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Land use regression models revealing spatiotemporal co-variation in NO_2, NO, and O_3 in the Netherlands

机译:土地利用回归模型揭示了荷兰NO_2,NO和O_3的时空协变

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Land use regression (LUR) modeling has been applied to study the spatiotemporal patterns of air pollution, which when combined with human space-time activity, is important in understanding the health effects of air pollution. However, most of these studies focus either on the temporal or the spatial domain and do not consider the variability in both space and time. A temporally aggregated model does not reflect the temporal variability caused by traffic and atmospheric conditions and leads to inaccurate estimation of personal exposure. Besides, most studies focus on a single air pollutant (e.g., 03, NO2, or NO). These pollutants have a strong interaction due to photochemical processes. For studying relations between spatial and temporal patterns in these pollutants it is preferable to use a uniform data source and modelling approach which makes comparison of pollution surfaces between pollutants more reliable as they are produced with the same methodology. We developed temporal land use regression models of 03, NO2 and NO to study the co-variability of these pollutants and the relations with typical weather conditions over the year. We use hourly concentrations from the measurement network of the Dutch National Institute for Public Health and the Environment and aggregate them by hour, for weekday/weekend and month, and fit a regression model for each hour of the day. 70 candidate predictors that are known to have a strong relationship with combustion-related emissions are evaluated in the LUR modelling process. For all pollutants, the optimal LUR was identified with 4 predictors and the temporal variability was determined by the explained variance of each temporal model. Our temporal models for 03, NO2, and NO strongly reflect the photochemical processes in space and time. 03 shows a high background value throughout the day and only dips in the (close) vicinity of roads. The diminishing rate is affected by traffic intensity. The NO2 LUR is validated against NO2 measurements from the Traffic-Related Air pollution and Children's respiratory HEalth and Allergies (TRACHEA) study, resulting in an R2 of 0.61.
机译:土地利用回归(LUR)建模已用于研究空气污染的时空模式,当与人类时空活动相结合时,对理解空气污染的健康影响至关重要。但是,这些研究大多数都集中在时域或空间领域,没有考虑时空的变化性。时间汇总模型不能反映交通和大气条件引起的时间可变性,并且会导致对个人暴露的估计不准确。此外,大多数研究都集中在单一的空气污染物(例如03,NO2或NO)上。由于光化学过程,这些污染物具有很强的相互作用。为了研究这些污染物的时空格局之间的关系,最好使用统一的数据源和建模方法,这使污染物之间污染面的比较更加可靠,因为它们是用相同的方法产生的。我们开发了03,NO2和NO的时间土地利用回归模型,以研究这些污染物的协变性以及一年中与典型天气状况的关系。我们使用荷兰国家公共卫生与环境研究所的测量网络中的每小时浓度,并针对工作日/周末和月份按小时进行汇总,并针对一天中的每个小时拟合回归模型。在LUR建模过程中,评估了70个已知的与燃烧相关的排放有密切关系的候选预测变量。对于所有污染物,最佳的LUR具有4个预测因子,并且时间变异性由每个时间模型的解释方差确定。我们针对03,NO2和NO的时间模型强烈反映了时空中的光化学过程。 03整天显示较高的背景值,并且仅在道路(近处)附近出现倾斜。递减率受交通强度的影响。根据交通相关空气污染和儿童呼吸健康与过敏(TRACHEA)研究中的NO2值对NO2 LUR进行了验证,得出的R2为0.61。

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