Forecasting long-time dynamics in quantum many-body systems by dynamic mode decomposition

Reliable numerical computation of quantum dynamics is a fundamental challenge when the long-ranged quantum entanglement plays essential roles as in the cases governed by quantum criticality in strongly correlated systems. Here we apply a method that utilizes reliable short-time data of physical quan...

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Main Authors: Ryui Kaneko, Masatoshi Imada, Yoshiyuki Kabashima, Tomi Ohtsuki
Format: Article
Language:English
Published: American Physical Society 2025-01-01
Series:Physical Review Research
Online Access:http://doi.org/10.1103/PhysRevResearch.7.013085
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author Ryui Kaneko
Masatoshi Imada
Yoshiyuki Kabashima
Tomi Ohtsuki
author_facet Ryui Kaneko
Masatoshi Imada
Yoshiyuki Kabashima
Tomi Ohtsuki
author_sort Ryui Kaneko
collection DOAJ
description Reliable numerical computation of quantum dynamics is a fundamental challenge when the long-ranged quantum entanglement plays essential roles as in the cases governed by quantum criticality in strongly correlated systems. Here we apply a method that utilizes reliable short-time data of physical quantities to accurately forecast long-time behavior of the strongly entangled systems. We straightforwardly employ the simple dynamic mode decomposition (DMD), which is commonly used in fluid dynamics. Despite the simplicity of the method, the effectiveness and applicability of the DMD in quantum many-body systems such as the Ising model in the transverse field at the critical point are demonstrated, even when the time evolution at long time exhibits complicated features such as a volume-law entanglement entropy and consequential power-law decays of correlations characteristic of systems with long-ranged quantum entanglements unlike fluid dynamics. The present method, though simple, enables accurate forecasts amazingly at time as long as nearly an order of magnitude longer than that of the short-time training data. Effects of noise on the accuracy of the forecast are also investigated, because they are important especially when dealing with the experimental data. We find that a few percentages of noise do not affect the prediction accuracy destructively.
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spelling doaj-art-615fc363f6f0461b813e5e6b2d3361702025-01-23T15:02:48ZengAmerican Physical SocietyPhysical Review Research2643-15642025-01-017101308510.1103/PhysRevResearch.7.013085Forecasting long-time dynamics in quantum many-body systems by dynamic mode decompositionRyui KanekoMasatoshi ImadaYoshiyuki KabashimaTomi OhtsukiReliable numerical computation of quantum dynamics is a fundamental challenge when the long-ranged quantum entanglement plays essential roles as in the cases governed by quantum criticality in strongly correlated systems. Here we apply a method that utilizes reliable short-time data of physical quantities to accurately forecast long-time behavior of the strongly entangled systems. We straightforwardly employ the simple dynamic mode decomposition (DMD), which is commonly used in fluid dynamics. Despite the simplicity of the method, the effectiveness and applicability of the DMD in quantum many-body systems such as the Ising model in the transverse field at the critical point are demonstrated, even when the time evolution at long time exhibits complicated features such as a volume-law entanglement entropy and consequential power-law decays of correlations characteristic of systems with long-ranged quantum entanglements unlike fluid dynamics. The present method, though simple, enables accurate forecasts amazingly at time as long as nearly an order of magnitude longer than that of the short-time training data. Effects of noise on the accuracy of the forecast are also investigated, because they are important especially when dealing with the experimental data. We find that a few percentages of noise do not affect the prediction accuracy destructively.http://doi.org/10.1103/PhysRevResearch.7.013085
spellingShingle Ryui Kaneko
Masatoshi Imada
Yoshiyuki Kabashima
Tomi Ohtsuki
Forecasting long-time dynamics in quantum many-body systems by dynamic mode decomposition
Physical Review Research
title Forecasting long-time dynamics in quantum many-body systems by dynamic mode decomposition
title_full Forecasting long-time dynamics in quantum many-body systems by dynamic mode decomposition
title_fullStr Forecasting long-time dynamics in quantum many-body systems by dynamic mode decomposition
title_full_unstemmed Forecasting long-time dynamics in quantum many-body systems by dynamic mode decomposition
title_short Forecasting long-time dynamics in quantum many-body systems by dynamic mode decomposition
title_sort forecasting long time dynamics in quantum many body systems by dynamic mode decomposition
url http://doi.org/10.1103/PhysRevResearch.7.013085
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AT masatoshiimada forecastinglongtimedynamicsinquantummanybodysystemsbydynamicmodedecomposition
AT yoshiyukikabashima forecastinglongtimedynamicsinquantummanybodysystemsbydynamicmodedecomposition
AT tomiohtsuki forecastinglongtimedynamicsinquantummanybodysystemsbydynamicmodedecomposition