scholarly journals Comparative Study of Landform Mapping Using Terrain Attributes and Topographic Position Index (TPI): a Case Study in Al-Alamien – Ras El-Hekma Region, Egypt

Author(s):  
Sami Z. Mohamed ◽  
M. Bahnassy ◽  
H. Gaber ◽  
Kh. M. Darwish
Author(s):  
Athanasios Skentos ◽  
Anagnostopoulou Ourania

Abstract The main objective of this study is to classify the landforms of Ikaria Island by conducting morphometric analysis. The whole classification process is based on the calculation of the Topographic Position Index (TPI). The delivered TPI landform classes are spatially correlated with the geology, slope, valley depth and the topographic ruggedness of the island. The results of this study indicate the presence of two distinctive landform units, affected mainly by the local geological setting.


Geomorphology ◽  
2013 ◽  
Vol 186 ◽  
pp. 39-49 ◽  
Author(s):  
Jeroen De Reu ◽  
Jean Bourgeois ◽  
Machteld Bats ◽  
Ann Zwertvaegher ◽  
Vanessa Gelorini ◽  
...  

2021 ◽  
Vol 13 (18) ◽  
pp. 3557
Author(s):  
Marc Wehrhan ◽  
Michael Sommer

Remote sensing plays an increasingly key role in the determination of soil organic carbon (SOC) stored in agriculturally managed topsoils at the regional and field scales. Contemporary Unmanned Aerial Systems (UAS) carrying low-cost and lightweight multispectral sensors provide high spatial resolution imagery (<10 cm). These capabilities allow integrate of UAS-derived soil data and maps into digitalized workflows for sustainable agriculture. However, the common situation of scarce soil data at field scale might be an obstacle for accurate digital soil mapping. In our case study we tested a fixed-wing UAS equipped with visible and near infrared (VIS-NIR) sensors to estimate topsoil SOC distribution at two fields under the constraint of limited sampling points, which were selected by pedological knowledge. They represent all releva nt soil types along an erosion-deposition gradient; hence, the full feature space in terms of topsoils’ SOC status. We included the Topographic Position Index (TPI) as a co-variate for SOC prediction. Our study was performed in a soil landscape of hummocky ground moraines, which represent a significant of global arable land. Herein, small scale soil variability is mainly driven by tillage erosion which, in turn, is strongly dependent on topography. Relationships between SOC, TPI and spectral information were tested by Multiple Linear Regression (MLR) using: (i) single field data (local approach) and (ii) data from both fields (pooled approach). The highest prediction performance determined by a leave-one-out-cross-validation (LOOCV) was obtained for the models using the reflectance at 570 nm in conjunction with the TPI as explanatory variables for the local approach (coefficient of determination (R²) = 0.91; root mean square error (RMSE) = 0.11% and R² = 0.48; RMSE = 0.33, respectively). The local MLR models developed with both reflectance and TPI using values from all points showed high correlations and low prediction errors for SOC content (R² = 0.88, RMSE = 0.07%; R² = 0.79, RMSE = 0.06%, respectively). The comparison with an enlarged dataset consisting of all points from both fields (pooled approach) showed no improvement of the prediction accuracy but yielded decreased prediction errors. Lastly, the local MLR models were applied to the data of the respective other field to evaluate the cross-field prediction ability. The spatial SOC pattern generally remains unaffected on both fields; differences, however, occur concerning the predicted SOC level. Our results indicate a high potential of the combination of UAS-based remote sensing and environmental covariates, such as terrain attributes, for the prediction of topsoil SOC content at the field scale. The temporal flexibility of UAS offer the opportunity to optimize flight conditions including weather and soil surface status (plant cover or residuals, moisture and roughness) which, otherwise, might obscure the relationship between spectral data and SOC content. Pedologically targeted selection of soil samples for model development appears to be the key for an efficient and effective prediction even with a small dataset.


Author(s):  
Julien Meloche ◽  
Alexandre Langlois ◽  
Nick Rutter ◽  
Don McLennan ◽  
Alain Royer ◽  
...  

Increased surface temperatures (0.7℃ per decade) in the Arctic affects polar ecosystems by reducing the extent and duration of annual snow cover. Monitoring of these important ecosystems needs detailed information on snow cover properties (depth and density) at resolutions (< 100 m) that influence ecological habitats and permafrost thaw. As arctic snow is strongly influenced by vegetation, an ecotype map at 10 m resolution was added to a method with the Random Forest (RF) algorithm previously developed for alpine environments and applied here over an arctic landscape for the first time. The topographic parameters used in the RF algorithm were Topographic Position Index (TPI) and up-wind slope index (Sx), which were estimated from the freely available Arctic DEM at 2 m resolution. Ecotypes with taller vegetation with moister soils were found to have deeper snow because of the trapping effect. Using feature importance with RF, snow depth distributions were predicted from topographic and ecosystem parameters with a root mean square error = 8 cm (23%) (R² = 0.79) at 10 m resolution for an arctic watershed (1 500 km²) in western Nunavut, Canada.


Wetlands ◽  
2017 ◽  
Vol 37 (2) ◽  
pp. 325-338 ◽  
Author(s):  
Jeffrey W. Riley ◽  
Daniel L. Calhoun ◽  
William J. Barichivich ◽  
Susan C. Walls

2020 ◽  
Author(s):  
Ismael Abdulrahman Ismael Abdulrahman Abdulrahman

Topographic position index (TPI) contain one of the most important algorithms that is used in GISenvironment forautomatelandform classificationsto obtaining an accurate spatial layers that represent physical featuresin reality.This study aims to determine the importance and role of the algorithm in identifyinglandform classification in mountainous areas.Duhok district selected as the case study which is the capital city of Duhokgovernorate, Iraqi Kurdistan region.Digital elevation model (DEM) with the spatial resolution of (30) meterswas employed, using two type of algorithms (Traditional TPI) and (Standardized Elevation)with different spatial scales(500, 1500, 3000, 6000) meters.The resultsillustrated that; there aresixmain types of landformsmost of them areedges and steep slope. As well, the proportions of these types vary according to the variation of indicator valuesin the index.The study showed that this technique play a powerful role in providing accurate results in landformclassification in mountainous regions compared to traditional methods


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