| name | turbulence-models-db |
| description | Select and configure turbulence models (k-epsilon, k-omega SST, LES) for CFD |
| category | databases |
| domain | fluids |
| complexity | advanced |
| dependencies | [] |
Turbulence Models Database
A comprehensive reference for selecting and configuring turbulence models in computational fluid dynamics (CFD) simulations.
Overview of Turbulence Modeling
Turbulence is a chaotic, three-dimensional, time-dependent flow phenomenon characterized by random fluctuations in velocity, pressure, and other flow quantities. Direct numerical simulation (DNS) of turbulent flows is computationally prohibitive for most engineering applications, necessitating turbulence modeling approaches.
Modeling Approaches Hierarchy
- DNS (Direct Numerical Simulation): Resolves all turbulent scales, no modeling
- LES (Large Eddy Simulation): Resolves large scales, models small scales
- RANS (Reynolds-Averaged Navier-Stokes): Models all turbulent scales
- Laminar: No turbulence modeling
RANS Turbulence Models
RANS models solve time-averaged equations and model turbulent fluctuations using the Reynolds stress concept. They are the most widely used in industrial CFD due to computational efficiency.
k-ε Models (k-epsilon)
The k-ε family models turbulent kinetic energy (k) and its dissipation rate (ε).
Standard k-ε
Characteristics:
- Two-equation model
- Robust and widely validated
- Good for free shear flows and fully turbulent flows
- Poor for flows with strong adverse pressure gradients
- Not suitable for low-Reynolds number flows without modifications
Best Applications:
- Fully turbulent flows
- Free shear layers, mixing layers, jets
- Flow in ducts and channels (far from walls)
- Industrial flows with high Reynolds numbers
Limitations:
- Overpredicts separation
- Poor near-wall performance without wall functions
- Inaccurate for swirling flows
- Stagnation point anomaly
Wall Treatment:
- Requires y+ > 30 (typically 30-300) with wall functions
- Not suitable for wall-resolved simulations
RNG k-ε
Characteristics:
- Derived using Renormalization Group theory
- Improved performance for swirling flows and streamline curvature
- Better handles low-Reynolds number effects
- Modified ε equation improves accuracy for rapidly strained flows
Best Applications:
- Flows with strong streamline curvature
- Swirling and rotating flows
- Transitional flows (with enhanced wall treatment)
- Separated flows (better than standard k-ε)
Improvements over Standard k-ε:
- Additional term in ε equation for rapid strain
- Modified turbulent viscosity formula
- Better prediction of near-wall flows
Wall Treatment:
- Can use wall functions (y+ > 30)
- Enhanced wall treatment allows y+ ≈ 1
Realizable k-ε
Characteristics:
- Ensures mathematical realizability constraints
- Variable Cμ coefficient
- Improved prediction of spreading rate for planar and round jets
- Better performance for rotating flows and boundary layers under strong adverse pressure gradients
Best Applications:
- Flows with rotation and recirculation
- Boundary layers with strong pressure gradients
- Separated flows
- Jets and mixing layers
Advantages:
- More accurate for complex flows than standard k-ε
- Superior prediction of jet spreading rates
- Better captures effects of streamline curvature
Wall Treatment:
- Standard wall functions (y+ > 30)
- Enhanced wall treatment available (y+ ≈ 1)
k-ω Models (k-omega)
The k-ω family models turbulent kinetic energy (k) and specific dissipation rate (ω).
Standard k-ω (Wilcox)
Characteristics:
- Two-equation model
- Superior near-wall treatment without wall functions
- Accurate for adverse pressure gradients
- Sensitive to freestream values of ω
- Good for transitional flows
Best Applications:
- Low-Reynolds number flows
- Transitional flows
- Flows with adverse pressure gradients
- Aerodynamic flows (airfoils, wings)
- Wall-bounded flows
Limitations:
- Highly sensitive to freestream ω values
- Less accurate in free shear flows compared to k-ε
- Can be numerically stiff
Wall Treatment:
- Integrates to the wall (y+ ≈ 1 required)
- No wall functions needed for near-wall region
k-ω SST (Shear Stress Transport)
Characteristics:
- Blends k-ω near walls with k-ε in freestream
- Insensitive to freestream values
- Accounts for transport of turbulent shear stress
- Modified turbulent viscosity formulation
- Industry standard for aerodynamics
Best Applications:
- Aerodynamic flows (external aerodynamics)
- Flows with adverse pressure gradients and separation
- Transonic flows
- Heat transfer problems
- Turbomachinery
Advantages:
- Combines strengths of k-ω (near-wall) and k-ε (far-field)
- Accurate separation prediction
- Not sensitive to freestream turbulence values
- Robust and reliable
Limitations:
- Requires fine near-wall mesh (y+ ≈ 1)
- More computationally expensive than standard models
- Can underpredict separation in some cases
Wall Treatment:
- Designed for low-Reynolds number (y+ ≈ 1)
- Automatic wall functions available for coarse meshes
- Best results with wall-resolved mesh
Spalart-Allmaras
Characteristics:
- One-equation model (solves for modified turbulent viscosity)
- Designed for aerodynamic flows
- Low computational cost
- Good for wall-bounded flows
- Limited for free shear flows and decaying turbulence
Best Applications:
- Aerospace applications
- External aerodynamics (airfoils, wings, fuselages)
- Mild separation and attached flows
- Transonic flows
Advantages:
- Computationally efficient (one equation)
- Robust and stable
- Good near-wall behavior
- Well-suited for structured meshes
Limitations:
- Not suitable for complex flows with multiple physics
- Limited accuracy for free shear flows
- Not ideal for internal flows
- Poor for flows with large separation regions
Wall Treatment:
- Designed for low-Reynolds number (y+ ≈ 1)
- Can use wall functions for coarser meshes
Reynolds Stress Models (RSM)
Characteristics:
- Seven-equation model (6 Reynolds stresses + ε or ω)
- Solves transport equations for each Reynolds stress component
- Accounts for anisotropy of turbulence
- Most complex RANS approach
Best Applications:
- Highly swirling flows
- Flows with strong streamline curvature
- Complex 3D flows
- Rotating flows and cyclone separators
- Flows where turbulence anisotropy is critical
Advantages:
- Most accurate RANS model for complex flows
- Captures turbulence anisotropy
- No isotropic eddy viscosity assumption
Limitations:
- Most computationally expensive RANS model
- Convergence can be challenging
- Requires very good mesh quality
- More sensitive to numerical settings
Large Eddy Simulation (LES)
Overview
LES resolves large turbulent eddies directly while modeling small-scale (subgrid-scale) turbulence. Provides time-accurate flow structures.
Characteristics:
- Spatially filtered Navier-Stokes equations
- Resolves energy-containing eddies
- Models universal small-scale turbulence
- Requires 3D time-dependent simulation
Mesh Requirements:
- Very fine mesh (Δx, Δy, Δz ≈ local turbulent length scale)
- Isotropic or near-isotropic cells in turbulent regions
- y+ < 1 for wall-resolved LES
- Wall-modeled LES: y+ can be 30-100
Computational Cost:
- 10-100x more expensive than RANS
- Scales as Re^(9/4) for channel flows
- Requires long simulation times for statistical convergence
Subgrid-Scale Models
Smagorinsky-Lilly
- Classic algebraic model
- Cs ≈ 0.1-0.2 (model constant)
- Overly dissipative near walls
Dynamic Smagorinsky
- Computes Cs dynamically
- More accurate than standard Smagorinsky
- Self-adapting to flow conditions
WALE (Wall-Adapting Local Eddy-viscosity)
- Better near-wall behavior
- Returns correct y³ scaling near walls
- No dynamic procedure needed
Kinetic Energy Subgrid-Scale
- One-equation model for subgrid kinetic energy
- More accurate but more expensive
Applications of LES
Best suited for:
- Acoustics (noise prediction)
- Combustion and reacting flows
- Complex unsteady flows
- Flows with large-scale instabilities
- Vortex shedding and wake flows
- Mixing problems
Not recommended for:
- Steady-state problems
- High-Reynolds number wall-bounded flows (prohibitive cost)
- Industrial simulations with limited resources
Hybrid RANS-LES Methods
DES (Detached Eddy Simulation)
- RANS near walls, LES in separated regions
- Good for massively separated flows
- More affordable than pure LES
DDES (Delayed DES)
- Improved shielding of boundary layer
- Prevents premature switch to LES mode
SDES (Shielded DES)
- Further improvements to RANS-LES interface
- Better suited for attached flows
SAS (Scale-Adaptive Simulation)
- RANS-based but resolves large unsteady structures
- Automatic adjustment to resolved scales
Model Selection Criteria
Flow Type Classification
Internal Flows
Examples: Pipes, ducts, channels, valves, pumps
Recommended models:
- k-ε Realizable (general purpose)
- k-ω SST (with heat transfer or separation)
- Standard k-ε (simple fully turbulent)
External Flows
Examples: Airfoils, vehicles, buildings, external aerodynamics
Recommended models:
- k-ω SST (industry standard)
- Spalart-Allmaras (aerospace)
- Realizable k-ε (blunt bodies)
Free Shear Flows
Examples: Jets, wakes, mixing layers
Recommended models:
- Realizable k-ε
- Standard k-ε
- RNG k-ε
Separated Flows
Examples: Flow over backward-facing step, airfoil stall
Recommended models:
- k-ω SST (best for mild-moderate separation)
- DES/DDES (massive separation)
- LES (if resources available)
Rotating/Swirling Flows
Examples: Turbomachinery, cyclones, swirl burners
Recommended models:
Reynolds Number Considerations
Low Re (Re < 10⁴):
- Low-Re k-ω or k-ω SST
- Spalart-Allmaras
- May need transitional models
Moderate Re (10⁴ < Re < 10⁶):
- Most RANS models applicable
- k-ω SST for aerodynamics
- Realizable k-ε for internal flows
High Re (Re > 10⁶):
- Standard k-ε (with wall functions)
- k-ω SST
- Realizable k-ε
Very High Re (Re > 10⁷):
- Wall function approaches necessary
- Standard k-ε
- Realizable k-ε
Mesh Requirements and y+ Values
Wall Functions Approach
y+ range: 30 < y+ < 300 (ideally 30-100)
Models:
- Standard k-ε
- Realizable k-ε
- RNG k-ε (with standard wall functions)
Advantages:
- Coarser mesh acceptable
- Lower computational cost
- Suitable for high-Re flows
Limitations:
- Less accurate near-wall gradients
- Not suitable for low-Re or transitional flows
- Poor for flows with separation or reattachment
Wall-Resolved Approach
y+ range: y+ ≈ 1 (first cell)
Models:
- k-ω SST
- Standard k-ω
- Spalart-Allmaras
- Low-Re k-ε variants
Requirements:
- Very fine near-wall mesh
- At least 10-15 cells in boundary layer
- y+ < 1 for first cell
- Growth ratio ≤ 1.2 near wall
Advantages:
- Accurate near-wall resolution
- Captures boundary layer accurately
- Better for heat transfer
- Handles low-Re and transitional flows
Limitations:
- High cell count
- Increased computational cost
- Mesh generation more complex
Enhanced Wall Treatment
y+ range: y+ < 5 or 30 < y+ < 300 (adaptive)
Models:
- Realizable k-ε with EWT
- RNG k-ε with EWT
Advantages:
- Flexibility in mesh resolution
- Blends wall functions and low-Re formulation
- Handles variable y+ in domain
y+ Guidelines by Application
| Application | Target y+ | Model Recommendation |
|---|
| External aerodynamics | y+ ≈ 1 | k-ω SST |
| Heat transfer | y+ < 1 | k-ω SST, Low-Re |
| Turbomachinery | y+ ≈ 1-2 | k-ω SST |
| Internal flows (simple) | y+ = 30-100 | Realizable k-ε |
| Separation prediction | y+ ≈ 1 | k-ω SST |
| High-speed flows | y+ ≈ 1 | k-ω SST, SA |
| LES wall-resolved | y+ < 1 | LES with WALE/Dynamic |
| LES wall-modeled | y+ = 30-100 | WMLES |
Computational Cost Comparison
Relative cost (normalized to standard k-ε = 1):
| Model | Relative Cost | Memory | Convergence |
|---|
| Spalart-Allmaras | 0.8 | Low | Good |
| Standard k-ε | 1.0 | Low | Excellent |
| RNG k-ε | 1.1 | Low | Good |
| Realizable k-ε | 1.1 | Low | Good |
| Standard k-ω | 1.2 | Low | Fair |
| k-ω SST | 1.3 | Low | Good |
| RSM | 2.0-2.5 | Medium | Fair-Poor |
| DES/DDES | 5-20 | High | Fair |
| LES | 50-500 | Very High | N/A (time-accurate) |
Model Constants and Parameters
Standard k-ε Constants
- Cμ = 0.09
- C1ε = 1.44
- C2ε = 1.92
- σk = 1.0
- σε = 1.3
RNG k-ε Constants
- Cμ = 0.0845
- C1ε = 1.42
- C2ε = 1.68
- σk = 0.7179
- σε = 0.7179
- η0 = 4.38
- β = 0.012
Realizable k-ε Constants
- C1ε = 1.44
- C2 = 1.9
- σk = 1.0
- σε = 1.2
- Cμ = variable (function of strain rate and rotation)
Standard k-ω Constants
- α = 5/9
- β = 0.075
- β* = 0.09
- σk = 2.0
- σω = 2.0
k-ω SST Constants
k-ω inner:
- α1 = 5/9
- β1 = 0.075
- σk1 = 2.0
- σω1 = 2.0
k-ε outer (transformed):
- α2 = 0.44
- β2 = 0.0828
- σk2 = 1.0
- σω2 = 1.168
Other:
- β* = 0.09
- a1 = 0.31 (SST limiter constant)
Spalart-Allmaras Constants
- cb1 = 0.1355
- cb2 = 0.622
- σ = 2/3
- κ = 0.41 (von Karman constant)
- cw1 = cb1/κ² + (1 + cb2)/σ
- cw2 = 0.3
- cw3 = 2.0
- cv1 = 7.1
Wall Functions vs Wall-Resolved
Standard Wall Functions
Theory:
- Based on law of the wall
- Assumes equilibrium boundary layer
- Logarithmic law: u+ = (1/κ)ln(y+) + B
Requirements:
- 30 < y+ < 300
- Equilibrium turbulent boundary layer
- No significant pressure gradients
When to use:
- High-Re fully turbulent flows
- Simple geometries
- Limited computational resources
- Steady-state simulations
Limitations:
- Inaccurate for adverse pressure gradients
- Poor for separation and reattachment
- Not suitable for heat transfer predictions
- Fails in transitional flows
Scalable Wall Functions
Improvements:
- Avoid deterioration for fine meshes
- y+ insensitive formulation
- Better for y+ < 30
Non-Equilibrium Wall Functions
Improvements:
- Account for pressure gradient effects
- Improved separation prediction
- Better suited for complex flows
When to use:
- Flows with pressure gradients
- Separation and reattachment
- Complex geometries
Enhanced Wall Treatment (EWT)
Characteristics:
- Two-layer approach
- Blends wall functions (high y+) with low-Re formulation (low y+)
- Adaptive based on local y+
When to use:
- Variable mesh resolution
- Uncertainty in y+ values
- Complex geometries with varying resolution
Wall-Resolved (Low-Re)
Requirements:
- y+ ≈ 1 (ideally y+ < 1)
- 10-15+ cells in boundary layer
- Growth ratio ≤ 1.2 near wall
- Integration to wall (no wall functions)
When to use:
- Accurate heat transfer required
- Separation prediction critical
- Low-Re or transitional flows
- Aerodynamic design optimization
Models requiring wall-resolved:
- k-ω SST (optimal)
- Standard k-ω
- Spalart-Allmaras (optimal)
- LES
Turbulence Model Selection Decision Tree
START: What is your flow problem?
│
├─ Need time-accurate unsteady structures?
│ │
│ ├─ YES: Go to LES/Hybrid
│ │ │
│ │ ├─ Can afford very fine mesh and long run time?
│ │ │ ├─ YES: LES (wall-resolved or wall-modeled)
│ │ │ └─ NO: DES/DDES (massively separated flows) or SAS
│ │ │
│ │ └─ Is flow primarily attached?
│ │ ├─ YES: URANS (k-ω SST or Realizable k-ε)
│ │ └─ NO: DES/DDES
│ │
│ └─ NO: Continue to RANS selection
│
├─ Flow type?
│ │
│ ├─ External aerodynamics (airfoils, vehicles, aircraft)
│ │ └─ k-ω SST (first choice) or Spalart-Allmaras
│ │ Required: y+ ≈ 1, wall-resolved mesh
│ │
│ ├─ Internal flows (pipes, ducts, channels)
│ │ │
│ │ ├─ Heat transfer important?
│ │ │ ├─ YES: k-ω SST (y+ ≈ 1)
│ │ │ └─ NO: Continue
│ │ │
│ │ ├─ Separation or adverse pressure gradients?
│ │ │ ├─ YES: k-ω SST (y+ ≈ 1) or Realizable k-ε (EWT)
│ │ │ └─ NO: Realizable k-ε (wall functions, y+ = 30-100)
│ │ │
│ │ └─ Simple fully turbulent?
│ │ └─ Standard k-ε (wall functions, y+ = 30-100)
│ │
│ ├─ Free shear flows (jets, wakes, mixing)
│ │ └─ Realizable k-ε or RNG k-ε
│ │
│ ├─ Rotating/swirling flows (turbomachinery, cyclones)
│ │ │
│ │ ├─ Simple rotation?
│ │ │ └─ RNG k-ε or k-ω SST
│ │ │
│ │ └─ Complex 3D rotation with strong curvature?
│ │ └─ RSM (if resources available) or RNG k-ε
│ │
│ └─ Separated flows (backward step, airfoil stall)
│ │
│ ├─ Mild-moderate separation?
│ │ └─ k-ω SST (y+ ≈ 1)
│ │
│ └─ Massive separation?
│ └─ DES/DDES or LES (if affordable)
│
├─ Can you achieve y+ ≈ 1 near walls?
│ │
│ ├─ YES: k-ω SST, Spalart-Allmaras, or Low-Re k-ε
│ │
│ └─ NO: Must use wall functions
│ └─ Realizable k-ε or RNG k-ε (with EWT if possible)
│
└─ Special considerations:
│
├─ Transitional flows (low Re)? → k-ω SST + transition model
├─ Compressible/high-speed? → k-ω SST or Spalart-Allmaras
├─ Buoyancy-driven? → Realizable k-ε or k-ω SST with buoyancy terms
├─ Multiphase flows? → Realizable k-ε or k-ω SST
└─ Limited resources? → Standard k-ε or Spalart-Allmaras
Quick Selection Guide by Application
Aerospace
Model: k-ω SST or Spalart-Allmaras
y+: ≈ 1
Rationale: Accurate prediction of boundary layers, separation, and pressure distribution
Automotive (External)
Model: k-ω SST
y+: ≈ 1
Rationale: Separation prediction, drag/lift accuracy
HVAC / Building Ventilation
Model: Realizable k-ε with wall functions
y+: 30-100
Rationale: Large domains, computational efficiency, adequate accuracy
Turbomachinery
Model: k-ω SST
y+: 1-2
Rationale: Adverse pressure gradients, rotation, heat transfer
Combustion
Model: Realizable k-ε or LES
y+: Depends (wall functions for RANS, y+ < 1 for LES)
Rationale: Mixing, turbulence-chemistry interaction
Heat Exchangers
Model: k-ω SST or Realizable k-ε with EWT
y+: < 5 or wall-resolved
Rationale: Heat transfer accuracy critical
Mixing / Chemical Reactors
Model: Realizable k-ε or RSM
y+: 30-100
Rationale: Capturing mixing patterns, turbulence anisotropy
Hydraulics (Dams, Spillways)
Model: Realizable k-ε or k-ω SST
y+: Variable
Rationale: Free surface flows, separation, aeration
Environmental (Atmospheric flows)
Model: Standard k-ε or Realizable k-ε
y+: Wall functions
Rationale: Large scale, computational cost, atmospheric boundary layer
Best Practices
General Guidelines
- Start simple: Begin with simpler models (k-ε, k-ω SST) before trying complex models
- Validate mesh: Ensure y+ values are appropriate for chosen model
- Check mesh quality: Turbulence models are sensitive to mesh quality
- Monitor residuals: Turbulence equations often converge slower than momentum
- Use appropriate boundary conditions: Turbulent intensity and length scale matter
- Verify sensitivity: Test mesh independence and model sensitivity
Boundary Conditions
Inlet:
- Turbulent intensity: I = 0.16 Re^(-1/8) for fully developed pipe flow
- Low turbulence: I = 0.1% - 1%
- Medium turbulence: I = 1% - 5%
- High turbulence: I = 5% - 20%
- Turbulent length scale: l ≈ 0.07 × characteristic length
Wall:
- No-slip condition
- Wall functions or wall-resolved (model dependent)
- Roughness can be specified (equivalent sand-grain roughness)
Outlet:
- Zero gradient (outflow)
- Fixed pressure
Convergence Tips
- Initialize properly: Use potential flow or previous solution
- Under-relax initially: Start with URF = 0.3-0.5 for turbulence equations
- Gradually increase: Increase URF as solution stabilizes
- Coupled solvers: Often help with k-ω models
- Monitor flow features: Check separation, reattachment, vortex shedding
- Residuals alone insufficient: Verify force/flux convergence
Common Pitfalls
- Incorrect y+: Most common error; check and adjust mesh
- Poor mesh quality: High skewness, aspect ratio issues
- Inadequate refinement: In regions of high gradients
- Wrong model for application: Using k-ε for separated flows
- Freestream sensitivity: k-ω without SST correction
- Ignoring validation: Always compare with experiments or benchmarks
Summary Table: RANS Model Comparison
| Model | Equations | y+ Requirement | Best For | Avoid For | Computational Cost |
|---|
| Standard k-ε | 2 | 30-300 | Simple internal flows, fully turbulent | Separation, low-Re, adverse pressure gradients | Low |
| RNG k-ε | 2 | 30-300 (or EWT) | Swirl, rotation, moderate separation | Simple flows (overkill) | Low-Medium |
| Realizable k-ε | 2 | 30-300 (or EWT) | Complex flows, jets, separation, general purpose | Critical aerodynamics | Low-Medium |
| Standard k-ω | 2 | ≈ 1 | Low-Re, transitional, near-wall | Freestream flows (sensitive to ω∞) | Medium |
| k-ω SST | 2 | ≈ 1 | Aerodynamics, separation, adverse pressure gradients | Simple internal flows (expensive) | Medium |
| Spalart-Allmaras | 1 | ≈ 1 | Aerospace, external aerodynamics, mild separation | Internal flows, free shear, complex physics | Low |
| RSM | 7 | ≈ 1 or 30-300 | Anisotropic turbulence, strong swirl, complex 3D | Simple flows, limited resources | High |
References
See reference.md for detailed equations, validation cases, and academic references.