1. A deep neural network approach to solve the Dirac equation
- Author
-
Wang, Chuanxin, Naito, Tomoya, Li, Jian, and Liang, Haozhao
- Subjects
Quantum Physics ,Condensed Matter - Other Condensed Matter ,Nuclear Theory ,Physics - Atomic Physics ,Physics - Computational Physics - Abstract
We extend the method from [Naito, Naito, and Hashimoto, Phys. Rev. Research 5, 033189 (2023)] to solve the Dirac equation not only for the ground state but also for low-lying excited states using a deep neural network and the unsupervised machine learning technique. The variational method fails because of the Dirac sea, which is avoided by introducing the inverse Hamiltonian method. For low-lying excited states, two methods are proposed, which have different performances and advantages. The validity of this method is verified by the calculations with the Coulomb and Woods-Saxon potentials., Comment: 15 pages, 16 figures, 3 tables
- Published
- 2024