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Ensemble forecasting with machine learning algorithms for ozone,nitrogen dioxide and PM_(10) on the Prev'Air platform

机译:在Prev'Air平台上使用机器学习算法对臭氧,二氧化氮和PM_(10)进行集合预测

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摘要

This paper presents the application ot an ensemble forecasting approach to the Prev Air operational platform. This platform aims at forecasting maps, on a daily basis, for ozone, nitrogen dioxide and par-ticulate matter. It relies on several air quality models which differ by their physical parameterizations, their input data and numerical strategies, so that one model may perform better with respect to observations for a given pollutant, at a given time and location. We apply sequential aggregation methods to this ensemble of models, which has already proved good potential in previous research papers. Compared to these studies, the novelties of this paper are the variety of models, the real operational context, which requires robustness assessment, and the application to several pollutants. In this paper, we first introduce the ensemble forecasting methods and the operational platform Prev'Air along with its models. Then, the sequential aggregation performance and robustness are assessed using two different data sets. The results with the discounted ridge regression method show that the errors of the forecasts are respectively reduced by at least 29%, 35% and 19% for hourly, daily and peak O_3 concentrations, by 19%, 26% and 20% for hourly, daily and peak NO_2 concentrations, and finally by 17%, 19% and 11% for hourly, daily and peak PM_(10) concentrations. At last, we give a first insight of the ensemble ability to forecast threshold exceedances.
机译:本文介绍了整体预报方法在Prev Air操作平台上的应用。该平台旨在每天预测臭氧,二氧化氮和颗粒物的地图。它依赖于几种空气质量模型,这些模型因其物理参数,输入数据和数值策略的不同而不同,因此对于给定污染物,给定时间和位置的观测,一个模型可能表现更好。我们将顺序聚合方法应用于这种模型集合,这在先前的研究论文中已被证明具有很好的潜力。与这些研究相比,本文的新颖之处在于模型的多样性,需要鲁棒性评估的实际操作环境以及对几种污染物的应用。在本文中,我们首先介绍集合预测方法和操作平台Prev'Air及其模型。然后,使用两个不同的数据集评估顺序聚合性能和鲁棒性。折线岭回归方法的结果表明,每小时,每天和峰值O_3浓度的预测误差分别降低了至少29%,35%和19%,每小时降低了19%,26%和20%,每天和最高NO_2浓度,最后每小时,每天和最高PM_(10)浓度分别降低17%,19%和11%。最后,我们对集合预测阈值超出的能力有一个初步的了解。

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