arXiv Open Access 2023

Use of Deep Neural Networks for Uncertain Stress Functions with Extensions to Impact Mechanics

Garrett Blum Ryan Doris Diego Klabjan Horacio Espinosa Ron Szalkowski
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Abstrak

Stress-strain curves, or more generally, stress functions, are an extremely important characterization of a material's mechanical properties. However, stress functions are often difficult to derive and are narrowly tailored to a specific material. Further, large deformations, high strain-rates, temperature sensitivity, and effect of material parameters compound modeling challenges. We propose a generalized deep neural network approach to model stress as a state function with quantile regression to capture uncertainty. We extend these models to uniaxial impact mechanics using stochastic differential equations to demonstrate a use case and provide a framework for implementing this uncertainty-aware stress function. We provide experiments benchmarking our approach against leading constitutive, machine learning, and transfer learning approaches to stress and impact mechanics modeling on publicly available and newly presented data sets. We also provide a framework to optimize material parameters given multiple competing impact scenarios.

Topik & Kata Kunci

Penulis (5)

G

Garrett Blum

R

Ryan Doris

D

Diego Klabjan

H

Horacio Espinosa

R

Ron Szalkowski

Format Sitasi

Blum, G., Doris, R., Klabjan, D., Espinosa, H., Szalkowski, R. (2023). Use of Deep Neural Networks for Uncertain Stress Functions with Extensions to Impact Mechanics. https://arxiv.org/abs/2311.16135

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Informasi Jurnal
Tahun Terbit
2023
Bahasa
en
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arXiv
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Open Access ✓