Improving the precision of multiparameter estimation in the
teleportation of qutrit under amplitude damping noise
- URL: http://arxiv.org/abs/2301.08388v1
- Date: Fri, 20 Jan 2023 01:49:33 GMT
- Title: Improving the precision of multiparameter estimation in the
teleportation of qutrit under amplitude damping noise
- Authors: Yan-Ling Li, Yi-Bo Zeng, Lin Yao, Xing Xiao
- Abstract summary: Two schemes are proposed to battle against amplitude damping (AD) noise.
The results prove that the scheme of EAM outperforms the WM one in the improvements of both independent and simultaneous estimation precision.
The findings show that the techniques of WM and EAM are helpful for remote quantum sensing and can be generalized to other qutrit-based quantum information tasks under AD decoherence.
- Score: 6.077225913132659
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Since the initial discovery of quantum teleportation, it is devoted to
transferring unknown quantum states from one party to another distant partner.
However, in the scenarios of remote sensing, what people truly care about is
the information carried by certain parameters. The problem of multiparameter
estimation in the framework of qutrit teleportation under amplitude damping
(AD) noise is studied. Particularly, two schemes are proposed to battle against
AD noise and enhance the precision of multiparameter estimation by utilizing
weak measurement (WM) and environment-assisted measurement (EAM). For two-phase
parameters encoded in a qutrit state, the analytical formulas of the quantum
Fisher information matrix (QFIM) can be obtained. The results prove that the
scheme of EAM outperforms the WM one in the improvements of both independent
and simultaneous estimation precision. Remarkably, the EAM scheme can
completely ensure the estimation precision against the contamination by AD
noise. The reason should be attributed to the fact that EAM is carried out
after the AD noise. Thus, it extracts information from both the system and the
environment. The findings show that the techniques of WM and EAM are helpful
for remote quantum sensing and can be generalized to other qutrit-based quantum
information tasks under AD decoherence.
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