Difference-Based Deep Learning Framework for Stress Predictions in
Heterogeneous Media
- URL: http://arxiv.org/abs/2007.04898v3
- Date: Mon, 29 Mar 2021 12:01:43 GMT
- Title: Difference-Based Deep Learning Framework for Stress Predictions in
Heterogeneous Media
- Authors: Haotian Feng and Pavana Prabhakar
- Abstract summary: We utilize Deep Learning for developing a set of novel Difference-based Neural Network (DiNN) frameworks to determine stress distribution in heterogeneous media.
We focus on highlighting the differences in stress distribution between different input samples for improving the accuracy of prediction in heterogeneous media.
Results show that the DiNN structures significantly enhance the accuracy of stress prediction compared to existing structures.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Stress analysis of heterogeneous media, like composite materials, using
Finite Element Analysis (FEA) has become commonplace in design and analysis.
However, determining stress distributions in heterogeneous media using FEA can
be computationally expensive in situations like optimization and multi-scaling.
To address this, we utilize Deep Learning for developing a set of novel
Difference-based Neural Network (DiNN) frameworks based on engineering and
statistics knowledge to determine stress distribution in heterogeneous media,
for the first time, with special focus on discontinuous domains that manifest
high stress concentrations. The novelty of our approach is that instead of
directly using several FEA model geometries and stresses as inputs for training
a Neural Network, as typically done previously, we focus on highlighting the
differences in stress distribution between different input samples for
improving the accuracy of prediction in heterogeneous media. We evaluate the
performance of DiNN frameworks by considering different types of geometric
models that are commonly used in the analysis of composite materials, including
volume fraction and spatial randomness. Results show that the DiNN structures
significantly enhance the accuracy of stress prediction compared to existing
structures, especially for composite models with random volume fraction when
localized high stress concentrations are present.
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