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Using machine learning tools for salinity forecasting to support irrigation management and decision-making in a polder of coastal Bangladesh

Bibliographic Details
Main Authors: Behera, Abhijit, Sena, Dipaka Ranjan, Matheswaran, Karthikeyan, Jampani, Mahesh, Hasib, Md. R., Mondal, M. K.
Format: Brief
Language:Inglés
Published: International Water Management Institute 2024
Subjects:
machine learning
salinity
forecasting
irrigation management
decision making
coastal areas
Online Access:https://hdl.handle.net/10568/172947
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