Data-driven discovery of interpretable causal relations for deep learning material laws with uncertainty propagation

05/20/2021
by   Xiao Sun, et al.
0

This paper presents a computational framework that generates ensemble predictive mechanics models with uncertainty quantification (UQ). We first develop a causal discovery algorithm to infer causal relations among time-history data measured during each representative volume element (RVE) simulation through a directed acyclic graph (DAG). With multiple plausible sets of causal relationships estimated from multiple RVE simulations, the predictions are propagated in the derived causal graph while using a deep neural network equipped with dropout layers as a Bayesian approximation for uncertainty quantification. We select two representative numerical examples (traction-separation laws for frictional interfaces, elastoplasticity models for granular assembles) to examine the accuracy and robustness of the proposed causal discovery method for the common material law predictions in civil engineering applications.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/07/2021

BayesIMP: Uncertainty Quantification for Causal Data Fusion

While causal models are becoming one of the mainstays of machine learnin...
research
01/28/2019

Improved Causal Discovery from Longitudinal Data Using a Mixture of DAGs

Many causal processes in biomedicine contain cycles and evolve. However,...
research
06/12/2020

Uncertainty Quantification for Inferring Hawkes Networks

Multivariate Hawkes processes are commonly used to model streaming netwo...
research
10/23/2022

Functional Bayesian Networks for Discovering Causality from Multivariate Functional Data

Multivariate functional data arise in a wide range of applications. One ...
research
02/14/2020

Three-dimensional convolutional neural network (3D-CNN) for heterogeneous material homogenization

Homogenization is a technique commonly used in multiscale computational ...
research
12/06/2019

Data-Driven Uncertainty Quantification and Propagation in Structural Dynamics through a Hierarchical Bayesian Framework

In the presence of modeling errors, the mainstream Bayesian methods seld...
research
11/17/2020

Data Driven Modeling of Interfacial Traction Separation Relations using a Thermodynamically Consistent Neural Network

For multilayer structures, interfacial failure is one of the most import...

Please sign up or login with your details

Forgot password? Click here to reset