Improvements in Turbulent Jet Particle Dispersion Modeling and Its Validation with DNS
Abstract
:1. Introduction
- Mimicking the statistical velocity fluctuations of URANS simulations via the exponential smoothing of DNS fields using real-time time averaging;
- Modifying an existing particle dispersion model by limiting the particle displacement within an eddy with respect to its size;
- Validating the particle trajectories predicted with the new model by comparing them with those of a DNS.
2. Methodology
2.1. Simulation Setup and DNS Fields
2.2. Overview of the Validation Method
2.3. Time-Averaging of DNS Velocity Field
2.4. Particle Dynamics and Dispersion Models
New Eddy Interaction Time
2.5. Test Cases
2.6. Evaluation Methods for Particle Dispersion
2.6.1. Convex Hull
2.6.2. Mean Square Distance
2.6.3. Particle Concentration
3. Results and Discussion
3.1. Comparison of Mean Velocity Fields
3.2. Comparison of Particle Dispersion
- Exponential smoothing is a viable, memory-efficient alternative to the conventional running average when processing DNS fields.
- Applying particle dispersion models to time-averaged DNS flow fields allows independent validation, free from secondary errors introduced by turbulence modeling or measurement uncertainty.
- The exponential smoothing approach allows us to validate arbitrary particle sizes under arbitrary flow conditions, overcoming the limitations of typical experimental setups.
- The particle dispersion model currently implemented in OpenFOAM® (MPI) performs satisfactorily for larger particles (≥16m, ). However, it shows erratic behavior for smaller diameters. This may be due to a lack of validation at low Stokes numbers—especially those relevant for virus-laden aerosols.
- The proposed model with the limited eddy interaction time (LPI) successfully suppresses erratic particle trajectories and outperforms both the randomized particle–eddy interaction time (RPI) and the mean particle–eddy interaction time (MPI) models in any of the dispersion evaluation methods applied. Due to its straightforward implementation and proven effectiveness in the turbulent jet configuration, this model could be particularly useful for researchers investigating particle-laden flows in respiratory or similar jet-like applications.
3.3. Limitations and Assumptions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Property | Symbol | Value |
---|---|---|
Ambient temperature | 20 °C | |
Breath temperature | 34 °C | |
Ambient vapor concentration | 0.01151 (50% RH) | |
Breath vapor concentration | 0.04719 (90% RH) | |
Air density | 1.204 kg m−3 | |
Air kinematic viscosity | m2 s−1 | |
Thermal expansion coefficient | K−1 | |
Thermal diffusivity | m2 s−1 | |
Vapor molar fraction expansion coefficient | 0.385 | |
Vapor mass diffusivity | D | m2 s−1 |
Particle density | 1000 kg m−3 |
Label | Abbreviation | Eddy Interaction Time | Used in |
---|---|---|---|
Mean Particle–Eddy Interaction Time | MPI | OpenFOAM® [5] | |
Randomized Particle–Eddy Interaction Time | RPI | Gosman and Ioannides [20] | |
Limited Particle–Eddy Interaction Time | LPI | – |
Particle Cloud | Velocity Field | Cut-Off Frequency | Dispersion Model | Particle–Eddy Interaction Time |
---|---|---|---|---|
1 | DNS | − | − | − |
2 | 0.55 Hz | − | − | |
3 | 0.55 Hz | MPI | ||
4 | 0.55 Hz | RPI | ||
5 | 0.55 Hz | LPI |
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Batmaz, E.; Webner, F.; Schmeling, D.; Wagner, C. Improvements in Turbulent Jet Particle Dispersion Modeling and Its Validation with DNS. Atmosphere 2025, 16, 637. https://doi.org/10.3390/atmos16060637
Batmaz E, Webner F, Schmeling D, Wagner C. Improvements in Turbulent Jet Particle Dispersion Modeling and Its Validation with DNS. Atmosphere. 2025; 16(6):637. https://doi.org/10.3390/atmos16060637
Chicago/Turabian StyleBatmaz, Ege, Florian Webner, Daniel Schmeling, and Claus Wagner. 2025. "Improvements in Turbulent Jet Particle Dispersion Modeling and Its Validation with DNS" Atmosphere 16, no. 6: 637. https://doi.org/10.3390/atmos16060637
APA StyleBatmaz, E., Webner, F., Schmeling, D., & Wagner, C. (2025). Improvements in Turbulent Jet Particle Dispersion Modeling and Its Validation with DNS. Atmosphere, 16(6), 637. https://doi.org/10.3390/atmos16060637