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How bias-correction can improve air quality forecasts over Portugal

机译:偏差校正如何改善葡萄牙的空气质量预报

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摘要

Currently three air quality modelling systems operate routinely with high-resolution over mainland Portugal for forecasting purposes, namely MM5-CHIMERE, MM5-EURAD, and CALIOPE. They each operate daily using different horizontal resolutions (10 km x 10 km, 5 km x 5 km, and 4 km x 4 km, respectively), specific physical and chemical parameterizations, and their own emission pre-processors (with a common EMEP emission database source but different spatial disaggregation methodologies). The operational BSC-DREAM8b model is coupled offline within the aforementioned air quality systems to provide the Saharan dust contribution to particulate matter. Bias-correction studies have demonstrated the benefit of using past observational data to reduce systematic model forecast errors. The present contribution aims to evaluate the application of two bias-correction techniques, the multiplicative ratio and the Kalman filter, in order to improve air quality forecasts for Portugal. Both techniques are applied to the three modelling systems over the full year of 2010. Raw and unbiased model results for the main atmospheric pollutants (O_3, NO_2, SO_2, PM10, and PM_(2.5)) are analysed and compared with data from 18 monitoring stations distributed within inland Portugal on an hourly basis. Statistical analysis shows that both bias-correction techniques improve the raw forecast skills (for all the modelling systems and pollutants). In the case of O_3 max-8 h, correlation coefficients improve by 19-45%, from 0.56-0.81 (raw models) to 0.78-0.86 (corrected models). PM_(2.5) also presents significant improvements, for example correlation coefficients increase by more than 50% (with both techniques), reaching values between 0.50 and 0.64. The corrected primary pollutants NO_2 and SO_2 demonstrate significant relative improvements compared to O3, mostly because the original modelling system skills are lower for those species. Although the applied techniques have different mathematical formulations and complexity levels, there are comparable answers for all of the forecasting systems. Analysis performed over specific situations such as air quality episodes and cases of unvalidated or missing data reveals different behaviours of the bias-correction techniques under study. The results confirm the advantage of the application of bias-correction techniques for air quality forecasts. Both techniques can be applied routinely in operational forecast systems and they will be useful to provide accurate alerts about exceedances to the population.
机译:当前,为预测目的,三种空气质量建模系统以高分辨率在葡萄牙大陆上常规运行,分别是MM5-CHIMERE,MM5-EURAD和CALIOPE。他们每个人每天使用不同的水平分辨率(分别为10 km x 10 km,5 km x 5 km和4 km x 4 km),特定的物理和化学参数设置以及自己的排放预处理器(具有共同的EMEP排放)进行操作数据库来源,但使用不同的空间分解方法)。运行中的BSC-DREAM8b模型在上述空气质量系统内离线耦合,以提供撒哈拉尘埃对颗粒物的贡献。偏差校正研究证明了使用过去的观测数据来减少系统模型预测误差的好处。本文稿旨在评估乘积比和卡尔曼滤波器这两种偏差校正技术的应用,以改善葡萄牙的空气质量预报。两种技术都在2010年全年应用于这三种建模系统。分析了主要大气污染物(O_3,NO_2,SO_2,PM10和PM_(2.5))的原始和无偏模型结果,并将其与18个监测的数据进行了比较。每小时在葡萄牙内陆分发一次。统计分析表明,两种偏差校正技术都可以提高原始预报技能(针对所有建模系统和污染物)。在O_3 max-8 h的情况下,相关系数提高了19-45%,从0.56-0.81(原始模型)提高到0.78-0.86(校正模型)。 PM_(2.5)还显示出显着的改进,例如相关系数增加了50%以上(使用这两种技术),达到0.50至0.64之间的值。校正后的主要污染物NO_2和SO_2与O3相比具有显着的相对改善,主要是因为这些物种的原始建模系统技能较低。尽管所应用的技术具有不同的数学公式和复杂度,但是对于所有的预测系统都有可比的答案。在特定情况下进行的分析,例如空气质量事件以及数据未经验证或缺失的情况,揭示了所研究的偏差校正技术的不同行为。结果证实了将偏差校正技术应用于空气质量预报的优势。两种技术都可以在运行预报系统中常规应用,它们对于提供有关人口超标的准确警报将很有用。

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  • 来源
    《Atmospheric environment》 |2011年第37期|p.6629-6641|共13页
  • 作者单位

    CESAM, Department of Environment and Planning, University ofAveiro, 3810-193 Aveiro, Portugal;

    CESAM, Department of Environment and Planning, University ofAveiro, 3810-193 Aveiro, Portugal;

    Earth Science Department, Barcelona Supercomputing Center, Jordi Cirona 29, Edificio Nexus II, Barcelona, Spain;

    CESAM, Department of Environment and Planning, University ofAveiro, 3810-193 Aveiro, Portugal;

    CESAM, Department of Environment and Planning, University ofAveiro, 3810-193 Aveiro, Portugal;

    Earth Science Department, Barcelona Supercomputing Center, Jordi Cirona 29, Edificio Nexus II, Barcelona, Spain;

    Earth Science Department, Barcelona Supercomputing Center, Jordi Cirona 29, Edificio Nexus II, Barcelona, Spain Environmental Modeling Laboratory, Technical University of Catalonia, Barcelona, Spain;

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

    Air quality forecast; Modelling systems; Bias-correction; Multiplicative ratio; Kalman filter;

    机译:空气质量预报;建模系统;偏差校正;乘法比例;卡尔曼滤波器;

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