Artificial intelligence and machine learning in design of mechanical materials
Artificial intelligence, especially machine learning (ML) and deep learning (DL) algorithms,
is becoming an important tool in the fields of materials and mechanical engineering …
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
Mechanical metamaterials are meticulously designed structures with exceptional
mechanical properties determined by their microstructures and constituent materials …
mechanical properties determined by their microstructures and constituent materials …
Programming 3D curved mesosurfaces using microlattice designs
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 …
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
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 …
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
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 …
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 …
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 …
boundary value problem. Here, the training of the network is equivalent to the minimization …
Photonic multiplexing techniques for neuromorphic computing
The simultaneous advances in artificial neural networks and photonic integration
technologies have spurred extensive research in optical computing and optical neural …
technologies have spurred extensive research in optical computing and optical neural …
Learning two-phase microstructure evolution using neural operators and autoencoder architectures
Phase-field modeling is an effective but computationally expensive method for capturing the
mesoscale morphological and microstructure evolution in materials. Hence, fast and …
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 …
discover, and predict complex physical phenomena that efficiently help us learn underlying …
[HTML][HTML] Battery safety: Machine learning-based prognostics
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 …
devices to large-scale electrified transportation systems and grid-scale energy storage …