CELGCOMP-PHJan 18, 2021

Cell division in deep material networks applied to multiscale strain localization modeling

arXiv:2101.07226v227 citations
Originality Incremental advance
AI Analysis

This work addresses strain localization modeling for computer-aided engineering, particularly in failure analysis of composites, but it appears incremental as it builds on existing deep material network frameworks.

The paper tackled the problem of capturing material behaviors consistently across multiple length scales in strain localization modeling by proposing a new cell-division scheme within deep material networks, resulting in applications to dynamic crush simulations and experimental validations on composite materials.

Despite the increasing importance of strain localization modeling (e.g., failure analysis) in computer-aided engineering, there is a lack of effective approaches to capturing relevant material behaviors consistently across multiple length scales. We aim to address this gap within the framework of deep material networks (DMN) -- a machine learning model with embedded mechanics in the building blocks. A new cell-division scheme is proposed to track the scale transition through the network, and its consistency is ensured by the physics of fitting parameters. Essentially, each microscale node in the bottom layer is described by an ellipsoidal cell with its dimensions back-propagated from the macroscale material point. New crack surfaces in the cell are modeled by enriching cohesive layers, and failure algorithms are developed for crack initiation and evolution in the implicit DMN analysis. Besides studies on a single material point, we apply the multiscale model to concurrent multiscale simulations for the dynamic crush of a particle-reinforced composite tube and various tests on carbon fiber reinforced polymer composites. For the latter, experimental validations on an off-axis tensile test specimen are also provided.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes