摘要
A nonhomogeneous Markov chain is applied to the study of the air quality classification in Mexico City when the so-called criterion pollutants are used. We consider the indices associated with air quality using two regulations where different ways of classification are taken into account. Parameters of the model are the initial and transition probabilities of the chain. They are estimated under the Bayesian point of view through samples generated directly from the corresponding posterior distributions. Using the estimated parameters, the probability of having an air quality index in a given hour of the day is obtained.
A nonhomogeneous Markov chain is applied to the study of the air quality classification in Mexico City when the so-called criterion pollutants are used. We consider the indices associated with air quality using two regulations where different ways of classification are taken into account. Parameters of the model are the initial and transition probabilities of the chain. They are estimated under the Bayesian point of view through samples generated directly from the corresponding posterior distributions. Using the estimated parameters, the probability of having an air quality index in a given hour of the day is obtained.
作者
Eliane R. Rodrigues
Juan A. Cruz-Juárez
Hortensia J. Reyes-Cervantes
Guadalupe Tzintzun
Eliane R. Rodrigues;Juan A. Cruz-Juárez;Hortensia J. Reyes-Cervantes;Guadalupe Tzintzun(Instituto de Matemáticas, Universidad Nacional Autónoma de México, Mexico City, Mexico;Facultad de Ciencias Fsico-Matemáticas, Benemérita Universidad Autónoma de Puebla, Puebla, Mexico;Instituto Nacional de Ecologa y Cambio Climático, Secretara de Medio Ambiente y Recursos Naturales, Mexico City, Mexico)