The Application of the Hybrid GIS Spatial Multi-Criteria Decision Analysis Best–Worst Methodology for Landslide Susceptibility Mapping
Abstract
:1. Introduction
2. Study Area and Data
2.1. Study Area
2.2. Data
3. Methodology
3.1. Methodological Background
3.2. The Consistency Ratio of the Best–Worst Methodology (BWM)
4. Results
4.1. Landslide Inventory Map
4.2. Conditioning Factors
4.3. GIS MCDA-BW Methodology
4.4. Aggregation by Applying a Weighted Linear Combination
4.5. Aggregation by Applying Ordered Weighted Averaging
- ν = [ν1, ν2, …, νn]—the set of the order weights
- Ai = [ai1, ai2 …, ain]—the set of the standardized criterion value
- zij = [zi1, zi2 …, zin]—the sequence obtained by reordering the criterion values ai1, ai2…, ain.
4.6. Validation
5. Discussion
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Approaches | Methods | Short Description (References) |
---|---|---|
Geotechnical approaches | Deterministic methods | Deterministic methods are mainly based on the geotechnical and groundwater properties of the rock and soil of unstable areas. In this case, specific mathematical models are used to find the factor of the safety of unstable slopes, and slope stability models are used to determine landslide hazard [9]. |
Safety factor method | The safety factor method uses slope-displacement-simulated models, which are based on identifying the most dangerous sliding surface in order to calculate the factor for analyzing the slope stability [10,11,12]. | |
Probabilistic methods | The probabilistic approach considers whether future environmental conditions will meet the requirements for a landslide identified in previous landslides. Thus, the probabilistic analysis considers the statistical relationships between the historical landslide locations and the landslide conditioning factors [13,14,15,16]. | |
Heuristic or index-based approaches | Analytic hierarchy process (AHP) | The AHP mainly depends on the knowledge of experts, who assign a priority to each parameter and establish sub-criteria from pairwise comparisons. The process is based on the three principles: decomposition, comparative judgment, and the synthesis of data [16,17,18]. |
Weighted linear combination (WLC) method | The WLC method starts with a comparison of the data-layers corresponding to the landslide controlling parameters and the landslide inventory map, and involves the computation of the landslide density so as to assign primary-level weights for each class of a particular parameter. The final steps of this method are a combination of all the weighted layers into a single map, and the classification of the scores of this map into landslide susceptibility [19,20]. | |
Spatial multicriteria decision analysis (MCDA) | The MCDA can be defined as a decision aid and a mathematical tool allowing the comparison of different alternatives or scenarios according to many, often conflicting, criteria in order to guide the decision-maker towards a judicious choice [16,21]. | |
Index of entropy (IoE) method | The entropy method has been widely used to determine the weighted index of natural hazards and carry out integrated environmental assessments of natural processes. The entropy of a landslide represents the factors influencing its development, and its value can be used to calculate the objective weights of the index system [22,23]. | |
Statistical methods approaches | Bivariate analysis | In bivariate analysis, each individual factor is combined with a landslide distribution map, and the weight values based on the landslide densities are calculated for each parameter class [9,24,25,26]. |
Multivariate analysis | In multivariate analysis, many causative factors are sampled, and for each of the sampling units, the presence or absence of landslides is also determined. This analysis allows the estimation of the relative weights of each contributing factor by means of statistical procedures. There is a trend towards using multivariate statistical analysis, such as discriminant analysis, factor analysis, logistic regression analysis, and conditional analysis [2,27]. | |
Statistical index (SI) method | The SI method, bivariate statistical analysis, is considered as the simplest and quantitatively suitable method in landslide susceptibility mapping. In this method, the weighting value for each categorical unit is defined as the natural logarithm of the landslide density in the class divided by the landslide density in the whole studied area [28,29]. | |
Weights of evidence (WoE) method | Weights of evidence (WoE), based on Bayesian Bayes’ theorem and the assessment of the relationship between the spatial distribution of the areas affected by landslides and the spatial distribution of the conditioning factors causing landslides, is one of bivariate models [30,31,32]. | |
Soft computing and data mining approaches | Fuzzy logic method | The idea of using a fuzzy approach in landslide susceptibility mapping is to consider the pixels on any causal factor layer as susceptible to landslides. Pixel values can be numeric and range from 0 (i.e., “not susceptible”) to 1 (i.e., ‘‘susceptible’’) [33,34,35]. |
Artificial neural network (ANN) | The ANN is the statistical learning algorithm that describes the neuronal signaling system [36,37,38,39,40]. | |
Neuro-fuzzy method | The neuro-fuzzy method is the neural network that is functionally equivalent to the fuzzy inference model. It can be trained to develop ‘‘if-then’’ fuzzy rules and determine the membership functions for the input and the output variables of the system. One of the neuro-fuzzy inference systems is the adaptive neuro-fuzzy inference system (ANFIS) [41,42,43]. | |
Support vector machines method (SVM) | The SVM method is a training algorithm based on the non-linear transformations that use the classification based on the principle of structural risk minimization, which has performed well in the test phase. The SVM model performs this process according to the three main concepts: the margin, the support vector, and the kernel [39,44,45]. | |
Evidential belief function method | The EBFs are the compound of Bel (the degree of belief), Dis (the degree of disbelief), Unc (the degree of uncertainty), and Pls (the degree of plausibility). The main parts of the theory are represented by Bel = a lower probability and Pls = an upper probability [45,46]. | |
Decision tree method | The decision tree (DT) approach is a recently developed probabilistic approach based on the multivariate methods that are mainly used for classification schemes [47,48,49]. | |
Naïve Bayes (NB) method | The NB classifier is a classification system based on Bayes’ theorem assuming that all attributes are fully independent given the output class, called the conditional independence assumption [45,50]. | |
Frequency ratio method | The frequency ratio is the ratio of the area where landslides have occurred and the total study area, also being the ratio of the probabilities of the landslide occurrence to non-occurrence for a given attribute [26,51,52]. | |
Random forest method | Random forest is an ensemble-learning technique. It generates many classification trees aggregated so as to compute a classification. The Random forest algorithm has resistance to outliers in predictors and automatically handles the missing values. The random forest technique estimates the importance of a predictive variable [53]. |
Sub-Classification | Data Layers | Source of Data | Data Type | Derived Map | Scale or Resolution |
---|---|---|---|---|---|
Landslide Inventory Database | Historic Landslide | BEWARE project (BEyond landslide aWAREness), Ministry of Mining and Energy of the Republic Serbia (http://geoliss.mre.gov.rs/beware/webgis/OpenData.php) | Point | - | - |
Elevation | Digital Elevation Model (DEM) generated by Topographic database layer, contour lines with 10-m intervals | Grid | Elevation | 20 m | |
Slope | DEM generated by Topographic database layer, contour lines with 10-m intervals | Grid | Slope gradient (in degrees) | 20 m | |
Aspect | DEM generated by Topographic database layer, contour lines with 10-m intervals | Grid | Aspect | 20 m | |
Topographic wetness index (TWI) | DEM generated by Topographic database layer, contour lines with 10-m intervals | Grid | Topographic wetness index | 20 m | |
Stream power index (SPI) | DEM generated by Topographic database layer, contour lines with 10-m intervals | Grid | Stream power index | 20 m | |
Sediment transport index (STI) | DEM generated by Topographic database layer, contour lines with 10-m intervals | Grid | Sediment transport index | 20 m | |
Soil | Soil | National soil data http://h05-prod-vm15.jrc.it/content/soil-map-serbia-pedoloska-karta-jugoslavije | Polygon | Soil | 1:100,000 |
Geology Map | Litho types | Ministry of Energy, Development and Environmental Protection of the Republic of Serbia http://geoliss.mre.gov.rs/?lang=en | Arc/Info coverage | Lithology | 1:100,000 |
Geology Map | Distance to faults | Ministry of Energy, Development and Environmental Protection of the Republic of Serbia | Line | Distance to fault | |
Land Use Type | Land use | Landsat 8 Operational Land Imager (OLI) images | Grid | Land use | 30 m |
Normalized Difference Vegetation Index (NDVI) | NDVI | Landsat 8 OLIimages | Grid | NDVI | 30 m |
Rainfall | Rainfall | Republic Hydrometeorological Service of Serbia (http://www.hidmet.gov.rs/index_eng.php) | Grid | Precipitation map (mm) | 1:50,000 |
River | River network | Military Geographical Institute (MGI) digital topographic map | Line | Distance to river | 1:25,000 |
Roads | Road network | MGI digital topographic map | Line | Distance to road | 1:25,000 |
Urban Areas | Urban areas | MGI digital topographic map | Polygon | Distance to urban areas | 1:25,000 |
Category | Factor | Description |
---|---|---|
Topography (Figure 3) | Topo1 | The elevation is a significant landslide conditioning factor because it controls several geologic and geomorphologic processes [64]. An elevation map is prepared from the 20 × 20 m digital elevation model (1: 25,000 scale with 10-m contour intervals) and grouped into 6 classes. |
Topo2 | The slope is widely used in landslide susceptibility studies since it is directly connected with the movement of landslide materials [49]. Specifically, shear stresses on the slope material increases with the slope gradient and landslides are generally expected to occur on the steepest slopes. | |
Topo3 | The aspect affects the slope material in an indirect relationship because the aspect determines the exposure of a landscape to rainfall and solar radiation, and therefore, to the propensity of vegetation to grow, which in turn affects the soil stability. | |
Topo4 | The topographic wetness index (TWI) describes the effect of topography on the location and size of the saturated areas of the runoff generation. It is defined as [65]: TWI = ln (AS/tan β), where AS is the catchment area and β is the slope angle measured in degrees. | |
Topo5 | The stream power index (SPI) is the measure of the erosive power of flowing water based on the assumption that discharge is proportional to the specific catchment area. The stream power index was calculated based on the formula given by Moore [66]. SPI = AS × tanβ, where AS is the area of the specific catchment and β is the local slope gradient measured in degrees. | |
Topo6 | The sediment transport index (STI) describes the tendency of the flow and can be used to depict the location of a potential erosion. It is calculated by using the following formula: STI = (AS/22.13)0.6 × (sinβ/0.0896)1.3, where AS is the area of the specific catchment and β is the local slope gradient measured in degrees. | |
Environmental (Figure 4) | Env1 | The soil type reflects the textures and compositions of the soil materials affecting the landslide occurrence [67]. The soil map was constructed from the Basic Engineering National Soil Map at the scale 1:000,000, and was classified into fine-silt, course-loamy, fine-loamy, mixed-loamy, skeletal-loamy. |
Env2 | The drainage system of any area plays an important role in the slope stability particularly with respect to toe cutting and the bank erosion. The distance to the river was created by using a topographical map and was calculated based on the Euclidean distance method in ArcGIS 10.4 and the obtained distances were classified into (<500), (500–1000), (1000–2000), (2000–3000), and (>3000) m classes. | |
Env3 | Lithology. The underlying geology is part of the most significant factors for landslide modeling [68]. Different geology formations have different compositions and structures which contribute to the strength of the material. The stronger rocks give more resistance to the driving forces as compared to the weaker rocks and, hence, are less prone to landslides. The lithology structure of the study area includes 18 classes. | |
Env4 | Distance to fault. The distance from the faults is calculated at 100 m intervals by using the geological map. Faults are the tectonic breaks that usually decrease the rock strength. These dislocations may be responsible for triggering a large number of landslides. | |
Env5 | The normalized difference vegetation index (NDVI). The NDVI map was produced from the Lands at 8 OLI imagery showing the surface vegetation coverage and density in an image. | |
Env6 | Rainfall is the most important triggering factor in landslides. Annual rainfall values are divided into the six classes, namely: (620–690, 691–760, 761–830, 831–900, 901–970, 971–1055 mm). | |
Social (Figure 5) | Soc1 | Landslides may occur on the road and on the side of the slopes affected by roads. The distance to roads was created by using a topographical map and calculated based on the Euclidean distance method in ArcGIS 10.4, and the obtained distances were classified into the (<500), (500–1000), (1000–2000), (2000–3000), and (>3000) m classes. |
Soc2 | Distance to urban areas was created by using a topographical map and calculated based on the Euclidean distance method in ArcGIS 10.4, and the obtained distances were classified into the (<500), (500–1000), (1000–2000), (2000–3000), and (>3000) m classes. | |
Soc3 | Land use/cover is considered to be a factor in environmental protection. The data on the land use/cover were taken on the basis of the Corine Land Cover 2006 (CLC2006) database, collected within the framework of the European Commission’s CORINE (Coordination of Information on the Environment) program. The land use also plays a significant role in the stability of the slope. The land covered with a forest regulates the continuous water flow and water infiltrates regularly, whereas the cultivated land affects the slope stability due to the saturation of the covered soil. |
Class | Formation | Lithology | Geological Age |
---|---|---|---|
1 | Clastic sediment | Brackish deposits, clastic sediment, limestone, coal | Tortonian and Messinian |
2 | Clastic sediment | Clastic and carbonate rocks, clastic sediment, limestone, metamorphic rock | Permian |
3 | Limestone | Flysch and other basin deposits, limestone, clastic sedimentary rock, dolomite, mudstone | Upper Cretaceous |
4 | Clastic sedimentary rock | Flysch and other basin deposits, clastic sedimentary rock, limestone | Upper Jurassic |
5 | Clastic conglomerate | Lacustrine deposits, conglomerate, sandstone, siltstone, coal | Aquitanian and Burdigalian |
6 | Sand | Lacustrine deposits, sand, clay, gravel, mudstone, coal, limestone | Pliocene |
7 | Limestone | Marine clastic rocks, limestone, clastic sediment, coal | Langhian and Serravallian |
8 | Ultramafic igneous rock | Ophiolite sequence, ultramafic igneous rock, gabbro, peridotite, serpentinite | Jurassic |
9 | Clastic sediment | Platform carbonate rocks, clastic sediment, limestone | Permian and Triassic |
10 | Limestone | Platform carbonate rocks, limestone, clastic sediment, dolomite | Triassic |
11 | Gabbro | Plutonic rocks, gabbro, granite, quartz-monzonite | Jurassic |
12 | Granodiorite | Plutonic rocks, granodiorite | Miocene and Oligocene |
13 | Granite | Plutonic rocks, granite, granodiorite | Paleozoic |
14 | Shale | Predominantly clastic rocks, shale, sandstone, conglomerate, limestone | Carboniferous to Permian |
15 | Limestone | Predominantly platform carbonate rocks, limestone, dolomite, clastic sediment | Triassic |
16 | Clastic sediment | Terrestrial deposits, clastic sediment, organic rich sediment, travertine | Quaternary |
17 | Andenzite | Volcanic rocks, andenzite, pyroclastic rock | Neogene |
18 | Trachite | Volcanic rocks, trachite, rhyolite, andesites, dacites | Triassic |
Code/Value | Description |
---|---|
Flca | Calcaric Fluvisol |
Fldy | Dystric Fluvisol |
CMcr | Chromic Cambisol |
Cmdy | Dystric Cambisol |
Cmeu | Eutric Cambisol |
Glmo | Mollic Gleysol |
Lpha | Haplic Leptosol |
Lvgi | Gleyic Luvisol |
Lvha | Haplic Luvisol |
Pldy | Dystric Planosol |
Phha | Haplic Phaeozem |
Code/Value | RGB | Code | Description |
---|---|---|---|
2 | 255,0,0 | 112 | Discontinuous urban fabric |
12 | 255,255,168 | 211 | Non-irrigated arable land |
18 | 230,230,77 | 231 | Pastures |
20 | 255,230,77 | 242 | Complex cultivation patterns |
21 | 230,204,77 | 243 | Land principally occupied by agriculture, with significant areas of natural vegetation |
23 | 128,255,0 | 311 | Broad-leaved forest |
24 | 0,166,0 | 312 | Coniferous forest |
25 | 77,255,0 | 313 | Mixed forest |
26 | 204,242,77 | 321 | Natural grasslands |
29 | 166,242,0 | 324 | Transitional woodland-shrub |
40 | 0,204,242 | 511 | Water courses |
Criteria | Membership Function | Control Points/Value Points |
---|---|---|
Elevation | Gaussian | Midpoint 400 m; Spread 0.0001 |
Slope | Gaussian | Midpoint 22°; Spread 0.001 |
Aspect | Gaussian | Midpoint 160°; Spread 0.001 |
TWI | Small | Midpoint 12; Spread 5 |
SPI | Small | Midpoint 1.1; Spread 5 |
STI | Small | Midpoint 160; Spread 5 |
Soil | Discrete data | FLdy, GLmo–0.1; PHha, PLdy–0.3; LVgl, Lpha–0.5; CMcr, CMeu, CMdy–0.7; FLca, Lvha–0.9 |
Distance from river | Linear | Minimum 2000 m; Maximum 0 m |
Lithology | Discrete data | Class 1—0.05; Class 2—0.11; Class 3—0.16; Class 4—0.22; Class 5 —0.28; Class 6—0.33; Class 7—0.39; Class 8—0.45; Class 9—0.5; Class 10—0.55; Class 11—0.6; Class 12—0.65; Class 13—0.7; Class 14—0.75; Class 15—0.8; Class 16—0.85; Class 17—0.9; Class 18—0.95. |
Distance to fault | Linear | Minimum 2000 m; Maximum 0 m |
NDVI | Linear | Minimum 0.5; Maximum 0.1 |
Rainfall | Linear | Minimum 600 mm; Maximum 1200 mm |
Distance to roads | Linear | Minimum 2000 m; Maximum 0 m |
Distance to urban | Linear | Minimum 5000 m; Maximum 0 m |
Land cover use | Discrete data | (511–512)—0; (311–313)—0.1; (331–332, 321–335)—0.3; (221–223; 231)—0.5; (211–223)—0.7; (241–244; 112)—0.9 |
Clusters | |||
---|---|---|---|
Best: C1 (Topography) | Expert evaluation | Worst: C3 (Social) | Expert evaluation |
C2 (Environmental) | 2; 2; 3; 2; 3; 2; 3 | C1 (Topography) | 3; 4; 3; 3; 4; 5; 4 |
C3 (Social) | 3; 4; 3; 3; 4; 5; 4 | C2 (Environmental) | 2; 4; 3; 3; 4; 5; 4 |
C1 (Topography) | |||
Best: C11 (Slope) | Expert evaluation | Worst: C13 (Aspect) | Expert evaluation |
C12 (TWI) | 3; 3; 4; 2; 3; 3; 3 | C11 (Slope) | 9; 8; 9; 8; 9; 9; 9 |
C13 (Aspect) | 9; 8; 9; 8; 9; 9; 9 | C12 (TWI) | 3; 3; 4; 3; 3; 4; 3 |
C14 (Elevation) | 2; 2; 3; 2; 2; 2; 3 | C14 (Elevation) | 4; 4; 3; 5; 4; 4; 4 |
C15 (STI) | 5; 5; 6; 5; 4; 5; 5 | C15 (STI) | 2; 2; 2; 2; 2; 3; 2 |
C16 (SPI) | 4; 4; 5; 4; 4; 3; 4 | C16 (SPI) | 3; 2; 4; 3; 3; 2; 4 |
C2 (Environmental) | |||
Best: C21 (Rainfall) | Expert evaluation | Worst: C23 (Distance to river) | Expert evaluation |
C22 (Soil type) | 2; 3; 3; 2; 2; 3; 3 | C21 (Rainfall) | 4; 5; 4; 5; 5; 5; 5 |
C23 (Distance to river) | 4; 5; 4; 5; 5; 5; 5 | C22 (Soil type) | 2; 3; 3; 4; 3; 4; 3 |
C24 (Lithology) | 2; 2; 2; 2; 2; 2; 3 | C24 (Lithology) | 3; 2; 4; 4; 3; 3; 5 |
C25 (NDVI) | 5; 4; 5; 5; 4; 4; 5 | C25 (NDVI) | 3; 2; 2; 3; 2; 2; 3 |
C26 (Distance to fault) | 5; 4; 5; 6; 4; 4; 5 | C26 (Distance to fault) | 4; 3; 5; 4; 2; 3; 4 |
C3 (Social) | |||
Best: C31 (Land use/cover) | Expert evaluation | Worst: C33 (Distance to urban areas) | Expert evaluation |
C32 (Distance to roads) | 2; 2; 3; 2; 3; 2; 3 | C31 (Land use/cover) | 2; 3; 3; 3; 3; 4; 4 |
C33 (Distance to urban areas) | 2; 3; 3; 3; 3; 3; 2 | C32 (Distance to roads) | 2; 3; 2; 3; 3; 2; 3 |
Clusters | |||
---|---|---|---|
Best: C1 (Topography) | Average value | Worst: C3 (Social) | Average value |
C2 (Environmental) | 2.43 | C1 (Topography) | 3.71 |
C3 (Social) | 3.71 | C2 (Environmental) | 3.57 |
C1 (Topography) | |||
Best: C11 (Slope) | Average value | Worst: C13 (Aspect) | Average value |
C12 (TWI) | 3.00 | C11 (Slope) | 8.71 |
C13 (Aspect) | 8.71 | C12 (TWI) | 3.29 |
C14 (Elevation) | 2.29 | C14 (Elevation) | 4.00 |
C15 (STI) | 5.00 | C15 (STI) | 2.14 |
C16 (SPI) | 4.00 | C16 (SPI) | 3.00 |
C2 (Environmental) | |||
Best: C21 (Rainfall) | Average value | Worst: C23 (Distance to river) | Average value |
C22 (Soil type) | 2.57 | C21 (Rainfall) | 4.71 |
C23 (Distance to river) | 4.71 | C22 (Soil type) | 3.14 |
C24 (Lithology) | 2.14 | C24 (Lithology) | 3.43 |
C25 (NDVI) | 4.57 | C25 (NDVI) | 2.43 |
C26 (Distance to fault) | 4.71 | C26 (Distance to fault) | 3.57 |
C3 (Social) | |||
Best: C31 (Land use/cover) | Average value | Worst: C33 (Distance to urban areas) | Average value |
C32 (Distance to roads) | 2.43 | C31 (Land use/cover) | 3.14 |
C33 (Distance to urban areas) | 2.71 | C32 (Distance to roads) | 2.57 |
Clusters/Criteria | Local Weights | Global Weights | Rank |
---|---|---|---|
Topography | 0.5489 | - | 1 |
Elevation | 0.1927 | 0.1058 | 3 |
Slope | 0.4166 | 0.2287 | 1 |
Aspect | 0.0450 | 0.0247 | 13 |
TWI | 0.1471 | 0.0807 | 4 |
SPI | 0.1103 | 0.0606 | 7 |
STI | 0.0883 | 0.0484 | 9 |
Environmental | 0.3283 | - | 2 |
Soil type | 0.1776 | 0.0583 | 8 |
Distance to river | 0.0549 | 0.0180 | 15 |
Lithology | 0.2133 | 0.0700 | 5 |
Distance to fault | 0.0969 | 0.0318 | 12 |
NDVI | 0.0999 | 0.0328 | 11 |
Rainfall | 0.3574 | 0.1173 | 2 |
Social | 0.1229 | - | 3 |
Distance to roads | 0.3038 | 0.0373 | 10 |
Distance to urban areas | 0.1592 | 0.0196 | 14 |
Land use/cover | 0.5370 | 0.0660 | 6 |
Level of the Criteria | CClusters | CTopo | CEnvir | CSoc |
---|---|---|---|---|
3.71 | 8.71 | 4.71 | 2.71 | |
CI (max ξ) | 6.98 | 13.41 | 8.32 | 5.59 |
CR | 0.108 | 0.001 | 0.012 | 0.118 |
© 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
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Gigović, L.; Drobnjak, S.; Pamučar, D. The Application of the Hybrid GIS Spatial Multi-Criteria Decision Analysis Best–Worst Methodology for Landslide Susceptibility Mapping. ISPRS Int. J. Geo-Inf. 2019, 8, 79. https://doi.org/10.3390/ijgi8020079
Gigović L, Drobnjak S, Pamučar D. The Application of the Hybrid GIS Spatial Multi-Criteria Decision Analysis Best–Worst Methodology for Landslide Susceptibility Mapping. ISPRS International Journal of Geo-Information. 2019; 8(2):79. https://doi.org/10.3390/ijgi8020079
Chicago/Turabian StyleGigović, Ljubomir, Siniša Drobnjak, and Dragan Pamučar. 2019. "The Application of the Hybrid GIS Spatial Multi-Criteria Decision Analysis Best–Worst Methodology for Landslide Susceptibility Mapping" ISPRS International Journal of Geo-Information 8, no. 2: 79. https://doi.org/10.3390/ijgi8020079
APA StyleGigović, L., Drobnjak, S., & Pamučar, D. (2019). The Application of the Hybrid GIS Spatial Multi-Criteria Decision Analysis Best–Worst Methodology for Landslide Susceptibility Mapping. ISPRS International Journal of Geo-Information, 8(2), 79. https://doi.org/10.3390/ijgi8020079