726
Publisher
Elsevier
Series or journal
Engineering Fracture Mechanics
ISSN
0013-7944
Periodical volume
314
Article ID
110675
Is part of
https://openhsu.ub.hsu-hh.de/handle/10.24405/21730
Peer-reviewed
✅
Part of the university bibliography
✅
Additional Information
Language
English
Keyword
CNN
Multiscaling
Spatiotemporal deep learning framework
UNet
dtec.bw
Abstract
A spatiotemporal deep learning framework is proposed that is capable of two-dimensional full-field prediction of fracture in concrete mesostructures. This framework not only predicts fractures but also captures the entire history of the fracture process, from the crack initiation in the interfacial transition zone (ITZ) to the subsequent propagation of the cracks in the mortar matrix. Additionally, a convolutional neural network (CNN) is developed which is capable of predicting the averaged stress–strain curve of the mesostructures. The UNet modeling framework, which comprises an encoder–decoder section with skip connections, is used as the deep learning surrogate model. Training and test data are generated from high-fidelity fracture simulations of randomly generated concrete mesostructures. These mesostructures include geometric variabilities such as different aggregate particle geometrical features, spatial distribution, and the total volume fraction of aggregates. The fracture simulations are carried out in Abaqus/CAE, utilizing the cohesive phase-field fracture modeling technique as the fracture modeling approach. In this work, to reduce the number of training datasets, the spatial distribution of three sets of material properties for three-phase concrete mesostructures, along with the spatial phase-field damage index, are fed to the UNet to predict the corresponding stress and spatial damage index at the subsequent step. It is shown that after the training process using this methodology, the UNet model is capable of accurately predicting damage on the unseen test dataset by using just 470 datasets. Moreover, another novel aspect of this work is the conversion of irregular finite element data into regular grids using a developed pipeline. This approach allows for the implementation of less complex UNet architecture and facilitates the integration of phase-field fracture equations into surrogate models for future developments.
Version
Published version
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