Machine-learning accelerated identification of exfoliable
two-dimensional materials
- URL: http://arxiv.org/abs/2207.12118v1
- Date: Mon, 18 Jul 2022 14:48:53 GMT
- Title: Machine-learning accelerated identification of exfoliable
two-dimensional materials
- Authors: Mohammad Tohidi Vahdat, Kumar Agrawal Varoon, and Giovanni Pizzi
- Abstract summary: Two-dimensional (2D) materials have been a central focus of recent research because they host a variety of properties.
It is crucial to be able to identify accurately and efficiently if bulk three-dimensional (3D) materials are formed by layers held together by a weak binding energy.
We develop a machine-learning (ML) approach that, combined with a fast preliminary geometrical screening, is able to efficiently identify potentially exfoliable materials.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Two-dimensional (2D) materials have been a central focus of recent research
because they host a variety of properties, making them attractive both for
fundamental science and for applications. It is thus crucial to be able to
identify accurately and efficiently if bulk three-dimensional (3D) materials
are formed by layers held together by a weak binding energy that, thus, can be
potentially exfoliated into 2D materials. In this work, we develop a
machine-learning (ML) approach that, combined with a fast preliminary
geometrical screening, is able to efficiently identify potentially exfoliable
materials. Starting from a combination of descriptors for crystal structures,
we work out a subset of them that are crucial for accurate predictions. Our
final ML model, based on a random forest classifier, has a very high recall of
98\%. Using a SHapely Additive exPlanations (SHAP) analysis, we also provide an
intuitive explanation of the five most important variables of the model.
Finally, we compare the performance of our best ML model with a deep neural
network architecture using the same descriptors. To make our algorithms and
models easily accessible, we publish an online tool on the Materials Cloud
portal that only requires a bulk 3D crystal structure as input. Our tool thus
provides a practical yet straightforward approach to assess whether any 3D
compound can be exfoliated into 2D layers.
Related papers
- MaterialSeg3D: Segmenting Dense Materials from 2D Priors for 3D Assets [63.284244910964475]
We propose a 3D asset material generation framework to infer underlying material from the 2D semantic prior.
Based on such a prior model, we devise a mechanism to parse material in 3D space.
arXiv Detail & Related papers (2024-04-22T07:00:17Z) - Leveraging Large-Scale Pretrained Vision Foundation Models for
Label-Efficient 3D Point Cloud Segmentation [67.07112533415116]
We present a novel framework that adapts various foundational models for the 3D point cloud segmentation task.
Our approach involves making initial predictions of 2D semantic masks using different large vision models.
To generate robust 3D semantic pseudo labels, we introduce a semantic label fusion strategy that effectively combines all the results via voting.
arXiv Detail & Related papers (2023-11-03T15:41:15Z) - EGFN: Efficient Geometry Feature Network for Fast Stereo 3D Object
Detection [51.52496693690059]
Fast stereo based 3D object detectors lag far behind high-precision oriented methods in accuracy.
We argue that the main reason is the missing or poor 3D geometry feature representation in fast stereo based methods.
The proposed EGFN outperforms YOLOStsereo3D, the advanced fast method, by 5.16% on mAP$_3d$ at the cost of merely additional 12 ms.
arXiv Detail & Related papers (2021-11-28T05:25:36Z) - How to See Hidden Patterns in Metamaterials with Interpretable Machine
Learning [82.67551367327634]
We develop a new interpretable, multi-resolution machine learning framework for finding patterns in the unit-cells of materials.
Specifically, we propose two new interpretable representations of metamaterials, called shape-frequency features and unit-cell templates.
arXiv Detail & Related papers (2021-11-10T21:19:02Z) - Translational Symmetry-Aware Facade Parsing for 3D Building
Reconstruction [11.263458202880038]
In this paper, we present a novel translational symmetry-based approach to improving the deep neural networks.
We propose a novel scheme to fuse anchor-free detection in a single stage network, which enables the efficient training and better convergence.
We employ an off-the-shelf rendering engine like Blender to reconstruct the realistic high-quality 3D models using procedural modeling.
arXiv Detail & Related papers (2021-06-02T03:10:51Z) - Learning Feature Aggregation for Deep 3D Morphable Models [57.1266963015401]
We propose an attention based module to learn mapping matrices for better feature aggregation across hierarchical levels.
Our experiments show that through the end-to-end training of the mapping matrices, we achieve state-of-the-art results on a variety of 3D shape datasets.
arXiv Detail & Related papers (2021-05-05T16:41:00Z) - Predicting Material Properties Using a 3D Graph Neural Network with
Invariant Local Descriptors [0.4956709222278243]
Accurately predicting material properties is critical for discovering and designing novel materials.
Among the machine learning methods, graph convolution neural networks (GCNNs) have been one of the most successful ones.
We propose an adaptive GCNN with novel convolutions that model interactions among all neighboring atoms in three-dimensional space simultaneously.
arXiv Detail & Related papers (2021-02-16T19:56:54Z) - Generating 3D structures from a 2D slice with GAN-based dimensionality
expansion [0.0]
Generative adversarial networks (GANs) can be trained to generate 3D image data, which is useful for design optimisation.
We introduce a generative adversarial network architecture, SliceGAN, which is able to synthesise high fidelity 3D datasets using a single representative 2D image.
arXiv Detail & Related papers (2021-02-10T18:46:17Z) - Generative VoxelNet: Learning Energy-Based Models for 3D Shape Synthesis
and Analysis [143.22192229456306]
This paper proposes a deep 3D energy-based model to represent volumetric shapes.
The benefits of the proposed model are six-fold.
Experiments demonstrate that the proposed model can generate high-quality 3D shape patterns.
arXiv Detail & Related papers (2020-12-25T06:09:36Z) - Molecular machine learning with conformer ensembles [0.0]
We introduce multiple deep learning models that expand upon key architectures such as ChemProp and Schnet.
We then benchmark the performance trade-offs of these models on 2D, 3D and 4D representations in the prediction of drug activity.
The new architectures perform significantly better than 2D models, but their performance is often just as strong with a single conformer as with many.
arXiv Detail & Related papers (2020-12-15T17:44:48Z) - 3DMaterialGAN: Learning 3D Shape Representation from Latent Space for
Materials Science Applications [7.449993399792031]
3DMaterialGAN is capable of recognizing and synthesizing individual grains whose morphology conforms to a given 3D polycrystalline material microstructure.
We show that this method performs comparably or better than state-of-the-art on benchmark annotated 3D datasets.
This framework lays the foundation for the recognition and synthesis of polycrystalline material microstructures.
arXiv Detail & Related papers (2020-07-27T21:55:16Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.