About this Digital Document
We show that machine learning can improve the accuracy of simulations of
stress waves in one-dimensional composite materials. We propose a data-driven
technique to learn nonlocal constitutive laws for stress wave propagation
models. The method is an optimization-based technique in which the nonlocal
kernel function is approximated via Bernstein polynomials. The kernel,
including both its functional form and parameters, is derived so that when used
in a nonlocal solver, it generates solutions that closely match high-fidelity
data. The optimal kernel therefore acts as a homogenized nonlocal continuum
model that accurately reproduces wave motion in a smaller-scale, more detailed
model that can include multiple materials. We apply this technique to wave
propagation within a heterogeneous bar with a periodic microstructure. Several
one-dimensional numerical tests illustrate the accuracy of our algorithm. The
optimal kernel is demonstrated to reproduce high-fidelity data for a composite
material in applications that are substantially different from the problems
used as training data.
Full Title
Data-driven learning of nonlocal models: from high-fidelity simulations to constitutive laws
Member of
Contributor(s)
Publisher
arXiv
Date Issued
2020-12-08
Language
English
Type
Genre
Form
electronic document
Media type
Creator role
Faculty
Identifier
You, . H., Yu, . Y., Silling, . S., & D’Elia, . M. (2020). Data-driven learning of nonlocal models: from high-fidelity simulations to constitutive laws (1–). https://preserve.lehigh.edu/lehigh-scholarship/faculty-and-staff-publications/faculty-publications/data-driven-learning
You, Huaiqian, Yue Yu, Stewart Silling, and Marta D’Elia. 2020. “Data-Driven Learning of Nonlocal Models: From High-Fidelity Simulations to Constitutive Laws”. https://preserve.lehigh.edu/lehigh-scholarship/faculty-and-staff-publications/faculty-publications/data-driven-learning.
You, Huaiqian, et al. Data-Driven Learning of Nonlocal Models: From High-Fidelity Simulations to Constitutive Laws. 8 Dec. 2020, https://preserve.lehigh.edu/lehigh-scholarship/faculty-and-staff-publications/faculty-publications/data-driven-learning.