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Assessing the performance of standard methods to predict the standard uncertainty of air quality data having incomplete time coverage

机译:评估标准方法的性能以预测具有不完整时间覆盖范围的空气质量数据的标准不确定性

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As a result of the complex nature of operating multi-station national air quality networks it is rare that complete data sets are produced from these networks. The reliance of most air quality legislation on the assessment of measured annual average concentrations against target or limit concentrations necessitates the use of methods to calculate an annual average value and the uncertainty in this value in the absence of a complete data set for the year in question. Standard procedures exist for performing these calculations, but it is not clear how effective these are when data having low time resolution are collected and missing data accounts for large periods of the year. This paper investigates the influence of these deficiencies using data from UK air quality networks in the form of monthly average concentrations for polycyclic aromatic hydrocarbons and for metals in the PM_(10) phase of ambient air. Whilst the standard methods currently employed produce good results on average, for individual cases the uncertainty in the annual average calculated when data is missing may be appreciably different from that obtained when full knowledge of the distribution of the data is known. These effects become more apparent as the quantity of missing data increases.
机译:由于运行多站点国家空气质量网络的复杂性,很少能从这些网络产生完整的数据集。大多数空气质量法规都依赖于对目标或极限浓度的年度平均测量浓度进行评估,因此在缺乏有关年份的完整数据集的情况下,必须使用方法来计算年度平均值和该值的不确定性。存在执行这些计算的标准程序,但是尚不清楚当收集具有低时间分辨率的数据并且一年中大部分时间都丢失了数据时,这些程序的有效性如何。本文使用来自英国空气质量网络的数据,以环境空气PM_(10)相中多环芳烃和金属的月平均浓度形式,调查了这些缺陷的影响。尽管当前采用的标准方法平均可以产生良好的结果,但对于个别情况,缺少数据时计算出的年平均值的不确定性可能与完全了解数据分布时获得的不确定性明显不同。随着丢失数据量的增加,这些影响变得更加明显。

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