StressNet - Deep learning to predict stress with fracture propagation in brittle materials

Abstract Catastrophic failure in brittle materials is often due to the rapid growth and coalescence of cracks aided by high internal stresses. Hence, accurate prediction of maximum internal stress is critical to predicting time to failure and improving the fracture resistance and reliability of mate...

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Main Authors: Yinan Wang, Diane Oyen, Weihong (Grace) Guo, Anishi Mehta, Cory Braker Scott, Nishant Panda, M. Giselle Fernández-Godino, Gowri Srinivasan, Xiaowei Yue
Format: Article
Language:English
Published: Nature Publishing Group 2021-02-01
Series:npj Materials Degradation
Online Access:https://doi.org/10.1038/s41529-021-00151-y
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spelling doaj-47873e5969e84597a0ca8f3758f5d4bf2021-02-14T12:24:06ZengNature Publishing Groupnpj Materials Degradation2397-21062021-02-015111010.1038/s41529-021-00151-yStressNet - Deep learning to predict stress with fracture propagation in brittle materialsYinan Wang0Diane Oyen1Weihong (Grace) Guo2Anishi Mehta3Cory Braker Scott4Nishant Panda5M. Giselle Fernández-Godino6Gowri Srinivasan7Xiaowei Yue8Grado Department of Industrial and Systems Engineering, Virginia Polytechnic Institute and State UniversityLos Alamos National LaboratoryDepartment of Industrial and Systems Engineering, Rutgers UniversityCollege of Computing, Georgia Institute of TechnologyDepartment of Computer Science, University of California IrvineLos Alamos National LaboratoryLawrence Livermore National LaboratoryLos Alamos National LaboratoryGrado Department of Industrial and Systems Engineering, Virginia Polytechnic Institute and State UniversityAbstract Catastrophic failure in brittle materials is often due to the rapid growth and coalescence of cracks aided by high internal stresses. Hence, accurate prediction of maximum internal stress is critical to predicting time to failure and improving the fracture resistance and reliability of materials. Existing high-fidelity methods, such as the Finite-Discrete Element Model (FDEM), are limited by their high computational cost. Therefore, to reduce computational cost while preserving accuracy, a deep learning model, StressNet, is proposed to predict the entire sequence of maximum internal stress based on fracture propagation and the initial stress data. More specifically, the Temporal Independent Convolutional Neural Network (TI-CNN) is designed to capture the spatial features of fractures like fracture path and spall regions, and the Bidirectional Long Short-term Memory (Bi-LSTM) Network is adapted to capture the temporal features. By fusing these features, the evolution in time of the maximum internal stress can be accurately predicted. Moreover, an adaptive loss function is designed by dynamically integrating the Mean Squared Error (MSE) and the Mean Absolute Percentage Error (MAPE), to reflect the fluctuations in maximum internal stress. After training, the proposed model is able to compute accurate multi-step predictions of maximum internal stress in approximately 20 seconds, as compared to the FDEM run time of 4 h, with an average MAPE of 2% relative to test data.https://doi.org/10.1038/s41529-021-00151-y
collection DOAJ
language English
format Article
sources DOAJ
author Yinan Wang
Diane Oyen
Weihong (Grace) Guo
Anishi Mehta
Cory Braker Scott
Nishant Panda
M. Giselle Fernández-Godino
Gowri Srinivasan
Xiaowei Yue
spellingShingle Yinan Wang
Diane Oyen
Weihong (Grace) Guo
Anishi Mehta
Cory Braker Scott
Nishant Panda
M. Giselle Fernández-Godino
Gowri Srinivasan
Xiaowei Yue
StressNet - Deep learning to predict stress with fracture propagation in brittle materials
npj Materials Degradation
author_facet Yinan Wang
Diane Oyen
Weihong (Grace) Guo
Anishi Mehta
Cory Braker Scott
Nishant Panda
M. Giselle Fernández-Godino
Gowri Srinivasan
Xiaowei Yue
author_sort Yinan Wang
title StressNet - Deep learning to predict stress with fracture propagation in brittle materials
title_short StressNet - Deep learning to predict stress with fracture propagation in brittle materials
title_full StressNet - Deep learning to predict stress with fracture propagation in brittle materials
title_fullStr StressNet - Deep learning to predict stress with fracture propagation in brittle materials
title_full_unstemmed StressNet - Deep learning to predict stress with fracture propagation in brittle materials
title_sort stressnet - deep learning to predict stress with fracture propagation in brittle materials
publisher Nature Publishing Group
series npj Materials Degradation
issn 2397-2106
publishDate 2021-02-01
description Abstract Catastrophic failure in brittle materials is often due to the rapid growth and coalescence of cracks aided by high internal stresses. Hence, accurate prediction of maximum internal stress is critical to predicting time to failure and improving the fracture resistance and reliability of materials. Existing high-fidelity methods, such as the Finite-Discrete Element Model (FDEM), are limited by their high computational cost. Therefore, to reduce computational cost while preserving accuracy, a deep learning model, StressNet, is proposed to predict the entire sequence of maximum internal stress based on fracture propagation and the initial stress data. More specifically, the Temporal Independent Convolutional Neural Network (TI-CNN) is designed to capture the spatial features of fractures like fracture path and spall regions, and the Bidirectional Long Short-term Memory (Bi-LSTM) Network is adapted to capture the temporal features. By fusing these features, the evolution in time of the maximum internal stress can be accurately predicted. Moreover, an adaptive loss function is designed by dynamically integrating the Mean Squared Error (MSE) and the Mean Absolute Percentage Error (MAPE), to reflect the fluctuations in maximum internal stress. After training, the proposed model is able to compute accurate multi-step predictions of maximum internal stress in approximately 20 seconds, as compared to the FDEM run time of 4 h, with an average MAPE of 2% relative to test data.
url https://doi.org/10.1038/s41529-021-00151-y
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