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Trapped Ion Quantum Computing
Engineering near-unitary one-axis twisting evolution via a driven Tavis-Cummings model
arXiv
Authors: Jinfeng Liu, Yan Mu, Lili Song, Gang Liu, Mingfeng Wang
Year
2026
Paper ID
28397
Status
Preprint
Abstract Read
~2 min
Abstract Words
144
Citations
N/A
Abstract
One-axis twisting (OAT) interaction is a pivotal resource for manipulating quantum states of atomic ensembles, enabling spin squeezing, atomic-cat-state generation, and weak-phase amplification. Current implementations of OAT dynamics predominantly rely on the Tavis-Cummings model of light-atoms coupling; however, this approach inevitably introduces an additional Stark term that entangles the light with the atoms, which compromises the unitarity of OAT evolution and thereby degrades the OAT-based control precision. Here we propose a scheme based on a driven Tavis-Cummings model to achieve near-unitary OAT evolution. We demonstrate that both constant and time-varying driving of an atoms-cavity hybrid system can realize near-unitary OAT evolution, albeit with distinct coupling strength. Furthermore, when atomic dissipation is taken into account, we find that the time-varying-driving scheme exhibits superior resistance to decoherence. Our approach is broadly applicable to a variety of atomic platforms, including cold atoms, trapped ions, and nitrogen-vacancy centers.
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- This paper contributes to the Trapped-Ion Quantum Computing research area in the Quantum Articles archive.
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- One-axis twisting (OAT) interaction is a pivotal resource for manipulating quantum states of atomic ensembles, enabling spin squeezing, atomic-cat-state generation, and...
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