Element selection for functional materials discovery by integrated machine learning of elemental contributions to properties
Andrij Vasylenko, Dmytro Antypov, Vladimir Gusev, Michael W. Gaultois,, Matthew S. Dyer, Matthew J. Rosseinsky

TL;DR
This paper introduces PhaseSelect, a machine learning framework that assesses, ranks, and predicts the functional properties of material phase fields based on their constituent elements, aiding materials discovery.
Contribution
The study presents an integrated ML model that evaluates and ranks phase fields for functional properties directly from elemental compositions, improving screening efficiency.
Findings
PhaseSelect accurately predicts the probability of functional properties in phase fields.
It effectively ranks phase fields by chemical novelty across multiple materials applications.
The model demonstrates high accuracy in applications like superconductivity, magnetism, and bandgap energy.
Abstract
Fundamental differences between materials originate from the unique nature of their constituent chemical elements. Before specific differences emerge according to the precise ratios of elements in a given crystal structure, a material can be represented by the set of its constituent chemical elements. By working at the level of the periodic table, assessment of materials at the level of their phase fields reduces the combinatorial complexity to accelerate screening, and circumvents the challenges associated with composition-level approaches such as poor extrapolation within phase fields, and the impossibility of exhaustive sampling. This early stage discrimination combined with evaluation of novelty of phase fields aligns with the outstanding experimental challenge of identifying new areas of chemistry to investigate, by prioritising which elements to combine in a reaction. Here, we…
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Taxonomy
TopicsMachine Learning in Materials Science · X-ray Diffraction in Crystallography · Inorganic Chemistry and Materials
