Abstract

Abstract. 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.

Highlights

  • Introduction1.1 Air quality trend analysisTrend analysis of ambient air quality data is a common and important procedure

  • Improvements in the pre-processing steps for air quality trend analysis need to be made which control, or account for meteorology and allow for more robust trend and intervention exploration. This overall objective of this paper is to present a meteorological normalisation technique which uses Random forest (RF) predictive models to prepare ambient atmospheric pollutant concentration data for trend analysis

  • R2 values ranged from 54 to 71 % (Fig. 3). This indicates for some sites in Switzerland PM10 concentrations could be well explained by a combination of surface meteorological conditions, boundary layer height, synoptic scale conditions, back trajectory receptor air mass clusters, and time variables which acted as proxies for emission strength

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Summary

Introduction

1.1 Air quality trend analysisTrend analysis of ambient air quality data is a common and important procedure. Air quality trend analysis is complicated because it is usually unknown if the behaviour of the trend is driven by changes in meteorology or changes in emissions or atmospheric chemistry (Rao and Zurbenko, 1994; Pryor et al, 1995; Libiseller and Grimvall, 2003; Libiseller et al, 2005; Wise and Comrie, 2005) The former is usually of greatest importance for policy makers because investigation in changes in emissions, and in turn, the perturbations on ambient pollutant concentrations is how efficacy of intervention activities are judged (Zeldin and Meisel, 1978; Carslaw et al, 2006).

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