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Visualising energy landscapes through manifold learning

Authors :
Benjamin W. B. Shires
Chris J. Pickard
Source :
Physical Review X, Vol 11, Iss 4, p 041026 (2021)
Publication Year :
2021

Abstract

Energy landscapes provide a conceptual framework for structure prediction, and a detailed understanding of their topological features is necessary to develop efficient methods for their exploration. The ability to visualize these surfaces is essential, but the high dimensionality of the corresponding configuration spaces makes this visualization difficult. Here, we present stochastic hyperspace embedding and projection (SHEAP), a method for energy landscape visualization inspired by state-of-the-art algorithms for dimensionality reduction through manifold learning, such as t-SNE and UMAP. The performance of SHEAP is demonstrated through its application to the energy landscapes of Lennard-Jones clusters, solid-state carbon, and the quaternary system C+H+N+O. It produces meaningful and interpretable low-dimensional representations of these landscapes, reproducing well-known topological features such as funnels and providing fresh insight into their layouts. In particular, an intrinsic low dimensionality in the distribution of local minima across configuration space is revealed.

Details

Language :
English
Database :
OpenAIRE
Journal :
Physical Review X, Vol 11, Iss 4, p 041026 (2021)
Accession number :
edsair.doi.dedup.....abd384fff6bedaf6338ce709bfcf8087