Follow
Aliakbar mohamadifar
Aliakbar mohamadifar
phd
Verified email at hormozgan.ac.ir
Title
Cited by
Cited by
Year
Spatial mapping of the provenance of storm dust: Application of data mining and ensemble modelling
H Gholami, A Mohamadifar, AL Collins
Atmospheric Research 233, 104716, 2020
962020
Machine-learning algorithms for predicting land susceptibility to dust emissions: The case of the Jazmurian Basin, Iran
H Gholami, A Mohamadifar, A Sorooshian, JD Jansen
Atmospheric Pollution Research 11 (8), 1303-1315, 2020
772020
Mapping wind erosion hazard with regression-based machine learning algorithms
H Gholami, A Mohammadifar, DT Bui, AL Collins
Scientific Reports 10 (1), 20494, 2020
522020
Assessment of the interpretability of data mining for the spatial modelling of water erosion using game theory
A Mohammadifar, H Gholami, JR Comino, AL Collins
Catena 200, 105178, 2021
482021
Using the Boruta algorithm and deep learning models for mapping land susceptibility to atmospheric dust emissions in Iran
H Gholami, A Mohammadifar, S Golzari, DG Kaskaoutis, AL Collins
Aeolian Research 50, 100682, 2021
412021
Integrated modelling for mapping spatial sources of dust in central Asia-An important dust source in the global atmospheric system
H Gholami, A Mohammadifar, H Malakooti, Y Esmaeilpour, S Golzari, ...
Atmospheric Pollution Research 12 (9), 101173, 2021
342021
A new integrated data mining model to map spatial variation in the susceptibility of land to act as a source of aeolian dust
H Gholami, A Mohammadifar, HR Pourghasemi, AL Collins
Environmental Science and Pollution Research 27, 42022-42039, 2020
282020
Spatial modelling of soil salinity: deep or shallow learning models?
A Mohammadifar, H Gholami, S Golzari, AL Collins
Environmental Science and Pollution Research 28, 39432-39450, 2021
262021
Novel deep learning hybrid models (CNN-GRU and DLDL-RF) for the susceptibility classification of dust sources in the Middle East: a global source
H Gholami, A Mohammadifar
Scientific Reports 12 (1), 19342, 2022
202022
Predicting land susceptibility to atmospheric dust emissions in central Iran by combining integrated data mining and a regional climate model
H Gholami, A Mohamadifar, S Rahimi, DG Kaskaoutis, AL Collins
Atmospheric Pollution Research 12 (4), 172-187, 2021
202021
Mapping of the wind erodible fraction of soil by bidirectional gated recurrent unit (BiGRU) and bidirectional recurrent neural network (BiRNN) deep learning models
M Rezaei, A Mohammadifar, H Gholami, M Mina, MJPM Riksen, ...
Catena 223, 106953, 2023
172023
Interpretability of simple RNN and GRU deep learning models used to map land susceptibility to gully erosion
H Gholami, A Mohammadifar, S Golzari, Y Song, B Pradhan
Science of the Total Environment 904, 166960, 2023
162023
Stacking-and voting-based ensemble deep learning models (SEDL and VEDL) and active learning (AL) for mapping land subsidence
A Mohammadifar, H Gholami, S Golzari
Environmental Science and Pollution Research 30 (10), 26580-26595, 2023
162023
Assessment of the uncertainty and interpretability of deep learning models for mapping soil salinity using DeepQuantreg and game theory
A Mohammadifar, H Gholami, S Golzari
Scientific Reports 12 (1), 15167, 2022
142022
Modeling land susceptibility to wind erosion hazards using LASSO regression and graph convolutional networks
H Gholami, A Mohammadifar, KE Fitzsimmons, Y Li, DG Kaskaoutis
Frontiers in Environmental Science 11, 2023
92023
Novel integrated modelling based on multiplicative long short-term memory (mLSTM) deep learning model and ensemble multi-criteria decision making (MCDM) models for mapping …
A Mohammadifar, H Gholami, S Golzari
Journal of Environmental Management 345, 118838, 2023
82023
Combination of Multi-criteria Decision-making Models and Regional Flood Analysis Technique to Prioritize Subwatersheds for Flood Control (Case study: Dehbar Watershed of Khorasan)
AM Ali Reza Nafarzadegan
Geography and Environmental Hazards 30, 2019
5*2019
Intrinsic and extrinsic techniques for quantification uncertainty of an interpretable GRU deep learning model used to predict atmospheric total suspended particulates (TSP) in …
H Gholami, A Mohammadifar, RD Behrooz, DG Kaskaoutis, Y Li, Y Song
Environmental Pollution 342, 123082, 2024
22024
Simulating Groundwater Potential in Kahurestan Watershed by Utilizing a Combined Approach of Data-Mining Models
AR Nafarzadegan, AA Mohammadifar, F Mohammadi, M Kazemi
Journal of Watershed Management Research 12 (23), 130-143, 2021
22021
An explainable integrated machine learning model for mapping soil erosion by wind and water in a catchment with three desiccated lakes
H Gholami, M Jalali, M Rezaei, A Mohamadifar, Y Song, Y Li, Y Wang, ...
Aeolian Research 67, 100924, 2024
2024
The system can't perform the operation now. Try again later.
Articles 1–20