Probing the spectral dimension of quantum network geometries
- URL: http://arxiv.org/abs/2005.09665v2
- Date: Fri, 31 Jul 2020 14:32:46 GMT
- Title: Probing the spectral dimension of quantum network geometries
- Authors: Johannes Nokkala, Jyrki Piilo, Ginestra Bianconi
- Abstract summary: We consider an environment for an open quantum system described by a "Quantum Network Geometry with Flavor"
We show that an a priori unknown spectral dimension can be indirectly estimated by coupling an auxiliary open quantum system to the network.
Numerical evidence suggests that the estimate is also robust both to small changes in the high frequency cutoff and noisy or missing normal mode frequencies.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We consider an environment for an open quantum system described by a "Quantum
Network Geometry with Flavor" (QNGF) in which the nodes are coupled quantum
oscillators. The geometrical nature of QNGF is reflected in the spectral
properties of the Laplacian matrix of the network which display a finite
spectral dimension, determining also the frequencies of the normal modes of
QNGFs. We show that an a priori unknown spectral dimension can be indirectly
estimated by coupling an auxiliary open quantum system to the network and
probing the normal mode frequencies in the low frequency regime. We find that
the network parameters do not affect the estimate; in this sense it is a
property of the network geometry, rather than the values of, e.g., oscillator
bare frequencies or the constant coupling strength. Numerical evidence suggests
that the estimate is also robust both to small changes in the high frequency
cutoff and noisy or missing normal mode frequencies. We propose to couple the
auxiliary system to a subset of network nodes with random coupling strengths to
reveal and resolve a sufficiently large subset of normal mode frequencies.
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