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Developing A High Resolution Rusle Model In Qgis | 7.57 GB

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  • Saadedin
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    • Sep 2018 
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    Developing A High Resolution Rusle Model In Qgis

    Development of a high-resolution[10 meter] water erosion model in QGIS, with the help of Google Earth Engine and SAGA


    What you'll learn
    Land use and land cover classification with machine learning in Google Earth Engine
    Random forests
    Downloading and working with high resolution DEM (ALOS PALSAR)
    Developing codes in Google Earth Engine for R factor
    Downloading and working with global soil data (from FAO and ESDAC)
    Working with SAGA (open source)
    Dozens of tools in QGIS
    Soil science theory
    Erosion modeling theory and practice
    RUSLE model
    Open source platfroms




    Requirements
    Basic GIS knowledge
    Preferable:Basic QGIS
    Preferable:Basic Java Script

    Description
    Soil erosion remains one of the greatest threats to land productivity, sustainable agriculture, and environmental stability. In this hands-on course, you will learn how to develop a high-resolution (10-meter) RUSLE (Revised Universal Soil Loss Equation) model in QGIS using a powerful combination of SAGA GIS and Google Earth Engine (GEE).This course is designed for GIS professionals, environmental scientists, students, and planners who want to accurately model water-induced soil erosion with modern, open-source tools.

    You’ll learn how to calculate the five core RUSLE factors—R (rainfall erosivity), K (soil erodibility), LS (slope length and steepness), C (cover management), and P (support practice)—and integrate them into a single spatial erosion map.We’ll use Sentinel-2 imagery, ALOS PALSAR DEM, and field-proven methods to produce reliable, high-resolution results.

    You'll gain practical skills in:
    Terrain preprocessing and LS factor derivation in SAGAAccurate land use and land cover classification for the C factor in Google Earth Engine with Random Forests Assigning soil and conservation values in QGIS and Google Earth Pro Combining all layers to generate a final erosion risk mapWe will create our own maps and use global open-source data when it is available. By the end of the course, you’ll be able to create accurate erosion models for any region, using freely available global datasets and open-source GIS software. No need for expensive licenses—just results.

    This course is ideal for GIS analysts, environmental modelers, students, and professionals working in land degradation, agriculture, watershed management, or conservation.Whether you're focused on a specific region or working on global sustainability assessments, this course gives you the data, tools, and skills to model erosion accurately and effectively.

    Overview
    Section 1: Introduction

    Lecture 1 Introduction to the course(Promo)

    Lecture 2 Spatial alignment and parameters

    Lecture 3 Data sources

    Lecture 4 Softwares to use

    Lecture 5 Download QGIS

    Lecture 6 Start the QGIS project

    Lecture 7 Study area shapefile - reproject into UTM

    Section 2: SOIL AND SOIL EROSION. THEORY

    Lecture 8 Soil

    Lecture 9 Soil erosion

    Lecture 10 Soil erosion prevention measures

    Lecture 11 Different soil erosion models

    Lecture 12 RUSLE model concept

    Section 3: RUSLE FACTORS. THEORY

    Lecture 13 LS FACTOR

    Lecture 14 C FACTOR

    Lecture 15 R FACTOR

    Lecture 16 P FACTOR

    Lecture 17 K FACTOR

    Section 4: LS (SLOPE LENGTH). PRACTICE

    Lecture 18 How to download ALOS PALSAR DEM

    Lecture 19 Saving GeoTIFF in .sdat format in QGIS for SAGA

    Lecture 20 Computing LS factor in SAGA

    Lecture 21 Mosaic,clip and review LS map

    Section 5: C(COVER FACTOR).PRACTICE

    Lecture 22 The beginning of the code in GEE

    Lecture 23 Computing indices

    Lecture 24 Adding elevation and slope bands

    Lecture 25 Ground control points collection

    Lecture 26 Training and testing data

    Lecture 27 K-Fold Cross Validation

    Lecture 28 Final classification results and export map

    Lecture 29 Assigning C-factor values to each LULC class

    Section 6: R(RAINFALL EROSIVITY). PRACTICE

    Lecture 30 GloREDa database

    Lecture 31 Preparing the GloREDa map for a study area

    Lecture 32 R factor in Google Earth Engine

    Lecture 33 Resampling R factor from GEE in QGIS

    Section 7: P(CONSERVATION PRACTICE). PRACTICE

    Lecture 34 Download Google Earth Pro software

    Lecture 35 P factor table

    Lecture 36 Mapping and discovering conservation practice methods with Google Earth Pro

    Lecture 37 Creating slope in % with 10 meter

    Lecture 38 Slope reclassify with Raster Calculator

    Lecture 39 Rasterize vector of P

    Lecture 40 Combining practice raster with cropland-non cropland raster

    Lecture 41 Final P-factor map

    Section 8: K(SOIL ERODIBILITY).PRACTICE

    Lecture 42 Download FAO soil data

    Lecture 43 Computing K-factor for dominant soils in Excel

    Lecture 44 Vector to raster K-factor

    Lecture 45 Global Soil Erodibility map from ESDAC

    Section 9: RUSLE MODEL FINAL MAPS IN QGIS

    Lecture 46 4 RUSLE maps (models)

    Lecture 47 Correcting extreme values and using percentile tool in QGIS

    Lecture 48 Map presentation in QGIS from results

    Section 10: MISCELLANEOUS

    Lecture 49 The model accuracy and how to improve it

    Environmental Scientists,Ecologists,Agronomists,Soil scientists,GIS students,Remote sensing students,Farmers,Conservation scientists,Land use planners,Forestry


    Published 6/2025
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 7.57 GB | Duration: 8h 52m

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