DocumentCode :
3221679
Title :
Analysis of multispectral imagery and modeling contaminant transport
Author :
Becker, Naomi M. ; Brumby, Steven ; David, Nancy A. ; Irvine, John M.
Author_Institution :
Los Alamos Nat. Lab., NM, USA
fYear :
2002
fDate :
16-17 Oct. 2002
Firstpage :
71
Lastpage :
77
Abstract :
A significant concern in the monitoring of hazardous waste is the potential for contaminants to migrate into locations where their presence poses greater environmental risks. The transport modeling performed in this study demonstrates the joint use of remotely sensed multispectral imagery and mathematical modeling to assess the surface migration of contaminants. KINEROS, an event-driven model of surface runoff and sediment transport, was used to assess uranium transport for various rain events. The model inputs include parameters related to the size and slope of watershed components, vegetation, and soil conditions. One distinct set of model inputs was derived from remotely sensed imagery data and another from site-specific knowledge. To derive the parameters of the KINEROS model from remotely sensed data, classification analysis was performed on IKONOS four-band multispectral imagery of the watershed. A system known as GENIE, developed by Los Alamos National Laboratory, employs genetic algorithms to evolve classifiers based on small, user-selected training samples. The classification analysis derived by employing GENIE provided insight into the correct KINEROS parameters for various sub-elements of the watershed. The model results offer valuable information about portions of the watershed that contributed the most to contaminant transport. These methods are applicable to numerous sites where possible transport of waste materials poses an environmental risk. Because the approach rests on the analysis of remote sensing data, the techniques can be used to monitor inaccessible waste sites, as well as reduce the amount of data that would need to be collected for model calibration.
Keywords :
data reduction; genetic algorithms; image classification; radioactive waste repositories; remote sensing; sediments; soil; uranium; GENIE; IKONOS; KINEROS; Los Alamos National Laboratory; classification analysis; contaminant transport modeling; data reduction; environmental risks; event-driven model; genetic algorithms; hazardous waste monitoring; inaccessible waste sites; mathematical modeling; multispectral imagery analysis; remotely sensed multispectral imagery; sediment transport; soil conditions; surface runoff; uranium transport; vegetation; watershed components; Data analysis; Image analysis; Mathematical model; Multispectral imaging; Rain; Remote monitoring; Sediments; Soil; Surface contamination; Vegetation mapping;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Applied Imagery Pattern Recognition Workshop, 2002. Proceedings. 31st
Print_ISBN :
0-7695-1863-X
Type :
conf
DOI :
10.1109/AIPR.2002.1182257
Filename :
1182257
Link To Document :
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