Intelligent computing: the latest advances, challenges, and future

S Zhu, T Yu, T Xu, H Chen, S Dustdar, S Gigan… - Intelligent …, 2023 - spj.science.org
Computing is a critical driving force in the development of human civilization. In recent years,
we have witnessed the emergence of intelligent computing, a new computing paradigm that …

A review on data-driven constitutive laws for solids

JN Fuhg, G Anantha Padmanabha, N Bouklas… - … Methods in Engineering, 2024 - Springer
This review article highlights state-of-the-art data-driven techniques to discover, encode,
surrogate, or emulate constitutive laws that describe the path-independent and path …

[HTML][HTML] NN-EUCLID: Deep-learning hyperelasticity without stress data

P Thakolkaran, A Joshi, Y Zheng, M Flaschel… - Journal of the …, 2022 - Elsevier
We propose a new approach for unsupervised learning of hyperelastic constitutive laws with
physics-consistent deep neural networks. In contrast to supervised learning, which assumes …

Interfacing finite elements with deep neural operators for fast multiscale modeling of mechanics problems

M Yin, E Zhang, Y Yu, GE Karniadakis - Computer methods in applied …, 2022 - Elsevier
Multiscale modeling is an effective approach for investigating multiphysics systems with
largely disparate size features, where models with different resolutions or heterogeneous …

On physics-informed data-driven isotropic and anisotropic constitutive models through probabilistic machine learning and space-filling sampling

JN Fuhg, N Bouklas - Computer Methods in Applied Mechanics and …, 2022 - Elsevier
Data-driven constitutive modeling is an emerging field in computational solid mechanics
with the prospect of significantly relieving the computational costs of hierarchical …

Modular machine learning-based elastoplasticity: Generalization in the context of limited data

JN Fuhg, CM Hamel, K Johnson, R Jones… - Computer Methods in …, 2023 - Elsevier
The development of highly accurate constitutive models for materials that undergo path-
dependent processes continues to be a complex challenge in computational solid …

Local approximate Gaussian process regression for data-driven constitutive models: development and comparison with neural networks

JN Fuhg, M Marino, N Bouklas - Computer Methods in Applied Mechanics …, 2022 - Elsevier
Hierarchical computational methods for multiscale mechanics such as the FE 2 and FE-FFT
methods are generally accompanied by high computational costs. Data-driven approaches …

[HTML][HTML] Bayesian-EUCLID: Discovering hyperelastic material laws with uncertainties

A Joshi, P Thakolkaran, Y Zheng, M Escande… - Computer Methods in …, 2022 - Elsevier
Within the scope of our recent approach for Efficient Unsupervised Constitutive Law
Identification and Discovery (EUCLID), we propose an unsupervised Bayesian learning …

Modeling the solid electrolyte interphase: Machine learning as a game changer?

D Diddens, WA Appiah, Y Mabrouk… - Advanced Materials …, 2022 - Wiley Online Library
The solid electrolyte interphase (SEI) is a complex passivation layer that forms in situ on
many battery electrodes such as lithium‐intercalated graphite or lithium metal anodes. Its …

Model-data-driven constitutive responses: Application to a multiscale computational framework

JN Fuhg, C Böhm, N Bouklas, A Fau, P Wriggers… - International Journal of …, 2021 - Elsevier
Computational multiscale methods for analyzing and deriving constitutive responses have
been used as a tool in engineering problems because of their ability to combine information …