...
首页> 外文期刊>Atmospheric environment >Evaluation of missing value methods for predicting ambient BTEX concentrations in two neighbouring cities in Southwestern Ontario Canada
【24h】

Evaluation of missing value methods for predicting ambient BTEX concentrations in two neighbouring cities in Southwestern Ontario Canada

机译:评估加拿大西南安大略省两个相邻城市中环境BTEX浓度的缺失值方法的评估

获取原文
获取原文并翻译 | 示例
           

摘要

High density air monitoring campaigns provide spatial patterns of pollutant concentrations which are integral in exposure assessment. Such analysis can assist with the determination of links between air quality and health outcomes, however, problems due to missing data can threaten to compromise these studies. This research evaluates four methods; mean value imputation, inverse distance weighting (IDW), inter-species ratios, and regression, to address missing spatial concentration data ranging from one missing data point up to 50% missing data. BTEX (benzene, toluene, ethylbenzene, and xylenes) concentrations were measured in Windsor and Sarnia, Ontario in the fall of 2005. Concentrations and inter-species ratios were generally similar between the two cities. Benzene (B) was observed to be higher in Sarnia, whereas toluene (T) and the T/B ratios were higher in Windsor. Using these urban, industrialized cities as case studies, this research demonstrates that using inter-species ratios or regression of the data for which there is complete information, along with one measured concentration (i.e. benzene) to predict for missing concentrations (i.e. TEX) results in good agreement between predicted and measured values. In both cities, the general trend remains that best agreement is observed for the leave-one-out scenario, followed by 10% and 25% missing, and the least agreement for the 50% missing cases. In the absence of any known concentrations IDW can provide reasonable agreement between observed and estimated concentrations for the BTEX species, and was superior over mean value imputation which was not able to preserve the spatial trend. The proposed methods can be used to fill in missing data, while preserving the general characteristics and rank order of the data which are sufficient for epidemiologic studies.
机译:高密度空气监测活动提供了污染物浓度的空间模式,这是暴露评估中不可或缺的。这种分析可以帮助确定空气质量与健康结果之间的联系,但是,由于缺少数据而引起的问题可能会威胁到这些研究。本研究评估了四种方法。平均值估算,逆距离权重(IDW),物种间比率和回归,以解决从一个缺失数据点到高达50%缺失数据的缺失空间浓度数据。 2005年秋季在安大略省的温莎和萨尼亚市测量了BTEX(苯,甲苯,乙苯和二甲苯)的浓度。两个城市之间的浓度和种间比率通常相似。在萨尼亚,苯(B)较高,而在温莎,甲苯(T)和T / B比较高。以这些城市的工业化城市为案例研究,该研究表明,使用物种间比率或具有完整信息的数据的回归以及一种测得的浓度(即苯)来预测缺失浓度(即TEX)的结果在预测值和测量值之间具有很好的一致性。在这两个城市中,总体趋势仍然是,在遗留一人一案的情况下,可以达成最佳共识,其次是失踪10%和25%,而失踪50%案件的共识最少。在没有任何已知浓度的情况下,IDW可以在BTEX物种的观察浓度和估计浓度之间提供合理的一致性,并且优于无法保留空间趋势的平均值估算。所提出的方法可用于填写缺失的数据,同时保留足以用于流行病学研究的数据的一般特征和等级顺序。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号