Air Quality Models

Air
quality models use mathematical and numerical techniques to simulate
the physical and chemical processes that affect air pollutants as they
disperse and react in the atmosphere. Based on inputs of
meteorological data and source information like emission rates and
stack height, these models are designed to characterize primary
pollutants that are emitted directly into the atmosphere and, in some
cases, secondary pollutants that are formed as a result of complex
chemical reactions within the atmosphere. These models are important
to our air quality management system because they are widely used by
agencies tasked with controlling air pollution to both identify source
contributions to air quality problems and assist in the design of
effective strategies to reduce harmful air pollutants. For example, air
quality models can be used during the permitting process to verify
that a new source will not exceed ambient air quality standards or, if
necessary, determine appropriate additional control requirements. In
addition, air quality models can also be used to predict future
pollutant concentrations from multiple sources after the
implementation of a new regulatory program, in order to estimate the
effectiveness of the program in reducing harmful exposures to humans
and the environment.
The most commonly used air quality models include the following:
Dispersion Modeling
- These models are typically used in the permitting process to
estimate the concentration of pollutants at specified ground-level
receptors surrounding an emissions source.
Photochemical Modeling
- These models are typically used in regulatory or policy assessments
to simulate the impacts from all sources by estimating pollutant
concentrations and deposition of both inert and chemically reactive
pollutants over large spatial scales.
Receptor Modeling
- These models are observational techniques which use the chemical and
physical characteristics of gases and particles measured at source and
receptor to both identify the presence of and to quantify source
contributions to receptor concentrations.
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