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Model evaluation and ensemble modelling of surface-level ozone in Europe and North America in the context of AQMEII

机译:在AQMEII范围内的欧洲和北美地表臭氧的模型评估和整体建模

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摘要

More than ten state-of-the-art regional air quality models have been applied as part of the Air Quality Model Evaluation International Initiative (AQMEII). These models were run by twenty independent groups in Europe and North America, Standardised modelling outputs over a full year (2006) from each group have been shared on the web-distributed ENSEMBLE system, which allows for statistical and ensemble analyses to be performed by each group. The estimated ground-level ozone mixing ratios from the models are collectively examined in an ensemble fashion and evaluated against a large set of observations from both continents. The scale of the exercise is unprecedented and offers a unique opportunity to investigate methodologies for generating skilful ensembles of regional air quality models outputs. Despite the remarkable progress of ensemble air quality modelling over the past decade, there are still outstanding questions regarding this technique. Among them, what is the best and most beneficial way to build an ensemble of members? And how should the optimum size of the ensemble be determined in order to capture data variability as well as keeping the error low? These questions are addressed here by looking at optimal ensemble size and quality of the members. The analysis carried out is based on systematic minimization of the model error and is important for performing diagnostic/probabilistic model evaluation. It is shown that the most commonly used multi-model approach, namely the average over all available members, can be outperformed by subsets of members optimally selected in terms of bias, error, and correlation. More importantly, this result does not strictly depend on the skill of the individual members, but may require the inclusion of low-ranking skill-score members. A clustering methodology is applied to discern among members and to build a skilful ensemble based on model association and data clustering, which makes no use of priori knowledge of model skill. Results show that, while the methodology needs further refinement, by optimally selecting the cluster distance and association criteria, this approach can be useful for model applications beyond those strictly related to model evaluation, such as air quality forecasting.
机译:作为国际空气质量模型评估计划(AQMEII)的一部分,已经应用了十多个最新的区域空气质量模型。这些模型由欧洲和北美的20个独立小组运行,每个小组在2006年全年的标准化模型输出已在网络分发的ENSEMBLE系统上共享,该系统允许每个小组进行统计和整体分析组。从模型中估算出的地面臭氧混合比的估计值以集合的方式进行了集体检查,并根据来自两大洲的大量观测值进行了评估。这次演习的规模是空前的,并提供了一个独特的机会来研究用于生成区域空气质量模型输出的巧妙组合的方法。尽管在过去十年中整体空气质量建模取得了显着进展,但有关此技术仍存在一些悬而未决的问题。其中,建立成员集合的最佳和最有益的方法是什么?为了捕获数据的可变性并保持较低的误差,应该如何确定集合的最佳大小?这些问题通过查看最佳集合大小和成员质量来解决。进行的分析基于模型误差的系统最小化,对于执行诊断/概率模型评估非常重要。结果表明,最常用的多模型方法,即所有可用成员的平均值,可以优于根据偏差,误差和相关性最佳选择的成员子集的性能。更重要的是,此结果并不严格取决于单个成员的技能,但是可能需要包括排名较低的技能得分成员。基于模型关联和数据聚类的聚类方法被应用于识别成员之间并建立熟练的整体,这没有利用模型技能的先验知识。结果表明,尽管该方法需要进一步完善,但通过最佳选择聚类距离和关联标准,该方法除了对模型评估严格相关的应用(例如空气质量预测)外,还可用于模型应用。

著录项

  • 来源
    《Atmospheric environment 》 |2012年第6期| p.60-74| 共15页
  • 作者单位

    Institute for Environment and Sustainability, Joint Research Centre, European Commission, Ispra, Italy;

    Enviroware srl, Concorezzo (MB), Italy;

    IPSL/LSCE laboratoire CEA/CNRS/UVSQ, France;

    Atmospheric Modelling and Analysis Division, Environmental Protection Agency, NC, USA;

    Air Quality Research Division, Science and Technology Branch, Environment Canada, Toronto, Canada;

    Atmospheric Modelling and Analysis Division, Environmental Protection Agency, NC, USA;

    INERIS, National Institute for Industrial Environment and Risks, Pare Technologique ALATA, 60550 Verneuil en Halatte, France;

    Department of Environmental Science, Faculty of Science and Technology, Aarhus University, Denmark;

    Department of Environmental Science, Faculty of Science and Technology, Aarhus University, Denmark;

    National Centre for Atmospheric Science (NCAS), University of Hertfordshire, Hatfield, UK,Centre for Atmospheric & Instrumentation Research (CAIR), University of Hertfordshire, Hatfield, UK;

    IPSL/LISA UMR CNRS 7583, Universite Paris Est Creteil et University Paris Diderot, France;

    Netherlands Organization for Applied Scientific Research (TNO), Utrecht, The Netherlands;

    CESAM & Department of Environment and Planning, University ofAveiro, Aveiro, Portugal;

    IMK-IFU, Institute for Meteorology and Climate Research-Atmospheric Environmental Division, Germany;

    Centre for Atmospheric & Instrumentation Research (CAIR), University of Hertfordshire, Hatfield, UK;

    CIRES-NOAA/ESRL/GSD National Oceanic and Atmospheric Administration Environmental Systems Research Laboratory Global Systems Division Boulder, CO, USA;

    Enviroware srl, Concorezzo (MB), Italy;

    Department of Environmental Science, Faculty of Science and Technology, Aarhus University, Denmark;

    Meteorological and Hydrological Service, Gric 3, Zagreb, Croatia;

    Meteorological and Hydrological Service, Gric 3, Zagreb, Croatia;

    CESAM & Department of Environment and Planning, University ofAveiro, Aveiro, Portugal;

    Environ International Corporation, Novato, CA, USA;

    INERIS, National Institute for Industrial Environment and Risks, Pare Technologique ALATA, 60550 Verneuil en Halatte, France,Ricerca sul Sistema Energetico (RSE) SpA, Milan, Italy;

    Finnish Meteorological Institute, Helsinki, Finland;

    Department of Applied Science, University of Naples 'Parthenope', Naples, Italy;

    CEREA, Joint Laboratory Ecole des Ponts ParisTech/EDF R&D, Universite Paris-Est, France;

    Netherlands Organization for Applied Scientific Research (TNO), Utrecht, The Netherlands;

    Department of Environmental Science, Faculty of Science and Technology, Aarhus University, Denmark;

    Centre for Atmospheric & Instrumentation Research (CAIR), University of Hertfordshire, Hatfield, UK;

    Finnish Meteorological Institute, Helsinki, Finland;

    IMK-IFU, Institute for Meteorology and Climate Research-Atmospheric Environmental Division, Germany;

    Leibniz Institute for Tropospheric Research, Leipzig, Germany;

    Environ International Corporation, Novato, CA, USA;

    Air Quality Research Division, Science and Technology Branch, Environment Canada, Toronto, Canada;

    Atmospheric Modelling and Analysis Division, Environmental Protection Agency, NC, USA;

    Institute for Environment and Sustainability, Joint Research Centre, European Commission, Ispra, Italy;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    AQMEII; clustering; error minimization; multi-model ensemble; ozone; model evaluation;

    机译:AQMEII;集群错误最小化多模型合奏;臭氧;模型评估;

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