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Modeling spatial variability of airborne levoglucosan in Seattle, Washington

机译:华盛顿西雅图机载左旋葡聚糖的空间变异性建模

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In many urban areas residential wood burning is a significant source of wintertime fine particles and has an important influence on spatial variability of particle concentrations. Although woodsmoke fine particles are usually within the size range thought to be most damaging to human health, their chemical composition is different from those derived from fossil fuel combustion, on which most health-effects studies have focused. Development of an exposure assessment tool for identification of the spatial distribution of woodsmoke will improve future epidemiological studies that rely on such intra-urban variability. For land-use regression (LUR) models, uniform buffers (i.e., circular areas or grids) are often applied to model spatial variability of pollutant concentrations. However, when winter woodsmoke levels are expected to be at a maximum, the surface wind is influenced by drainage flow and a given receptor location is systematically downwind of uphill sources. This research extends our previously developed GIS-based catchment air flow modeling approach of wintertime average woodsmoke levels to Seattle, WA, with emphasis on the use of levoglucosan as a marker of wood combustion. We further compare our regression model to a historical data set of mobile light-scattering measurements taken 15-20 years ago. Although fine particle levels have decreased significantly over this period, the spatial models for current levoglucosan (R~2 = 0.57) and historical light scattering (R~2 = 0.49) predict similar spatial patterns. This research demonstrates the usefulness of using both light scattering and levoglucosan to model ambient woodsmoke concentrations and further demonstrates the usefulness of the concept of drainage catchments to identify elevated, persistent nighttime levels of fine particles.
机译:在许多城市地区,住宅木材燃烧是冬季细颗粒的重要来源,并且对颗粒浓度的空间变异性有重要影响。尽管wood子微粒的大小通常在对人体健康造成最大危害的范围内,但其化学成分与大多数健康效应研究重点关注的化石燃料燃烧所产生的化学成分不同。开发一种暴露评估工具来识别木烟的空间分布将改善依赖这种城市内部变异性的未来流行病学研究。对于土地利用回归(LUR)模型,通常使用统一缓冲区(即圆形区域或网格)来建模污染物浓度的空间变异性。但是,当预计冬季木烟水平最高时,地表风会受到排水流量的影响,并且给定的接收器位置会系统地在上坡源的顺风处。这项研究将我们以前开发的基于冬季冬季平均烟熏水平的基于GIS的集水气流模型方法扩展到华盛顿州西雅图市,重点是使用左旋葡聚糖作为木材燃烧的标志。我们进一步将回归模型与15到20年前进行的移动光散射测量的历史数据集进行比较。尽管在此期间细颗粒水平已显着下降,但当前左旋葡聚糖(R〜2 = 0.57)和历史光散射(R〜2 = 0.49)的空间模型预测出相似的空间格局。这项研究证明了同时使用光散射和左旋葡聚糖来模拟周围的烟熏浓度的有效性,并进一步证明了排水集水区的概念对识别夜间持续升高的细颗粒水平的有效性。

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