The Steubenville Comprehensive Air Monitoring Program (SCAMP): Overview and Statistical Considerations

JOURNAL OF THE AIR & WASTE MANAGEMENT ASSOCIATION(2005)

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摘要
Average concentrations of particulate matter with an aerodynamic diameter less than or equal to 2.5 mu m (PM2.1) in Steubenville, OH, have decreased by more than 10 mu g/m(3) since the landmark Harvard Six Cities Study associated the city's elevated PM2.5 concentrations with adverse health effects in the 1980s. Given the promulgation of a new National Ambient Air Quality Standard (NAAQS) for PM2.1 in 1997, a current assessment of PM,., in the Steubenville region is warranted. The Steubenville Comprehensive Air Monitoring Program (SCAMP) was conducted from 2000 through 2002 to provide such an assessment. The program included both an outdoor ambient air monitoring component and an indoor and personal air sampling component. This paper, which is the first in a series of four that will present results from the outdoor portion of SCAMP, provides an overview of the outdoor ambient air monitoring program and addresses statistical issues, most notably autocorrelation, that have been overlooked by many PM2.5 data analyses. The average PM2.5 concentration measured in Steubenville during SCAMP (18.4 mu g/m(3)) was 3.4 mu g/m(3) above the annual PM2.5 NAAQS. On average, sulfate and organic material accounted for similar to 31 % and 25 %, respectively, of the total PM2.5 mass. Local sources contributed an estimated 4.6 mu g/m(3) to Steubenville's mean PM2.5 concentration. PM2.5 and each of its major ionic components were significantly correlated in space across all pairs of monitoring sites in the region, suggesting the influence of meteorology and long-range transport on regional PM2.5 concentrations. Statistically significant autocorrelation was observed among time series of PM2.5 and component data collected at daily and 1-in-4-day frequencies during SCAMP. Results of spatial analyses that accounted for autocorrelation were generally consistent with findings from previous studies that did not consider autocorrelation; however, these analyses also indicated that failure to account for autocorrelation can lead to incorrect conclusions about statistical significance.
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