Data for the manuscript: Deep-Learning Atomistic Pseudopotential Model for Nanomaterials
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https://figshare.com/articles/dataset/Data_for_the_manuscript_Deep-Learning_Atomistic_Pseudopotential_Model_for_Nanomaterials/29321645/1
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资源简介:
The semi-empirical pseudopotential method (SEPM) has been widely applied to provide computational insights into the electronic structure, photophysics, and charge carrier dynamics of nanoscale materials. We present ``DeepPseudopot'', a machine-learned atomistic pseudopotential model that extends the SEPM framework by combining a flexible neural network representation of the local pseudopotential with parameterized non-local and spin-orbit coupling terms. Trained on bulk quasiparticle band structures and deformation potentials from GW calculations, the model captures many-body and relativistic effects with very high accuracy across diverse semiconducting materials, as illustrated for silicon and group III-V semiconductors. DeepPseudopot's accuracy, efficiency, and transferability make it well-suited for data-driven in silico design and discovery of novel optoelectronic nanomaterials.
提供机构:
Lin, Kailai
创建时间:
2025-06-14



