A probabilistic model for fast-to-evaluate 2D crack path prediction in heterogeneous materials

12/27/2021
by   Kathleen Pele, et al.
6

This paper is devoted to the construction of a new fast-to-evaluate model for the prediction of 2D crack paths in concrete-like microstructures. The model generates piecewise linear cracks paths with segmentation points selected using a Markov chain model. The Markov chain kernel involves local indicators of mechanical interest and its parameters are learnt from numerical full-field 2D simulations of craking using a cohesive-volumetric finite element solver called XPER. The resulting model exhibits a drastic improvement of CPU time in comparison to simulations from XPER.

READ FULL TEXT

page 2

page 4

page 5

page 19

research
03/06/2017

A new belief Markov chain model and its application in inventory prediction

Markov chain model is widely applied in many fields, especially the fiel...
research
06/30/2020

Preconditioning Markov Chain Monte Carlo Method for Geomechanical Subsidence using multiscale method and machine learning technique

In this paper, we consider the numerical solution of the poroelasticity ...
research
04/02/2020

Markov Chain-based Sampling for Exploring RNA Secondary Structure under the Nearest Neighbor Thermodynamic Model

We study plane trees as a model for RNA secondary structure, assigning e...
research
03/14/2019

Markov-chain-inspired search for MH370

Markov-chain models are constructed for the probabilistic description of...
research
08/05/2018

Simulating Raga Notes with a Markov Chain of Order 1-2

Semi Natural Algorithmic composition (SNCA) is the technique of using al...
research
02/15/2023

Experimental Study of a Parallel Iterative Solver for Markov Chain Modeling

This paper presents the results of a preliminary experimental investigat...
research
08/24/2018

Predicting Extubation Readiness in Extreme Preterm Infants based on Patterns of Breathing

Extremely preterm infants commonly require intubation and invasive mecha...

Please sign up or login with your details

Forgot password? Click here to reset