Many-body Localization Transition of Ising Spin-1 Chains
Taotao Hu, Yining Zhang, Hang Ren, Yiwen Gao, Xiaodan Li, Jiameng, Hong, Yuting Li

TL;DR
This paper investigates the many-body localization transition in disordered one-dimensional Ising spin-1 chains, comparing effects of disorder types, interactions, and periodic driving, revealing conditions under which MBL occurs.
Contribution
It provides a comprehensive analysis of MBL in spin-1 chains, including effects of different disorder forms, interactions, and periodic driving, extending understanding beyond spin-1/2 systems.
Findings
Both random disorder and quasi-disorder induce MBL in spin-1 chains.
Adding interactions increases the critical point for MBL transition.
Periodic driving can induce MBL in spin-1 and spin-1/2 chains.
Abstract
In this paper, we theoretically investigate the many-body localization properties of one-dimensional Ising spin-1 chains by using the methods of exact matrix diagonalization. We compare it with the MBL properties of the Ising spin-1/2 chains. The results indicate that the one-dimensional Ising spin-1 chains can also undergo MBL phase transition. There are various forms of disorder, and we compare the effects of different forms of quasi-disorder and random disorder on many-body localization in this paper. First, we calculate the exctied-state fidelity to study the MBL phase transtion. By changing the form of the quasi-disorder, we study the MBL transition of the system with different forms of quasi-disorder and compare them with those of the random disordered system. The results show that both random disorder and quasi-disorder can cause the MBL phase transition in the one-dimensional…
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Taxonomy
TopicsQuantum many-body systems · Complex Network Analysis Techniques · Opinion Dynamics and Social Influence
