Artificial intelligence and machine learning in design of mechanical materials

K Guo, Z Yang, CH Yu, MJ Buehler - Materials Horizons, 2021 - pubs.rsc.org
Artificial intelligence, especially machine learning (ML) and deep learning (DL) algorithms,
is becoming an important tool in the fields of materials and mechanical engineering …

Deep learning in mechanical metamaterials: from prediction and generation to inverse design

X Zheng, X Zhang, TT Chen, I Watanabe - Advanced Materials, 2023 - Wiley Online Library
Mechanical metamaterials are meticulously designed structures with exceptional
mechanical properties determined by their microstructures and constituent materials …

Programming 3D curved mesosurfaces using microlattice designs

X Cheng, Z Fan, S Yao, T Jin, Z Lv, Y Lan, R Bo… - Science, 2023 - science.org
Cellular microstructures form naturally in many living organisms (eg, flowers and leaves) to
provide vital functions in synthesis, transport of nutrients, and regulation of growth. Although …

Inverse design of mechanical metamaterials with target nonlinear response via a neural accelerated evolution strategy

B Deng, A Zareei, X Ding, JC Weaver… - Advanced …, 2022 - Wiley Online Library
Materials with target nonlinear mechanical response can support the design of innovative
soft robots, wearable devices, footwear, and energy‐absorbing systems, yet it is challenging …

Generative design of de novo proteins based on secondary-structure constraints using an attention-based diffusion model

B Ni, DL Kaplan, MJ Buehler - Chem, 2023 - cell.com
We report two generative deep-learning models that predict amino acid sequences and 3D
protein structures on the basis of secondary-structure design objectives via either the overall …

A mixed formulation for physics-informed neural networks as a potential solver for engineering problems in heterogeneous domains: Comparison with finite element …

S Rezaei, A Harandi, A Moeineddin, BX Xu… - Computer Methods in …, 2022 - Elsevier
Physics informed neural networks (PINNs) are capable of finding the solution for a given
boundary value problem. Here, the training of the network is equivalent to the minimization …

Photonic multiplexing techniques for neuromorphic computing

Y Bai, X Xu, M Tan, Y Sun, Y Li, J Wu, R Morandotti… - …, 2023 - degruyter.com
The simultaneous advances in artificial neural networks and photonic integration
technologies have spurred extensive research in optical computing and optical neural …

Learning two-phase microstructure evolution using neural operators and autoencoder architectures

V Oommen, K Shukla, S Goswami… - npj Computational …, 2022 - nature.com
Phase-field modeling is an effective but computationally expensive method for capturing the
mesoscale morphological and microstructure evolution in materials. Hence, fast and …

[HTML][HTML] Deep language models for interpretative and predictive materials science

Y Hu, MJ Buehler - APL Machine Learning, 2023 - pubs.aip.org
Machine learning (ML) has emerged as an indispensable methodology to describe,
discover, and predict complex physical phenomena that efficiently help us learn underlying …

[HTML][HTML] Battery safety: Machine learning-based prognostics

J Zhao, X Feng, Q Pang, M Fowler, Y Lian… - Progress in Energy and …, 2024 - Elsevier
Lithium-ion batteries play a pivotal role in a wide range of applications, from electronic
devices to large-scale electrified transportation systems and grid-scale energy storage …