Szczegóły
Tytuł artykułu
Evaluation of the unit weight of organic soils from a CPTM using an Artificial Neural NetworksTytuł czasopisma
Archives of Civil EngineeringRocznik
2021Wolumin
vol. 67Numer
No 3Afiliacje
Straż, Grzegorz : Rzeszow University of Technology, Faculty of Civil and Environmental Engineering and Architecture Civil Engineering, Powstańców Warszawy 12 Av., 35-959 Rzeszow, Poland ; Borowiec, Artur : Rzeszow University of Technology, Faculty of Civil and Environmental Engineering and Architecture Civil Engineering, Powstańców Warszawy 12 Av., 35-959 Rzeszow, PolandAutorzy
Słowa kluczowe
soil unit weight ; artificial neural networks ; organic soils ; organic content ; cone penetration testWydział PAN
Nauki TechniczneZakres
259-281Wydawca
WARSAW UNIVERSITY OF TECHNOLOGY FACULTY OF CIVIL ENGINEERING and COMMITTEE FOR CIVIL ENGINEERING POLISH ACADEMY OF SCIENCESBibliografia
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