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Charge integrated graph neural networkbased machine learning potential for amorphous and non-stoichiometric hafnium oxide
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作者 Hyo Gyeong Shin Seong Hun Kim +8 位作者 Eun Ho Kim Jun Hyeong Gu Jaeseon Kim Seon-Gyu Kim Shin Hyun Kim Hyo Kim Sunghyun Kim Duk-Hyun Choe Donghwa Lee 《npj Computational Materials》 2025年第1期4415-4423,共9页
Amorphous and non-stoichiometric hafnium oxide(a-HfO_(x))systems are essential for advanced electronic applications due to their superior electrical properties.Simulating their atomic behaviors under electric fields(E... Amorphous and non-stoichiometric hafnium oxide(a-HfO_(x))systems are essential for advanced electronic applications due to their superior electrical properties.Simulating their atomic behaviors under electric fields(Efield)is critical but challenging.Ab-initio molecular dynamics(AIMD)offer high accuracy but is computationally expensive,while classical MD lacks precision.To address this,we develop a charge equilibration integrated graph neural network(CIGNN)model that predicts atomic charge,energy,and force under Efield conditions.Using the CIGNN model and AIMD datasets,we develop a CIGNN-based machine learning potential(CNMP)optimized for a-HfO_(x)systems.The CNMP achieves quantum mechanical accuracy and effectively captures the atomic behaviors and dynamic properties of these systems across varying temperatures,densities,and E_(field)conditions.We expect the CNMP to serve as a valuable tool for studying field-induced phenomena in complex systems and to provide a foundation for advancing innovations in electronic applications. 展开更多
关键词 hafnium oxide amorphous atomic behaviors electric fields efield classical md non stoichiometric charge equilibration charge equilibration integrated graph neural network cignn model graph neural network
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