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Identifying crystal structures beyond known prototypes from x-ray powder diffraction spectra
Linköping University, Department of Physics, Chemistry and Biology, Theoretical Physics. Linköping University, Faculty of Science & Engineering.
Univ Cambridge, England.
Univ Cambridge, England.
Linköping University, Department of Physics, Chemistry and Biology, Theoretical Physics. Linköping University, Faculty of Science & Engineering.ORCID iD: 0000-0002-5571-0814
2024 (English)In: Physical Review Materials, E-ISSN 2475-9953, Vol. 8, no 10, article id 103801Article in journal (Refereed) Published
Abstract [en]

The large amount of powder diffraction data for which the corresponding crystal structures have not yet been identified suggests the existence of numerous undiscovered, physically relevant crystal structure prototypes. In this paper, we present a scheme to resolve powder diffraction data into crystal structures with precise atomic coordinates by screening the space of all possible atomic arrangements, i.e., structural prototypes, including those not previously observed, using a pre-trained machine learning (ML) model. This involves (i) enumerating all possible symmetry-confined ways in which a given composition can be accommodated in a given space group, (ii) ranking the element-assigned prototype representations using energies predicted using and perturbing atoms along the degree of freedom allowed by the Wyckoff positions to match the experimental diffraction data, and (iv) validating the thermodynamic stability of the material using density-functional theory. An advantage of the presented method is that it does not rely on a database of previously observed prototypes and is, therefore capable of finding crystal structures with entirely new symmetric arrangements of atoms. We demonstrate the workflow on unidentified x-ray diffraction spectra from the ICDD database and identify a number of stable structures, where a majority turns out to be derivable from known prototypes. However, at least two are found not to be part of our prior structural data sets.

Place, publisher, year, edition, pages
AMER PHYSICAL SOC , 2024. Vol. 8, no 10, article id 103801
National Category
Structural Biology
Identifiers
URN: urn:nbn:se:liu:diva-208676DOI: 10.1103/PhysRevMaterials.8.103801ISI: 001330003700001OAI: oai:DiVA.org:liu-208676DiVA, id: diva2:1907347
Note

Funding Agencies|Swedish Research Council (VR) [2020-05402]; Swedish e-Science Centre (SeRC); Swedish Research Council [2018-05973]

Available from: 2024-10-22 Created: 2024-10-22 Last updated: 2026-02-13
In thesis
1. Crystal Symmetry and Machine Learning for Systematic Materials Discovery
Open this publication in new window or tab >>Crystal Symmetry and Machine Learning for Systematic Materials Discovery
2026 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

Discovering new crystalline materials lies at the frontier of modern materials science, driving innovation in energy storage, catalysis, semiconductors, and beyond. The vastness of the chemical and structural space poses a profound challenge: the number of possible atomic arrangements grows prohibitably large with system size and composition. Traditional first-principles methods such as density functional theory (DFT) have revolutionized materials discovery, but their high computational cost limits large-scale exploration. This work addresses the combinatorial bottleneck by bringing together two complementary dimensions of modern materials discovery: data-driven predictions using machine learning and high-performance computing.

The work presented in this thesis builds on a symmetry-aware representation of crystal structures called protostructures, based on Wyckoff positions: a coordinate free description of symmetry related atomic sites. This formulation transforms the continuous space of atomic coordinates into a discrete and combinatorially enumerable one. We developed a machine learning model, Wren, which is trained on this representation to provide fast estimates of stability and guide exploration toward promising regions of structural space. A GPU-accelerated workflow using machine-learning-based interatomic potentials and parallelized screening allows for the evaluation of billions of candidate structures within practical timeframes.

Building on this framework, the presented work enumerates 39 billion binary and ternary compounds spanning the chemical space from lithium to bromine, identifying over 88,000 new structural prototypes, and about half a million new crystal structures within a stability limit of 100 meV/atom. The approach is further applied to experimentally unresolved powder diffraction data, where it reconstructs crystal structures consistent with measured patterns, demonstrating the workflow’s ability to uncover physically realizable materials beyond known prototypes.

To explore even broader regions of structural complexity, this work introduces WyckoffDiff, a diffusion-based generative model that produces novel, symmetry-consistent protostructures beyond the training distribution, some predicted to be thermodynamically stable.

Since pretrained interatomic potentials form the foundation of this work, their quality was examined through two complementary studies. The first benchmarks their accuracy in reproducing mixing enthalpies across disordered alloys. The second investigates how these potentials capture the topology of potential energy surfaces by probing energy variations along symmetry-constrained pathways, showing how different machine-learning potentials represent local minima and saddle points, and other artifacts. These two benchmarks provides insight into their reliability for structure prediction, and the resulting findings informed the selection and parametrization of models used throughout our screening framework.

Altogether, the work presented in this thesis demonstrates that the combination of coarse grained screening, ML-based interatomic potentials, and high-performance computing can dramatically accelerate the discovery of previously unseen crystal structures. The framework presented in the thesis expands the boundaries of computational materials discovery and represents a step toward a large-scale, perhaps even comprehensive, mapping of all stable crystal structures permitted by chemistry and symmetry.

Place, publisher, year, edition, pages
Linköping: Linköping University Electronic Press, 2026. p. 89
Series
Linköping Studies in Science and Technology. Dissertations, ISSN 0345-7524 ; 2510
National Category
Condensed Matter Physics
Identifiers
urn:nbn:se:liu:diva-221198 (URN)10.3384/9789181184761 (DOI)9789181184754 (ISBN)9789181184761 (ISBN)
Public defence
2026-03-06, Planck, F Building, Campus Valla, Linköping, 09:15 (English)
Opponent
Supervisors
Available from: 2026-02-13 Created: 2026-02-13 Last updated: 2026-02-13Bibliographically approved

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