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Earth / Neural networks / Soil science / Learning / Hydrology / Artificial neural network / Salinity / Groundwater model / Backpropagation / Computational neuroscience / Science / Water
Date: 2013-01-15 18:53:36
Earth
Neural networks
Soil science
Learning
Hydrology
Artificial neural network
Salinity
Groundwater model
Backpropagation
Computational neuroscience
Science
Water

Classification of Dryland Salinity Risk using Artificial Neural Networks

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Source URL: www.mssanz.org.au

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