A Family of Bipartite Separability Criteria Based on Bloch
Representation of Density Matrices
- URL: http://arxiv.org/abs/2305.00460v2
- Date: Tue, 9 May 2023 23:14:37 GMT
- Title: A Family of Bipartite Separability Criteria Based on Bloch
Representation of Density Matrices
- Authors: Xue-Na Zhu and Jing Wang and Gui Bao and Ming Li and Shu-Qian Shen and
Shao-Ming Fei
- Abstract summary: We study the separability of bipartite quantum systems in arbitrary dimensions based on the Bloch representation of density matrices.
We present two separability criteria for quantum states in terms of the matrices $T_alphabeta(rho)$ and $W_ab,alphabeta(rho)$ constructed from the correlation tensors in the Bloch representation.
- Score: 7.6857251828091595
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We study the separability of bipartite quantum systems in arbitrary
dimensions based on the Bloch representation of density matrices. We present
two separability criteria for quantum states in terms of the matrices
$T_{\alpha\beta}(\rho)$ and $W_{ab,\alpha\beta}(\rho)$ constructed from the
correlation tensors in the Bloch representation. These separability criteria
can be simplified and detect more entanglement than the previous separability
criteria. Detailed examples are given to illustrate the advantages of results.
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