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Ordinal time series model for forecasting air quality index for ozone in Southern California

机译:预测南加州臭氧空气质量指数的序数时间序列模型

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摘要

Air quality index (AQI) for ozone is currently divided into six states depending on the level of public health concern. Generalized linear type modeling is a convenient and effective way to handle the AQI state, which can be characterized as non-stationary ordinal-valued time series. Various link functions which include cumulative logit, cumulative probit, and complimentary log-log are considered, and the partial maximum likelihood method is used for estimation. For a comparison purpose, the identity link, which yields a multiple regression model on the cumulative probabilities, is also considered. Random time-varying covariates include past AQI states, various meteorological processes, and periodic components. For model selection and comparison, the partial likelihood ratio tests, AIC and SIC are used. The proposed models are applied to 3 years of daily AQI ozone data from a station in San Bernardino County, CA. An independent year-long data from the same station are used to evaluate the performance of day-ahead forecasts of AQI state. The results show that the logit and probit models remove the non-stationarity in residuals, and both models successfully forecast day-ahead AQI states with almost 90 % of the chance.
机译:臭氧的空气质量指数(AQI)目前根据公众健康的关注程度分为六个状态。广义线性类型建模是处理AQI状态的便捷有效方法,可以将其描述为非平稳序数时间序列。考虑各种链接功能,包括累积对数,累积概率和互补对数,并且使用部分最大似然法进行估计。为了进行比较,还考虑了身份链接,该链接对累积概率产生了多元回归模型。随机时变协变量包括过去的AQI状态,各种气象过程和周期性分量。对于模型选择和比较,使用了部分似然比检验AIC和SIC。拟议的模型被应用于加利福尼亚州圣贝纳迪诺县一个站的3年每日AQI臭氧数据。来自同一台站的独立的长达一年的数据用于评估AQI状态的日前预报的性能。结果表明,对数模型和概率模型消除了残差中的非平稳性,并且两个模型都成功地预测了日趋提前的AQI状态,几乎有90%的机会。

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