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Unitary Long-Time Evolution with Quantum Renormalization Groups and Artificial Neural Networks

Heiko Burau, Markus Heyl

2021Physical Review Letters23 citationsDOIOpen Access PDF

Abstract

In this work, we combine quantum renormalization group approaches with deep artificial neural networks for the description of the real-time evolution in strongly disordered quantum matter. We find that this allows us to accurately compute the long-time coherent dynamics of large many-body localized systems in nonperturbative regimes including the effects of many-body resonances. Concretely, we use this approach to describe the spatiotemporal buildup of many-body localized spin-glass order in random Ising chains. We observe a fundamental difference to a noninteracting Anderson insulating Ising chain, where the order only develops over a finite spatial range. We further apply the approach to strongly disordered two-dimensional Ising models, highlighting that our method can be used also for the description of the real-time dynamics of nonergodic quantum matter in a general context.

Topics & Concepts

Ising modelPhysicsQuantumStatistical physicsRenormalization groupRenormalizationContext (archaeology)Time evolutionUnitary stateQuantum mechanicsPaleontologyPolitical scienceBiologyLawQuantum many-body systemsModel Reduction and Neural NetworksOpinion Dynamics and Social Influence
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