Persistent homology-based descriptor for machine-learning potential of amorphous structures

Author:

Minamitani Emi123ORCID,Obayashi Ippei34ORCID,Shimizu Koji5ORCID,Watanabe Satoshi5ORCID

Affiliation:

1. The Institute of Scientific and Industrial Research, Osaka University 1 , Ibaraki 567-0047, Japan

2. Institute for Molecular Science 2 , Okazaki 444-8585, Japan

3. JST, PRESTO 3 , Kawaguchi, Saitama 332-0012, Japan

4. Center for Artificial Intelligence and Mathematical Data Science, Okayama University 4 , Okayama 700-8530, Japan

5. Department of Materials Engineering, The University of Tokyo 5 , Hongo, Bunkyo 113-8656, Japan

Abstract

High-accuracy prediction of the physical properties of amorphous materials is challenging in condensed-matter physics. A promising method to achieve this is machine-learning potentials, which is an alternative to computationally demanding ab initio calculations. When applying machine-learning potentials, the construction of descriptors to represent atomic configurations is crucial. These descriptors should be invariant to symmetry operations. Handcrafted representations using a smooth overlap of atomic positions and graph neural networks (GNN) are examples of methods used for constructing symmetry-invariant descriptors. In this study, we propose a novel descriptor based on a persistence diagram (PD), a two-dimensional representation of persistent homology (PH). First, we demonstrated that the normalized two-dimensional histogram obtained from PD could predict the average energy per atom of amorphous carbon at various densities, even when using a simple model. Second, an analysis of the dimensional reduction results of the descriptor spaces revealed that PH can be used to construct descriptors with characteristics similar to those of a latent space in a GNN. These results indicate that PH is a promising method for constructing descriptors suitable for machine-learning potentials without hyperparameter tuning and deep-learning techniques.

Funder

Precursory Research for Embryonic Science and Technology

Ministry of Education, Culture, Sports, Science and Technology

Publisher

AIP Publishing

Subject

Physical and Theoretical Chemistry,General Physics and Astronomy

Reference46 articles.

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