The Dynamics of the Hubbard Model through Stochastic Calculus and Girsanov Transformation
Detlef Lehmann

TL;DR
This paper develops a stochastic calculus approach using Girsanov transformation to analyze the quantum dynamics of the Bose-Hubbard model, simplifying it to classical equations in the large N limit and providing new computational methods.
Contribution
It introduces a novel stochastic differential equation framework with Girsanov transformation for quantum many-body systems, connecting quantum dynamics to classical ODEs and PDEs.
Findings
Quantum dynamics reduce to ODEs in large N limit
The two-site model maps to a mathematical pendulum
Collapse and revivals are captured through approximations
Abstract
As a typical quantum many body problem, we consider the time evolution of density matrix elements in the Bose-Hubbard model. For an arbitrary initial state, these quantities can be obtained from an SDE or stochastic differential equation system. To this SDE system, a Girsanov transformation can be applied. This has the effect that all the information from the initial state moves into the drift part, into the mean field part, of the transformed system. In the large N limit with g=UN fixed, the diffusive part of the transformed system vanishes and as a result, the exact quantum dynamics is given by an ODE system which turns out to be the time dependent discrete Gross Pitaevskii equation. For the two site Bose-Hubbard model, the GP equation reduces to the mathematical pendulum and the particle imbalance is equal to the velocity of that pendulum which is either oscillatory or it can have…
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Taxonomy
TopicsCold Atom Physics and Bose-Einstein Condensates · Strong Light-Matter Interactions · Quantum Information and Cryptography
