Computational Fluid Dynamics Simulation of Thermal Processes in Food Technology and Their Applications in the Food Industry
Abstract
:1. Introduction
2. Theoretical Foundations of CFD
2.1. Principles, Mathematical Models, and Numerical Methods in CFD
- Reynolds-averaged Navier–Stokes (RANS): This approach averages the Navier–Stokes equations to model the flow in steady-state or near-steady conditions. The RANS equations include additional terms to account for the effects of turbulence, often represented by eddy-viscosity models. The k − ε and k − ω models are widely adopted, where k represents the turbulent kinetic energy and ε (or ω) represents the dissipation rate of turbulent energy. These models offer a balance between accuracy and computational efficiency [23].
- Large eddy simulation (LES): LES resolves large-scale turbulent structures (large eddies) while modelling the smaller, more chaotic eddies through subgrid-scale models. This approach is computationally more expensive but provides more detailed information, and is especially useful in cases requiring high accuracy for transient or unsteady flows [24].
- Direct numerical simulation (DNS): DNS solves the Navier–Stokes equations without any turbulence modelling, directly resolving all scales of motion. This method is the most accurate but extremely demanding in terms of computational resources, limiting its application primarily to fundamental research rather than industrial processes [24].
- Volume of fluid (VOF): This method tracks the interface between immiscible phases, such as oil and water, by solving a transport equation for a phase fraction. VOF is commonly used to simulate processes like emulsion formation, phase separation, or boiling [25].
- Eulerian–Eulerian Model: This method is used for modeling continuous phases where both phases are treated as interpenetrating fluids. This model is often applied in situations where the interaction between multiple fluids (for example, liquid and gas) is important [26].
- Eulerian–Lagrangian Model: This approach models one phase (typically discrete particles or droplets) using Lagrangian tracking, while the continuous phase is modeled using the Eulerian method. It is useful for simulating phenomena like slurry flows, solid–liquid suspensions, or droplet dynamics in spray drying [27].
2.2. Typical Stages of CFD Simulation: Pre-Processing, Solving, Post-Processing
3. Simulation of Thermal Processes in the Food Industry Using CFD
3.1. Conduction, Convection, and Thermal Radiation in CFD Context
3.2. Examples of Thermal Processes Modeled Using CFD
3.2.1. Baking, Frying, and Grilling Processes
Baking Process
Frying Process
Grilling Process
3.2.2. Cooling and Freezing of Food Products
3.2.3. Pasteurization and Sterilization Processes
Pasteurization Process
Sterilization Process
3.2.4. Food Drying Processes
3.2.5. Extraction and Evaporation Processes
Extraction Process
Evaporation Processes
4. Modeling of Physicochemical Parameters and Their Impact on Thermal Processes
4.1. Influence of Food Structure and Physical Properties on Heat Transfer
4.2. Models and Algorithms Incorporating Real-Time Property Changes
4.3. Accounting for Chemical Reactions During Thermal Processes
5. Industrial Applications of CFD Simulations in Food Technology
5.1. Optimization of Production Processes Using CFD
5.2. Application of CFD in Equipment Design and Development for the Food Industry (For Example, Ovens, Dryers, Freezers)
5.3. Quality Control and Monitoring in Thermal Processes Through CFD Simulations
5.4. Case Studies and Examples of CFD Implementation in Food Companies
6. Benefits, Challenges, and Limitations of CFD in the Food Industry
6.1. Economic and Technological Benefits
6.2. Challenges Related to Accuracy and Computational Time
6.3. Limitations Associated with Physical Modeling of Complex Food Structures
6.4. Cost and Hardware Requirements
6.5. Promoting Interdisciplinary Cooperation for Advancing CFD Applications in the Food Industry
7. Future Directions for CFD Research and Development in Food Technology
7.1. Development of Hybrid Modeling Methods
7.2. Potential of Large-Scale Simulations
7.3. Prospects for Advancements in CFD Software and Hardware
8. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
Abbreviation | Full Name |
AI | Artificial intelligence |
CFD | Computational fluid dynamics |
CHT | Conjugate heat transfer |
DOM | Discrete ordinates method |
D-value | Decimal reduction time |
DNS | Direct numerical simulation |
FDM | Finite difference method |
FEM | Finite element method |
FVM | Finite volume method |
HPC | High-performance computing |
LES | Large eddy simulation |
ML | Machine learning |
P1 | First-order approximation for radiative transfer |
RANS | Reynolds-averaged Navier–Stokes |
RTE | Radiative transfer equation |
VOF | Volume of fluid |
Nomenclature | |
∇ × (κ∇T) | Heat conduction term |
∇ × v | Velocity divergence |
∇2v | Viscosity term in momentum equation |
∇C | Concentration gradient |
Cp | Specific heat capacity at constant pressure |
Ea | Activation energy (J/mol) |
f | Body forces |
f→ | External forces |
g | Gravitational acceleration (m/s2) |
J | Diffusion flux |
k | Reaction rate |
κ | Thermal conductivity (W/m·K) |
p | Pressure (Pa) |
q | Heat flux (W/m2) |
Q | Internal heat generation (W/m3) |
R | Universal gas constant (J/mol·K) |
t | Time (s) |
T | Temperature (K or °C) |
T0 | Initial temperature before heating (K or °C) |
T∞ | Ambient temperature (K or °C) |
ΔT | Temperature difference (°C or K) |
∇T | Temperature gradient |
u | Velocity vector (m/s) |
v | Viscosity vector |
v(T − T∞) | Convective heat transfer term |
v × ∇T | Advection term in the energy equation |
ϵ | Emissivity (dimensionless) |
μ | Dynamic viscosity (Pa·s) |
μ0 | Pre-exponential factor |
ρ | Density (kg/m3) |
σ | Stefan-Boltzmann constant (W/m2·K4) |
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Model/Algorithm | Description | Applications in CFD for the Food Industry | Advantages | Limitations | References |
---|---|---|---|---|---|
Heat Conduction Model (Fourier) | Describes heat transfer in solid materials based on Fourier’s law, assuming material homogeneity and no internal heat sources. | Frying, baking, freezing, cooking, smoking. Modeling heat exchange in solid materials. | Simple to implement, well understood, widely used in many standard simulations. | Limited in modeling materials with irregular structures, such as foods with porous structures. | [35,36,37] |
Convection Model (Navier–Stokes) | Describes heat transfer in fluids due to turbulent or laminar flow, accounting for external and internal forces, as well as interactions with solid surfaces. | Processes such as frying, baking, cooking in liquids, pasteurization. | Accounts for fluid dynamics and turbulence, enabling modeling of complex airflow patterns. | High computational demands, difficulties in reproducing non-uniform flows. | [38,39,40] |
Thermal Radiation Model (RTE) | Solves the RTE, modeling emission, absorption, and scattering of radiation within a medium, essential for high-temperature processes. | Baking, grilling, drying. Processes where heat exchange through radiation plays a significant role. | Accurately models heat exchange in high-temperature processes. | High computational costs, difficulties in modeling geometry and radiation properties. | [37,41,42,43] |
Chemical Reaction Modeling | Accounts for chemical reactions during thermal processes, such as Maillard reaction, protein denaturation, and changes in flavour and texture due to temperature. | Frying, baking, cooking. Modeling temperature impact on chemical reactions. | Enables simulation of flavour, texture, and colour changes in food products. | Challenges in accurately reproducing reactions under real conditions. | [9,44,45] |
Heat Conduction in Porous Materials Model | Extends the heat conduction model to porous materials, accounting for fluid flow through pores and material density effects. | Processes involving porous products, such as baking bread or drying vegetables. | Enables accurate modeling of processes in porous materials. | Difficulties in obtaining accurate parameters for porous materials. | [46,47,48,49] |
Heat and Mass Transfer Modeling | Solves heat and mass transport equations, accounting for gas flow and interactions with material surfaces. | Drying, evaporation, smoking, cooking in liquids. | Simultaneously models heat and mass transfer. | High demands for input data and computational resources. | [41,50,51] |
Phase Change Models | Simulate phase transitions (e.g., ice melting, water boiling) by incorporating latent heat and phase boundaries into heat transfer equations. | Freezing, boiling, thawing. Modeling processes with phase transitions. | Accurately represents phase changes and their effects on heat transfer. | Requires detailed thermophysical property data and complex numerical schemes. | [52,53] |
Multicomponent Reaction Models | Account for interactions between multiple chemical species undergoing simultaneous reactions during thermal processing. | Frying, baking. Modeling flavour, texture, and nutritional changes in food. | Captures complex reaction kinetics, improving accuracy of quality predictions. | High computational complexity and input data requirements. | [54,55,56] |
Numerical Methods: FEM | Solves PDEs by dividing space into elements for numerical solutions, effective for complex geometries. | Practically all thermal processes requiring precise spatial modeling. | Highly flexible, widely used, allows modeling of complex geometries. | High computational requirements, need for a detailed mesh. | [57,58] |
Numerical Methods: FVM | A numerical method dividing space into small volume cells, used for solving heat and mass transport equations in the volume, considering diverse boundary and internal conditions. | Baking, frying, drying. Used in processes where heat and mass transfer in various phases is crucial. | Excellent for simulating flow and transport in diverse materials, high accuracy in solutions. | Challenges in obtaining stable solutions in complex geometries, issues with computational time. | [59,60] |
Numerical Methods: FDM | Approximates differential equations using finite difference approximations over a grid of points. | Processes with simple geometries or 1D/2D models, such as heat diffusion. | Simple and computationally efficient for structured grids. | Less flexible for complex geometries, may require finer grids for accuracy. | [61,62] |
Thermal Process | Description | CFD Modeling Focus | Key Computational Parameters | Applications in Food Industry | Key Benefits of CFD in Modeling | Challenges and Limitations | Key Findings from Literature | References |
---|---|---|---|---|---|---|---|---|
Baking | Process of cooking food by dry heat, typically in an oven. It involves complex heat and moisture transfer. | Heat conduction in solid food, convection in ovens, moisture evaporation, temperature gradients in the dough. | Temperature distribution, moisture content, surface and interior heat flux, air circulation in ovens. | Bread, cakes, pastries, pizza. Optimization of temperature and humidity for better texture, flavour, and uniformity. | Optimization of baking parameters (time, temperature), prediction of texture, and flavour changes. | High computational cost due to complex geometry and phase changes in porous materials. | Uniform heat transfer in porous food, optimized energy usage, reduced baking time. | [10,41,99,100,101,102,103,104,105] |
Frying | Cooking food by immersing it in hot oil, involving convective and conductive heat transfer. | Convection in oil, heat conduction in food, oil temperature distribution, interactions between food surface and hot oil. | Oil temperature distribution, heat flux in food, oil absorption, food surface temperature. | Frying of potatoes, meat, fish, doughnuts. Optimization of oil temperature to reduce oil absorption. | Accurate prediction of oil temperature, surface heat flux, minimization of oil absorption. | Modeling the variable thermal conductivity of food, impact of oil temperature on food texture. | Oil temperature distribution, modeling heat flow in non-uniform food shapes. | [106,107,108,109,110,111] |
Grilling | Cooking food with direct heat, usually from below, involving both radiation and convection. | Radiation heat transfer, convection from grill surface, temperature gradients and interactions between heat and food surface. | Radiative heat flux, air flow dynamics, temperature distribution, heat loss due to convection. | Grilling of meats, vegetables, fish, burgers, sausages. Optimization of heat intensity and cooking time. | Real-time control of cooking parameters, prediction of grill marks and surface texture. | Radiative heat transfer in non-uniform grill designs, heat penetration in thick food cuts. | Radiative heat flux modeling, understanding of temperature gradients in large food cuts. | [17,112] |
Cooling and Freezing | Processes involving the reduction in temperature in food, often aiming to preserve it by slowing down microbial growth. | Modeling of heat transfer during cooling/freezing, phase change modeling, air and fluid flow in freezing chambers. | Freezing point, phase transition modeling (ice crystallization), heat flux distribution, air circulation. | Freezing of fruits, vegetables, ready meals, meat. Preservation of nutrients and texture in frozen foods. | Optimization of freezing rates, reduction in ice crystal formation in delicate foods. | Modeling phase change and non-uniform freezing rates, computational cost of modeling ice formation. | Control of freezing time, maintaining food quality (texture, appearance), prevention of large ice crystals. | [51,81,82,113,114,115] |
Pasteurization | Heat treatment process to destroy harmful microorganisms without significantly affecting food quality. | Convection and conduction during heating, temperature profiles, microbial inactivation rates. | Temperature profiles over time, heat retention, microbial kinetics, energy consumption. | Pasteurization of juices, milk, sauces, soups. Optimization of temperature–time curves to preserve flavour. | Optimization of heating time and temperature to improve food safety and quality. | Modeling microbial inactivation, ensuring uniform temperature distribution. | Optimization of pasteurization time, reduction in thermal degradation of nutrients. | [15,22,85,116,117,118] |
Sterilization | Similar to pasteurization, but at higher temperatures, often used for canned or jarred food. | Modeling of heat transfer at higher temperatures, pressure dynamics in sterilization chambers. | Pressure and temperature profiles, heat penetration rates, sterilization time, energy consumption. | Sterilization of canned vegetables, meats, soups, sauces. Minimization of energy consumption while maintaining safety. | Enhanced process control, minimisation of overcooking, consistent product quality. | High pressure conditions, uniform heating in different food product types. | Modeling of sterilization cycles, uniformity of thermal treatments in complex geometries. | [14,119,120,121] |
Drying | Removal of moisture from food, often via heat, to extend shelf life and prevent microbial growth. | Heat and mass transfer, moisture migration, airflow, and drying kinetics. Detailed modeling of fluid–particle interactions. | Moisture content, heat flux, airflow pattern, product shrinkage, drying rate. | Drying of fruits, vegetables, grains, herbs, meat. Minimization of energy use while preserving quality. | Maximization of drying efficiency, minimization of product shrinkage and nutrient loss. | Complex moisture migration dynamics and air distribution in large drying chambers. | Modeling of drying uniformity, minimization of nutrient loss, energy optimization. | [89,91,122,123,124] |
Evaporation and Extraction | Removal of volatile components from food through heat and mass transfer, often used in flavour extraction. | Modeling of vapour phase and heat transfer dynamics, solvent evaporation in food matrices, temperature gradients. | Vapour flow dynamics, heat transfer, solvent concentration, efficiency of extraction. | Extraction of essential oils, flavour compounds, drying of high-value food products. Improved flavour concentration. | Optimization of extraction time, energy usage, reduction in solvent waste. | Modeling solvent dynamics, controlling the loss of volatile compounds during evaporation. | Modeling of extraction efficiency, control of volatile compound preservation. | [50,93,97,122,125] |
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Szpicer, A.; Bińkowska, W.; Stelmasiak, A.; Zalewska, M.; Wojtasik-Kalinowska, I.; Piwowarski, K.; Piepiórka-Stepuk, J.; Półtorak, A. Computational Fluid Dynamics Simulation of Thermal Processes in Food Technology and Their Applications in the Food Industry. Appl. Sci. 2025, 15, 424. https://doi.org/10.3390/app15010424
Szpicer A, Bińkowska W, Stelmasiak A, Zalewska M, Wojtasik-Kalinowska I, Piwowarski K, Piepiórka-Stepuk J, Półtorak A. Computational Fluid Dynamics Simulation of Thermal Processes in Food Technology and Their Applications in the Food Industry. Applied Sciences. 2025; 15(1):424. https://doi.org/10.3390/app15010424
Chicago/Turabian StyleSzpicer, Arkadiusz, Weronika Bińkowska, Adrian Stelmasiak, Magdalena Zalewska, Iwona Wojtasik-Kalinowska, Karol Piwowarski, Joanna Piepiórka-Stepuk, and Andrzej Półtorak. 2025. "Computational Fluid Dynamics Simulation of Thermal Processes in Food Technology and Their Applications in the Food Industry" Applied Sciences 15, no. 1: 424. https://doi.org/10.3390/app15010424
APA StyleSzpicer, A., Bińkowska, W., Stelmasiak, A., Zalewska, M., Wojtasik-Kalinowska, I., Piwowarski, K., Piepiórka-Stepuk, J., & Półtorak, A. (2025). Computational Fluid Dynamics Simulation of Thermal Processes in Food Technology and Their Applications in the Food Industry. Applied Sciences, 15(1), 424. https://doi.org/10.3390/app15010424