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Ali Dadkhah
Ali Dadkhah
PhD candidate @ University of Vermont
Verified email at uvm.edu
Title
Cited by
Cited by
Year
Artificial intelligence in farming: Challenges and opportunities for building trust
M Gardezi, B Joshi, DM Rizzo, M Ryan, E Prutzer, S Brugler, A Dadkhah
Agronomy Journal 116 (3), 1217-1228, 2024
232024
The role of living labs in cultivating inclusive and responsible innovation in precision agriculture
M Gardezi, H Abuayyash, PR Adler, JP Alvez, R Anjum, AR Badireddy, ...
Agricultural Systems 216, 103908, 2024
72024
Improving decision support systems with machine learning: Identifying barriers to adoption
S Brugler, M Gardezi, A Dadkhah, DM Rizzo, A Zia, SA Clay
Agronomy Journal 116 (3), 1229-1236, 2024
32024
Rethinking ‘responsibility’in precision agriculture innovation: lessons from an interdisciplinary research team
E Prutzer, M Gardezi, DM Rizzo, M Emery, S Merrill, BEK Ryan, ...
Journal of Responsible Innovation 10 (1), 2202093, 2023
32023
Microbiome assembly and stability during start-up of a full-scale, two-phase anaerobic digester fed cow manure and mixed organic feedstocks
AC DeCola, LC Toppen, KP Brown, A Dadkhah, DM Rizzo, RM Ziels, ...
Bioresource Technology 394, 130247, 2024
22024
Variable Drought Threshold Method for Low-Flow Behavior Reveals Distinct Clustering Across the Continental United States
R van der Heijden, A Dadkhah, A Aghababaei, X Li, E Webster-Esho, ...
EGU24, 2024
2024
Crop yield prediction: leveraging high-resolution daily cloud-free sentinel-2 imagery
A Dadkhah, S Musayev, D Rizzo, P Adler, A Zia, L Garcia, P Oikonomou, ...
Chapman Conference on Remote Sensing of the Water Cycle, 2024
2024
High resolution corn yield prediction using daily, cloud-free sentinel imagery
A Dadkhah, S Musayev, P Adler, D Rizzo, A Zia, G Pinder, P Oikonomou, ...
AGU23, 2023
2023
Spatiotemporal analysis of model errors in regional hydrological predictions of drought: A study in the Colorado River Basin
A Dadkhah, D Rizzo, S Hamshaw
STAHY23, 2023
2023
Watershed analysis and feature selection based on performance of deep learning streamflow drought models in the Colorado River Basin
A Dadkhah, D Rizzo, K Underwood
SEDHYD23, 2023
2023
Employing random forest, support vector machine learning models, and Planet Scope satellite data to predict crop yield on the farm
J Rathore, D Joshi, A Dadkhah, S Kumari, M Gardezi, O Walsh, DM Rizzo, ...
AGU24, 0
Using Interpretable Machine Learning to Reveal Processes Driving Baseflow Regimes Across CONUS
R van der Heijden, A Dadkhah, A Aghababaei, X Li, E Webster-Esho, ...
AGU24, 0
A Machine Learning Framework for Interpreting Spatiotemporal Model Errors in Regional Hydrological Predictions of Drought
A Dadkhah, SD Hamshaw, R van der Heijden, DM Rizzo
AGU24, 0
A Framework for Spatiotemporal Improvement of Actual Evapotranspiration Estimates Using Neural Networks and Remote Sensing Data
A Dadkhah, DM Rizzo, LA Garcia, PR Adler, GF Pinder, PJ Clemins, ...
AGU24, 0
Promoting Responsible Innovation in Precision Agriculture through Living Labs
M Gardezi, PR Adler, H Abuayyash, J Alvez, AR Badireddy, R Anjum, ...
AGU24, 0
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