Distance Matrix based Crystal Structure Prediction using Evolutionary Algorithms
Jianjun Hu, Wenhui Yang, Edirisuriya M. Dilanga Siriwardane

TL;DR
This paper introduces DMCrystal, a genetic algorithm that uses predicted atomic distance matrices to improve crystal structure prediction, making the process faster and more accurate by leveraging known geometric constraints.
Contribution
The paper presents a novel distance matrix based approach for crystal structure prediction that outperforms existing contact map methods, integrating knowledge from known structures.
Findings
Predicted distance matrices significantly improve structure reconstruction.
DMCrystal outperforms CMCrystal in speed and accuracy.
Knowledge of atomic interactions enhances crystal prediction quality.
Abstract
Crystal structure prediction (CSP) for inorganic materials is one of the central and most challenging problems in materials science and computational chemistry. This problem can be formulated as a global optimization problem in which global search algorithms such as genetic algorithms (GA) and particle swarm optimization have been combined with first principle free energy calculations to predict crystal structures given only a material composition or only a chemical system. These DFT based ab initio CSP algorithms are computationally demanding and can only be used to predict crystal structures of relatively small systems. The vast coordinate space plus the expensive DFT free energy calculations limits their efficiency and effectiveness. On the other hand, a similar structure prediction problem has been intensively investigated in parallel in the protein structure prediction community of…
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