Spectral analysis for compressible quantum fluids
Ashton S. Bradley, R. Kishor Kumar, Sukla Pal, Xiaoquan Yu

TL;DR
This paper develops a spectral analysis method for turbulent quantum fluids, capturing quantum phase information and applicable to various energy components, with practical applications to Bose-Einstein condensates.
Contribution
It introduces a comprehensive spectral analysis framework for compressible quantum fluids, extending classical techniques to include quantum phase and singular vortex behaviour.
Findings
Spectral features identified in vortex-dominated regimes.
Velocity correlation length increases with vortex energy.
Method applicable to superfluid turbulence in condensates.
Abstract
Turbulent fluid dynamics typically involves excitations on many different length scales. Classical incompressible fluids can be cleanly represented in Fourier space enabling spectral analysis of energy cascades and other turbulence phenomena. In quantum fluids, additional phase information and singular behaviour near vortex cores thwarts the direct extension of standard spectral techniques. We develop a formal and numerical spectral analysis for symmetry-breaking quantum fluids suitable for analyzing turbulent flows, with specific application to the Gross-Pitaevskii fluid. Our analysis builds naturally on the canonical approach to spectral analysis of velocity fields in compressible quantum fluids, and establishes a clear correspondence between energy spectral densities, power spectral densities, and autocorrelation functions, applicable to energy residing in velocity, quantum…
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Taxonomy
TopicsCold Atom Physics and Bose-Einstein Condensates · Strong Light-Matter Interactions · Quantum, superfluid, helium dynamics
