Assessment of Landslide Susceptibility Using Statistical- and Artificial Intelligence-Based FR–RF Integrated Model and Multiresolution DEMs
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Collection (Landslide Inventory Map and Landslide Conditioning Factors [LCFs])
2.3. Methodology
2.4. Models
2.4.1. FR
2.4.2. RF
2.4.3. Ensemble of FR and RF (FR–RF)
2.5. Validation of models
3. Results
3.1. Multicollinearity Test
3.2. Application of FR Model
3.3. Application of RF Model
3.4. Application of FR–RF Integrated Model
3.5. Model Validation
4. Discussion
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Code | Description | Formation | Age |
---|---|---|---|
Qm | Swamp and shale | - | Quaternary |
Plc | Polymictic conglomerate and sandstone | - | Pliocene |
Mm, s, l | Marl, calcareous sandstone, sandy limestone and minor conglomerate | - | Miocene |
PeEm | Marl and gypsiferous marl locally gypsiferous mudstone | - | Paleocene–Eocene |
K2l2 | Thick-bedded to massive limestone | - | Late Cretaceous |
K2l1 | Hyporite-bearing limestone | - | Late Cretaceous |
DCkh | Yellowish, thin to thick-bedded, fossiliferous argillaceous limestone, dark grey limestone, greenish marl and shale, locally including gypsum | - | Devonian |
Pel | Medium to thick-bedded limestone | - | Paleocene–Eocene |
Jk | Conglomerate, sandstone and shale with plant remains and coal seams | Kashafrud | Middle Jurassic |
Jl | Light grey, thin-bedded to massive limestone | Lar | Jurassic–Cretaceous |
TRJs | Dark grey shale and sandstone | Shemshad | Triassic–Jurassic |
Ktzl | Thick-bedded to massive, white to pinkish orbitolina bearing limestone | Tizkuh | Early Cretaceous |
Factor | Source | Resolution | Classes | Method | Reference |
---|---|---|---|---|---|
Elevation | PALSAR, ASTER and SRTM DEMs | 12.5, 30 and 90 m | (1) <338 m; (2) 338–536 m; (3) 536–721 m; (4) 721–909 m; (5) 909–1136 m; (6) >1136 m | Natural break | [4] |
Slope | PALSAR, ASTER and SRTM DEMs | 12.5, 30 and 90 m | (1) <7.1°; (2) 7.1°–13°; (3) 13°–18.8°; (4) 18.8°–25.2°; (5) 25.2°–32.6°; (6) >32.6° | Natural break | [78] |
Aspect | PALSAR, ASTER and SRTM DEMs | 12.5, 30 and 90 m | (1) Flat (−1°); (2) North (337.5°–360°, 0°–22.5°); (3) Northeast (22.5°–67.5°); (4) East (67.5°–112.5°; (5) Southeast (112.5°–157.5°); (6) South (157.5°–202.5°); (7) Southwest (202.5°–247.5°); (8) West (247.4°–292.5°); (9) Northwest (292.5°–337.5°) | Equal interval | [12] |
Convergence index | PALSAR, ASTER and SRTM DEMs | 12.5, 30 and 90 m | (1) <−29.41); (2) −29.41 to −9.01; (3) −9.01 to 7.45; (4) 7.45–27.84; (5) >27.84 | Natural break | [4] |
SL | PALSAR, ASTER and SRTM DEMs | 12.5, 30 and 90 m | (1) <22.06 m; (2) 22.06–50.3 m; (3) 50.3–77.9 m; (4) 77.9–103.4 m; (5) >103.4 m | Natural break | [79] |
Plan curvature | PALSAR, ASTER and SRTM DEMs | 12.5, 30 and 90 m | (1) Concave (<0); (2) Flat (0); (3) Convex (>0) | Natural break | [45] |
Profile curvature | PALSAR, ASTER and SRTM DEMs | 12.5, 30 and 90 m | (1) <−1.13; (2) −1.13 to −0.35; (3) −0.35 to 0.28; (4) 0.28–1.12; (5) >1.12 | Natural break | [80] |
Drainage density | PALSAR, ASTER and SRTM DEMs | 12.5, 30 and 90 m | (1) <0.38 km/km2; (2) 0.38–0.74 km/km2; (3) 0.74–1.12 k m/km2; (4) >1.12 km/km2 | Natural break | [60] |
Distance to stream | PALSAR, ASTER and SRTM DEMs | 12.5, 30 and 90 m | (1) < 227 m; (2) 227–483 m; (3) 483–745 m; (4) 745–1035 m; (5) >1035 m | Natural break | [81] |
Distance to road | Topographic map | 1:50,000 | (1) <1,204 m; (2) 1204–2564 m; (3) 2564–4041 m; (4) 4041–5712 m; (5) >5712 m | Natural break | [45] |
Distance to fault | Geological map | 1:100,000 | (1) <649 m; (2) 649–1492 m; )3) 1492–2575 m; (4) 2575–3924 m; (5) >3924 m | Natural break | [82] |
Lithology | Geology map | 1:100,000 | (1) DCkh; (2) Jk; (3) Jl; (4) K2l1; (5) K2l2; (6) Ktzl; (7) Mm, s, l; (8) PeEm; (9) Pel; (10) Plc; (11) Qm; (12) TRJs | Lithological units | - |
Rainfall | Raining data | - | (1) <798.3 mm; (2) 798.3–911 mm; (3) 911–1041.3 mm; (4) 1041–1196 mm; (5) >1196 m m | Natural break | [45] |
LU/LC | Landsat-8 image | 30 m | (1) Agriculture; (2) Dense forest; (3) Low forest; (4) Agri-orchard; (5) Agri-forest; (6); Dry farming forest; (7) Water | Supervisedclassification | - |
NDVI | Landsat-8 image | 30 m | (1) <0.3; (2) 0.3–0.43; (3) >0.43 | Natural break | [12] |
Model | Unstandardised Coefficients | Standardised Coefficients | t | Sig. | Collinearity Statistics | ||
---|---|---|---|---|---|---|---|
B | Std. Error | Beta | Tolerance (TOL) | Variance Inflation Factor (VIF) | |||
(Constant) | 1.163 | 0.483 | 2.408 | 0.017 | |||
Slope | −0.010 | 0.009 | −0.157 | −1.070 | 0.286 | 0.154 | 6.510 |
Stream power index (SPI) | 0.034 | 0.057 | 0.125 | 0.590 | 0.556 | 0.074 | 13.476 |
Topographic wetness index (TWI) | −0.059 | 0.052 | −0.262 | −1.143 | 0.255 | 0.063 | 15.948 |
LS | 0.001 | 0.001 | 0.062 | 1.039 | 0.300 | 0.939 | 1.064 |
NDVI | −1.063 | 0.349 | −0.220 | −3.048 | 0.003 | 0.632 | 1.582 |
Plan | 0.057 | 0.060 | 0.082 | 0.944 | 0.346 | 0.442 | 2.264 |
Rainfall | 0.000 | 0.000 | −0.091 | −1.001 | 0.318 | 0.401 | 2.494 |
Convergence | −0.005 | 0.002 | −0.178 | −2.315 | 0.022 | 0.558 | 1.791 |
Elevation | 0.000 | 0.000 | −0.185 | −1.611 | 0.109 | 0.251 | 3.980 |
Dis. to fault | −8.000 × 10−5 | 0.000 | −0.201 | −3.201 | 0.002 | 0.836 | 1.197 |
Dis. to road | −9.013 × 10−6 | 0.000 | −0.036 | −0.514 | 0.608 | 0.691 | 1.447 |
Dis. to stream | 0.000 | 0.000 | 0.129 | 1.557 | 0.121 | 0.479 | 2.087 |
Aspect | −1.151 × 10−5 | 0.000 | −0.002 | −0.040 | 0.968 | 0.955 | 1.047 |
Lithology | 0.024 | 0.045 | 0.042 | 0.547 | 0.585 | 0.565 | 1.769 |
LU/LC | 0.059 | 0.020 | 0.243 | 2.985 | 0.003 | 0.499 | 2.003 |
Profile | −0.0011 | 0.051 | −0.015 | −0.215 | 0.830 | 0.689 | 1.452 |
Drainage | 0.217 | 0.107 | 0.176 | 2.020 | 0.045 | 0.437 | 2.286 |
Factor | Classes | Pixels in Domain | Landslides | FR | |||
---|---|---|---|---|---|---|---|
No. | % | No. | % | ||||
Elevation (m) | <338 | 137,911 | 11.5753 | 33 | 37.0787 | 3.2032 | |
338–536 | 234,710 | 19.7000 | 22 | 24.7191 | 1.2548 | ||
536–721 | 259,859 | 21.8108 | 21 | 23.5955 | 1.0818 | ||
721–909 | 263,398 | 22.1079 | 8 | 8.9888 | 0.4066 | ||
909–1136 | 190,367 | 15.9781 | 4 | 4.4944 | 0.2813 | ||
>1136 | 105,177 | 8.8279 | 1 | 1.1236 | 0.1273 | ||
Slope (°) | <7.1 | 182,669 | 15.3320 | 13 | 14.6067 | 0.9527 | |
7.1–13 | 291,575 | 24.4729 | 32 | 35.9551 | 1.4692 | ||
13–18.8 | 278,341 | 23.3621 | 23 | 25.8427 | 1.1062 | ||
18.8–25.2 | 219,564 | 18.4287 | 11 | 12.3596 | 0.6707 | ||
25.2–32.6 | 153,604 | 12.8925 | 5 | 5.6180 | 0.4358 | ||
>32.6 | 65,669 | 5.5118 | 5 | 5.6180 | 1.0193 | ||
Aspect | F | 132,288 | 9.8337 | 6 | 6.1856 | 0.6290 | |
N | 255,671 | 19.0054 | 10 | 10.3093 | 0.5424 | ||
NE | 92,803 | 6.8986 | 8 | 8.2474 | 1.1955 | ||
E | 103,340 | 7.6818 | 14 | 14.4330 | 1.8788 | ||
SE | 123,821 | 9.2043 | 9 | 9.2784 | 1.0080 | ||
SE | 125,536 | 9.3318 | 12 | 12.3711 | 1.3257 | ||
SW | 106,245 | 7.8978 | 12 | 12.3711 | 1.5664 | ||
W | 115,393 | 8.5778 | 10 | 10.3093 | 1.2019 | ||
NW | 136,325 | 10.1338 | 8 | 8.2474 | 0.8139 | ||
Convergence (100/m) | <−29.41 | 85,228 | 7.1535 | 9 | 10.1124 | 1.4136 | |
−29.41 to −9.01 | 254,471 | 21.3586 | 14 | 15.7303 | 0.7365 | ||
−9.01 to 7.45 | 471,169 | 39.5469 | 45 | 50.5618 | 1.2785 | ||
7.45–27.84 | 290,876 | 24.4142 | 18 | 20.2247 | 0.8284 | ||
>27.84 | 89,675 | 7.5267 | 3 | 3.3708 | 0.4478 | ||
SL (100/m) | <22.06 | 108,816 | 18.2882 | 12 | 13.4831 | 0.7373 | |
22.06–50.3 | 96,539 | 16.2249 | 9 | 10.1124 | 0.6233 | ||
50.3–77.9 | 107,115 | 18.0023 | 8 | 8.9888 | 0.4993 | ||
77.9–103.4 | 105,363 | 17.7079 | 44 | 49.4382 | 2.7919 | ||
103.4–128.2 | 106,179 | 17.8450 | 16 | 17.9775 | 1.0074 | ||
>128.2 | 70,994 | 11.9316 | 0 | 0.0000 | 0.0000 | ||
Plan curvature (100/m) | Concave | 564,975 | 47.4202 | 41 | 46.0674 | 0.9715 | |
Flat | 37,478 | 3.1457 | 0 | 0.0000 | 0.0000 | ||
Convex | 588,969 | 49.4341 | 48 | 53.9326 | 1.0910 | ||
Profile curvature (100/m) | <−1.13 | 68,989 | 5.7905 | 7 | 7.8652 | 1.3583 | |
−1.13 to −0.35 | 250,549 | 21.0294 | 16 | 17.9775 | 0.8549 | ||
−0.35 to 0.28 | 502,333 | 42.1625 | 42 | 47.1910 | 1.1193 | ||
0.28–1.12 | 292,982 | 24.5910 | 20 | 22.4719 | 0.9138 | ||
>1.12 | 76,569 | 6.4267 | 4 | 4.4944 | 0.6993 | ||
Drainage density (km/km2) | <0.38 | 330,170 | 27.7123 | 5 | 5.6180 | 0.2027 | |
0.38–0.74 | 365,514 | 30.6788 | 18 | 20.2247 | 0.6592 | ||
0.74–1.12 | 320,115 | 26.8683 | 37 | 41.5730 | 1.5473 | ||
>1.12 | 175,623 | 14.7406 | 29 | 32.5843 | 2.2105 | ||
Distance to stream (m) | <227 | 340,196 | 28.5538 | 45 | 50.5618 | 1.7708 | |
227–483 | 304,400 | 25.5493 | 22 | 24.7191 | 0.9675 | ||
483–745 | 260,354 | 21.8524 | 15 | 16.8539 | 0.7713 | ||
745–1035 | 196,123 | 16.4613 | 4 | 4.4944 | 0.2730 | ||
>1035 | 90,349 | 7.5833 | 3 | 3.3708 | 0.4445 | ||
Distance to road (m) | <1204 | 320,797.2 | 26.9256 | 50 | 56.1798 | 2.0865 | |
1204–2564 | 276,105.2 | 23.1744 | 12 | 13.4831 | 0.5818 | ||
2564–4041 | 238,790.2 | 20.0425 | 12 | 13.4831 | 0.6727 | ||
4041–5712 | 199,267.2 | 16.7252 | 6 | 6.7416 | 0.4031 | ||
>5712 | 1,564,62.2 | 13.1324 | 9 | 10.1124 | 0.7700 | ||
Distance to fault (m) | <649 | 494,487 | 41.5039 | 34 | 38.2022 | 0.9204 | |
649–1492 | 329,948 | 27.6936 | 32 | 35.9551 | 1.2983 | ||
1492–2575 | 196,680 | 16.5080 | 19 | 21.3483 | 1.2932 | ||
2575–3924 | 107,320 | 9.0077 | 3 | 3.3708 | 0.3742 | ||
>3924 | 62,987 | 5.2867 | 1 | 1.1236 | 0.2125 | ||
Lithology | DCkh | 112 | 0.0094 | 0 | 0.0000 | 0.0000 | |
Jk | 15,756 | 1.3225 | 1 | 1.1236 | 0.8496 | ||
Jl | 14,742 | 1.2373 | 1 | 1.1236 | 0.9081 | ||
K2l1 | 135,059 | 11.3359 | 3 | 3.3708 | 0.2974 | ||
K2l2 | 45,114 | 3.7866 | 0 | 0.0000 | 0.0000 | ||
Ktzl | 1253 | 0.1052 | 0 | 0.0000 | 0.0000 | ||
Mm, s, l | 803,209 | 67.4160 | 61 | 68.5393 | 1.0167 | ||
PeEm | 9010 | 0.7562 | 0 | 0.0000 | 0.0000 | ||
Pel | 71,877 | 6.0329 | 2 | 2.2472 | 0.3725 | ||
Plc | 56,750 | 4.7632 | 15 | 16.8539 | 3.5384 | ||
Qm | 34,118 | 2.8636 | 6 | 6.7416 | 2.3542 | ||
TRJs | 4422 | 0.3712 | 0 | 0.0000 | 0.0000 | ||
Rainfall (mm) | <798.3 | 448,287 | 37.6262 | 45 | 50.5618 | 1.3438 | |
798.3911 | 305,254 | 25.6210 | 12 | 13.4831 | 0.5263 | ||
911–1041.3 | 195,091 | 16.3746 | 9 | 10.1124 | 0.6176 | ||
1041–1196 | 98,934 | 8.3039 | 2 | 2.2472 | 0.2706 | ||
>1196 | 143,855 | 12.0742 | 21 | 23.5955 | 1.9542 | ||
LU/LC | Agriculture | 976 | 0.0819 | 0 | 0.0000 | 0.0000 | |
Dense forest | 941,148 | 78.9937 | 39 | 43.8202 | 0.5547 | ||
Low forest | 17,995 | 1.5104 | 0 | 0.0000 | 0.0000 | ||
Agri-orchard | 90,665 | 7.6098 | 38 | 42.6966 | 5.6107 | ||
Agri-forest | 183 | 0.0154 | 0 | 0.0000 | 0.0000 | ||
Dry farming forest | 136,585 | 11.4640 | 12 | 13.4831 | 1.1761 | ||
Water | 3870 | 0.3248 | 0 | 0.0000 | 0.0000 | ||
NDVI | <0.3 | 116,202 | 9.7532 | 26 | 29.2135 | 2.9953 | |
0.3–0.43 | 177,729 | 14.9174 | 29 | 32.5843 | 2.1843 | ||
>0.43 | 897,490 | 75.3294 | 34 | 38.2022 | 0.5071 |
Observed | Predicted | |
---|---|---|
0 | 1 | |
0 | 54 | 10 |
1 | 17 | 44 |
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Arabameri, A.; Pradhan, B.; Rezaei, K.; Lee, C.-W. Assessment of Landslide Susceptibility Using Statistical- and Artificial Intelligence-Based FR–RF Integrated Model and Multiresolution DEMs. Remote Sens. 2019, 11, 999. https://doi.org/10.3390/rs11090999
Arabameri A, Pradhan B, Rezaei K, Lee C-W. Assessment of Landslide Susceptibility Using Statistical- and Artificial Intelligence-Based FR–RF Integrated Model and Multiresolution DEMs. Remote Sensing. 2019; 11(9):999. https://doi.org/10.3390/rs11090999
Chicago/Turabian StyleArabameri, Alireza, Biswajeet Pradhan, Khalil Rezaei, and Chang-Wook Lee. 2019. "Assessment of Landslide Susceptibility Using Statistical- and Artificial Intelligence-Based FR–RF Integrated Model and Multiresolution DEMs" Remote Sensing 11, no. 9: 999. https://doi.org/10.3390/rs11090999
APA StyleArabameri, A., Pradhan, B., Rezaei, K., & Lee, C. -W. (2019). Assessment of Landslide Susceptibility Using Statistical- and Artificial Intelligence-Based FR–RF Integrated Model and Multiresolution DEMs. Remote Sensing, 11(9), 999. https://doi.org/10.3390/rs11090999