Tropical Forest Fire Susceptibility Mapping at the Cat Ba National Park Area, Hai Phong City, Vietnam, Using GIS-Based Kernel Logistic Regression
Abstract
:1. Introduction
2. Study Area and Data
2.1. Description of the Study Area
2.2. Data Collection and Pre-Processing
2.2.1. Forest Fire Database
2.2.2. Fire Ignition Factors
3. Methodology
3.1. Kernel Logistic Regression
3.2. Preparation of the Training and the Validation Dataset
3.3. Performance Assessment
4. Results and Discussion
5. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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No. | Forest Fire Related Factor | Predictive Power Value |
---|---|---|
1 | NVDI (Normalized Difference Vegetation Index) | 0.702 |
2 | TWI (Topographic Wetness Index) | 0.681 |
3 | Land cover | 0.188 |
4 | Surface temperature | 0.149 |
5 | Aspect | 0.110 |
6 | Distance to populated area | 0.099 |
7 | Slope | 0.084 |
8 | Distance to roads | 0.070 |
9 | Rainfall | 0.051 |
10 | Wind speed | 0.001 |
Parameter | Training Data | Validation Data | ||
---|---|---|---|---|
Kernel Logistic Regression | Support Vector Machine | Kernel Logistic Regression | Support Vector Machine | |
Sensitivity (%) | 92.86 | 85.71 | 87.50 | 87.50 |
Specificity (%) | 85.71 | 85.71 | 75.00 | 75.00 |
PPV (%) | 86.67 | 85.71 | 77.78 | 77.78 |
NPV (%) | 92.31 | 85.71 | 85.71 | 85.71 |
Overall accuracy (%) | 89.29 | 85.71 | 81.25 | 81.25 |
Kappa index | 0.785 | 0.714 | 0.625 | 0.625 |
No. | Susceptibility Index Range | Fire Susceptibility (%) | Verbal Expression | Areas (km2) |
---|---|---|---|---|
1 | 0.903–0.746 | 100%–95% | Extremely high | 10.5 |
2 | 0.746–0.703 | 90%–95% | Very high | 10.5 |
3 | 0.703–0.614 | 75%–90% | High | 31.2 |
4 | 0.614–0.536 | 55%–75% | Medium | 41.8 |
5 | 0.536–0.372 | 30%–55% | Low | 52.2 |
6 | 0.372–0.065 | 0–30% | Very low | 62.7 |
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Tien Bui, D.; Le, K.-T.T.; Nguyen, V.C.; Le, H.D.; Revhaug, I. Tropical Forest Fire Susceptibility Mapping at the Cat Ba National Park Area, Hai Phong City, Vietnam, Using GIS-Based Kernel Logistic Regression. Remote Sens. 2016, 8, 347. https://doi.org/10.3390/rs8040347
Tien Bui D, Le K-TT, Nguyen VC, Le HD, Revhaug I. Tropical Forest Fire Susceptibility Mapping at the Cat Ba National Park Area, Hai Phong City, Vietnam, Using GIS-Based Kernel Logistic Regression. Remote Sensing. 2016; 8(4):347. https://doi.org/10.3390/rs8040347
Chicago/Turabian StyleTien Bui, Dieu, Kim-Thoa Thi Le, Van Cam Nguyen, Hoang Duc Le, and Inge Revhaug. 2016. "Tropical Forest Fire Susceptibility Mapping at the Cat Ba National Park Area, Hai Phong City, Vietnam, Using GIS-Based Kernel Logistic Regression" Remote Sensing 8, no. 4: 347. https://doi.org/10.3390/rs8040347