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Du, S., Münsch, M., Jansson, N. & Schlatter, P. (2026). Assessment of the gradient jump penalisation in large-eddy simulations of turbulence. Acta Mechanica
Open this publication in new window or tab >>Assessment of the gradient jump penalisation in large-eddy simulations of turbulence
2026 (English)In: Acta Mechanica, ISSN 0001-5970, E-ISSN 1619-6937Article in journal (Refereed) Epub ahead of print
Abstract [en]

This research investigates the efficacy of the gradient jump penalisation (GJP) in large-eddy simulations (LES) when coupled with active subgrid-scale models. GJP is a stabilisation method tailored for the continuous Galerkin spectral element method, aiming at mitigating non-physical oscillations induced by discontinuous velocity gradients across element interfaces. We demonstrate that GJP effectively smoothens fields from LES without a salient impact on flow dynamics for the Taylor–Green vortex (TGV) at Re = 1600 , periodic hill flows at bulk Reynolds numbers Re b = 10 , 595 and 37,000, as well as turbulent channel flow at Re τ ≈ 550 . In the TGV case, the application of GJP results in decreased fluctuations at only high wavenumbers compared to simulations without GJP. The periodic hill flow simulations indicate the applicability of GJP in wall-resolved LES involving curved geometries, though it tends to dissipate some of the finer details in the solution. Finally, in the analysis of the canonical turbulent channel flow cases, GJP leads to a higher resolved turbulent kinetic energy than simulations without GJP and direct numerical simulations. GJP’s mechanism is identified as providing enhanced dissipation at high wavenumbers but accompanied with insufficient dissipation at low wavenumbers, leading to a pronounced spectral cut-off. Non-physical oscillations on element interfaces are reflected as spikes in the power spectral density. By evaluating the sharpness of the strongest spike, GJP is shown to smoothen the spectra, however, without completely removing the gradient jumps at low computational resolution.

Place, publisher, year, edition, pages
Springer Nature, 2026
National Category
Fluid Mechanics Computational Mathematics
Identifiers
urn:nbn:se:kth:diva-375361 (URN)10.1007/s00707-025-04607-z (DOI)001654939600001 ()2-s2.0-105026775830 (Scopus ID)
Funder
Swedish e‐Science Research Center, M3EU, Horizon Europe, 101093393
Note

QC 20260114

Available from: 2026-01-13 Created: 2026-01-13 Last updated: 2026-01-14Bibliographically approved
Stanly, R., Du, S., Xavier, D., Perez Martinez, A., Mukha, T., Markidis, S., . . . Schlatter, P. (2024). Generating synthetic turbulence with vector autoregression of proper orthogonal decomposition time coefficients. Journal of Fluid Mechanics, 1000, Article ID A83.
Open this publication in new window or tab >>Generating synthetic turbulence with vector autoregression of proper orthogonal decomposition time coefficients
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2024 (English)In: Journal of Fluid Mechanics, ISSN 0022-1120, E-ISSN 1469-7645, Vol. 1000, article id A83Article in journal (Refereed) Published
Abstract [en]

This study introduces vector autoregression (VAR) as a linear procedure that can be used for synthesizing turbulence time series over an entire plane, allowing them to be imposed as an efficient turbulent inflow condition in simulations requiring stationary and cross-correlated turbulence time series. VAR is a statistical tool for modelling and prediction of multivariate time series through capturing linear correlations between multiple time series. A Fourier-based proper orthogonal decomposition (POD) is performed on the two-dimensional (2-D) velocity slices from a precursor simulation of a turbulent boundary layer at a momentum thickness-based Reynolds number, Re-theta=790. A subset of the most energetic structures in space are then extracted, followed by applying a VAR model to their complex time coefficients. It is observed that VAR models constructed using time coefficients of 5 and 30 most energetic POD modes per wavenumber (corresponding to 66% and 97% of turbulent kinetic energy, respectively) are able to make accurate predictions of the evolution of the velocity field at Re-theta=790 for infinite time. Moreover, the 2-D velocity fields from the POD-VAR when used as a turbulent inflow condition, gave a short development distance when compared with other common inflow methods. Since the VAR model can produce an infinite number of velocity planes in time, this enables reaching statistical stationarity without having to run an extremely long precursor simulation or applying ad hoc methods such as periodic time series.

Place, publisher, year, edition, pages
Cambridge University Press (CUP), 2024
Keywords
turbulent boundary layers
National Category
Probability Theory and Statistics Fluid Mechanics
Identifiers
urn:nbn:se:kth:diva-357749 (URN)10.1017/jfm.2024.1034 (DOI)001368616600001 ()2-s2.0-85205947695 (Scopus ID)
Note

Not duplicate with DiVA 1833117

QC 20241216

Available from: 2024-12-16 Created: 2024-12-16 Last updated: 2025-10-10Bibliographically approved
Stanly, R., Du, S., Xavier, D., Perez Martinez, A., Mukha, T., Markidis, S., . . . Schlatter, P.Generating synthetic turbulence with vector autoregression of proper orthogonal decomposition time coefficients.
Open this publication in new window or tab >>Generating synthetic turbulence with vector autoregression of proper orthogonal decomposition time coefficients
Show others...
(English)Manuscript (preprint) (Other academic)
Abstract [en]

This study introduces vector autoregression (VAR) as a linear procedure that can be used for synthetizing turbulence time series over an entire plane, allowing them to be imposed as efficient turbulent inflow conditions in simulations requiring stationary and cross-correlated turbulence time series. A VAR model is applied to the complex time coefficients derived from a Fourier-based proper orthogonal decomposition (POD) of the velocity fields of the precursor simulation of a turbulent boundary layer at a momentum thickness based Reynolds number, Re_theta=790. VAR is a statistical tool for modelling and prediction of multivariate time series through capturing linear correlations between multiple time series. By performing POD, firstly a subset of the most energetic structures in space are extracted, and then a VAR model is fitted to their time coefficients. It is observed that VAR models constructed using time coefficients of 5 and 30 most energetic POD modes per wave number (corresponding to >40% and >90% of turbulent kinetic energy across all wave numbers, respectively), are able to make accurate predictions of the evolution of the velocity field at Re_theta=790 for infinite time. Moreover, the two-dimensional velocity fields from the low-order POD-VAR are used as a turbulent inflow condition and compared against other common inflow methods. Since the VAR model can produce an infinite number of velocity planes in time, this enables reaching statistical stationarity without having to run an extremely long precursor simulation or applying ad-hoc methods such as periodic time series. 

Keywords
vector autoregression, turbulent boundary layer, proper orthogonal decomposition, crosscorrelation, ordinary least squares, power spectrum, simulations
National Category
Fluid Mechanics
Research subject
Engineering Mechanics
Identifiers
urn:nbn:se:kth:diva-342784 (URN)
Note

QC 20240201

Available from: 2024-01-31 Created: 2024-01-31 Last updated: 2025-02-09Bibliographically approved
Jansson, N., Karp, M., Olsen, T. F., Mukha, T., Du, S., Baconnet, V., . . . Schlatter, P.Neko --- A Portable and Scalable Framework for Spectral Element Flow Simulations: Version 1.0.
Open this publication in new window or tab >>Neko --- A Portable and Scalable Framework for Spectral Element Flow Simulations: Version 1.0
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(English)Manuscript (preprint) (Other academic)
Abstract [en]

Neko is a spectral-element solver for computational fluid dynamics, capable of running on all popular compute backends and distinguished by its excellent parallel performance on both CPUs and GPUs. Here, we present version 1.0 of this software, which represents another milestone in its maturity. Crucial advancements in functionality, such as turbulence modeling, computing statistics, and field interpolation, have been implemented. This is complemented by vastly expanded possibilities for adding custom user code and a C-based API that can also be used for driving Neko simulations using Python or Julia.  We supplement the description of new features with a brief discussion of Neko's overall design, and some key performance figures demonstrating its parallel efficiency.  As of this release, Neko is a full-fledged solver for incompressible fluid flow, ready to be used for advanced research on turbulent flows.

National Category
Computer Sciences
Identifiers
urn:nbn:se:kth:diva-373042 (URN)
Note

QC 20251128

Available from: 2025-11-17 Created: 2025-11-17 Last updated: 2025-11-28Bibliographically approved
Organisations
Identifiers
ORCID iD: ORCID iD iconorcid.org/0000-0002-9256-2304

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