Fifth Conference on Artificial Intelligence Applications to Environmental Science

4.3

Characterizing Contaminant Source and Meteorological Forcing using Data Assimilation with a Genetic Algorithm

Kerrie J. Long, Penn State Univ., University Park, PA; and S. E. Haupt, G. Young, and C. T. Allen

In homeland security applications, it is often necessary to characterize the source location and strength of a potentially harmful contaminant. Unfortunately, meteorological data often have insufficient spatial and temporal resolution for precise modeling of pollutant dispersion and is therefore inaccurate or unrepresentative. This issue is addressed via a method that simultaneously tunes the surface wind and the pollutant source characteristics. This method uses a genetic algorithm (GA) to find the combination of source location, source strength, and surface wind that best matches monitored receptor data with pollutant dispersion model output. The approach is validated using synthetic receptor data generated by the Gaussian plume and puff equations. Given sufficient receptor data, the GA is able to reproduce the synthetically generated wind, source location, and source strength. The minimum requirements for data quantity and quality are determined by sensitivity analysis.

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Session 4, Applications of Artificial Intelligence
Tuesday, 16 January 2007, 8:30 AM-9:45 AM, 210B

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