Hydrogen atom confined inside an inverted-Gaussian potential
- URL: http://arxiv.org/abs/2208.13107v1
- Date: Sun, 28 Aug 2022 00:38:24 GMT
- Title: Hydrogen atom confined inside an inverted-Gaussian potential
- Authors: H. Olivares-Pil\'on, A. M. Escobar-Ru\'iz, M. A. Quiroz-Ju\'arez, N.
Aquino
- Abstract summary: In particular, this model has been used to study atoms inside a $C_60$ fullerene.
Results with not less than 11 significant figures are displayed.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this work, we consider the hydrogen atom confined inside a penetrable
spherical potential. The confining potential is described by an
inverted-Gaussian function of depth $\omega_0$, width $\sigma$ and centered at
$r_c$. In particular, this model has been used to study atoms inside a $C_{60}$
fullerene. For the lowest values of angular momentum $l=0,1,2$, the spectra of
the system as a function of the parameters ($\omega_0,\sigma,r_c$) is
calculated using three distinct numerical methods: (i) Lagrange-mesh method,
(ii) fourth order finite differences and (iii) the finite element method.
Concrete results with not less than 11 significant figures are displayed. Also,
within the Lagrange-mesh approach the corresponding eigenfunctions and the
expectation value of $r$ for the first six states of $s, p$ and $d$ symmetries,
respectively, are presented. Our accurate energies are taken as initial data to
train an artificial neural network as well. It generates an efficient numerical
interpolation. The present numerical results improve and extend those reported
in the literature.
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