Landslide Susceptibility Mapping and Interpretation in the Upper Minjiang River Basin
Abstract
:1. Introduction
2. Study Area
3. Research Data and Methods
3.1. Data
3.2. Study Methods
3.2.1. Weight of Evidence Model
3.2.2. Random Forest Model
3.2.3. WOE-RF Model
3.2.4. Accuracy Validation of WOE-RF Model
3.2.5. Landslide Susceptibility Classification
4. Results
4.1. Landslide Background Factors Pretreatment
4.2. Acquisition of Weights for Landslide Background Factors
4.3. Landslide Susceptibility Evaluation by WOF-RF Model
4.3.1. Comparison of Rainfall and Seismic Landslide Posteriori Probability Calculation and Zoning
4.3.2. Comparison of Landslide Susceptibility Areas from Two Methods
4.3.3. WOF-RF Model Accuracy Evaluation
- (1)
- Confusion matrix
- (2)
- ROC curve
5. Discussion
5.1. Comparison of Rainfall and Seismic Landslide Susceptibility in the Upper Reaches of Minjiang River Basin
5.2. Comparison of Two Mapping Methods for Landslide Susceptibility in the Upper Minjiang River Basin
5.3. Limitations and Prospects
6. Conclusions
- (1)
- In terms of model construction, the event impact factors entered into the machine learning model in previous studies are often assigned weights by the expert scoring method, AHP, and other biased subjective methods. In this research, we used a purely data-driven weight of evidence method without human intervention to assign corresponding weights to each factor to participate in the calculation of the model, and the factor weights obtained from weight of evidence are the expression of the spatial relationship between landslides and the factors influencing the occurrence of the landslides, which can reduce the redundancy of the data input to the machine learning model to a certain extent.
- (2)
- In terms of spatial location distribution, rainfall and seismic landslides have the following points in common: they are prone to occur along rivers; landslides are more likely to occur in Maoxian, Lixian, Wenchuanxian, and Dujiangyancity, while landslides are less likely to occur in Songpanxian; and landslides are more likely to occur in the southeast of the line from Xuebaoding to Lixian. In terms of the distribution of geological factors, seismic landslides are distributed at a slightly higher elevation than rainfall landslides, whilst land use and lithological conditions in both susceptible areas are similar.
- (3)
- The differences between the landslide susceptibility maps obtained by superimposing rainfall and seismic landslide susceptibility maps and the result obtained by directly using unclassified landslides are large, which is mainly caused by the difference in the principles of the two mapping methods and shows that it is important to see whether it is necessary to differentiate the types of landslides for solving the problems in different contexts.
- (4)
- The accuracy of the rainfall, seismic, and unclassified landslide models calculated from the confusion matrix are all above 80%, and the AUC area is greater than 0.9, both of which indicate the high accuracy of the WOE-RF model.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Data | Source |
---|---|
Rainfall landslides | Ministry of Land and Resources of China: Survey and mapping of 1:100,000 landslides in China from 1999 to 2008 [41] |
Seismic landslides | Ministry of Land and Resources of China: Investigation of Landslide Hazard Caused by 2008 Wenchuan Earthquake in China [41] |
Factors related to landslide occurrence | DTM image with 90 m spatial resolution [41] |
NDVI | Resource and environmental science data registration and publishing system [44] |
Evidence Factors | Classification of Factors | Weight | |||
---|---|---|---|---|---|
Aspect | Lithology | ||||
Flat | 1 | 0.0007 | Sandstone, siltstone interbedded with phyllite | 1 | −0.9971 |
N | 2 | −0.6819 | Shale, phyllite, and siltstone | 2 | −1.7158 |
NE | 3 | 0.0007 | Granitic rocks | 3 | −0.1886 |
E | 4 | 0.0007 | Syenite | 4 | −0.1886 |
SE | 5 | 0.3216 | Diorite | 5 | 1.4918 |
S | 6 | 0.0007 | Limestone and sandstone | 6 | 0.8567 |
SW | 7 | 0.0007 | Unconsolidated deposits | 7 | −0.1886 |
W | 8 | 0.0007 | Sandstone, siltstone, and shale | 8 | −0.1886 |
NW | 9 | 0.0007 | Limestone intercalated with shale | 9 | 0.5665 |
NDVI | Limestone, sandstone, and shale | 10 | −0.1886 | ||
(46, 396.9) | 1 | −0.1110 | Limestone and dolomite intercalated with phyllite | 11 | 0.9109 |
(396.9, 747.8) | 2 | −0.1110 | Dolomite, silicalite, phyllite, sandstone, and siltstone | 12 | 0.7918 |
(747.8, 1098.8) | 3 | −0.1110 | Amphibolite | 13 | 1.8850 |
(1098.8, 1449.7) | 4 | −0.1110 | Sandstone and siltstone intercalated with slate | 14 | −0.1886 |
(1449.7, 1800.6) | 5 | −0.1110 | Sandstone and siltstone interbedded with shale | 15 | −0.1886 |
(1800.6, 2151.5) | 6 | −0.1110 | Profile curve | ||
(2151.5, 2502.4) | 7 | −0.1110 | (−38.6, −28.6) | 1 | −1.6067 |
(2502.4, 2853.4) | 8 | 1.0049 | (−28.6, −18.6) | 2 | −1.6067 |
(2853.4, 3204.3) | 9 | 0.8565 | (−18.6, −8.6) | 3 | 2.0356 |
(3204.3, 3555.2) | 10 | 0.8724 | (−8.6, 2.6) | 4 | −0.0839 |
(3555.2, 3906.1) | 11 | −0.1110 | (2.6, 12.6) | 5 | 0.8969 |
(3906.1, 4257.0) | 12 | −0.1110 | (12.6, 22.6) | 6 | 2.3935 |
(4257.0, 4608.0) | 13 | 0.7309 | (22.6, 32.6) | 7 | −1.6067 |
(4608.0, 4958.9) | 14 | 0.7546 | (32.6, 44.3) | 8 | −1.6067 |
(4958.9, 5309.8) | 15 | −0.1110 | Curvature | ||
(5309.8, 5660.7) | 16 | −0.1110 | (−87, −71) | 1 | −2.0171 |
(5660.7, 6011.6) | 17 | −0.1110 | (−71, −55) | 2 | −2.0171 |
(6011.6, 6362.6) | 18 | 0.4277 | (−55, −39) | 3 | −2.0171 |
(6362.6, 6713.5) | 19 | −0.1110 | (−39, −23) | 4 | −2.0171 |
(6713.5, 7064.4) | 20 | −0.1110 | (−23, −7) | 5 | 1.1956 |
(7064.4, 7415.3) | 21 | −0.1110 | (−7, 9) | 6 | −0.0528 |
(7415.3, 7766.2) | 22 | −0.2762 | (9, 26) | 7 | 1.5568 |
(7766.2, 8117.2) | 23 | −0.2694 | (26, 42) | 8 | −2.0171 |
(8117.2, 8468.1) | 24 | −0.1110 | (42, 58) | 9 | −2.0171 |
(8468.1, 8819.0) | 25 | 0.7211 | (58, 73) | 10 | −2.0171 |
Elevation | Land use | ||||
(712.0, 1132.5) | 1 | 2.7367 | Garden plot | 1 | −0.5322 |
(1132.5, 1553.0) | 2 | 2.9041 | Woodland | 2 | 0.1154 |
(1553.0, 1973.5) | 3 | 2.2586 | Land for water bodies and water conservancy facilities | 3 | −4.4595 |
(1973.5, 2394.0) | 4 | 1.0646 | Grassland | 4 | 1.7991 |
(2394.0, 2814.5) | 5 | −1.7875 | Commercial area | 5 | 3.0203 |
(2814.5, 3235.0) | 6 | −1.3411 | Land for industrial and mining warehousing | 6 | −4.4595 |
(3235.0, 3655.5) | 7 | −2.9547 | Other land | 7 | −4.4595 |
(3655.5, 4076.0) | 8 | −1.7875 | Distance to faults | ||
(4076.0, 4496.5) | 9 | −1.7875 | (0, 17.8) | 1 | 0.6291 |
(4496.5, 4917.0) | 10 | −2.8276 | (17.8, 35.6) | 2 | 0.4427 |
(4917.0, 5337.5) | 11 | −1.7875 | (35.6, 53.4) | 3 | −0.7052 |
(5337.5, 5758.0) | 12 | −1.7875 | (53.4, 71.2) | 4 | −0.3361 |
Slope | (71.2, 89.0) | 5 | −0.3361 | ||
(0, 10) | 1 | 0.9478 | (89.0, 106.8) | 6 | −1.1051 |
(10, 20) | 2 | −0.6397 | (106.8, 124.6) | 7 | −0.8145 |
(20, 30) | 3 | −0.3065 | (124.6, 142.4) | 8 | −1.4800 |
(30, 40) | 4 | −0.1079 | (142.4, 160.2) | 9 | −1.1470 |
(40, 50) | 5 | 0.3697 | (160.2, 178) | 10 | −1.8685 |
(50, 60) | 6 | 0.7293 | (178, 195.8) | 11 | −1.0934 |
(60, 70) | 7 | 1.3741 | (195.8, 213.6) | 12 | −1.0272 |
(70, 80) | 8 | −0.1079 | (213.6, 231.4) | 13 | −0.3361 |
(80, 90) | 9 | −0.1079 | (231.4, 249.2) | 14 | −0.3361 |
(249.2, 267.0) | 15 | −0.3361 |
Evidence Factors | Classification of Factors | Weight | |||
---|---|---|---|---|---|
Aspect | Lithology | ||||
Flat | 1 | −0.0223 | Sandstone, siltstone interbedded with phyllite | 1 | −0.7654 |
N | 2 | −0.0223 | Shale, phyllite, and siltstone | 2 | −2.2745 |
NE | 3 | −0.0223 | Granitic rocks | 3 | 0.1397 |
E | 4 | 0.2072 | Syenite | 4 | −2.7594 |
SE | 5 | 0.2476 | Diorite | 5 | 1.6636 |
S | 6 | 0.1265 | Limestone and sandstone | 6 | 0.4612 |
SW | 7 | −0.1626 | Unconsolidated deposits | 7 | −3.2859 |
W | 8 | −0.3399 | Sandstone, siltstone, and shale | 8 | 0.0117 |
NW | 9 | −0.2294 | Limestone intercalated with shale | 9 | 0.0117 |
NDVI | Limestone, sandstone, and shale | 10 | 0.0117 | ||
(46, 396.9) | 1 | 0.0249 | Limestone and dolomite intercalated with phyllite | 11 | 0.7738 |
(396.9, 747.8) | 2 | 0.0249 | Dolomite, silicalite, phyllite, sandstone, and siltstone | 12 | 1.0732 |
(747.8, 1098.8) | 3 | −3.2095 | Amphibolite | 13 | 2.0384 |
(1098.8, 1449.7) | 4 | −2.3885 | Sandstone and siltstone intercalated with slate | 14 | 0.0117 |
(1449.7, 1800.6) | 5 | −1.2734 | Sandstone and siltstone interbedded with shale | 15 | 0.0117 |
(1800.6, 2151.5) | 6 | −0.9951 | Profile curve | ||
(2151.5, 2502.4) | 7 | −0.5969 | (−38.6, −28.6) | 1 | 1.0324 |
(2502.4, 2853.4) | 8 | 0.0249 | (−28.6, −18.6) | 2 | 1.0324 |
(2853.4, 3204.3) | 9 | 0.0249 | (−18.6, −8.6) | 3 | 2.0926 |
(3204.3, 3555.2) | 10 | 0.0249 | (−8.6, 2.6) | 4 | −0.1531 |
(3555.2, 3906.1) | 11 | 0.0249 | (2.6, 12.6) | 5 | 1.4408 |
(3906.1, 4257.0) | 12 | 0.0249 | (12.6, 22.6) | 6 | 2.3560 |
(4257.0, 4608.0) | 13 | 0.3107 | (22.6, 32.6) | 7 | 1.0324 |
(4608.0, 4958.9) | 14 | 0.2456 | (32.6, 44.3) | 8 | 1.0324 |
(4958.9, 5309.8) | 15 | 0.0249 | Curvature | ||
(5309.8, 5660.7) | 16 | 0.4826 | (−87, −71) | 1 | 0.6172 |
(5660.7, 6011.6) | 17 | 0.2905 | (−71, −55) | 2 | 0.6172 |
(6011.6, 6362.6) | 18 | 0.1779 | (−55, −39) | 3 | 0.6172 |
(6362.6, 6713.5) | 19 | 0.2509 | (−39, −23) | 4 | 0.6172 |
(6713.5, 7064.4) | 20 | 0.0249 | (−23, −7) | 5 | 1.5330 |
(7064.4, 7415.3) | 21 | 0.0249 | (−7, 9) | 6 | −0.0776 |
(7415.3, 7766.2) | 22 | −0.2809 | (9, 26) | 7 | 1.8013 |
(7766.2, 8117.2) | 23 | −0.1779 | (26, 42) | 8 | 0.6172 |
(8117.2, 8468.1) | 24 | 0.1977 | (42, 58) | 9 | 0.6172 |
(8468.1, 8819.0) | 25 | 0.7341 | (58, 73) | 10 | 0.6172 |
Elevation | Land use | ||||
(712.0, 1132.5) | 1 | 2.2752 | Garden plot | 1 | −0.6334 |
(1132.5, 1553.0) | 2 | 2.5161 | Woodland | 2 | 0.3175 |
(1553.0, 1973.5) | 3 | 1.9906 | Land for water bodies and water conservancy facilities | 3 | −1.1400 |
(1973.5, 2394.0) | 4 | 1.3606 | Grassland | 4 | 1.2023 |
(2394.0, 2814.5) | 5 | 0.5051 | Commercial area | 5 | 1.0398 |
(2814.5, 3235.0) | 6 | −0.4698 | Land for industrial and mining warehousing | 6 | −1.1400 |
(3235.0, 3655.5) | 7 | −1.6533 | Other land | 7 | −1.1400 |
(3655.5, 4076.0) | 8 | −2.7238 | Distance to faults | ||
(4076.0, 4496.5) | 9 | −4.4023 | (0, 17.8) | 1 | 0.8153 |
(4496.5, 4917.0) | 10 | −3.7094 | (17.8, 35.6) | 2 | 0.1081 |
(4917.0, 5337.5) | 11 | −7.3573 | (35.6, 53.4) | 3 | −0.5102 |
(5337.5, 5758.0) | 12 | −7.3573 | (53.4, 71.2) | 4 | −0.3852 |
Slope | (71.2, 89.0) | 5 | −0.5233 | ||
(0, 10) | 1 | −0.1749 | (89.0, 106.8) | 6 | −0.6628 |
(10, 20) | 2 | −0.7377 | (106.8, 124.6) | 7 | −1.2068 |
(20, 30) | 3 | −0.5357 | (124.6, 142.4) | 8 | −1.8504 |
(30, 40) | 4 | 0.0610 | (142.4, 160.2) | 9 | −1.3686 |
(40, 50) | 5 | 0.6785 | (160.2, 178) | 10 | −1.1733 |
(50, 60) | 6 | 1.0211 | (178, 195.8) | 11 | −1.2810 |
(60, 70) | 7 | 1.0880 | (195.8, 213.6) | 12 | −1.7543 |
(70, 80) | 8 | 1.5884 | (213.6, 231.4) | 13 | −2.2307 |
(80, 90) | 9 | 0.8379 | (231.4, 249.2) | 14 | −7.9980 |
(249.2, 267.0) | 15 | −7.9980 |
Evidence Factors | Classification of Factors | Weight | |||
---|---|---|---|---|---|
Aspect | Lithology | ||||
Flat | 1 | 0.0331 | Sandstone, siltstone interbedded with phyllite | 1 | −0.7916 |
N | 2 | −0.1245 | Shale, phyllite, and siltstone | 2 | −2.1887 |
NE | 3 | 0.0331 | Granitic rocks | 3 | 0.1404 |
E | 4 | 0.1680 | Syenite | 4 | −2.8900 |
SE | 5 | 0.2614 | Diorite | 5 | 1.6488 |
S | 6 | 0.0981 | Limestone and sandstone | 6 | 0.5199 |
SW | 7 | −0.1140 | Unconsolidated deposits | 7 | −2.7231 |
W | 8 | −0.2686 | Sandstone, siltstone, and shale | 8 | −0.7046 |
NW | 9 | −0.2340 | Limestone intercalated with shale | 9 | 0.2194 |
NDVI | Limestone, sandstone, and shale | 10 | −0.2741 | ||
(46, 396.9) | 1 | 0.0010 | Limestone and dolomite intercalated with phyllite | 11 | 0.7933 |
(396.9, 747.8) | 2 | 0.0010 | Dolomite, silicalite, phyllite, sandstone, and siltstone | 12 | 1.0446 |
(747.8, 1098.8) | 3 | −2.6467 | Amphibolite | 13 | 2.0284 |
(1098.8, 1449.7) | 4 | −2.5191 | Sandstone and siltstone intercalated with slate | 14 | −0.7046 |
(1449.7, 1800.6) | 5 | −1.3168 | Sandstone and siltstone interbedded with shale | 15 | −0.7046 |
(1800.6, 2151.5) | 6 | −0.7417 | Profile curve | ||
(2151.5, 2502.4) | 7 | −0.4388 | (−38.6, −28.6) | 1 | 0.9019 |
(2502.4, 2853.4) | 8 | 0.0010 | (−28.6, −18.6) | 2 | 0.9019 |
(2853.4, 3204.3) | 9 | 0.3448 | (−18.6, −8.6) | 3 | 2.0946 |
(3204.3, 3555.2) | 10 | 0.3301 | (−8.6, 2.6) | 4 | −0.1445 |
(3555.2, 3906.1) | 11 | 0.0010 | (2.6, 12.6) | 5 | 1.3907 |
(3906.1, 4257.0) | 12 | 0.0010 | (12.6, 22.6) | 6 | 2.3735 |
(4257.0, 4608.0) | 13 | 0.3733 | (22.6, 32.6) | 7 | 0.9019 |
(4608.0, 4958.9) | 14 | 0.3242 | (32.6, 44.3) | 8 | 0.9019 |
(4958.9, 5309.8) | 15 | 0.0010 | Curvature | ||
(5309.8, 5660.7) | 16 | 0.4448 | (−87, −71) | 1 | 0.4866 |
(5660.7, 6011.6) | 17 | 0.2405 | (−71, −55) | 2 | 0.4866 |
(6011.6, 6362.6) | 18 | 0.2123 | (−55, −39) | 3 | 0.4866 |
(6362.6, 6713.5) | 19 | 0.2279 | (−39, −23) | 4 | 0.4866 |
(6713.5, 7064.4) | 20 | 0.0010 | (−23, −7) | 5 | 1.5008 |
(7064.4, 7415.3) | 21 | 0.0010 | (−7, 9) | 6 | −0.0746 |
(7415.3, 7766.2) | 22 | −0.2807 | (9, 26) | 7 | 1.7797 |
(7766.2, 8117.2) | 23 | −0.1889 | (26, 42) | 8 | 0.4866 |
(8117.2, 8468.1) | 24 | 0.1636 | (42, 58) | 9 | 0.4866 |
(8468.1, 8819.0) | 25 | 0.7339 | (58, 73) | 10 | 0.4866 |
Elevation | Land use | ||||
(712.0, 1132.5) | 1 | 2.3614 | Garden plot | 1 | −0.6211 |
(1132.5, 1553.0) | 2 | 2.5933 | Woodland | 2 | 0.2952 |
(1553.0, 1973.5) | 3 | 2.0378 | Land for water bodies and water conservancy facilities | 3 | −1.2705 |
(1973.5, 2394.0) | 4 | 1.3316 | Grassland | 4 | 1.3025 |
(2394.0, 2814.5) | 5 | 0.4473 | Commercial area | 5 | 1.6173 |
(2814.5, 3235.0) | 6 | −0.5438 | Land for industrial and mining warehousing | 6 | −1.2705 |
(3235.0, 3655.5) | 7 | −1.7469 | Other land | 7 | −1.2705 |
(3655.5, 4076.0) | 8 | −2.8544 | Distance to faults | ||
(4076.0, 4496.5) | 9 | −4.5328 | (0, 17.8) | 1 | 0.7957 |
(4496.5, 4917.0) | 10 | −3.5522 | (17.8, 35.6) | 2 | 0.1558 |
(4917.0, 5337.5) | 11 | −7.4878 | (35.6, 53.4) | 3 | −0.5325 |
(5337.5, 5758.0) | 12 | −7.4878 | (53.4, 71.2) | 4 | −0.3549 |
Slope | (71.2, 89.0) | 5 | −0.4789 | ||
(0, 10) | 1 | 0.0442 | (89.0, 106.8) | 6 | −0.7080 |
(10, 20) | 2 | −0.7259 | (106.8, 124.6) | 7 | −1.1509 |
(20, 30) | 3 | −0.5053 | (124.6, 142.4) | 8 | −1.7985 |
(30, 40) | 4 | 0.0442 | (142.4, 160.2) | 9 | −1.3398 |
(40, 50) | 5 | 0.6464 | (160.2, 178) | 10 | −1.2371 |
(50, 60) | 6 | 0.9914 | (178, 195.8) | 11 | −1.2571 |
(60, 70) | 7 | 1.1309 | (195.8, 213.6) | 12 | −1.6333 |
(70, 80) | 8 | 1.5557 | (213.6, 231.4) | 13 | −2.3612 |
(80, 90) | 9 | 0.0442 | (231.4, 249.2) | 14 | −3.2262 |
(249.2, 267.0) | 15 | −6.7693 |
Landslide Type | Landslide Probability Grading Interval | Landslide Probability Grading Category | Proportion of Known Landslides Corresponding to the Landslide Probability Grading Category | Area Occupied by Landslide Probability Grading Category |
---|---|---|---|---|
Rainfall landslide | [0.9000, 1] | Extremely high | 80.34% | 6.60% |
[0.4745, 0.9000] | High | 15.72% | 8.34% | |
[0.2588, 0.4745] | Medium | 1.97% | 10.95% | |
[0.0902, 0.2588] | Low | 0.74% | 22.06% | |
[0, 0.0902] | Extremely low | 1.23% | 52.05% | |
Seismic landslide | [0.9000, 1] | Extremely high | 88.18% | 17.13% |
[0.5922, 0.9000] | High | 8.62% | 9.42% | |
[0.3333, 0.5922] | Medium | 1.77% | 8.28% | |
[0.1137, 0.3333] | Low | 0.85% | 12.58% | |
[0, 0.1137] | Extremely low | 0.58% | 52.59% |
Landslide Type | Landslide Probability Grading Interval | Landslide Probability Grading Category | Proportion of Known Landslides Corresponding to the Landslide Probability Grading Category | Area Occupied by Landslide Probability Grading Category |
---|---|---|---|---|
Unclassified landslide | [0.9000, 1] | Extremely high | 87.40% | 16.88% |
[0.5882, 0.9000] | High | 9.53% | 10.24% | |
[0.3333, 0.5882] | Medium | 1.28% | 7.95% | |
[0.1137, 0.3333] | Low | 1.13% | 11.06% | |
[0, 0.1137] | Extremely low | 0.66% | 53.87% | |
Spatial overlay | Extremely high | 89.06% | 17.38% | |
High | 8.23% | 11.66% | ||
Medium | 1.61% | 12.39% | ||
Low | 0.67% | 21.28% | ||
Extremely low | 0.43% | 37.29% |
Reality | 0 | 1 | ||
---|---|---|---|---|
Prediction | ||||
Rainfall landslide training set | 0 | 306 | 47 | |
1 | 0 | 259 | ||
Rainfall landslide testing set | 0 | 100 | 33 | |
1 | 1 | 68 | ||
Rainfall landslide whole set | 0 | 468,447 | 39 | |
1 | 94,661 | 368 | ||
Seismic landslide training set | 0 | 2202 | 221 | |
1 | 0 | 1981 | ||
Seismic landslide testing set | 0 | 724 | 127 | |
1 | 10 | 607 | ||
Seismic landslide whole set | 0 | 466,625 | 486 | |
1 | 93,954 | 2450 | ||
Unclassified landslide training set | 0 | 2466 | 273 | |
1 | 0 | 2192 | ||
Unclassified landslide testing set | 0 | 813 | 143 | |
1 | 8 | 678 | ||
Unclassified landslide whole set | 0 | 467,927 | 559 | |
1 | 92,302 | 2727 |
Accuracy | Recall | |
---|---|---|
Rainfall landslide training set | 0.9232 | 0.8464 |
Rainfall landslide testing set | 0.8317 | 0.6733 |
Rainfall landslide whole set | 0.8319 | 0.9042 |
Seismic landslide training set | 0.9498 | 0.8996 |
Seismic landslide testing set | 0.9067 | 0.8270 |
Seismic landslide whole set | 0.8324 | 0.8345 |
Unclassified landslide training set | 0.9446 | 0.8892 |
Unclassified landslide testing set | 0.9080 | 0.8258 |
Unclassified landslide whole set | 0.8352 | 0.8299 |
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Share and Cite
Wang, X.; Bai, S. Landslide Susceptibility Mapping and Interpretation in the Upper Minjiang River Basin. Remote Sens. 2023, 15, 4947. https://doi.org/10.3390/rs15204947
Wang X, Bai S. Landslide Susceptibility Mapping and Interpretation in the Upper Minjiang River Basin. Remote Sensing. 2023; 15(20):4947. https://doi.org/10.3390/rs15204947
Chicago/Turabian StyleWang, Xin, and Shibiao Bai. 2023. "Landslide Susceptibility Mapping and Interpretation in the Upper Minjiang River Basin" Remote Sensing 15, no. 20: 4947. https://doi.org/10.3390/rs15204947
APA StyleWang, X., & Bai, S. (2023). Landslide Susceptibility Mapping and Interpretation in the Upper Minjiang River Basin. Remote Sensing, 15(20), 4947. https://doi.org/10.3390/rs15204947