Soil erosion prediction using the Revised Universal Soil Loss Equation (RUSLE) in Google Earth Engine (GEE) cloud-based platform

High-quality soils are an important resource affecting the quality of life of human societies, as well as terrestrial ecosystems in general. Thus, soil erosion and soil loss are a serious issue that should be managed, in order to conserve both artificial and natural ecosystems. Predicting soil erosi...

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Main Authors: S. Papaiordanidis, I.Z. Gitas, T. Katagis
Format: Article
Language:Russian
Published: V.V. Dokuchaev Soil Science Institute 2020-01-01
Series:Бюллетень Почвенного института им. В.В. Докучаева
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Online Access:https://bulletin.esoil.ru/jour/article/view/538
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author S. Papaiordanidis
I.Z. Gitas
T. Katagis
author_facet S. Papaiordanidis
I.Z. Gitas
T. Katagis
author_sort S. Papaiordanidis
collection DOAJ
description High-quality soils are an important resource affecting the quality of life of human societies, as well as terrestrial ecosystems in general. Thus, soil erosion and soil loss are a serious issue that should be managed, in order to conserve both artificial and natural ecosystems. Predicting soil erosion has been a challenge for many years. Traditional field measurements are accurate, but they cannot be applied to large areas easily because of their high cost in time and resources. The last decade, satellite remote sensing and predictive models have been widely used by scientists to predict soil erosion in large areas with cost-efficient methods and techniques. One of those techniques is the Revised Universal Soil Loss Equation (RUSLE). RUSLE uses satellite imagery, as well as precipitation and soil data from other sources to predict the soil erosion per hectare in tons, in a given instant of time. Data acquisition for these data-demanding methods has always been a problem, especially for scientists working with large and diverse datasets. Newly emerged online technologies like Google Earth Engine (GEE) have given access to petabytes of data on demand, alongside high processing power to process them. In this paper we investigated seasonal spatiotemporal changes of soil erosion with the use of RUSLE implemented within GEE, for Pindos mountain range in Greece. In addition, we estimated the correlation between the seasonal components of RUSLE (precipitation and vegetation) and mean RUSLE values.
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series Бюллетень Почвенного института им. В.В. Докучаева
spelling doaj-art-208da548b8cf41bb9a35c967997020a82025-08-20T03:59:13ZrusV.V. Dokuchaev Soil Science InstituteБюллетень Почвенного института им. В.В. Докучаева0136-16942312-42022020-01-010100365210.19047/0136-1694-2019-100-36-52483Soil erosion prediction using the Revised Universal Soil Loss Equation (RUSLE) in Google Earth Engine (GEE) cloud-based platformS. Papaiordanidis0I.Z. Gitas1T. Katagis2Laboratory of Forest Management and Remote Sensing, Aristotle University of ThessalonikiLaboratory of Forest Management and Remote Sensing, Aristotle University of ThessalonikiLaboratory of Forest Management and Remote Sensing, Aristotle University of ThessalonikiHigh-quality soils are an important resource affecting the quality of life of human societies, as well as terrestrial ecosystems in general. Thus, soil erosion and soil loss are a serious issue that should be managed, in order to conserve both artificial and natural ecosystems. Predicting soil erosion has been a challenge for many years. Traditional field measurements are accurate, but they cannot be applied to large areas easily because of their high cost in time and resources. The last decade, satellite remote sensing and predictive models have been widely used by scientists to predict soil erosion in large areas with cost-efficient methods and techniques. One of those techniques is the Revised Universal Soil Loss Equation (RUSLE). RUSLE uses satellite imagery, as well as precipitation and soil data from other sources to predict the soil erosion per hectare in tons, in a given instant of time. Data acquisition for these data-demanding methods has always been a problem, especially for scientists working with large and diverse datasets. Newly emerged online technologies like Google Earth Engine (GEE) have given access to petabytes of data on demand, alongside high processing power to process them. In this paper we investigated seasonal spatiotemporal changes of soil erosion with the use of RUSLE implemented within GEE, for Pindos mountain range in Greece. In addition, we estimated the correlation between the seasonal components of RUSLE (precipitation and vegetation) and mean RUSLE values.https://bulletin.esoil.ru/jour/article/view/538soil erosion predictionruslegoogle earth enginepindos mountain range
spellingShingle S. Papaiordanidis
I.Z. Gitas
T. Katagis
Soil erosion prediction using the Revised Universal Soil Loss Equation (RUSLE) in Google Earth Engine (GEE) cloud-based platform
Бюллетень Почвенного института им. В.В. Докучаева
soil erosion prediction
rusle
google earth engine
pindos mountain range
title Soil erosion prediction using the Revised Universal Soil Loss Equation (RUSLE) in Google Earth Engine (GEE) cloud-based platform
title_full Soil erosion prediction using the Revised Universal Soil Loss Equation (RUSLE) in Google Earth Engine (GEE) cloud-based platform
title_fullStr Soil erosion prediction using the Revised Universal Soil Loss Equation (RUSLE) in Google Earth Engine (GEE) cloud-based platform
title_full_unstemmed Soil erosion prediction using the Revised Universal Soil Loss Equation (RUSLE) in Google Earth Engine (GEE) cloud-based platform
title_short Soil erosion prediction using the Revised Universal Soil Loss Equation (RUSLE) in Google Earth Engine (GEE) cloud-based platform
title_sort soil erosion prediction using the revised universal soil loss equation rusle in google earth engine gee cloud based platform
topic soil erosion prediction
rusle
google earth engine
pindos mountain range
url https://bulletin.esoil.ru/jour/article/view/538
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