Comparative Analysis of Tree-Based Ensemble Learning Algorithms for Landslide Susceptibility Mapping: A Case Study in Rize, Turkey
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Landslide Inventory Map
2.3. Data Preparation for Landslide Conditioning Factors
2.4. Multicollinearity Analysis
2.5. Model Validation
2.6. Machine Learning Methods
2.6.1. Random Forest (RF)
2.6.2. Gradient Boosting Machine (GBM)
2.6.3. Extreme Gradient Boosting (XGBoost)
2.6.4. Categorical Boosting (CatBoost)
3. Results and Discussion
3.1. Multicollinearity Analysis of Conditioning Factors
3.2. Landslide Susceptibility Maps
3.3. Landslide Susceptibility Map Rationality
3.4. Landslide Conditioning Factors Analysis
3.5. Models Validation and Comparison
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Factors | Source | Scale/Resolution | Sub-Classes | Reference | |||
---|---|---|---|---|---|---|---|
Altitude (m) | DEM | 10 m | 1 | 0–300 | 6 | 1500–1800 | [31,67,68] |
2 | 300–600 | 7 | 1800–2100 | ||||
3 | 600–900 | 8 | 2100–2400 | ||||
4 | 900–1200 | 9 | 2400–2700 | ||||
5 | 1200–1500 | 10 | 2700–3497.38 | ||||
Aspect | DEM | 10 m | 1 | Flat | 6 | South | [16,29,36,69] |
2 | North | 7 | South West | ||||
3 | North East | 8 | West | ||||
4 | East | 9 | North West | ||||
5 | South East | ||||||
Distance to drainage (m) | DEM | 10 m | 1 | 0–100 | 6 | 500–600 | [16,19,35,70] |
2 | 100–200 | 7 | 600–700 | ||||
3 | 200–300 | 8 | 700–800 | ||||
4 | 300–400 | 9 | 800–900 | ||||
5 | 400–500 | 10 | 900–1090.18 | ||||
Distance to faults (m) | GDMRE, Türkiye | 1:100,000 | 1 | 0–1000 | 6 | 5000–6000 | [16,19,71,72] |
2 | 1000–2000 | 7 | 6000–7000 | ||||
3 | 2000–3000 | 8 | 7000–8000 | ||||
4 | 3000–4000 | 9 | 8000–9000 | ||||
5 | 4000–5000 | 10 | 9000–16,500.94 | ||||
Distance to roads (m) | digital road network (Basarsoft Inc., Ankara, Turkey) | 10 m | 1 | 0–200 | 6 | 1000–1200 | [16,19,73,74] |
2 | 200–400 | 7 | 1200–1400 | ||||
3 | 400–600 | 8 | 1400–1600 | ||||
4 | 600–800 | 9 | 1600–1800 | ||||
5 | 800–1000 | 10 | 1800–8658.22 | ||||
Land cover | ESRI Land Cover | 10 m | 1 | Water | 7 | Built Area | [23,34,46,75] |
2 | Trees | 8 | Bare ground | ||||
3 | Grass (Rangeland) | 9 | Snow/ice | ||||
5 | Crops | ||||||
6 | Scrub/shrub | ||||||
Lithology | GDMRE, Türkiye | 1:100,000 | Presented in Figure 2. | [56] | |||
LS-factor | DEM | 10 m | 1 | 0.003–13.938 | 5 | 76.648–118.455 | [40,67,76,77] |
2 | 13.938–30.196 | 6 | 118.455–190.456 | ||||
3 | 30.196–48.777 | 7 | 190.456–592.265 | ||||
4 | 48.777–76.648 | ||||||
Plan curvature | DEM | 10 m | 1 | <0 (concave) | [3,69,78] | ||
2 | 0 (flat) | ||||||
3 | >0 (convex) | ||||||
Profile curvature | DEM | 10 m | 1 | <0 (concave) | [3,69,78] | ||
2 | 0 (flat) | ||||||
3 | >0 (convex) | ||||||
Slope (°) | DEM | 10 m | 1 | 0–5 | 6 | 25–30 | [16,69,79,80] |
2 | 5–10 | 7 | 30–35 | ||||
3 | 10–15 | 8 | 35–40 | ||||
4 | 15–20 | 9 | 40–45 | ||||
5 | 20–25 | 10 | 45–75.82 | ||||
TCD (%) | Copernicus Land Monitoring Service | 10 m | 1 | 0–10 | 6 | 50–60 | [26,81,82] |
2 | 10–20 | 7 | 60–70 | ||||
3 | 20–30 | 8 | 70–80 | ||||
4 | 30–40 | 9 | 80–90 | ||||
5 | 40–50 | 10 | 90–100 | ||||
TPI | DEM | 10 m | 1 | −58.711–15.402 | 5 | 5.113–11.381 | [3,35,83] |
2 | −15.402–6.854 | 6 | 11.381–20.499 | ||||
3 | −6.854–0.586 | 7 | 20.499–86.602 | ||||
4 | −0.586–5.113 | ||||||
TWI | DEM | 10 m | 1 | 0.869–4.627 | 5 | 9.548–12.591 | [19,35,84] |
2 | 4.627–5.880 | 6 | 12.591–16.796 | ||||
3 | 5.880–7.401 | 7 | 16.796–23.686 | ||||
4 | 7.401–9.548 |
Conditioning Factors | VIF | TOL |
---|---|---|
Altitude (m) | 2.29424 | 0.43587 |
Aspect | 1.04426 | 0.95762 |
Distance to drainage (m) | 1.10645 | 0.90379 |
Distance to faults (m) | 1.18195 | 0.84606 |
Distance to roads (m) | 2.25385 | 0.44369 |
Land cover | 1.17820 | 0.84875 |
Lithology | 1.11000 | 0.90090 |
LS-factor | 3.01434 | 0.33175 |
Plan curvature | 1.31931 | 0.75797 |
Profile curvature | 1.15036 | 0.86929 |
Slope (°) | 3.61071 | 0.27695 |
TCD | 1.13473 | 0.88126 |
TPI | 1.85399 | 0.53938 |
TWI | 3.13184 | 0.31930 |
ML Model | Susceptibility Level | Area Percentage (%) | Landslide Pixel | Landslide Percentage (%) | Frequency Ratio |
---|---|---|---|---|---|
RF | Very low | 62.17 | 31 | 0.049 | 0.0008 |
Low | 19.27 | 501 | 0.807 | 0.0419 | |
Moderate | 9.55 | 1695 | 2.729 | 0.2858 | |
High | 5.45 | 5988 | 9.646 | 1.7699 | |
Very high | 3.56 | 53,874 | 86.769 | 24.3733 | |
GBM | Very low | 20.76 | 2 | 0.003 | 0.0001 |
Low | 40.48 | 47 | 0.076 | 0.0019 | |
Moderate | 19.85 | 960 | 1.546 | 0.0779 | |
High | 12.06 | 5906 | 9.512 | 0.7887 | |
Very high | 6.85 | 55,174 | 88.863 | 12.9727 | |
XGBoost | Very low | 14.08 | 0 | 0 | 0 |
Low | 53.77 | 7 | 0.011 | 0.0002 | |
Moderate | 17.53 | 306 | 0.493 | 0.0281 | |
High | 9.36 | 3383 | 5.449 | 0.5822 | |
Very high | 5.26 | 58,393 | 94.047 | 17.8796 | |
CatBoost | Very low | 13.40 | 0 | 0 | 0 |
Low | 52.48 | 5 | 0.008 | 0.0001 | |
Moderate | 18.47 | 219 | 0.353 | 0.0191 | |
High | 10.29 | 3328 | 5.360 | 0.5209 | |
Very high | 5.36 | 58,537 | 94.279 | 17.5894 |
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Yavuz Ozalp, A.; Akinci, H.; Zeybek, M. Comparative Analysis of Tree-Based Ensemble Learning Algorithms for Landslide Susceptibility Mapping: A Case Study in Rize, Turkey. Water 2023, 15, 2661. https://doi.org/10.3390/w15142661
Yavuz Ozalp A, Akinci H, Zeybek M. Comparative Analysis of Tree-Based Ensemble Learning Algorithms for Landslide Susceptibility Mapping: A Case Study in Rize, Turkey. Water. 2023; 15(14):2661. https://doi.org/10.3390/w15142661
Chicago/Turabian StyleYavuz Ozalp, Ayse, Halil Akinci, and Mustafa Zeybek. 2023. "Comparative Analysis of Tree-Based Ensemble Learning Algorithms for Landslide Susceptibility Mapping: A Case Study in Rize, Turkey" Water 15, no. 14: 2661. https://doi.org/10.3390/w15142661