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Search methods for inorganic materials crystal structure prediction

Xiangyu Yin, Chrysanthos E. Gounaris

2021Current Opinion in Chemical Engineering25 citationsDOIOpen Access PDF

Abstract

Crystal structure prediction (CSP) is the problem of determining the most stable crystalline arrangements of materials given their chemical compositions. In general, CSP methodologies include two algorithmic steps, namely a method for assessing material stability of any given design, and a search algorithm for exploring the design space. For inorganic crystals, in particular, the most critical aspect is to develop an effective search algorithm. This paper summarizes previous research and discusses recent progress in search methods developed for inorganic CSP. Empirical methods, guided-sampling algorithms, and more recent data-driven approaches are discussed. Additionally, we describe a mathematical optimization-based search paradigm that has been recently introduced as an alternative CSP approach. A semiconductor nanowire design approach is then presented to illustrate this paradigm.

Topics & Concepts

Computer scienceStability (learning theory)Crystal structure predictionSampling (signal processing)Space (punctuation)Material DesignMathematical optimizationAlgorithmTheoretical computer scienceCrystal structureMathematicsMachine learningChemistryOperating systemWorld Wide WebComputer visionCrystallographyFilter (signal processing)Machine Learning in Materials ScienceComputational Drug Discovery MethodsCrystallization and Solubility Studies
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