Inicio  /  SOIL SCIENCE  /  Vol: 163 Núm: 1 Par: 0 (1998)  /  Artículo
ARTÍCULO
TITULO

DEEP WEATHERING OF CALCAREOUS SEDIMENTARY ROCK AND THE REDISTRIBUTION OF IRON AND MANGANESE IN SOIL AND SAPROLITE

Phillips    
D H    
Ammons    
T    
Lee    
S Y    
Lietzke    
D A    

Resumen

No disponible

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