Review on the Use of Artificial Intelligence to Predict Fire Performance of Construction Materials and Their Flame Retardancy
Abstract
:1. Introduction
2. Brief Description of Machine Learning
2.1. Operation of Machine Learning Models
2.2. Explanation of Descriptors
2.3. Evaluation of the Performance of AI/ML Models
3. Application of AI/ML in Fire Engineering
3.1. Concrete Elements/Structures
3.2. Steel Elements/Structures
3.3. Timber Elements/Structures
3.4. Composite Materials
3.5. Other Types of Elements/Structures
Type of Structure | Method | Target Output | Descriptors/Input Parameters | Reference |
---|---|---|---|---|
Concrete material | Artificial neural networks | The stress (σ) | Strain (ε), temperature (T), elastic modulus (ET) at that temperature, compressive strength (fcT), and ultimate strain (εulT) | [32] |
Concrete material | Artificial neural networks | The strain (ε) | Temperature (T), load level (h), modulus of elasticity (ET), compressive strength (fcT), ultimate strain (εulT), and the coefficient of the thermal expansion (ΩT) | [32] |
Concrete material | Artificial neural networks | The restrained stress (σ) | Temperature (T), modulus of elasticity (ET), compressive strength (fcT), ultimate strain (εulT), thermal expansion coefficient (ΩT), and heating rate (λ) | [32] |
Concrete material | Artificial neural networks | The loss of strength | Experimental parameters and environmental factors | [68] |
Self-compacting concrete | Artificial neural networks | The compressive strength | The amount of cement, fly ash, zeolite, limestone powders, basaltic, marble powders, natural aggregate, group I aggregate, group II aggregate, polypropylene fibers, heating degree | [69] |
High-strength concrete columns | Artificial neural networks | The spalling type | Furnace temperature, restraint, loading level, force, spalling degree, failure time, and spalling type | [70] |
High-strength concrete columns | Artificial neural networks | The failure time | Furnace temperature, restraint, loading level, force, spalling degree, and failure time. | [70] |
Reinforced-concrete columns | Artificial neural networks | The fire resistance of the column expressed in minutes (t) | Dimensions of the cross-section of the column (b and d), the concrete cover thickness (a), percentage of reinforcement (μ), load coefficient for axial force (η), and load coefficient for the bending moment (β). | [72] |
Concrete-filled tubular steel columns | Backpropagation neural network | The fire resistance | Structural factors (external dimension, steel thickness, column height), material factors (water–cement ratio, type of aggregate, concrete 28 days cylinder strength, steel yield strength), loading conditions (test load) | [71] |
Concrete slabs | Artificial neural networks | The ultimate moment capacity (Mu) | The distance from the extreme fiber in tension to the centroid of the steel on the tension side of the slab (d’), the effective depth (d), the ratio of previous parameters (d’/d), the area of reinforcement on the tension face of the slab (As), the fire exposure time (t), the compressive strength of the concrete (fcd), and the yield strength of the reinforcement (fyd) | [79] |
Prismatic concrete beams | Artificial neural network, fuzzy logic, and fuzzy genetic models | The toughness (Tg) value of the prismatic beams | The fiber type used to prepare the specimen mixtures (Ft), curing period (Cp), temperature (T), volumetric fiber ratios in the mixture (FR), the compressive strength of the cylindrical specimens (fc) | [80] |
Reinforced-concrete T-beams strengthened with carbon fiber-reinforced polymer (CFRP) plates | Artificial neural networks | The temperature at the interface between the CFRP/concrete | Insulation thicknesses, materials types, and fire curves | [81] |
Structural steel | Artificial neural networks and genetic algorithms | Temperature-dependent material properties: thermal conductivity, specific heat, reduction factor for yield strength, and reduction factor for modulus of elasticity | Temperature | [84] |
Steel frames | Artificial neural networks | The stress (σ) | Strain (ε) and temperature (T) | [85] |
Steel tubular truss | Artificial neural networks | The limiting temperature | Diameter ratio (β), the wall thickness ratio (τ), the diameter–thickness ratio (γ), and the load ratio | [86] |
Steel columns | Hybrid neural network and genetic algorithm | The failure temperature (T) | The length of the steel columns (L), the radius of Gyration of the cross-section (r), the sectional area (A), the yield strength of the material at room temperature (fy), the applied load (P), and the eccentricity of the load at failure (e) | [87] |
Timber member | Artificial neural networks | The temperature in timber | The density of timber, the time of fire exposure, and the distance from the exposed surface | [88] |
Timber material | Artificial neural network together with symbolic regressions and genetic algorithms | Mechanical properties (Reduction factors of density, Young’s modulus, compressive strength, tensile strength, and shear strength), thermal properties (thermal conductivity and specific heat), charring depth | Temperature | [89] |
Timber floors | Artificial neural network together with symbolic regressions and genetic algorithms | The temperature in the plywood subfloor | Fire exposure duration (t), number of layers in ceiling finish (C), sub-floor thickness (kth), and type of cavity insulation (I) | [89] |
Timber beams | Artificial neural network together with symbolic regressions and genetic algorithms | Mid-span deflection | Fire exposure time (t), load level (P), height (H), and charring rate (β) | [89] |
Timber columns | Artificial neural network together with symbolic regressions and genetic algorithms | Fire resistance expressed in minutes | Column depth (D), column breadth (B), compressive strength (fc), specific gravity (SG), and level of applied loading (P) | [89] |
Finger–joint timber connections | Artificial neural network together with symbolic regressions and genetic algorithms | Fire resistance expressed in minutes | The adhesive type (A), width (W), charring rate (β), and applied loading (P) | [89] |
Nailed timber connection | Artificial neural network together with symbolic regressions and genetic algorithms | The slip of the connection (d) | Fire exposure time (t) and load level (P) | [89] |
Redwood and Red Oak | Genetic algorithms and pyrolysis model | Surface temperature and mass loss rate | Thermal conductivity (kv), specific heat (cv), pre-exponential factor (Z), activation energy (EA), and heat of pyrolysis (ΔHp), char thermal conductivity (kc), char specific heat (cc), and char density (𝜌c) | [90] |
Flexible polyurethane foam (Composite material) | Genetic algorithms | Kinetic and stoichiometric parameters | The reaction mechanism of thermal and oxidative degradation with thermogravimetric data | [91] |
Polypropylene (Composite material) | Genetic algorithms and pyrolysis model | Surface temperature and mass loss rate | Thermal conductivity (kv), specific heat (cv), pre-exponential factor (Z), activation energy (EA), and heat of pyrolysis (ΔHp), char thermal conductivity (kc), char specific heat (cc), and char density (𝜌c) | [90] |
Chitosan/graphene oxide layer-by-layer fire retardant coating on flexible polyurethane foam (composite material) | Genetic algorithms and computational fluid dynamics model | Thermal degradation rate, heat release rate, total heat release, smoke production rate, total smoke production, CO production rate, total CO production | Composition (ci), pre-exponential factor (Ai), activation energy (Ei), and exponent (ni) | [93] |
Semi-rigid beam-to-column joints | Artificial neural network | The rotational capacity of the joint | The applied moment and joint’s temperatures | [94] |
Semi-rigid composite joints | Artificial neural network: Backpropagation paradigm | The rotational capacity of the joints | The joint geometrical properties (beam depth, beam width, beam flange thickness, beam web thickness, column depth, column width, column flange thickness, column web thickness, number of bolts, bolt diameter, end-plate thickness, end-plate depth, end-plate width), the joint mechanical properties (beam yield strength, column yield strength), the joint’s temperature, and the applied moment | [95] |
A single compartment fire | General regression neural network and fuzzy adaptive resonance theory | The location of the thermal interface, the height of the thermal interface, and different widths of the opening | The width and height of the sill of the opening, parallel and perpendicular distances from the center of the fire bed to the vertical centerline of the opening, fire strength, and ambient temperature | [96] |
A single compartment fire | General regression neural network and fuzzy adaptive resonance theory | The velocity and temperature profiles at the center of the doorway | Width of opening, the height of the sill of the opening, fire strength, distance from the vertical centerline of the opening to the center of the fire bed, distance from the vertical centerline of the opening to the center of the fire load, and the ambient temperature | [97] |
4. Application of AI/ML for Flame-Retardant Materials
Existing Studies
5. Advantages and Challenges
6. Recommendation for Future Studies
7. Conclusions
- AI techniques have been extensively applied to evaluate the fire performance of different construction materials consisting of concrete, steel, timber, and composites, with encouraging results. AI-based models have also shown the potential to predict the behavior of a variety of structural components such as beams, columns, slabs, frames, trusses, and connections under fire scenarios.
- Some ML and AI algorithms have commonly been used in the evaluation of the behavior of materials/structural systems exposed to fires, including ANNs, the ANFIS, and the GA. While neural networks have mostly been applied to simulate the nonlinear relationship between various input descriptors and the target output, the GA has been employed to generate the required input parameters for the computational approach.
- ML techniques have brought many advantages compared to conventional approaches, such as saving computing time, providing a high level of accuracy, and implementing with minimal human intervention. However, some drawbacks of these advanced techniques could be noticed, such as requiring database construction with adequate data points for ML-based models or being unable to simulate the essence of the input–output relationship for fire engineering problems.
- For the purpose of constructing AI/ML models, it is suggested that further fire tests should be arranged to generate the fire database. Additionally, reliable finite element models could be constructed and validated to provide additional input data points to be used in AI models. The AI approach should work in conjunction with traditional methods (e.g., experimental tests and numerical simulations) to better understand the fire phenomena and flame retardancy of construction materials.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Data | R2 | RMSE | ||
---|---|---|---|---|
MLoss | MOR | MLoss | MOR | |
All datasets | 0.91882 | 0.92117 | 0.1725 | 1.3033 |
The training set | 0.96919 | 0.95721 | 0.1545 | 1.2025 |
The validation set | 0.99899 | 0.92552 | 1.4846 | 1.9196 |
The test set | 0.93291 | 0.96552 | 0.0836 | 1.9914 |
Procedure | R2 | RMSE | MSE |
---|---|---|---|
Training | 1 | 0.01229 | 0.01512 |
Validating | 0.96120 | 0.02519 | 0.06345 |
Testing | 0.99562 | 0.01954 | 0.03818 |
All data | 0.98553 | - | - |
Methods | TAR (g) | LHR (g) | APP (g) | MEL (g) | PER (g) | MFPT (Min) |
---|---|---|---|---|---|---|
Taguchi | 13 | 2.5 | 25 | 10 | 11 | 129.2 |
GA | 15.85 | 2.8 | 26.7 | 10.01 | 8.4 | 132.8 |
Methods | Correlation Coefficient | Root-Mean-Square Error |
---|---|---|
MNLR model | 0.9474 | 0.4388 |
ANN model | 1.0000 | 0.0002 |
Output Results | Correlation Coefficient | Root-Mean-Square Error |
---|---|---|
LOI (%) | 0.9524 | 0.38 |
TS (MPa) | 0.9557 | 0.54 |
EL (%) | 0.9695 | 10.10 |
Materials | Method | Target Output | Descriptors/Input Parameters | Reference |
---|---|---|---|---|
Flame-retardant fiberboards | Artificial neural networks | The modulus of rupture (MOR) and mass loss (ML) | The concentration of boric acid, borax, and ammonium sulfate, and press temperature | [98] |
Intumescent flame-retardant coatings | Artificial neural networks (ANNs), adaptive neuro-fuzzy-inference-system (ANFIS), and genetic algorithm (GA) | The mean fireproofing time (MFPT) | The compositional concentration of ammonium polyphosphate (APP), pentaerythritol (PER), melamine (MEL), thermoplastic acrylic resin (TAR), and liquid hydrocarbon resin (LHR) | [99] |
Polyamide-66 | Artificial neural networks | The limiting oxygen index (LOI) | Constituents of composites: polyamide-66 (PA-66), ammonium polyphosphate (APP), phosphorus-containing flame retardant (FR), melamine (MN), silicon-containing additive (AD), and zinc borate (ZB) | [101] |
Halogen-free flame-retardant composites | Artificial neural networks | The limiting oxygen index (LOI), tensile strength (TS), and elongation (EL) | Ethylene-vinyl acetate copolymer (Poly-1), ethylene-propylene copolymer (Poly-2), polyethylene (Poly-3), compatibilizer (Poly-4), alumina trihydrate (FR-1), zinc borate (FR-2), silicon-containing additive (AD-1), and phosphorus-containing additive (AD-2) | [102] |
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Nguyen, H.T.; Nguyen, K.T.Q.; Le, T.C.; Zhang, G. Review on the Use of Artificial Intelligence to Predict Fire Performance of Construction Materials and Their Flame Retardancy. Molecules 2021, 26, 1022. https://doi.org/10.3390/molecules26041022
Nguyen HT, Nguyen KTQ, Le TC, Zhang G. Review on the Use of Artificial Intelligence to Predict Fire Performance of Construction Materials and Their Flame Retardancy. Molecules. 2021; 26(4):1022. https://doi.org/10.3390/molecules26041022
Chicago/Turabian StyleNguyen, Hoang T., Kate T. Q. Nguyen, Tu C. Le, and Guomin Zhang. 2021. "Review on the Use of Artificial Intelligence to Predict Fire Performance of Construction Materials and Their Flame Retardancy" Molecules 26, no. 4: 1022. https://doi.org/10.3390/molecules26041022
APA StyleNguyen, H. T., Nguyen, K. T. Q., Le, T. C., & Zhang, G. (2021). Review on the Use of Artificial Intelligence to Predict Fire Performance of Construction Materials and Their Flame Retardancy. Molecules, 26(4), 1022. https://doi.org/10.3390/molecules26041022