Complex Ga2O3 polymorphs explored by accurate and general-purpose machine-learning interatomic potentials

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作者
Junlei Zhao
Jesper Byggmästar
Huan He
Kai Nordlund
Flyura Djurabekova
Mengyuan Hua
机构
[1] Southern University of Science and Technology,Department of Electrical and Electronic Engineering
[2] University of Helsinki,Department of Physics
[3] University of Helsinki,FCAI: Finnish Center for Artificial Intelligence
[4] Xi’an Jiaotong University,School of Nuclear Science and Technology
[5] University of Helsinki,Helsinki Institute of Physics
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Ga2O3 is a wide-band gap semiconductor of emergent importance for applications in electronics and optoelectronics. However, vital information of the properties of complex coexisting Ga2O3 polymorphs and low-symmetry disordered structures is missing. We develop two types of machine-learning Gaussian approximation potentials (ML-GAPs) for Ga2O3 with high accuracy for β/κ/α/δ/γ polymorphs and generality for disordered stoichiometric structures. We release two versions of interatomic potentials in parallel, namely soapGAP and tabGAP, for high accuracy and exceeding speedup, respectively. Both potentials can reproduce the structural properties of all the five polymorphs in an exceptional agreement with ab initio results, meanwhile boost the computational efficiency with 5 × 102 and 2 × 105 computing speed increases compared to density functional theory, respectively. Moreover, the Ga2O3 liquid-solid phase transition proceeds in three different stages. This experimentally unrevealed complex dynamics can be understood in terms of distinctly different mobilities of O and Ga sublattices in the interfacial layer.
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