Data-driven simulation and characterisation of gold nanoparticle melting

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作者
Claudio Zeni
Kevin Rossi
Theodore Pavloudis
Joseph Kioseoglou
Stefano de Gironcoli
Richard E. Palmer
Francesca Baletto
机构
[1] King’s College London,Department of Physics
[2] Swansea University,College of Engineering
[3] Aristotle University of Thessaloniki,Department of Physics
[4] International School for Advanced Studies,Laboratory of Nanochemistry, Institute of Chemistry and Chemical Engineering
[5] International School for Advanced Studies,Department of Physics
[6] Ecole Polytechnique Fédérale de Lausanne,DIPC
[7] Aristotle University of Thessaloniki,undefined
[8] Paseo Manuel de Lardizabal,undefined
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The simulation and analysis of the thermal stability of nanoparticles, a stepping stone towards their application in technological devices, require fast and accurate force fields, in conjunction with effective characterisation methods. In this work, we develop efficient, transferable, and interpretable machine learning force fields for gold nanoparticles based on data gathered from Density Functional Theory calculations. We use them to investigate the thermodynamic stability of gold nanoparticles of different sizes (1 to 6 nm), containing up to 6266 atoms, concerning a solid-liquid phase change through molecular dynamics simulations. We predict nanoparticle melting temperatures in good agreement with available experimental data. Furthermore, we characterize the solid-liquid phase change mechanism employing an unsupervised learning scheme to categorize local atomic environments. We thus provide a data-driven definition of liquid atomic arrangements in the inner and surface regions of a nanoparticle and employ it to show that melting initiates at the outer layers.
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