A space-time skew-t model for threshold exceedances

Biometrics. 2017 Sep;73(3):749-758. doi: 10.1111/biom.12644. Epub 2017 Jan 12.

Abstract

To assess the compliance of air quality regulations, the Environmental Protection Agency (EPA) must know if a site exceeds a pre-specified level. In the case of ozone, the level for compliance is fixed at 75 parts per billion, which is high, but not extreme at all locations. We present a new space-time model for threshold exceedances based on the skew-t process. Our method incorporates a random partition to permit long-distance asymptotic independence while allowing for sites that are near one another to be asymptotically dependent, and we incorporate thresholding to allow the tails of the data to speak for themselves. We also introduce a transformed AR(1) time-series to allow for temporal dependence. Finally, our model allows for high-dimensional Bayesian inference that is comparable in computation time to traditional geostatistical methods for large data sets. We apply our method to an ozone analysis for July 2005, and find that our model improves over both Gaussian and max-stable methods in terms of predicting exceedances of a high level.

Keywords: Skew-t sep; Extreme value analysis; Markov chain Monte Carlo; Random partition; Spatio-temporal modeling.

MeSH terms

  • Air Pollutants
  • Bayes Theorem
  • Models, Statistical*
  • Normal Distribution
  • Ozone
  • United States
  • United States Environmental Protection Agency

Substances

  • Air Pollutants
  • Ozone