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Random forest meteorological normalisation models for Swiss PM10 trend analysis

机译:瑞士PM10趋势分析随机森林气象标准化模型

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Meteorological normalisation is a technique which accounts for changes in meteorology over time in an air quality time series. Controlling for such changes helps support robust trend analysis because there is more certainty that the observed trends are due to changes in emissions or chemistry, not changes in meteorology. Predictive random forest models (RF; a decision tree machine learning technique) were grown for 31 air quality monitoring sites in Switzerland using surface meteorological, synoptic scale, boundary layer height, and time variables to explain daily PM10 concentrations. The RF models were used to calculate meteorologically normalised trends which were formally tested and evaluated using the Theil–Sen estimator. Between 1997 and 2016, significantly decreasing normalised PM10 trends ranged between ?0.09 and ?1.16?μg?m?3?yr?1 with urban traffic sites experiencing the greatest mean decrease in PM10 concentrations at ?0.77?μg?m?3?yr?1. Similar magnitudes have been reported for normalised PM10 trends for earlier time periods in Switzerland which indicates PM10 concentrations are continuing to decrease at similar rates as in the past. The ability for RF models to be interpreted was leveraged using partial dependence plots to explain the observed trends and relevant physical and chemical processes influencing PM10 concentrations. Notably, two regimes were suggested by the models which cause elevated PM10 concentrations in Switzerland: one related to poor dispersion conditions and a second resulting from high rates of secondary PM generation in deep, photochemically active boundary layers. The RF meteorological normalisation process was found to be robust, user friendly and simple to implement, and readily interpretable which suggests the technique could be useful in many air quality exploratory data analysis situations.
机译:气象标准化是一种技术,其在空气质量时间序列中随着时间的推移变化。控制此类变化有助于支持稳健的趋势分析,因为更确定的是观察到的趋势是由于排放或化学的变化,而不是气象学的变化。预测随机林模型(RF;决策树机学习技术)在瑞士的31个空气质量监测网站上使用表面气象,概要规模,边界层高度和时间变量来扩大,以解释每日PM10浓度。 RF模型用于计算使用Theil-森估计经过正式测试和评估的气象学归一化趋势。在1997年至2016年之间,明显减少了归一化PM10趋势之间的趋势?0.09和?1.16?μg?m?3?YR?1与城市交通站点经历最大的PM10浓度下降何处?0.77?μg?3?YR ?1。据报道,瑞士早期时间段的标准化PM10趋势据报道了类似的大小,这表明PM10浓度正在继续以与过去类似的速率降低。利用部分依赖性地块利用待解释的RF模型来解释影响PM10浓度的观察到的趋势和相关的物理和化学过程。值得注意的是,模型提出了两个制度,该模型在瑞士导致PM10浓度升高:与差的分散条件相关的模型,以及深度光化学的主动边界层的高级PM产生的高速率产生的较差。发现RF气象正常化过程是强大的,用户友好和简单的实现,并且易于解释,这表明该技术在许多空气质量探索数据分析情况下都可有用。

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