Comparison of Physical-Based Models to Measure Forest Resilience to Fire as a Function of Burn Severity
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Site Description
2.2. Sentinel-2 Imagery, Processing and Burn Severity Calculation
2.3. Physical-Based Models
2.3.1. Multiple Endmember Spectral Mixture Analysis (MESMA)
2.3.2. Hybrid Radiative Transfer Model (RTM) Inversion
2.4. FVC Retrieval Validation
2.5. Data Analyses
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Leaf Model (PROSPECT-D) | Unit | Value or Range |
---|---|---|
Structure index | unitless | 1.5–2.5 |
Chlorophyll content | µg cm−2 | 10–70 |
Dry matter content | g cm−2 | 0.005–0.015 |
Water content | g cm−2 | 0.005–0.015 |
Carotenoid content | µg cm−2 | 5–40 |
Anthocyanin content | µg cm−2 | 0–60 |
Brown pigment fraction | unitless | 0–1 |
Canopy model (4SAIL) | Unit | Value or range |
Leaf area index | m2 m−2 | 0.1–3 |
Average leaf angle | degrees | 20–90 |
Diffuse/direct radiation | unitless | 0.1 |
Hot spot effect | unitless | 0.001–1 |
Soil brightness factor | unitless | 0–1 |
Fraction of vegetation cover | unitless | 0–1 |
Solar zenith angle | degrees | Imagery metadata |
Observation zenith angle | degrees | Imagery metadata |
Sun-sensor azimuth angle | degrees | Imagery metadata |
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Fernández-Guisuraga, J.M.; Suárez-Seoane, S.; Quintano, C.; Fernández-Manso, A.; Calvo, L. Comparison of Physical-Based Models to Measure Forest Resilience to Fire as a Function of Burn Severity. Remote Sens. 2022, 14, 5138. https://doi.org/10.3390/rs14205138
Fernández-Guisuraga JM, Suárez-Seoane S, Quintano C, Fernández-Manso A, Calvo L. Comparison of Physical-Based Models to Measure Forest Resilience to Fire as a Function of Burn Severity. Remote Sensing. 2022; 14(20):5138. https://doi.org/10.3390/rs14205138
Chicago/Turabian StyleFernández-Guisuraga, José Manuel, Susana Suárez-Seoane, Carmen Quintano, Alfonso Fernández-Manso, and Leonor Calvo. 2022. "Comparison of Physical-Based Models to Measure Forest Resilience to Fire as a Function of Burn Severity" Remote Sensing 14, no. 20: 5138. https://doi.org/10.3390/rs14205138
APA StyleFernández-Guisuraga, J. M., Suárez-Seoane, S., Quintano, C., Fernández-Manso, A., & Calvo, L. (2022). Comparison of Physical-Based Models to Measure Forest Resilience to Fire as a Function of Burn Severity. Remote Sensing, 14(20), 5138. https://doi.org/10.3390/rs14205138