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A multivariate statistical analysis of sediment yield and prediction in Romania


, : A multivariate statistical analysis of sediment yield and prediction in Romania. Catena Supplement (10): 137-146

To develop a multiple regression model for the prediction of sediment yield, 99 small (< 50 kmsuperscript 2) catchments from two different rock types (flysch and molasse) were studied. For each drainage basin, 28 independent variables were measured. Equations were derived for each rock type and tested against the measurements.


Accession: 001738909

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