@inproceedings{91311fd6b97646e387fa0ae0691fe02c,
title = "A genetic algorithm method for sensor data assimilation and source characterization",
abstract = "A genetic algorithm is used to couple a dispersion and transport model with a pollution receptor model for the purpose of assimilating sensor data to characterize emission sources. This coupling allows the use of the backward (receptor) model to calibrate the forward (dispersion) model, potentially across a wide range of meteorological conditions. The genetic algorithm optimizes the source calibration factors that connect the two models. This methodology is demonstrated for a basic Gaussian plume dispersion model, then progresses to incorporating an operational transport and dispersion model. It is 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. The impact of varying the genetic algorithm parameters is assessed.",
author = "Haupt, {Sue Ellen} and Allen, {Christopher T.} and Young, {George S.}",
year = "2006",
doi = "10.1109/ijcnn.2006.247238",
language = "English (US)",
isbn = "0780394909",
series = "IEEE International Conference on Neural Networks - Conference Proceedings",
publisher = "Institute of Electrical and Electronics Engineers Inc.",
pages = "5096--5103",
booktitle = "International Joint Conference on Neural Networks 2006, IJCNN '06",
address = "United States",
note = "International Joint Conference on Neural Networks 2006, IJCNN '06 ; Conference date: 16-07-2006 Through 21-07-2006",
}