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Unraveling the crystallization kinetics of the Ge2Sb2Te5 phase change compound with a machine-learned interatomic potential

Omar Abou El Kheir, Luigi Bonati, Michele Parrinello, Marco Bernasconi

2024npj Computational Materials58 citationsDOIOpen Access PDF

Abstract

Abstract The phase change compound Ge 2 Sb 2 Te 5 (GST225) is exploited in advanced non-volatile electronic memories and in neuromorphic devices which both rely on a fast and reversible transition between the crystalline and amorphous phases induced by Joule heating. The crystallization kinetics of GST225 is a key functional feature for the operation of these devices. We report here on the development of a machine-learned interatomic potential for GST225 that allowed us to perform large scale molecular dynamics simulations (over 10,000 atoms for over 100 ns) to uncover the details of the crystallization kinetics in a wide range of temperatures of interest for the programming of the devices. The potential is obtained by fitting with a deep neural network (NN) scheme a large quantum-mechanical database generated within density functional theory. The availability of a highly efficient and yet highly accurate NN potential opens the possibility to simulate phase change materials at the length and time scales of the real devices.

Topics & Concepts

CrystallizationGermanium compoundsKineticsPhase changeMaterials sciencePhase (matter)Chemical physicsCrystallographyThermodynamicsChemistryPhysicsOptoelectronicsGermaniumSiliconClassical mechanicsOrganic chemistryPhase-change materials and chalcogenidesMachine Learning in Materials ScienceChalcogenide Semiconductor Thin Films