Nitrogen Dioxide (NO2) (Monthly NO2...
The national NO2 (ppb) land use regression model was developed from 2006 national air pollution surveillance (NAPS) monitoring data, following methods reported in Hystad et al. (2011) (see Required Citation below). Background and regional components were estimated in the LUR using satellite-derived NO2 estimates and geographic variables, while local scale variation was modelled using deterministic gradients. The final LUR model includes: road length within 10 km; 2005-2011 satellite NO2 estimates; area of industrial land use within 2 km; and summer rainfall. This model explained 73% of the variation in NAPS measurements with a root mean square error (RMSE) of 2.9 ppb. Local scale variation was modelled using deterministic gradient from the literature and kernel density measures and added to the final LUR model results to produce the final NO2 estimates in this dataset. Dr. Perry Hystad (Oregon State University) produced the final estimates for all unique locations of DMTI Spatial Inc. single link postal codes active at any time between 1983 and 2015. Annual measured NO2 levels from National Air Pollution Surveillance monitoring stations for 24 Census Divisions have been used to produce the estimated annual average levels for 1984 through 2012. (See Supplementary documentation below for more details). For each year, the annual estimate was adjusted using ratios of measured monthly data over measured annual average from NAPS stations across Canada (see NO2 Monthly Adjustment Supplementary Methods Document below).
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Additional Information
Field | Value |
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Data last updated | September 18, 2023 |
Metadata last updated | October 9, 2023 |
Created | September 18, 2023 |
Format | |
License | License not specified |
Has views | False |
Id | 7f37e17e-c79d-4d44-b272-d318f412ffa0 |
Package id | 7934fce3-bc83-4392-a90a-31d906799a46 |
Position | 0 |
State | active |