Simulating Heisenberg Interactions in the Ising Model with Strong Drive
Fields
- URL: http://arxiv.org/abs/2207.09438v5
- Date: Mon, 23 Oct 2023 16:24:12 GMT
- Title: Simulating Heisenberg Interactions in the Ising Model with Strong Drive
Fields
- Authors: Anthony N. Ciavarella, Stephan Caspar, Hersh Singh, Martin J. Savage,
Pavel Lougovski
- Abstract summary: An Ising model with large driving fields over discrete time intervals is shown to be reproduced by an effective XXZ-Heisenberg model.
For specific orientations of the drive field, the dynamics of the XXX-Heisenberg model is reproduced.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The time-evolution of an Ising model with large driving fields over discrete
time intervals is shown to be reproduced by an effective XXZ-Heisenberg model
at leading order in the inverse field strength. For specific orientations of
the drive field, the dynamics of the XXX-Heisenberg model is reproduced. These
approximate equivalences, valid above a critical driving field strength set by
dynamical phase transitions in the Ising model, are expected to enable quantum
devices that natively evolve qubits according to the Ising model to simulate
more complex systems.
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