Critical Dynamics of the Anderson Transition on Small-World Graphs
- URL: http://arxiv.org/abs/2502.16884v1
- Date: Mon, 24 Feb 2025 06:32:05 GMT
- Title: Critical Dynamics of the Anderson Transition on Small-World Graphs
- Authors: Weitao Chen, Ignacio García-Mata, John Martin, Jiangbin Gong, Bertrand Georgeot, Gabriel Lemarié,
- Abstract summary: We construct a unitary Anderson model on Small-World graphs to characterize long time and large size wave-packet dynamics.<n>We reveal the logarithmically slow non-ergodic dynamics in the critical regime, confirming recent random matrix predictions.<n>Our results could be used to clarify the dynamical properties of MBL and could guide future experiments with quantum simulators.
- Score: 25.98643403956035
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The Anderson transition on random graphs draws interest through its resemblance to the many-body localization (MBL) transition with similarly debated properties. In this Letter, we construct a unitary Anderson model on Small-World graphs to characterize long time and large size wave-packet dynamics across the Anderson transition. We reveal the logarithmically slow non-ergodic dynamics in the critical regime, confirming recent random matrix predictions. Our data clearly indicate two localization times: an average localization time that diverges, while the typical one saturates. In the delocalized regime, the dynamics are initially non-ergodic but cross over to ergodic diffusion at long times and large distances. Finite-time scaling then allows us to characterize the critical dynamical properties: the logarithm of the average localization time diverges algebraically, while the ergodic time diverges exponentially. Our results could be used to clarify the dynamical properties of MBL and could guide future experiments with quantum simulators.
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