Search Results for author: Zeliang Liu

Found 5 papers, 0 papers with code

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

no code implementations18 Jan 2021 Zeliang Liu

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.

Machine learning for metal additive manufacturing: Predicting temperature and melt pool fluid dynamics using physics-informed neural networks

no code implementations28 Jul 2020 Qiming Zhu, Zeliang Liu, Jinhui Yan

The recent explosion of machine learning (ML) and artificial intelligence (AI) shows great potential in the breakthrough of metal additive manufacturing (AM) process modeling.

Intelligent multiscale simulation based on process-guided composite database

no code implementations20 Mar 2020 Zeliang Liu, Haoyan Wei, Tianyu Huang, C. T. Wu

In the paper, we present an integrated data-driven modeling framework based on process modeling, material homogenization, mechanistic machine learning, and concurrent multiscale simulation.

BIG-bench Machine Learning Transfer Learning

Deep material network with cohesive layers: Multi-stage training and interfacial failure analysis

no code implementations7 Aug 2019 Zeliang Liu

A fundamental issue in multiscale materials modeling and design is the consideration of traction-separation behavior at the interface.

Exploring the 3D architectures of deep material network in data-driven multiscale mechanics

no code implementations2 Jan 2019 Zeliang Liu, C. T. Wu

This paper extends the deep material network (DMN) proposed by Liu et al. (2019) to tackle general 3-dimensional (3D) problems with arbitrary material and geometric nonlinearities.

Model Compression

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