Manipulating the Dynamics of a Fermi Resonance with Light. A Direct
Optimal Control Theory Approach
- URL: http://arxiv.org/abs/2108.12302v2
- Date: Fri, 19 Nov 2021 12:44:40 GMT
- Title: Manipulating the Dynamics of a Fermi Resonance with Light. A Direct
Optimal Control Theory Approach
- Authors: A. R. Ramos Ramos, O. K\"uhn
- Abstract summary: Direct optimal control theory for quantum dynamical problems presents itself as an interesting alternative to the traditional indirect optimal control.
We extend the application of the method to the case of exact wavepacket propagation using the example of a generic Fermi-resonance model.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Direct optimal control theory for quantum dynamical problems presents itself
as an interesting alternative to the traditional indirect optimal control. The
method relies on the first discretize and then optimize paradigm, where a
discretization of the dynamical equations leads to a nonlinear optimization
problem. It has been applied successfully to the control of a bistable system
where the wavepacket had been approximated by a parameterized Gaussian, leading
to a semiclassical set of equations of motion (A. R. Ramos Ramos, O. K\"uhn,
Front. Phys. 9 (2021) 615168). Motivated by these results, in the present paper
we extend the application of the method to the case of exact wavepacket
propagation using the example of a generic Fermi-resonance model. In particular
we address the question how population of the involved overtone state can be
avoided such as to reduce the effect of intramolecular vibrational energy
redistribution. A methodological advantage is that direct optimal control
theory offers flexibility when choosing the running cost, since there is no
need to compute functional derivatives and coupling terms as in the case of
indirect optimal control. We exploit this fact to include state populations in
the running cost, which allows their optimization.
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