Classification and Quantification of Entanglement Through Wedge Product
and Geometry
- URL: http://arxiv.org/abs/2209.00438v1
- Date: Thu, 1 Sep 2022 13:20:44 GMT
- Title: Classification and Quantification of Entanglement Through Wedge Product
and Geometry
- Authors: Soumik Mahanti, Sagnik Dutta, and Prasanta K. Panigrahi
- Abstract summary: We have presented a modified faithful entanglement measure, incorporating the higher dimensional volume and the area elements of the parallelepiped formed by the post-measurement vectors.
The measure fine grains the entanglement monotone, wherein different entangled classes manifest with different geometries.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Wedge product of post-measurement vectors leading to an `area' measure of the
parallelogram has been shown to give the generalized I-concurrence measure of
entanglement. Extending the wedge product formalism to multi qudit systems, we
have presented a modified faithful entanglement measure, incorporating the
higher dimensional volume and the area elements of the parallelepiped formed by
the post-measurement vectors. The measure fine grains the entanglement
monotone, wherein different entangled classes manifest with different
geometries. We have presented a complete analysis for the bipartite qutrit case
considering all possible geometric structures. Three entanglement classes can
be identified with different geometries of post-measurement vectors, namely
three planar vectors, three mutually orthogonal vectors, and three vectors that
are neither planar and not all of them are mutually orthogonal. It is further
demonstrated that the geometric condition of area and volume maximization
naturally leads to the maximization of entanglement. The wedge product approach
uncovers an inherent geometry of entanglement and is found to be very useful
for characterization and quantification of entanglement in higher dimensional
systems.
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