Publication | Closed Access
Using non-homogeneous Poisson models with multiple change-points to estimate the number of ozone exceedances in Mexico City
51
Citations
44
References
2009
Year
Environmental MonitoringEngineeringEnvironmental Impact AssessmentUrban Air QualityAir QualityMultiple Change-pointsStochastic SimulationData ScienceAtmospheric ScienceStochastic ProcessesNon-homogeneous Poisson ModelsEstimation TheoryStatistical ModelingStatisticsClimate ChangeOzone Layer DepletionGibbs Sampling AlgorithmPoisson ProcessAtmospheric HazardOzoneMexico CityStochastic ModelingStatistical InferenceAir PollutionUrban Climate
In this paper, we consider some non-homogeneous Poisson models to estimate the probability that an air quality standard is exceeded a given number of times in a time interval of interest. We assume that the number of exceedances occurs according to a non-homogeneous Poisson process (NHPP). This Poisson process has rate function , , which depends on some parameters that must be estimated. We take into account two cases of rate functions: the Weibull and the Goel—Okumoto. We consider models with and without change-points. When the presence of change-points is assumed, we may have the presence of either one, two or three change-points, depending of the data set. The parameters of the rate functions are estimated using a Gibbs sampling algorithm. Results are applied to ozone data provided by the Mexico City monitoring network. In a first instance, we assume that there are no change-points present. Depending on the adjustment of the model, we assume the presence of either one, two or three change-points. Copyright © 2009 John Wiley & Sons, Ltd.
| Year | Citations | |
|---|---|---|
Page 1
Page 1