Application of a Local Dynamic Model of Large Eddy Simulation to a Marine Propeller Wake
Abstract
:1. Introduction
- Perform a LES simulation with a local dynamic k-equation eddy-viscosity model (named LES-LDKSGS in this paper) and a RANS simulation with a standard model (named RANS-kEpsilon, just for comparison with LES-LDKSGS) for flow over a submarine propeller at design and off-design advance ratios;
- Evaluate the ability of LES-LDKSGS model to capture the complex evolution of propeller wake, and compare the results of LES-LDKSGS model with the results of PIV measurements, dynamic algebraic model (LES-DASGS, also called LES-DSM) and RANS-kEpsilon model;
- Study the flow field evolution mechanics of the propeller and the origin of loads on blades from the perspective of engineering applications;
- Discuss vortex identification of the wake in detail from an academic point of view.
2. Numerical Experiments
2.1. Governing Equations of Flow
2.2. LES Models
2.3. Geometry and Performance Characteristics of Propeller
2.4. Computational Domain and Meshing
2.5. Initial and Boundary Conditions
- Position of horizontal dashed lines: = 0.7, 0.8, 0.9, 1, 1.1, 1.2, 1.3, 1.5, 2, 3, 4, 5, 6.;
- Position of vertical double-dashed lines: , 0.06, 0.08, 0.1, 0.115, 0.5, 1, 2, 3, 4, 5, 6, 7, 7.8.
2.6. Numerical Method
3. Verification and Comparison
3.1. Verification of Adequate Domain Size
3.2. Mean Force Comparison
3.3. Compare with PIV Data
3.4. Compare with Different Advance Ratios
4. Results and Discussion
4.1. Time History of Force
4.2. PSD of Force
- Step1: cut off a tail or add some to the original data to make the sequence length , then the time series is given as discrete samples ;
- Step2: use the appropriate “data window” to correct , i.e., ;
- Step3: fast algorithm to calculate the discrete Fourier transform of the sequence of real numbers , that is ;
- Step4: get power spectrum estimate where and .
4.3. Circulation
4.4. Instantaneous
4.5. Mean Axial Velocity Profiles
4.6. Mean Square Velocity Fluctuations
4.7. Vortex Structures
5. Summary and Conclusions
- For mean thrust and torque coefficients LES-LDKSGS (used in our article) results show good agreements with the WT (Jessup et al. 2006) results, but less than RANS-kEpsilon results (using the same mesh as in LES-LDKSGS simulation, note there is actually no need of too refinement grid for RANS-kEpsilon simulation) under the same computing cost, which implies that if your concern is only for mean force of the propeller the LES method may be not your best choice considering cost;
- The results of LES-LDKSGS (used in our article) with a lower computational cost is comparable to the results of LES-DASGS [3], which shows the superiority of the LES-LDKSGS model than the LES-DASGS model to some extent;
- The evolution mechanism of propeller wake is well captured by the LES-LDKSGS model, including the interaction mechanism between the tip vortex and the trailing edge vortex that dominate the evolution of propeller wake from near to far fields, although this mechanism actually depends on the geometry and operating conditions of the propeller;
- The vortex CSs of the propeller wake, including the size of the vortex core, are visualized using different criterions to give more insight.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
Abbreviations
DNS | direct numerical simulation |
LES | large eddy simulation |
RANS | Reynolds averaged Navier-Stokes |
PIV | particle image velocimetry |
WT | water tunnel |
OW | open water towing tank |
SGS | subgrid-scale |
PDE | partial differential equation |
GAAM | geometric aggregated algebraic multi-grid |
TA | time averaging |
SA | spatial averaging |
EA | ensemble averaging |
IC | the initial condition |
BC | the boundary condition |
LES-LDKSGS | a local dynamic one-equation subgrid-scale LES model |
LES-DKSGS | a dynamic one-equation subgrid-scale LES model |
LES-DASGS | the dynamic algebraic LES model |
LES-DSM | the dynamic Smagorinsky LES model |
WALE | wall adaptive local eddy viscosity model |
DDES | delayed discrete eddy simulation |
RANS-kEpsilon | a standard k-varepsilon model of Reynolds averaged Navier-Stokes equations |
SIMPLE | Semi-Implicit Method for Pressure-Linked Equations |
PISO | Pressure Implicit with Splitting of Operators |
CS | coherent structure |
DTMB | David Taylor Model Basin |
Ma | Mach number |
3D | three-dimensional |
Co | Courant number |
Re | Reynolds number |
TKE | turbulent kinetic energy |
ITTC | International Towing Tank Conference |
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Name | Grid Filter Level | Test Filter Level | |||
---|---|---|---|---|---|
filtered | resolved | filtered | resolved | ||
kinetic energy | |||||
dissipation rate | |||||
length scale | |||||
strain rate | unavailable | unavailable | unavailable | ||
stress tensor |
Region | Cell Scales: (with about Total 8.5 Million Cells) |
---|---|
Region 0 (double-dashed line) | 0.125D |
Region 1 (dashed line) | 0.015625D |
Region 2 (dotted line) | 0.0078125D |
Case | Turbulent Model | Advance Coefficient J | Number of Grids |
---|---|---|---|
Case 1 | LES-LDKSGS | 0.889 | ∼8.5 million |
Case 2 | LES-LDKSGS | 3 | ∼8.5 million |
Case 3 | RANS-kEpsilon | 0.889 | ∼8.5 million |
Case 4 | RANS-kEpsilon | 0.889 | ∼3.07 million |
Case 5 | RANS-kEpsilon | 0.889 | ∼1.15 million |
Case 6 | RANS-kEpsilon | 0.889 | ∼38,000 |
Case 7–24 | RANS-kEpsilon | 0.1, 0.2, 0.3, 0.4, 0.5, 0.6, 0.7, 0.8, 0.9, 1, 2, 3, 4, −0.1, −1, −2, −3, −4 (1) | ∼38,000 grid cells |
Case 25–32 | RANS-kEpsilon | −1, −2, −3, −4, 1, 2, 3, 4 (1) | ∼38,000 |
Case 33–42 | RANS-kEpsilon | 0.1, 0.2, 0.3, 0.4, 0.5, 0.6, 0.7, 0.8, 0.9, 1 (2) | ∼38,000 |
Experiment | Relative Error ()% * | Relative Error ()% * | ||||
---|---|---|---|---|---|---|
LES-LDKSGS (case1) | −0.201 | (0.0, 11.6, 4.7) | 0.041 | (2.6, 7.8, 2.3) | ||
RANS-kEpsilon (case3) | −0.194 | (3.5, 7.8, 8.1) | 0.042 | (0.2, 10.5, 0.0) | ||
LES-DASGS [3] | −0.21 | (4.5, 16.7, 0.5) | 0.041 | (2.6, 7.8, 2.3) | ||
OW (Jessup et al., 2004) | −0.201 | - | 0.0421 | - | ||
WT (Jessup et al., 2006) | −0.18 | - | 0.038 | - | ||
OW (Hecker and Remmers, 1971) | −0.211 | - | 0.042 | - |
No. | Criterion for Vortex Identification |
---|---|
1 | Local pressure minimum |
2 | Pathline and streamline |
3 | Vorticity magnitude |
4 | Existence of complex eigenvalues of |
5 | Second invariant Q of and kinematic vorticity number |
6 | Eigenvalues () of () |
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Young, L.; Zheng, X. Application of a Local Dynamic Model of Large Eddy Simulation to a Marine Propeller Wake. Appl. Sci. 2023, 13, 8324. https://doi.org/10.3390/app13148324
Young L, Zheng X. Application of a Local Dynamic Model of Large Eddy Simulation to a Marine Propeller Wake. Applied Sciences. 2023; 13(14):8324. https://doi.org/10.3390/app13148324
Chicago/Turabian StyleYoung, Lien, and Xing Zheng. 2023. "Application of a Local Dynamic Model of Large Eddy Simulation to a Marine Propeller Wake" Applied Sciences 13, no. 14: 8324. https://doi.org/10.3390/app13148324
APA StyleYoung, L., & Zheng, X. (2023). Application of a Local Dynamic Model of Large Eddy Simulation to a Marine Propeller Wake. Applied Sciences, 13(14), 8324. https://doi.org/10.3390/app13148324