DocumentCode
2725183
Title
A Genetic Algorithm Method to Assimilate Sensor Data for Homeland Defense Applications
Author
Haupt, Sue Ellen ; Allen, Christopher T. ; Young, George S.
Author_Institution
Dept. of Meteorology, Pennsylvania State Univ., State College, PA
fYear
2006
fDate
24-26 July 2006
Firstpage
243
Lastpage
248
Abstract
A critical problem in homeland defense is correctly characterizing the source of hazardous material. Field monitors are expected to measure concentrations of toxic material. Algorithms are then required that backcalculate the parameters of the source and the local meteorology so that subsequent predictive modeling can inform decision-makers. Here, a genetic algorithm is used together with transport and dispersion models to assimilate sensor data to characterize emission sources. The parameters computed include location, time, and amount of the release and meteorological conditions relevant to the transport and dispersion. This methodology is demonstrated for a basic Gaussian plume dispersion model and verified in the context of both synthetic data and actual monitored data from field tests with known release amounts. Its error bounds are set using Monte Carlo techniques and robustness assessed through the addition of white noise. Algorithm speed is tuned through optimizing the parameters of the genetic algorithm
Keywords
Monte Carlo methods; air pollution; genetic algorithms; hazardous materials; Gaussian plume dispersion model; Monte Carlo techniques; genetic algorithm; genetic algorithm method; hazardous material; homeland defense; meteorology; sensor data; Context modeling; Genetic algorithms; Hazardous materials; Meteorology; Monte Carlo methods; Noise robustness; Predictive models; Sensor phenomena and characterization; Testing; White noise;
fLanguage
English
Publisher
ieee
Conference_Titel
Adaptive and Learning Systems, 2006 IEEE Mountain Workshop on
Conference_Location
Logan, UT
Print_ISBN
1-4244-0166-6
Type
conf
DOI
10.1109/SMCALS.2006.250723
Filename
4016794
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