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Younes Garosi
Younes Garosi
PhD of Soil Science, Isfahan University of Technology.
Verified email at basu.ac.ir
Title
Cited by
Cited by
Year
Assessing the performance of GIS-based machine learning models with different accuracy measures for determining susceptibility to gully erosion
Y Garosi, M Sheklabadi, C Conoscenti, HR Pourghasemi, K Van Oost
Science of the Total Environment 664, 1117-1132, 2019
1612019
Comparison of differences in resolution and sources of controlling factors for gully erosion susceptibility mapping
Y Garosi, M Sheklabadi, HR Pourghasemi, AA Besalatpour, C Conoscenti, ...
Geoderma 330, 65-78, 2018
1372018
Improving the spatial prediction of soil organic carbon using environmental covariates selection: A comparison of a group of environmental covariates
M Zeraatpisheh, Y Garosi, HR Owliaie, S Ayoubi, R Taghizadeh-Mehrjardi, ...
Catena 208 (105723), 2022
992022
Predicting heavy metal contents by applying machine learning approaches and environmental covariates in west of Iran
K Azizi, S Ayoubi, K Nabiollahi, Y Garosi, R Gislum
Journal of Geochemical Exploration 233, 106921, 2022
522022
Integration of Sentinel-1/2 and topographic attributes to predict the spatial distribution of soil texture fractions in some agricultural soils of western Iran
K Azizi, Y Garosi, S Ayoubi, S Tajik
Soil and Tillage Research 229, 105681, 2023
162023
Effects of different sources and spatial resolutions of environmental covariates on predicting soil organic carbon using machine learning in a semi-arid region of Iran
Y Garosi, S Ayoubi, M Nussbaum, M Sheklabadi
Geoderma Regional, 2022
142022
Use of the time series and multi-temporal features of Sentinel-1/2 satellite imagery to predict soil inorganic and organic carbon in a low-relief area with a semi-arid environment
Y Garosi, S Ayoubi, M Nussbaum, M Sheklabadi, M Nael, I Kimiaee
International Journal of Remote Sensing 43 (18), 6856–6880, 2022
92022
Feasibility of using environmental covariates and machine learning to predict the spatial variability of selected heavy metals in soils
M Zeraatpisheh, R Mirzaei, Y Garosi, M Xu, GBM Heuvelink, T Scholten, ...
EGU General Assembly 2020, 2020
12020
Corrigendum to" Assessing the performance of GIS-based machine learning models with different accuracy measures for determining susceptibility to gully erosion"[Sci. Total …
Y Garosi, M Sheklabadi, C Conoscenti, HR Pourghasemi, K Van Oost
The Science of the total environment 730, 139262, 2020
12020
GIS-based multivariate predictive models for gully erosion susceptibility mapping in calcareous soils
Y Garosi, M Sheklabadi, C Conocenti, KV Oost, P Shekaari, L Meimivand
Pedometrics 2017, 2017
2017
Soil erosion status in Iran and clay minerals influence on soils interrill erodibility factor (A case study: Dasht - e- Tabriz)
AA Jfatzadeh, Y Garosi, S Oustan, A Ahmadi
Soil and Crop Management: Adaptation and Mitigation of Climate Change, 2013
2013
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