Author: Govind, Ajit
- Coupling Process-Based Models and Machine Learning Algorithms for Predicting Yield and Evapotranspiration of Maize in Arid Environments
- The combined impact of shallow groundwater and soil salinity on evapotranspiration using remote sensing in an agricultural alluvial setting
- The Fusion Impact of Compost, Biochar, and Polymer on Sandy Soil Properties and Bean Productivity
- Developing automated machine learning approach for fast and robust crop yield prediction using a fusion of remote sensing, soil, and weather dataset
- Hybridization of process-based models, remote sensing, and machine learning for enhanced spatial predictions of wheat yield and quality
Author: Aboelsoud, Hesham
- The combined impact of shallow groundwater and soil salinity on evapotranspiration using remote sensing in an agricultural alluvial setting
- The Fusion Impact of Compost, Biochar, and Polymer on Sandy Soil Properties and Bean Productivity
- Hybridization of process-based models, remote sensing, and machine learning for enhanced spatial predictions of wheat yield and quality
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