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1 research outputs found
A supervised committee machine artificial intelligent for improving DRASTIC method to assess groundwater contamination risk: a case study from Tabriz plain aquifer, Iran
Author
A Afshar
A Neshat
+65Â more
A Rahman
AA Moghaddam
Asghar Asghari Moghaddam
B Dixon
B Dixon
B Dixon
BM Evans
BR Scanlon
CDA McLay
CH Chen
CJ Willmott
CW Dawson
DE Rumelhart
DW Opitz
E Fijani
EH Mamdani
EH Mamdani
F Rezaei
FAL Pacheco
FAL Pacheco
FJ Chang
G Chae
H Aksoy
H Baalousha
H Huan
Hamed Baghban
I Pulido-Calvo
IR Lake
IS Babiker
J Ghiasi-Freez
J Vrba
K Mohammadi
KP Singh
L Aller
L Emberger
LA Zadeh
LF Sanches Fernandes
M Firat
M Gocic
M Sugeno
M Zounemat-Kermani
MA Muheeb
MG Rupert
N Kazakis
NM Gazzaz
R Barzegar
R Umar
RA Jacobs
Rahim Barzegar
RC Gogu
RCM Nobre
RF Valle Junior
RV Demico
RW Healy
S Chiu
S Palani
S Saidi
S Secunda
SA Jafari
SZ Ghavidel
TG Fritch
UG Bacanli
V Nourani
WHO (World Health Organization)
YJ Kim
Publication venue
'Springer Science and Business Media LLC'
Publication date
Field of study
No full text
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