A spatiotemporal calibration and resolution refinement model was fitted to
calibrate nitrogen dioxide (NO2) concentration estimates from the Community
Multiscale Air Quality (CMAQ) model, using two sources of observed data on
NO2 that differed in their spatial and temporal resolutions. To refine the
spatial resolution of the CMAQ model estimates, we leveraged information using
additional local covariates including total traffic volume within 2 km,
population density, elevation, and land use characteristics. Predictions from
this model greatly improved the bias in the CMAQ estimates, as observed by the
much lower mean squared error (MSE) at the NO2 monitor sites. The final
model was used to predict the daily concentration of ambient NO2 over the
entire state of Connecticut on a grid with pixels of size 300 x 300 m. A
comparison of the prediction map with a similar map for the CMAQ estimates
showed marked improvement in the spatial resolution. The effect of local
covariates was evident in the finer spatial resolution map, where the
contribution of traffic on major highways to ambient NO2 concentration
stands out. An animation was also provided to show the change in the
concentration of ambient NO2 over space and time for 1994 and 1995.Comment: 23 pages, 8 figures, supplementary materia