Generalizing deep learning electronic structure calculation to the plane-wave basis.

Nat Comput Sci

State Key Laboratory of Low Dimensional Quantum Physics and Department of Physics, Tsinghua University, Beijing, China.

Published: October 2024

AI Article Synopsis

  • A new method has been developed to accurately convert plane-wave (PW) results from density functional theory (DFT) into a format compatible with atomic-orbital (AO) basis, addressing a significant limitation in previous deep neural networks used for electronic structure calculations.
  • This reconstruction method is significantly faster than traditional approaches and maintains the accuracy of the PW electronic structure, effectively linking AO-based deep learning models with PW DFT.
  • By integrating the high accuracy and flexibility of PW methods into deep learning techniques, this advancement enables the creation of large-scale datasets that enhance the development of robust electronic structure models.

Article Abstract

Deep neural networks capable of representing the density functional theory (DFT) Hamiltonian as a function of material structure hold great promise for revolutionizing future electronic structure calculations. However, a notable limitation of previous neural networks is their compatibility solely with the atomic-orbital (AO) basis, excluding the widely used plane-wave (PW) basis. Here we overcome this critical limitation by proposing an accurate and efficient real-space reconstruction method for directly computing AO Hamiltonian matrices from PW DFT results. The reconstruction method is orders of magnitude faster than traditional projection-based methods to convert PW results to the AO basis, and the reconstructed Hamiltonian matrices can faithfully reproduce the PW electronic structure, thus bridging the longstanding gap between the AO basis deep learning electronic structure approach and PW DFT. Advantages of the PW methods, such as high accuracy, high flexibility and wide applicability, thus can be all integrated into deep learning electronic structure methods without sacrificing these methods' inherent benefits. This allows for the construction of large-scale and high-fidelity training datasets with the help of PW DFT results towards the development of precise and broadly applicable deep learning electronic structure models.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11499277PMC
http://dx.doi.org/10.1038/s43588-024-00701-9DOI Listing

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