Ab-Initio Approach to Many-Body Quantum Spin Dynamics
- URL: http://arxiv.org/abs/2411.13190v2
- Date: Thu, 21 Nov 2024 12:37:46 GMT
- Title: Ab-Initio Approach to Many-Body Quantum Spin Dynamics
- Authors: Aditya Dubey, Zeki Zeybek, Fabian Köhler, Rick Mukherjee, Peter Schmelcher,
- Abstract summary: We employ the multilayer multiconfiguration time-dependent Hartree framework to simulate the many-body spin dynamics of the Heisenberg model.
We show that ML-MCTDH accurately captures the time evolution of one- and two-body observables in both one- and two-dimensional lattices.
Our results indicate that the multilayer structure of ML-MCTDH is a promising numerical framework for handling the dynamics of generic many-body spin systems.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: A fundamental longstanding problem in studying spin models is the efficient and accurate numerical simulation of the long-time behavior of larger systems. The exponential growth of the Hilbert space and the entanglement accumulation at long times pose major challenges for current methods. To address these issues, we employ the multilayer multiconfiguration time-dependent Hartree (ML-MCTDH) framework to simulate the many-body spin dynamics of the Heisenberg model in various settings, including the Ising and XYZ limits with different interaction ranges and random couplings. Benchmarks with analytical and exact numerical approaches show that ML-MCTDH accurately captures the time evolution of one- and two-body observables in both one- and two-dimensional lattices. A comparison of ML-MCTDH with the discrete truncated Wigner approximation (DTWA) demonstrates that our approach excels in handling anisotropic models and consistently provides better results for two-point observables in all simulation instances. Our results indicate that the multilayer structure of ML-MCTDH is a promising numerical framework for handling the dynamics of generic many-body spin systems.
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