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Detecting and identifying two-dimensional symmetry-protected topological, symmetry-breaking, and intrinsic topological phases with modular matrices via tensor-network methods

机译:通过张量网络方法检测和识别具有模块矩阵的二维对称保护拓扑,对称破坏和固有拓扑阶段

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摘要

Symmetry-protected topological (SPT) phases exhibit nontrivial order if symmetry is respected but are adiabatically connected to the trivial product phase if symmetry is not respected. However, unlike the symmetry-breaking phase, there is no local order parameter for SPT phases. Here we employ a tensor-network method to compute the topological invariants characterized by the simulated modular 5 and T matrices to study transitions in a few families of two-dimensional (2D) wave functions which are Z_N (N = 2 and 3) symmetric. We find that in addition to the topologically ordered phases, the modular matrices can be used to identify nontrivial SPT phases and detect transitions between different SPT phases as well as between symmetric and symmetry-breaking phases. Therefore modular matrices can be used to characterize various types of gapped phases in a unifying way.
机译:如果考虑对称性,则对称保护的拓扑(SPT)相将显示出平凡的顺序,但如果不考虑对称性,则绝热地连接至琐碎的产物相。但是,与对称破坏阶段不同,SPT阶段没有本地顺序参数。在这里,我们采用张量网络方法来计算以模拟的5模和T矩阵为特征的拓扑不变量,以研究Z_N(N = 2和3)对称的几个二维(2D)波函数族中的跃迁。我们发现,除了拓扑有序的相以外,模块化矩阵还可用于识别非平凡的SPT相,并检测不同SPT相之间以及对称和对称破坏相之间的过渡。因此,模块化矩阵可用于以统一的方式表征各种类型的间隙相。

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  • 来源
    《Physical review》 |2016年第15期|155163.1-155163.22|共22页
  • 作者

    Ching-Yu Huang; Tzu-Chieh Wei;

  • 作者单位

    C. N. Yang Institute for Theoretical Physics and Department of Physics and Astronomy, State University of New York at Stony Brook, New York 11794-3840, United States;

    C. N. Yang Institute for Theoretical Physics and Department of Physics and Astronomy, State University of New York at Stony Brook, New York 11794-3840, United States;

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  • 正文语种 eng
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  • 入库时间 2022-08-18 03:19:55

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