ARTÍCULO
TITULO

Prediction of Soil Organic Carbon across Different Land-use Patterns: A Neural Network Approach

S. Somaratne    
G. Seneviratne    
and U. Coomaraswamy     

Resumen

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PÁGINAS
pp. 1580 - 1589
REVISTAS SIMILARES
Agronomy
Agriculture
Forests

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