Competing Localizations on Disordered Non-Hermitian Random Graph Lattice
- URL: http://arxiv.org/abs/2511.10156v1
- Date: Fri, 14 Nov 2025 01:35:51 GMT
- Title: Competing Localizations on Disordered Non-Hermitian Random Graph Lattice
- Authors: S Rahul, A Harshitha,
- Abstract summary: We investigate localization and delocalization transitions and the behavior of the non-Hermitian skin effect (NHSE) using a tight binding model on a generalized random graph lattice.<n>Our results show the competition between skin effect driven and Anderson driven localizations in the parameter regimes.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Phase transitions in one-dimensional lattice systems are well established and have been extensively studied within both Hermitian and non-Hermitian frameworks. In this work, we extend this understanding to a more general setting by investigating localization and delocalization transitions and the behavior of the non-Hermitian skin effect (NHSE) using a tight binding model on a generalized random graph lattice. Our model incorporates three key parameters, asymmetric hopping $Δ$, on site disorder $W$, and a random long-range coupling $p$ that render the underlying nature of random graph. By varying $p,$ $Δ$ and the disorder, we explore the interplay between topology, randomness, and non-Hermiticity in determining localization properties. Our results show the competition between skin effect driven and Anderson driven localizations in the parameter regimes. Despite the presence of large disorder, the skin effect driven localization coexists with Anderson driven localization.
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