遍历理论
统计物理学
量子
计算机科学
语言环境(计算机软件)
物理
理论物理学
光学
数学
量子力学
数学分析
操作系统
作者
Omar A. Alkawak,Bilal A. Ozturk,Zinah S. Jabbar,Husam Jasim Mohammed
出处
期刊:Optik
[Elsevier]
日期:2023-02-01
卷期号:273: 170396-170396
被引量:30
标识
DOI:10.1016/j.ijleo.2022.170396
摘要
This article proposes the basic way of behaving of the quantum Sherrington-Kirkpatrick (SK) model at nothing and limited temperatures is examined. Through the investigation of the Binder cumulate, the entire stage chart of the model has been distinguished, and the connection length type has been gotten from the scaling examination of the mathematical information. The creator has noticed, at a restricted temperature, a change from old style to quantum-variance overwhelmed values for both the basic Binder cumulate and the relationship length example. The way of behaving of the request boundary appropriation of the model in the glass stage has been explored (at limited and zero temperatures). Notwithstanding a nonergodic zone overwhelmed by old style changes (where imitation balance is disregarded), the creators found a low-temperature ergodic locale overwhelmed by quantum vacillations in the optics stage. In this quantum-vacillation overwhelmed region, the request boundary dissemination has a minuscule top around its most probable worth, steadily moving toward a delta capability in the restriction of limitless framework size (demonstrating copy balance rebuilding or periodicity in the framework). In light of the investigation of the autocorrelation of the twists in both ergodic and nonergodic districts, the creators found a huge reduction in the unwinding time (as well as an adjustment of the unwinding conduct) in the quantum-vacillation overwhelmed (ergodic) locale of the optics stage contrasted with the traditional change ruled (nonergodic) locale. While strengthening courses get through this ergodic region, the tempering chance (to achieve an extremely low energy level of the conventional SK model) turns out to be essentially framework size free.
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