Improving the estimation of the environment parameters via a two-qubit
scheme
- URL: http://arxiv.org/abs/2305.12278v1
- Date: Sat, 20 May 2023 20:36:28 GMT
- Title: Improving the estimation of the environment parameters via a two-qubit
scheme
- Authors: Ali Raza Mirza, Adam Zaman Chaudhry
- Abstract summary: We show that using two qubits can drastically improve the estimation of environment parameters as compared to using only a single qubit.
For super-Ohmic environments, one can improve the precision of the estimates by orders of magnitude.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We demonstrate how using two qubits can drastically improve the estimation of
environment parameters as compared to using only a single qubit. The two qubits
are coupled to a common harmonic oscillatorenvironment, and the properties of
the environment are imprinted upon the dynamics of the two qubits. The reduced
density matrix of only one of these qubits contains a decoherence factor as
well as an additional factor taking into account the indirect interaction
induced between the qubits due to the interaction with their common
environment. This additional factor can drastically improve the estimation of
the environment parameters, as quantified by the quantum Fisher information. In
particular, we investigate the estimation of the cutoff frequency, the coupling
strength, and the temperature using our two-qubit scheme as compared to simply
using a single qubit. For super-Ohmic environments in particular, one can
improve the precision of the estimates by orders of magnitude.
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