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Forecasting Daily Maximum Ground-level Ozone Concentrations Using Stochastic Models

机译:使用随机模型预测每日最大地面臭氧浓度

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Analysing and predicting air quality parameters is an important task due to the health impact caused by air pollution. Ground ozone levels are a topic of considerable environmental concern, since excessive levels of ozone indicate high pollution. We develop stochastic models that estimate the ground-level ozone concentrations in air at Pavlovo station in Sofia for the period 2012 -2016. First, we use the binary logistic regression to predict the probability of occurrence or nonoccurrence of ozone concentrations above or below a threshold (100 μg/m~3). Second, in order to model the daily maximum ozone concentrations the Student's t and gamma distributions are used. The parameters of these distributions are modeled as linear parametric or nonparametric functions. The input predictors include surface and upper air temperature, atmospheric pressure, relative humidity, wind speed and direction, solar radiation, nitric oxide and nitrogen dioxide. The developed models explain the variation in daily ozone maxima and provide reliable tool to predict ozone levels exceeding a relevant threshold.
机译:分析和预测空气质量参数是由于空气污染造成的健康影响,这是一个重要的任务。地面臭氧水平是一个相当大的环境问题的主题,因为过量的臭氧水平表明高污染。我们开发了随机模型,估计了2012年期间索菲亚·帕夫洛沃站空气中的地面臭氧浓度。首先,我们使用二进制逻辑回归来预测臭氧浓度的发生或非阈值(100μg/ m〜3)的发生概率。其次,为了模拟每日最大臭氧浓度,使用学生的T和伽马分布。这些分布的参数被建模为线性参数或非参数函数。输入预测器包括表面和上部空气温度,大气压,相对湿度,风速和方向,太阳辐射,一氧化氮和二氧化氮。开发模型解释了日常臭氧最大值的变化,并提供可靠的工具来预测超过相关阈值的臭氧水平。

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