Volatile organic compound (VOC) emissions from industrial coating operation
s typically are estimated using use rate-based models. Sample size consider
ations often require that model parameters such as coating use rates and em
ission factors be developed from regional or national data. Although these
data are valuable, they may not be current or reflect local use patterns. I
n this Bayesian estimation of VOC emissions from wood furniture coating in
Los Angeles County, California, statewide data are combined with local data
using Bayes' theorem. Statewide data and expert judgment are used to formu
late maximum entropy prior probability distributions. The coating emission
factor prior is updated with local survey data. Bayesian estimation can red
uce the cost of estimating emissions by updating prior estimates with small
samples of contemporary regional data. The method provides minimally biase
d distributions of VOC emissions that are more informative than estimates o
btained with other statistical methods.