Author/Authors :
Sharad Gokhale، نويسنده , , *، نويسنده , , Mukesh Khare b، نويسنده , , 1، نويسنده ,
Abstract :
Air pollutant concentrations are essentially random variables and can be well described by statistical distribution models. The statistical distribution
models are, therefore, useful tools in predicting the distribution of air pollutant concentrations. The statistical distributional form, fitting
to the concentrations data, is based upon several factors, i.e. source types, pollutant types, emission patterns, meteorological conditions, and
averaging times [Taylor, J.A., Jakeman, A.J., Simpson, R.W., 1986. Modeling distributions of air pollutant concentrations e I: identification
of statistical models. Atmospheric Environment 20 (9), 1781e1789]. The statistical characteristics of dispersion of air pollutants in the atmosphere
are represented by successive random dilution process [Ott, W.R., 1995. Environmental Statistics and Data Analysis. Lewis publishers].
This process may, however, differ depending upon the location of pollutant dispersion, i.e. near roadways, at intersections or in street canyons.
Further, the distributional form may also differ. Several investigators, in the past, presumed lognormal distribution (LND) for the air quality data.
While, a few found other distributional form when carried out the actual data analysis.
The present paper develops the statistical distribution model fitting to carbon monoxide (CO) concentrations for the heterogeneous traffic
pattern at the urban hotspots in Delhi, India. Three years of 1-h average CO concentration data (from 1997 to 1999), at the traffic intersection
and near a roadway, are examined using goodness-of-fit tests for the suitable statistical distributional form. The results showed that the log
logistic distribution model (LLD) best fit the CO concentration data at both the intersection and the roadway. It can therefore be deduced
that ‘heterogeneity in traffic’ and ‘emission patterns’ may be affecting the statistical distributional form significantly.
Keywords :
Air pollutant concentration , Heterogeneous traffic pattern , Goodness-of-fit test , Statistical distribution model , Log logistic distribution