Multidimensional Advances in Wildfire Behavior Prediction: Parameter Construction, Model Evolution and Technique Integration
Abstract
1. Introduction
2. Central Parameters Shaping Fire Behavior Prediction
2.1. Fire Spread Rate: Dynamic Feature of Firelines
2.2. Flame Residence Time: Temporal Dimension of Disaster Impact
2.3. Fireline Intensity: Temporal and Spatial Distribution of Energy Release
2.4. Burned Area: Spatial Scale of Disaster
3. Milestones and Applications of Classical Fire Behavior Models
3.1. Milestones of Physical and Empirical Models
3.2. Spotting Models
3.3. Crown Fire Models
4. Associated Software for Wildfire Behavior Prediction and Control
4.1. Behave and BehavePlus
4.2. FARSITE/FlamMap
4.3. CFFDRS and Future Systems
5. Numerical Simulation: Integration of Fire Physics with Prediction Techniques
5.1. Development of Key Tools under the CFD Framework
5.2. Crucial Tactics in Performing Numerical Simulation
6. Implanting Artificial Intelligence in Prediction Techniques
6.1. Existing Data-Driven Models in Prediction Practice
6.2. Breakthrough in Deep Learning
6.3. Strategies for Fusing Fire Modeling and Prediction Techniques
- (1)
- Complementary integration—Given the differences in applicable scenarios of various models, a serial integration mode characterized by “division of labor and collaboration” is adopted. For instance, during the fire risk assessment phase, physical models are used to calculate the critical ignition conditions of fuels, while machine learning models such as random forests are employed to handle the nonlinear relationship between meteorological data and fire occurrence probability, thereby constructing a dual-layer prediction framework of “physical mechanism screening” with “data-driven classification”. Marjani et al. [18] combined CNN with Bidirectional Long Short-Term Memory (BiLSTM) modules to generate a novel DL model named CNN-BiLSTM, which is used for near-real-time wildfire spread prediction.
- (2)
- Weighted fusion—Among statistical weighting methods for multi-model outputs, Bayesian Model Averaging (BMA) and dynamic weight assignment are commonly adopted. BMA allocates weights by estimating the posterior probabilities of models, which is suitable for long-term prediction of wildfire behavior. For instance, the FireCAST system, developed by the USFS, integrates the Rothermel model, LSTM model, and CFD model, thereby enhancing the rate prediction accuracy in complex terrain [74]. Dynamic weight assignment can be adjusted according to real-time data, highlighting the response mechanism to abrupt changes in fire behavior under strong winds.
- (3)
- Hybrid modeling—A “physics-constrained, data-driven” hybrid model is constructed by embedding physical equations as regularization terms into the machine learning framework. A typical example is the Deep Convolutional Inverse Graphics Network (DCIGN) proposed by Hodges et al. [68]. This model integrates Rothermel’s phenomenological fire spread model into a convolutional inverse graphics network. The energy balance equation from Rothermel’s model ensures that the predicted heat release rates align with actual values while adhering to the constraints of Equation (1). Trained and tested on wildfires in both simple homogeneous landscapes and complex heterogeneous terrains, the DCIGN avoids the physical inconsistencies often found in purely data-driven models. This makes it particularly well-suited for data-sparse high-altitude forest areas [68]. By combining machine learning’s nonlinear fitting capabilities with the physical constraints of burning phenomena, this approach significantly enhances the accuracy and reliability of the model predictions.
7. Concluding Remarks and Prospect
Author Contributions
Funding
Conflicts of Interest
Nomenclature
burned area | |
flame height | |
fireline intensity | |
reaction intensity | |
adjustment coefficient induced by fuel conditions | |
adjustment coefficient induced by terrain slope | |
adjustment coefficient induced by local wind | |
flame length | |
fire probability | |
heat required for ignition | |
rate of fire spread | |
initial fire spread rate/fire spread rate without considering wind and slope effects | |
unified source term | |
time | |
flame residence time | |
velocity vector | |
wind speed | |
gradient operator | |
general variable specifying density, velocity, temperature or mass fraction of a medium considered | |
porosity of a fuel bed | |
angle between the wind and upslope directions | |
heat absorption coefficient | |
density of a medium | |
fuel apparent density | |
wind adjustment coefficient | |
slope adjustment coefficient | |
AI | Artificial Intelligence |
AIG | American International Group |
ANN | Artificial Neural Networks |
BiLSTM | Bidirectional Long Short-Term Memory |
BMA | Bayesian Model Averaging |
CA | Cellular Automaton |
CFD | Computational Fluid Dynamics |
CFFDRS | Canadian Forest Fire Danger Rating System |
CNN | Convolutional Neural Networks |
DCIGN | Deep Convolutional Inverse Graphics Network |
DEMs | Digital Elevation Models |
DL | Deep Learning |
FBP | Fire Behavior Prediction |
FDS | Fire Dynamics Simulator |
FMC | Fine Fuel Moisture Content |
GAN | Generative Adversarial Networks |
GIS | Geographic Information System |
LES | Large Eddy Simulation |
LSSVM | Least Squares Support Vector Machine |
LSTM | Long Short-Term Memory Networks |
MTT | Minimum Travel Time |
MLPs | Multilayer Perceptrons |
NIST | National Institute of Standards and Technology |
RDEN | Residential Density |
RNN | Recurrent Neural Networks |
SDEN | Stand Density |
SVM | Support Vector Machine |
USFS | U.S. Forest Service |
WFDS | Wildland–Urban Interface Fire Dynamics Simulator |
WFDSS | Wildland Fire Decision Support System |
WRF | Weather Research and Forecasting |
WUI | Wildland and Urban Interface |
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Model Type | Theoretical and Physical Basis | Main Characteristics | Applicable Scenario | Limitation |
---|---|---|---|---|
Quasi-steady-state surface fire spread rate calculation model by Fons [7] |
Surface fuels were treated as discrete particles; Energy conservation was established in fire spread; Dynamic changes were simplified, with a focus on the stable stage. |
A mathematical framework to quantify the spread velocity of surface fire; Wind tunnel fire experiments were conducted to establish statistical relationships among the parameters. |
Applicable to open areas with uniformly distributed combustibles, mainly low-lying fuels; Suitable environmental and fuel conditions: low wind speed (≤5 m/s), gentle terrain (slope ≤ 15°) and moderate combustible moisture content. |
Quasi-steady state assumption deviates from the dynamic changes in actual fires; The influence of fuel load is not considered; Poor applicability to high-intensity fires or complex terrains (e.g., steep slopes). |
Empirical fire behavior prediction model by McArthur [8] |
The combination of key environmental factors can determine fire behavior; Statistical relationships among meteorological factors (e.g., wind speed and temperature), fuel humidity, fire spread rate, and fire intensity. |
The factors and fire behavior were correlated by combining long-term field observations with historical fire data; Integrated into an operational fire risk assessment tool, and its index system has now been widely adopted globally. |
It is applicable to surface herbaceous and low shrub fuels in Australia’s typical grasslands, savannas, and low-density Eucalyptus forests; Suitable for arid and semi-arid climates with a wide wind speed range (1–15 m/s). |
Regional specific; Low prediction accuracy for mountain fires; Exhibits large prediction errors in high-humidity environments (FMC > 30%); Insufficient predictive capacity for fire behavior under extreme meteorological conditions. |
Empirical forest fire spread model by Zhengfei Wang [33] | Through regression analysis, empirical correlations were established among forest fire spread rates and local meteorological factors (temperature, humidity, wind speed) and fuel characteristics. |
Field experiments were conducted to verify the model accuracy; Parameters were defined to adapt to complex terrains and vegetation types; A flexible structure enables spatial simulation with GIS and cellular automata. |
Applicable to surface fuels in coniferous forests, such as larch forests in Northeast China, and Yunnan pine and fir forests in Southwest China; Adaptable to seasonal precipitation variations, i.e., spring in Northeast China and dry season in Southwest China. |
Strong regional specificity; It fails to incorporate the influence of vertical fuel distribution (e.g., shrub layers), leading to insufficient prediction of fire spread in arbor-shrub mixed forests; Inadaptable to changes in fuel characteristics under climate change. |
Surface fire spread model developed by Rothermel [9] | Energy balance was employed to calculate the equilibrium between the heat required for fuel ignition and the heat supplied by the fire front. |
Good for different fuel types, terrain slope and wind speeds; Fuel bed parameters obtained through indoor experiments; Influence of wind speed on spread rate was verified via wind tunnel tests. |
Applicable to modular forest surface fuels, including loose fuels in coniferous forests and deciduous broad-leaved forests; The model has been integrated into systems such as Behave and FARSITE as the most widely used prediction tool globally. |
Significant prediction errors for patchy fuels; Fails to account for dynamic fuel consumption during fire spread; Turbulent heat exchange at high wind speeds or extremely dry conditions; Elliptical surface for burned areas is inadequate under certain situations. |
Fire spotting model of Albini [10,34] | Based on aerodynamics and firebrand trajectory analysis, the process of firebrands lofted by hot airflows and transported by wind field was modeled. |
A model of firebrand trajectories established for different wind speeds and particle shapes; Validation relied on historical fire cases; Spotting phenomenon was then incorporated into the fire behavior prediction framework. |
Applicable to open areas or medium-density forests with wind speeds ≥ 3 m/s (sufficient to carry firebrands via airflow), where the terrain is primarily flat or gently sloped; Integrated into software such as Behave to support dynamic fire spread simulations. |
Inaccurate trajectory predictions for large-sized firebrands; Fails to account for heat loss and extinction during flight; Inadequate simulation of airflow fields under complex terrains (e.g., valleys and ridges) causes deviations in landing positions. |
Crown fire initiation model developed by van Wagner [23,35] |
Crown fire is precipitated by reaching the ignition threshold of crown fuels through thermal radiation; The critical heat flux hypothesis was proposed by developing a core parameter. |
Through crown fuel combustion tests, the relationships between flame height, fuel load, and FMC were determined; Physical threshold for crown fire initiation was defined. |
Applicable to coniferous forests with distinct crown layers, where crown combustibles are primarily composed of needles and fine twigs; Integrated into CFFDRS to establish a coupled prediction system for surface-to-crown fires. |
The model exhibits reduced prediction accuracy for tall-tree forests (canopy height > 15 m); Without considering convective heat transfer; Poor applicability to broadleaf-dominated forests. |
Crown fire probability model developed by Cruz and Alexander [36,37] | A probabilistic prediction equation was established via regression analysis, with the utilization of the field data from 71 crown fire experiments in Canada. |
Historical fire data and remote sensing monitoring enhanced the experimental design for sample diversity in various climate zones; Introducing uncertainty analysis to support multi-scenario risk assessment. |
Applicable to crown layers in coniferous forests and coniferous-broadleaved mixed forests, especially for crown fire potentially induced by medium- and low-intensity surface fire; The model has been integrated into software such as FARSITE. |
Relies on large sample sizes, resulting in low prediction accuracy in data-scarce regions; Without considering the influence of forest stand structure, probability predictions for dense or sparse forest stands are biased. |
Crown fire dynamics model by Alexander and Cruz [29,38,39] | Based on the Navier–Stokes equations and combustion reaction kinetics, the flame morphology (height, length, temperature field), heat release, and smoke diffusion process were simulated. |
Focusing on multi-physics coupling, laboratory experiments and numerical simulations were conducted; Intrinsic relationships were revealed between flame structure and fire behavior. |
Applicable to the burning of various combustibles (surface litter, shrubs, and tree crowns), particularly suitable for flame behavior in high-density, high-load fuels; The model has been integrated into the CFFDRS. |
Sensitive to the physical property parameters of fuels, where parameter errors are prone to inducing deviations in prediction outcomes; Chemical reactions are simplified, limiting the applicability to broadleaf forests and shrublands. |
Name | Background and Motivation | Core Method and Technique | Output Parameter | Application Scenario |
---|---|---|---|---|
Fluent (1983) [59] | General-purpose CFD software to assist researchers and engineers in solving practical problems, with the support of the simulation of various physical processes through modular design. | Computational domain was divided into many control volumes, and the equations of mass, momentum, and energy conservation were then resolved in their discretized forms for every control volume. | Output parameters contain basic flow field quantities, boundary integrals, medium turbulence and heat transfer characteristics, and component multiphase reaction rates. | Applicable to multiple fuel types, via user-defined combustion models, enabling the research on fire behavior in complex forest structures or under extreme meteorological conditions and the study of the production and transport of forest fire pollutants. |
OpenFOAM (2004) [60] | A fully open-source modular CFD platform, which supports full-process customization from fundamental research to engineering applications. | It offers model libraries and solving tools for numerous physical fields, facilitating the users to customize solvers and physical models for specific problems with high compatibility. | In addition to the conventional CFD outputs, it can also output reaction rate constants for customized combustion models and turbulence–combustion coupling coefficients. | A module describing vegetation pyrolysis and combustion can be developed to simulate wildfires, which is applicable to the study of forest fire spread mechanisms and the development of customized models. |
FIRETEC (2008) [5,61] | To overcome the accuracy and scale bottlenecks of traditional models in complex terrain, multi-fire sources, it implements 1 m-scale fire–atmosphere two-way coupling simulation, and provides high-resolution decision support tools for wildfire management. | High-precision simulation of small-scale wildfire behavior can be achieved by considering detailed coupling of multiphase transport, physical processes, and interactions between fire and atmosphere. | It outputs fire spread rate, flame height, heat release rate, atmosphere coupling-related parameters, plume height, and pollutant concentration. | By focusing on natural field environments, it supports forest fire spread prediction, fire behavior analysis, toxic/harmful gas emission assessment, and evaluation of climate change impacts on wildland fire risk. |
FDS (1995) [58] | Developed by NIST for resolving building fire issues, it can finely simulate the dynamic evolution of fires, with a focus on depicting heat release, flame propagation, smoke movement, and temperature distribution. | By solving the Navier–Stokes equations in conjunction with LES to handle turbulent flow, it can track temperature field distribution, energy flow in fires and smoke movement. | Its output includes global parameters, gas parameters, and solid parameters by generating contour maps, slice maps, and time series graphs. | Capable of simulating small-scale combustion phenomena in detail, such as single-plant combustion, fires at the WUI, and smoke flow and fire risk assessment of atriums. |
WFDS (2008) [62] | Originating from FDS, it offers both wildland fire and building fire simulations, by accurately depicting the complete chain of vegetation combustion and fire spread into buildings. | It inherits FDS’s framework, with the addition of a vegetation combustion model, and coupling the impacts of terrain and wind speed on fire spread. | Main output parameters focus on fire behavior, heat release, plume characteristics, and atmospheric coupling parameters. | Applicable to WUI fires with mixed wildland fuels and building structures, grassland fires spread to villages, and vegetation-building coupled combustion scenarios. |
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Wang, H.-H.; Zhang, K.-X.; Aktar, S.; Wu, Z.-P. Multidimensional Advances in Wildfire Behavior Prediction: Parameter Construction, Model Evolution and Technique Integration. Fire 2025, 8, 402. https://doi.org/10.3390/fire8100402
Wang H-H, Zhang K-X, Aktar S, Wu Z-P. Multidimensional Advances in Wildfire Behavior Prediction: Parameter Construction, Model Evolution and Technique Integration. Fire. 2025; 8(10):402. https://doi.org/10.3390/fire8100402
Chicago/Turabian StyleWang, Hai-Hui, Kai-Xuan Zhang, Shamima Aktar, and Ze-Peng Wu. 2025. "Multidimensional Advances in Wildfire Behavior Prediction: Parameter Construction, Model Evolution and Technique Integration" Fire 8, no. 10: 402. https://doi.org/10.3390/fire8100402
APA StyleWang, H.-H., Zhang, K.-X., Aktar, S., & Wu, Z.-P. (2025). Multidimensional Advances in Wildfire Behavior Prediction: Parameter Construction, Model Evolution and Technique Integration. Fire, 8(10), 402. https://doi.org/10.3390/fire8100402