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Using an artificial neural network (ANN) for the identification of soil from penetrometer data – Nicolas ROMANOWSKI Polytech Clermont Ferrand (CUST) Thesis June 2016
Date: June 2016
Author: Nicolas ROMANOWSKI
Year: 2016
Research Papers
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Using-an-artificial-neural-network-ANN-for-the-identification-of-soil-from-penetrometer-data-Nicolas-ROMANOWSKI-Polytech-Clermont-Ferrand-CUST-Jun-2016