Identifying pollution source regions using multiply censored data

Citation
E. Brankov et al., Identifying pollution source regions using multiply censored data, ENV SCI TEC, 33(13), 1999, pp. 2273-2277
Citations number
24
Categorie Soggetti
Environment/Ecology,"Environmental Engineering & Energy
Journal title
ENVIRONMENTAL SCIENCE & TECHNOLOGY
ISSN journal
0013936X → ACNP
Volume
33
Issue
13
Year of publication
1999
Pages
2273 - 2277
Database
ISI
SICI code
0013-936X(19990701)33:13<2273:IPSRUM>2.0.ZU;2-D
Abstract
To improve our understanding of the problem of long-range transport and sou rce-receptor relationships for trace-level toxic air contaminants, we exami ne the use of several multiple comparison procedures (MCPs) in the analysis and interpretation of multiply-censored data sets. Censoring is a chronic problem for some of the toxic elements of interest (As, Se, Mn, etc.) becau se their atmospheric concentrations are often too low to be measured precis ely. Such concentrations are commonly reported in a nonquantitative way as "below the limit of detection", leaving the data analyst with censored data sets. Since the standard statistical MCPs are not readily applicable to su ch data sets, we employ Monte Carte simulations to evaluate two nonparametr ic rank-type MCPs for their applicability to the interpretation of censored data. Two different methods for ranking censored data are evaluated: avera ge rank method and substitution with half the detection limit. The results suggest that the Kruskal-Wallis-Dunn MCP with the half-detection limit repl acement for censored data is most appropriate for comparing independent, mu ltiply-censored samples of moderate size (20-100 elements). Application of this method to pollutant clusters at several sites in the northeastern USA enabled us to identify potential pollution source regions and atmospheric p atterns associated with the long-range transport of air pollutants.