A Comprehensive Review of Fused Filament Fabrication: Numerical Modeling Approaches and Emerging Trends
Abstract
:1. Introduction
2. Meta-Analysis and Bibliometric Assessment
3. Fused Filament Fabrication
3.1. Overview of the FFF Process
3.2. Stages of Material Transformation in FFF
3.3. Rheological Behavior of Thermoplastics in FFF
4. Numerical Simulation Applied to the FFF Process
4.1. Melt Flow
4.2. Cooling and Solidification
4.3. Thermal–Mechanical
4.4. Material Property Characterization
5. Fiber-Reinforced Composites
6. Systematic Literature Review
6.1. General Trends in Simulation Approaches
6.2. Comparative Evaluation of Abaqus and Ansys
7. Discussion and Future Trends
8. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
ABS | Acrylonitrile Butadiene Styrene |
AFM | Atomic Force Microscopy |
AI | Artificial Intelligence |
AM | Additive Manufacturing |
ANN | Artificial Neural Network |
BAAM | Big Area Additive Manufacturing |
CFF | Continuous Fiber Filament |
CFD | Computational Fluid Dynamics |
CF | Carbon Fiber |
CFRC | Continuous Fiber-Reinforced Composite |
CM | Computational Model |
CMM | Coordinate Measuring Machine |
CS | Cooling and Solidification |
DEM | Discrete Element Method |
DMA | Dynamic Mechanical Analysis |
DSC | Differential Scanning Calorimetry |
DOE | Design of Experiments |
FEA | Finite Element Analysis |
FDC | Fused Deposition of Ceramics |
FFF | Fused Filament Fabrication |
FRP | Fiber-Reinforced Polymer |
FRC | Fiber-Reinforced Composites |
IoT | Internet of Things |
IR camera | Infrared Camera |
LAAM | Large Area Additive Manufacturing |
LSAM | Large-Scale Additive Manufacturing |
ML | Machine Learning |
MPC | Material Property Characterization |
MEX | Material Extrusion |
MF | Melt Flow |
PA | Polyamide |
PC | Polycarbonate |
PEKK | Polyetherketoneketone |
PETG | Polyethylene Terephthalate Glycol |
PLA | Polylactic Acid |
PP | Polypropylene |
PPS | Polyphenylene Sulfide |
ResNet | Residual Neural Network |
RVE | Representative Volume Element |
RW | Review |
SEM | Scanning Electron Microscopy |
SFRC | Short Fiber-Reinforced Composite |
SPH | Smoothed Particle Hydrodynamics |
TMB | Thermal–Mechanical Behavior |
µCT | Micro-Computed Tomography |
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REF | Analysis | Material Evaluated | Software | Parameters Analyzed | Results | Limitations and Gaps |
---|---|---|---|---|---|---|
[2] | RW | - | R (Bibliometrix), VOS viewer | Keywords, research trends, co-authorship, topic clusters. | Identifies growth in AM linked to Industry 4.0 (AI, IoT) and 5.0 (human-centric design). | Focused on Scopus data, lacks technical depth on AM process and integration. |
[3] | RW | Polymers | Ansys, Abaqus, COMSOL, MATLAB | Melt flow, thermal behavior, mechanical properties. | Numerical models can predict process behavior but often rely on simplified assumptions. | Limited experimental validation and oversimplified material behavior. |
[4] | RW | FRP | – | Applications, challenges, material systems, performance. | Reviews CFRP benefits in multiple sectors; emphasizes lightweighting and customizability. | Broad scope lacks deep technical analysis or modeling of fiber performance. |
[9] | RW | Natural fibers and mineral composites | R (Bibliometrix), VOS viewer | Sustainability, biodegradability, fiber/matrix interaction. | Natural fillers offer eco-friendly AM options; fiber alignment and treatment improve properties. | Lacks standardization and process control; limited mineral-reinforced AM data. |
[17] | RW | Thermoplastics | – | Material selection, design parameters, trends. | Covers extrusion methods, hybrid processes, and polymer categories. | Lacks coverage of real-time control, multi-materials, and long-term validation. |
[19] | RW | Thermoplastics | – | Void types, formation causes, parameter effects. | Defines four main void types; parameter tuning and post-processing reduce defects. | No real-time detection methods: predictive modeling is still limited. |
[32] | RW | - | – | Inelastic models, flow-type parameters, rheological equations. | Discusses flow-type parameter use in CFD to improve realism for non-Newtonian polymer melts. | No direct AM application serves as a foundational theory for future simulations. |
[36] | RW | Polymers and Composites | Ansys, COMSOL, MATLAB | Melt flow, solidification, warpage, fiber orientation. | Models capture key process stages, including melt and solidification, but lack integration. | Few fully coupled models; limited experimental validation. |
[38] | RW | Polymers and Composites | – | Material type, printing temperature, phase change, actuation behavior. | Residual stresses affect shape recovery and structural deformation; driven by thermal gradients and anisotropic effects. | Lack of quantitative models and experimental studies on stress evolution during actuation. |
[66] | RW | Polymers and Composites | – | Multi-scale, data-driven, and hybrid modeling techniques. | Reviews challenges in capturing AM anisotropy; proposes hybrid models with higher fidelity. | Limited validation in complex shapes; no unified modeling framework. |
[25] | MF | Ceramic-filled filaments (FDC) | – | Rheology, density, shrinkage, feed rate. | Establishes link between feedstock rheology and printing success in ceramic-FFF. | FDC-specific; outdated parameters and machine controls. |
[26] | MF | ABS, PLA | – | Feed rate, heat transfer, pressure drop, bonding. | Models help to explain flow mechanics and bonding; support process improvement. | Lacks validation and real-time data; material property databases are limited. |
[29] | MF | PLA | Ansys Fluent, Polyflow | Viscosity, pressure drop, temperature, flow patterns. | Identifies vortex formation and pressure concentration near nozzle tip affecting extrusion consistency. | Assumes Newtonian flow; neglects viscoelasticity and phase-change dynamics. |
[39] | MF | Thermoplastics | Ansys Fluent | Gap distance, velocity ratio, strand shape, flow rate. | Filament shape and contact area are strongly influenced by nozzle gap and speed ratio. | Neglects temperature effects and non-Newtonian material behavior. |
[40] | MF | ABS | FLOW-3D, Open FOAM | Melt temperature, velocity, pressure, flow instability. | Viscoelastic model improves extrusion force prediction; design optimization reduces flow irregularities. | High computational cost; material-dependent parameters. |
[41] | MF | ABS | FLOW-3D | Melt zone, pressure, recirculation, feed rate. | Models melt transition and pressure build-up; recirculation affects temperature and force. | Lacks viscoelasticity; requires calibration for different polymers. |
[43] | MF | PET-G, PC, PA6/66, ABS, PET-CF | Open FOAM, DAKOTA | Pressure drop, flow type, extrusion force. | Optimized nozzle geometries reduce pressure drop and improve flow stability and control. | Complex implementation in practice; variations in material behavior not fully addressed. |
[44] | CS | PLA | Custom (LabVIEW), DMA, DSC, AFM | Nozzle/bed temperature, cooling rate, crystallinity, modulus. | Improved adhesion with higher residence at 100–140 °C; mid-layers had higher modulus and compactness. | Upper layer bonding is limited by cooling rate; model excludes local defects and complex geometries. |
[45] | CS | ABS | Abaqus | Conduction, convection, radiation, deformation. | Identifies conduction and convection as dominant heat transfer mechanisms. | Neglects 3D effects: minimal impact observed from radiation and air convection. |
[46] | CS | PLA | – | Temperature field, cooling rate, reheating. | Shows reheating significantly impacts layer bonding quality. | Porosity and radiation not modeled; geometry simplifications limit accuracy. |
[47] | CS | ABS | Ansys | Temperature, thermal conductivity, enthalpy. | Highlights the influence of latent heat on thermal gradients and solidification. | Simulates single-track only; complex geometries not included. |
[48] | CS | ABS | – | Temperature, diffusion, wetting, bond strength. | Model predicts bond strength based on temperature-dependent healing dynamics. | Assumes ideal wetting; does not include geometric deformation. |
[49] | CS | ABS, PEKK | COMSOL, IR camera | Temperature field, reptation degree, healing. | Demonstrates that thermal contact dominates bonding; validated with IR data. | Focuses only on early layer bonding; does not model long-term thermal behavior. |
[50] | CS | ABS | COMSOL, MATLAB | Extrusion force, heating rate, gantry speed. | Heat transfer limitations restrict extrusion speed; system coordination is essential for performance gains. | Lacks real-time thermal feedback and uses simplified material assumptions. |
[11] | CS | PLA | Python (ResNet), Arduino | Nozzle offset, strain, delamination, warping. | AI-based monitoring detects delamination early, enabling predictive quality control. | Model trained on limited data; generalizability across materials and setups is untested. |
[51] | CS | PLA | Custom (in-house) | Shrinkage, stress, temperature, deformation. | Captures cooling-induced shrinkage and residual stress in detail. | High computational cost; does not account for viscoelastic material behavior. |
[52] | CS | ABS, PLA | FLOW-3D, Open FOAM | Strand shape, temperature, pressure, feeding rate. | Simulates stable and unstable extrusion regimes based on pressure and flow patterns. | Viscoelastic effects and complex geometries underexplored. |
[53] | TMB | ABS | – | Number of layers, section length, chamber temperature, shrinkage rate. | Model quantifies warping and highlights the influence of chamber temperature and print path length. | Assumes uniform material properties and constant speed; lacks validation for complex geometries. |
[56] | TMB | PLA, Wood Biocomposite | FLOW-3D | Residual stress, temperature, distortion, defects. | Model accurately predicts defects and residual stress; results validated experimentally. | Assumes perfect bonding and uniform filler; coarse mesh limits defect resolution. |
[57] | TMB | ABS | Abaqus | Distortion, residual stress, mesh and timestep effects. | Accurately predicts Z-direction distortion; results validated experimentally. | Does not model anisotropy or plasticity; simplistic detachment modeling. |
[58] | TMB | PA12 | Digimat | Temperature gradient, residual stress, distortion. | Highlights stress accumulation in lower layers due to cooling and reheating cycles. | No experimental validation; simplified heat transfer and isotropic assumptions. |
[62] | TMB | ABS | Abaqus, NCORR, Slic3r | Elastic modulus, yield strength, raster anisotropy. | Accurately models anisotropic mechanical response; results agree with experimental data. | Ignores bonding defects, filament-scale variations, and fracture mechanics. |
[12] | TMB | Polymers | MATLAB, FEA | Strain, displacement, digital twin coupling. | Digital twin enables real-time AM validation; supports predictive modeling of defects. | Implementation complexity: integration with real-time feedback not yet streamlined. |
[18] | MPC | PLA, ABS, PETG, Nylon, CF PLA and ABS | – | Infill density, print temperature, fiber reinforcement, tensile strength, modulus. | Fiber reinforcement and higher infill improve strength and stiffness; PLA–CF shows highest modulus (5.2 GPa). | No standardized testing; limited insight into fatigue, creep, and environmental effects. |
[24] | MPC | ABS, FDC | – | Structural integrity, defects, shrinkage. | Highlights accuracy issues due to poor bonding and shrinkage in early FFF systems. | Limited by hardware/software of early systems; findings may not generalize. |
[59] | MPC | ABS-M30 | Custom (in-house) | Ultimate strength, stiffness, build direction, contour number. | Model predicts tensile strength within ~4% of test data. | Study limited to flat tensile geometry; excludes fatigue and impact performance. |
[60] | MPC | Polycarbonate | SolidWorks, Abaqus | Young’s modulus, shear modulus, Poisson’s ratio, stress distribution. | Orthotropic model closely matches experiments; building orientation significantly affects performance. | Plastic behavior is not captured; only linear elastic validation performed. |
[61] | MPC | PLA | MATLAB, CMM, Talysurf | Dimensional accuracy, flatness, surface texture, roughness. | Layer thickness strongly influences geometric accuracy; ANN enables predictive tuning. | Study limited to a single material and printer type; generalizability is low. |
[65] | MPC | ABS | ABAQUS | Stress–strain, fracture path, raster failure mode. | Model replicates failure patterns; thinner layers show higher elongation. | Assumes isotropy; excludes thermal effects and neck formation mechanics. |
[73] | MPC | CF PPS | ABAQUS, Additive3D | Residual stress, crystallinity, shrinkage, thermal conductivity. | Model predicts deformation with <7% error; includes crystallization kinetics and anisotropy. | Requires extensive experimental input; does not address creep or fatigue. |
[5] | FRC | CF Polymer | Custom (in-house) | Flow alignment, shear, swelling. | Coupling flow with orientation improves print accuracy and part quality. | Nozzle flow simplified; high computational demands. |
[6] | FRC | FRP | – | Viscosity, temperature, fiber effects. | Summarizes key insights into melt flow and fiber orientation in composite FFF processes. | Most models are uncoupled; validation data is sparse. |
[7] | FRC | CF ABS | Ansys Polyflow, MATLAB | Orientation, stiffness, nozzle effects. | Nozzle gap and path significantly affect fiber alignment and part stiffness. | Does not model fiber interaction; assumes Newtonian flow behavior. |
[8] | FRC | CF ABS | Ansys Polyflow, MATLAB | Pressure, orientation, void risk. | Low-pressure regions form around fibers, potentially increasing void formation. | Only models single fiber; lacks full thermal coupling. |
[37] | FRC | FRP | Custom (SPH-DEM) | Drag force, fiber deformation, flow. | Models fiber alignment during extrusion with good correlation. | Thermal effects excluded; limited to 2D simulation; lacks experimental validation. |
[10] | FRC | CF Thermoplastics | – | Fiber alignment, interlayer bonding, voids, anisotropy. | Highlights design freedom and high strength potential of continuous CF composites. | Challenges include fiber placement accuracy, void control, and limited toolchain/software support. |
[67] | FRC | CF ABS | – | Orientation, strength, modulus. | Fiber alignment increases strength by 115% over neat ABS. | Voids reduce toughness; print path has critical influence. |
[68] | FRC | CF Thermoplastics | – | Strength, stiffness, alignment. | Fiber content enhances stiffness; anisotropy linked to print path. | Long-term mechanical behavior and standardization are lacking. |
[69] | FRC | FRP | Custom (SPH-DEM) | Drag force, fiber deformation, flow. | Predicts fiber orientation and flow behavior with good correlation. | Excludes thermal effects; 2D model only; limited experimental validation. |
[70] | FRC | CF PA66 | Amira, CFD | Fiber length, orientation, strength, modulus. | Nozzle size influences fiber breakage: fiber alignment improves with build height. | Neglects fiber interactions and complex geometries. |
[71] | FRC | Continuous CF + PLA | Custom, FEA | Orientation, voids, stiffness. | Aligned paths reduce voids and increase stiffness by 30%. | The method is computationally intensive and demonstrated only on simple shapes. |
[72] | FRC | Continuous CF + PEKK | Custom, μCT, FEA | Failure strength, fiber deviation. | Strength-based paths improve performance over stiffness-driven approaches. | High computational complexity; limited geometry scope. |
[76] | FRC | Short CF + ABS | Altair Multi-scale Designer | Failure mode, stress, angle. | Model accurately predicts anisotropic failure behavior. | Requires calibration for each material-print setup. |
Software/Criteria | Potentiality | Usability | Scalability | Accessibility |
---|---|---|---|---|
Abaqus | High | Very high | High | High |
Ansys | Very high | High | Very high | High |
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Enriconi, M.; Rodriguez, R.; Araújo, M.; Rocha, J.; García-Martín, R.; Ribeiro, J.; Pisonero, J.; Rodríguez-Martín, M. A Comprehensive Review of Fused Filament Fabrication: Numerical Modeling Approaches and Emerging Trends. Appl. Sci. 2025, 15, 6696. https://doi.org/10.3390/app15126696
Enriconi M, Rodriguez R, Araújo M, Rocha J, García-Martín R, Ribeiro J, Pisonero J, Rodríguez-Martín M. A Comprehensive Review of Fused Filament Fabrication: Numerical Modeling Approaches and Emerging Trends. Applied Sciences. 2025; 15(12):6696. https://doi.org/10.3390/app15126696
Chicago/Turabian StyleEnriconi, Maria, Rocío Rodriguez, Márcia Araújo, João Rocha, Roberto García-Martín, João Ribeiro, Javier Pisonero, and Manuel Rodríguez-Martín. 2025. "A Comprehensive Review of Fused Filament Fabrication: Numerical Modeling Approaches and Emerging Trends" Applied Sciences 15, no. 12: 6696. https://doi.org/10.3390/app15126696
APA StyleEnriconi, M., Rodriguez, R., Araújo, M., Rocha, J., García-Martín, R., Ribeiro, J., Pisonero, J., & Rodríguez-Martín, M. (2025). A Comprehensive Review of Fused Filament Fabrication: Numerical Modeling Approaches and Emerging Trends. Applied Sciences, 15(12), 6696. https://doi.org/10.3390/app15126696