首页> 外文学位 >INDOOR AIR QUALITY: MULTIVARIATE ANALYSES OF THE RELATIONSHIP BETWEEN INDOOR AND OUTDOOR AEROSOLS (POLLUTION, RESIDENTIAL, WISCONSIN, OHIO).
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INDOOR AIR QUALITY: MULTIVARIATE ANALYSES OF THE RELATIONSHIP BETWEEN INDOOR AND OUTDOOR AEROSOLS (POLLUTION, RESIDENTIAL, WISCONSIN, OHIO).

机译:室内空气质量:室内和室外气溶胶(污染,住宅,威斯康星州,俄亥俄州)之间关系的多元分析。

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摘要

A unique multivariate data set incorporating simultaneous indoor and outdoor measurements of sixteen air contaminants at ten homes has been used to investigate the contribution of outdoor concentrations to indoor aerosol variability, and to characterize indoor source contribution to the indoor concentrations. The data were available from an earlier field study of particle and gas concentrations outside and inside five homes in each of two cities: Portage, Wisconsin and Steubenville, Ohio. Three distinct multivariate statistical techniques were used sequentially in the research, successively building on the results and interpretations as they developed. Cluster analysis was selected as the initial method for partitioning the variables into subgroups comprised of highly intercorrelated variables. It was used to explore interrelationships and discover patterns in the data set. For most of the ten home sites studied, four to five clusters were formed, containing eight to fourteen of the measured variables. Significant site-to-site variability was evident in both cities, however within sites, indoor clusters had similarities to the outdoor clusters. Principal component analysis was next performed on the Portage data, reduced in dimension to avoid problems of singularity in the data matrix. Dominant influences on the composition of both the indoor and outdoor aerosol were revealed by both the cluster and principal component analyses. This similarity is important because hierarchical cluster analysis cannot distinguish secondary associations among variables. The principal component analyses results were used to attribute predominant indoor and outdoor sources, including cigarette smoke, wood stove, road dust, and urban combustion sources. Finally, multiple regression analysis was preformed to relate outdoor pollutant concentrations to a composite index of the indoor aerosol as represented by the orthogonal rotations of the indoor principal components. Special treatment of extreme value observations was required to reduce their influence on the factor structure and the regression results. The method for identifying extreme values may have application in other principal component analyses of air quality data. The final regression analyses showed that the influence of outdoor sources can be identified in the indoor data, in particular for the older homes, presumably having higher rates of air infiltration. The research reported here indicates that this multivariate analysis framework is preferable to single univariate analysis (e.g., indoor/outdoor ratio analysis) in evaluating the influence of outdoor aerosols and indoor sources on indoor air quality data.
机译:一个独特的多元数据集结合了十个家庭同时对室内和室外十六种空气污染物进行的测量,已用于调查室外浓度对室内气溶胶变异性的影响,并表征室内源对室内浓度的影响。这些数据可从较早的现场研究中获得,该研究对两个城市(威斯康星州的Portage和俄亥俄州的Steubenville)的五个房屋内外的颗粒和气体浓度进行了研究。在研究中顺序使用了三种不同的多元统计技术,并在它们发展起来的结果和解释的基础上相继建立。选择聚类分析作为将变量分为由高度相关的变量组成的子组的初始方法。它用于探索相互关系并发现数据集中的模式。对于所研究的十个家庭站点中的大多数,形成了四到五个集群,其中包含八到十四个测量变量。在两个城市中,站点之间存在明显的差异,但是站点内部的室内集群与室外集群具有相似性。接下来,对Portage数据进行主成分分析,并减小维数以避免数据矩阵中的奇异问题。聚类分析和主成分分析都揭示了对室内和室外气溶胶成分的主要影响。这种相似性很重要,因为层次聚类分析无法区分变量之间的次要关联。主成分分析结果用于归因于室内和室外的主要来源,包括香烟烟雾,柴灶,道路扬尘和城市燃烧源。最后,进行了多元回归分析,将室外污染物浓度与室内主要成分的正交旋转所代表的室内气溶胶的复合指数相关联。需要对极值观测值进行特殊处理,以减少它们对因子结构和回归结果的影响。识别极值的方法可应用于空气质量数据的其他主成分分析。最终的回归分析表明,可以从室内数据中识别室外资源的影响,尤其是对于较老的房屋,尤其是对较老的房屋而言,空气渗透率更高。此处报告的研究表明,在评估室外气溶胶和室内污染源对室内空气质量数据的影响时,此多元分析框架优于单一单变量分析(例如,室内/室外比分析)。

著录项

  • 作者

    MCCARTHY, SHARON MARIE.;

  • 作者单位

    University of California, Irvine.;

  • 授予单位 University of California, Irvine.;
  • 学科 Environmental Sciences.
  • 学位 Ph.D.
  • 年度 1986
  • 页码 374 p.
  • 总页数 374
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 环境科学基础理论;
  • 关键词

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