2005
DOI: 10.1007/s00024-005-2697-4
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Uncertainty Analysis in Atmospheric Dispersion Modeling

Abstract: The concentration of a pollutant in the atmosphere is a random variable that cannot be predicted accurately, but can be described using quantities such as ensemble mean, variance, and probability distribution. There is growing recognition that the modeled concentrations of hazardous contaminants in the atmosphere should be described in a probabilistic framework. This paper discusses the various types of uncertainties in atmospheric dispersion models, and reviews sensitivity/uncertainty analysis methods to char… Show more

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Cited by 71 publications
(28 citation statements)
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“…Noise can arise from errors in meteorological data, sensing, atmospheric turbulence or modelling discrepancies (Rao (2005)). In this work, meteorological data and errors due to atmospheric turbulence are neglected.…”
Section: Observationmentioning
confidence: 99%
“…Noise can arise from errors in meteorological data, sensing, atmospheric turbulence or modelling discrepancies (Rao (2005)). In this work, meteorological data and errors due to atmospheric turbulence are neglected.…”
Section: Observationmentioning
confidence: 99%
“…Finally, η (4) J describes the noise inherent in the sensor (essentially measurement or instrument error). Rao (2005) discusses the nature of these four types of error with respect to characterization of uncertainties in atmospheric dispersion models, and provides a comprehensive review of sensitivity and/or uncertainty analysis methods that have been used to quantify and reduce them. Henceforth, all the various error contributions to the noise term are simply lumped together and denoted by e J [see Eqs.…”
Section: Model For Concentration Observationsmentioning
confidence: 99%
“…In general, e J consist of errors (e.g., input, stochastic, and measurement) and any real signal in the data that cannot be explained by the model. The random error e J can be split into four terms as discussed by Rao (2005), so…”
Section: Model For Concentration Observationsmentioning
confidence: 99%
“…Meteorological data are the cause of more than half of the uncertainty in predicting hourly concentrations with dispersion models (Rao, 2005). In addition to the natural variability of the atmosphere, the use of meteorological data taken at non-representative locations, the use of inappropriate instruments or non-systematic recording and data storage are some of the most influential factors affecting a dispersion model's uncertainty.…”
Section: Characterization Of Meteorologymentioning
confidence: 99%