Submitted:
15 December 2025
Posted:
17 December 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Acquisition
2.2.1. Fire Data
2.2.2. Environmental and Socio-Economic Data
2.3. Data Pre-Processing and Analysis
2.3.1. Pre-Processing
2.3.2. Fire Frequency and Mean Fire Return Interval
2.3.3. Fire Seasonality
2.3.4. Extent of Burned Area and Fire Density
2.3.5. Fire Intensity
2.3.6. Fire Severity
2.3.7. Fire Risk Mapping
2.4. Annual Burning Map Accuracy
3. Results
3.1. Fire Regime
3.1.1. Mean Fire Return Interval in the PNAG
3.1.2. Fire Temporal Variation and Seasonality
3.1.3. Fire Intensity and Density
3.1.4. Fire Severity
3.2. Fire Risk Mapping
3.2.1. Fire Risk Factors
3.2.2. Modelling Fire Risk
3.2.3. Accuracy Analysis and Kappa Index
4. Discussion
5. Conclusions
Supplementary Materials
Funding
Acknowledgments
Conflicts of Interest
References
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| Type | Variable name | Definition | Data source | Spatial resolution |
|---|---|---|---|---|
| Terrain | Altitude | Altitude (meters) | SRTM (https://www.diva-gis.org/gdata) | 30 m |
| Terrain | Slope | Slope (degrees) | SRTM (https://www.diva-gis.org/gdata) | 30 m |
| Terrain | Appearance | Tilt direction (degrees) | SRTM (https://www.diva-gis.org/gdata) | 30 m |
| Land cover | LULC | Land use and occupation | Montfort, 2021 | 30 m |
| Ground cover | AGB BGB woody biomass | Above and below ground woody biomass (t/ha) | Montfort, 2021 | 30 m |
| Ground cover | NDVI | Normalized Difference Vegetation Index | MOD13Q1 (https://code.earthengine.google.com/293acc173d3da3ebcebb2e58155ff99a) | 250 m |
| Ground cover | NDVI anomalies | Normalized Difference Vegetation Index Anomalies | MOD13Q1 (https://code.earthengine.google.com/293acc173d3da3ebcebb2e58155ff99a) | 250 m |
| Climate | Precipitation | Annual precipitation (mm/year) | CHIRPS (https://data.chc.ucsb.edu/products/CHIRPS/v3.0/) | 5000 m |
| Climate | Temperature | Temperature (degrees Celsius) | MOD11A2 (https://ladsweb.modaps.eosdis.nasa.gov/archive/allData/61/MOD11A2/) |
1000 m |
| Climate | ET | Evapotranspiration potential | MOD16A2 Running et al., 2017 |
500 m |
| Climate | Wind | Wind speed (meters per second) | Worldclim (http://www.worldclim.org) | 1000 m |
| Climate | Water vapor pressure | Water vapor pressure (kPa) | Worldclim (http://www.worldclim.org) | 1000 m |
| Climate | Solar radiation | Solar radiation (kJ m-2 day-1) | Worldclim (http://www.worldclim.org) | 1000 m |
| Accessibility | Villages | Euclidean distance from villages (meters) | INE | 250 m |
| Accessibility | Roads | Euclidean distance from roads (meters) | Open Street Map (Montfort, 2021) | 250 m |
| Accessibility | Rivers | Euclidean distance from rivers (meters) | FAO, WORLD BANK | 250 m |
| Accessibility | Agriculture | Euclidean distance from agricultural fields (meters) | CENACARTA | 30 m |
| Demography | Population | Population density (people/km2) | (Tiecke et al., 2017) | 30 m |
| Hunting | Hunting Traps | Trap density (trap/km2) | PNAG | 30 m |
| MFRI class | Burned area (km2) | Burned area (%) |
|---|---|---|
| 0 | 0.25 | 0.003 |
| 1-2 | 3863.01 | 88.46 |
| 3-4 | 314.05 | 7.19 |
| 5-8 | 101.10 | 2.32 |
| 9-12 | 29.84 | 0.68 |
| 13-23 | 16.53 | 0.38 |
| N/A (No data/No fire) | 42.27 | 0.97 |
| Total | 4,367 | 100 |
| Intensity (Megawatts) | Area (km2) | % of the total park area |
|---|---|---|
| N/A (No data/No fire) | 1.66 | 0 |
| Low (5.37-18.75) | 637.53 | 15 |
| Medium (18.76–25.45) | 961.86 | 22 |
| Medium to High (25.46–35.48) | 1201.92 | 28 |
| High (35.49-48.87) | 844.25 | 19 |
| Very High (>48.88) | 719.78 | 16 |
| Total | 4,367 | 100 |
| Density (Fires/km2) | Area (km2) | % |
|---|---|---|
| N/A (No data/No fire) | 14.14 | 0.33% |
| Low (14.86 -114.27) | 812.91 | 18.61% |
| Medium (114.28-163.98) | 894.14 | 20.47% |
| Medium to High (163.99–217.00) | 891.11 | 20.41% |
| High (217.01 -286.60) | 890.49 | 20.39% |
| Very High (>286.60) | 864.22 | 19.79% |
| Total | 4367 | 100 |
| Fire Severity | Area (km2) | % |
|---|---|---|
| Unburned/Regeneration (dNBR>0.099) | 6.95 | 0.16% |
| Low severity (dBNR: 0.1–0.26) | 51.13 | 1.17% |
| Medium severity (dNBR: 0.27–0.43) | 2,463.47 | 56.41% |
| Medium to high severity (dNBR: 0.44-0.65) | 1,832.62 | 41.97% |
| High severity (dNBR>0.66) | 1.53 | 0.04% |
| N/A (No data/no fire) | 11.30 | 0.26% |
| Total | 4367 | 100% |
| Likelihood of fire (fire risk) | Area (km2) | % of the total area |
|---|---|---|
| N/A (No data/no fire) | 67.97 | 2 |
| Very low (0-0.10) | 633.37 | 15 |
| Low (0.11-0.30) | 748.02 | 17 |
| Medium (0.31-0.50) | 466.57 | 11 |
| Medium to High (0.51-0.70) | 561.53 | 13 |
| High (0.71-0.90) | 1081.90 | 25 |
| Very High (0.91-1.00) | 807.65 | 18 |
| Total | 4367 | 100 |
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