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Comparison of recent speciated PM_(2.5) data from collocated CSN and IMPROVE measurements

机译:来自Constocated CSN的最近限定PM_(2.5)数据的比较并改善测量

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摘要

As long-term speciated PM2.5 monitoring programs, the Interagency Monitoring of Protected Visual Environments (IMPROVE) and Chemical Speciation Network (CSN) were designed with different objectives but apply similar analytical methods to 24hr filter samples and report many of the same species. The two networks have different operating structures, sampling practices, analytical methods, analytical facilities, and data handling and validation practices, which require attention when data from the two networks are combined in an analysis. Data from collocated CSN and IMPROVE sites from January 1, 2016 through September 30, 2018 are presented to document the comparability between the networks. While species measured well above the method detection limit (MDL) generally agree well during this period, there is evidence of some inter-network bias for fine-soil related elements at specific locations, as well as subtle biases for some well-measured species. Many species - particularly for CSN - are measured at or near the MDL and have poor inter- and intra-network collocated agreement; caution should be used when advancing findings on such measurements. However, comparison of reconstructed mass shows good inter-network agreement suggesting that the networks are effective at quantifying predominant mass species.
机译:作为长期规定的PM2.5监测计划,受保护的视觉环境(改进)和化学品格网络(CSN)的间际监控是用不同的目标设计,但将类似的分析方法应用于24小时过滤器样品并报告许多相同的物种。这两个网络具有不同的操作结构,采样实践,分析方法,分析设施和数据处理和验证实践,需要注意来自两个网络的数据在分析中组合。提出了来自2016年1月1日至2018年9月30日至2018年9月30日至2016年9月30日的数据的数据,以记录网络之间的可比性。虽然在方法检测极限(MDL)高于测量的物种中,但在此期间通常很好地同意,但是有证据表明特定位置的细土相关元素的一些网络偏差,以及一些良好测量的物种的微妙偏见。许多物种 - 特别是CSN - 在MDL或附近测量,并且具有差和网络内的构建协议;在推进此类测量的调查结果时,应注意。然而,重建质量的比较显示了良好的网络间协议,表明网络在量化主要肿块中是有效的。

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