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Wave Hight Prediction at Caspian Sea Using Data Driven Model Ensemble Based Data Assimulation Methods
Wave Hight Prediction at Caspian Sea Using Data Driven Model Ensemble Based Data Assimulation Methods
Furrow infiltration and roughness prediction for different furrow inflow hydrographs using a zero-inertia model with a multilevel calibration approach
Furrow infiltration and roughness prediction for different furrow inflow hydrographs using a zero-inertia model with a multilevel calibration approach
Daily intake of heavy metals and nitrate through greenhouse cucumber and bell pepper consumption and potential health risks for human
Comparsion of Artificial Neural Network and Physically Based Models for Estimating of Reference Evapotranspiration in Greenhouse
Comparsion of Artificial Neural Network and Physically Based Models for Estimating of Reference Evapotranspiration in Greenhouse
Integrated Model for Tracking Defects through Full Manufacturing Route of Aerospace Discs
Turbulence Models for Flows with Free Surface and Interfaces
Evaluation of Phenolic Content and Antioxidant Activity of Iranian Caraway in Compare to Clove and BHT Using Model Systems and vegetable oil
Evaluation of Phenolic Content and Antioxidant Activity of Iranian Caraway in Compare to Clove and BHT Using Model Systems and vegetable oil
An analytical model for nano confined fluids phase-transition Applications for Confined Fluids in Nanotube and Nanoslit
Mathematical Modeling of Stress-Strain Curve of Ti-IF Steel at High Temperature
Estimation of Direct Genetic and Maternal Effects for Production Traits of Iranian Hostein Cows Using Different Animal Models
Estimation of Direct Genetic and Maternal Effects for Production Traits of Iranian Hostein Cows Using Different Animal Models
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تحت نظارت وف بومی