Plants and Environmental Quality Research Group, School of Life Sciences, Faculty of Science, Faculty of Engineering and Information Technology, University of Technology Sydney, P.O. Box 123, Broadway, Sydney, NSW, 2007, Australia.
Plants and Environmental Quality Research Group, School of Civil and Environmental Engineering, Faculty of Engineering and Information Technology, University of Technology Sydney, P.O. Box 123, Broadway, Sydney, NSW, 2007, Australia.
Environ Pollut. 2019 Apr;247:474-481. doi: 10.1016/j.envpol.2018.12.099. Epub 2019 Jan 6.
Global urbanisation has resulted in population densification, which is associated with increased air pollution, mainly from anthropogenic sources. One of the systems proposed to mitigate urban air pollution is urban forestry. This study quantified the spatial associations between concentrations of CO, NO₂, SO₂, and PM₁₀ and urban forestry, whilst correcting for anthropogenic sources and sinks, thus explicitly testing the hypothesis that urban forestry is spatially associated with reduced air pollution on a city scale. A Land Use Regression (LUR) model was constructed by combining air pollutant concentrations with environmental variables, such as land cover type and use, to develop predictive models for air pollutant concentrations. Traffic density and industrial air pollutant emissions were added to the model as covariables to permit testing of the main effects after correcting for these air pollutant sources. It was found that the concentrations of all air pollutants were negatively correlated with tree canopy cover and positively correlated with dwelling density, population density and traffic count. The LUR models enabled the establishment of a statistically significant spatial relationship between urban forestry and air pollution mitigation. These findings further demonstrate the spatial relationships between urban forestry and reduced air pollution on a city-wide scale, and could be of value in developing planning policies focused on urban greening.
全球城市化导致了人口密度的增加,这与人为来源的空气污染增加有关。有人提议采用城市林业系统来减轻城市空气污染。本研究量化了 CO、NO₂、SO₂ 和 PM₁₀ 浓度与城市林业之间的空间关联,同时纠正了人为源和汇的影响,从而明确检验了城市林业与城市尺度上降低空气污染具有空间关联的假设。通过将空气污染物浓度与环境变量(如土地覆盖类型和用途)相结合,构建了一个土地利用回归(LUR)模型,以开发空气污染物浓度的预测模型。交通密度和工业空气污染物排放被添加到模型中作为协变量,以便在纠正这些空气污染源后测试主要影响。结果表明,所有空气污染物的浓度都与树冠覆盖率呈负相关,与居住密度、人口密度和交通量呈正相关。LUR 模型建立了城市林业与空气污染缓解之间具有统计学意义的空间关系。这些发现进一步证明了城市林业与城市范围内降低空气污染之间的空间关系,对于制定以城市绿化为重点的规划政策可能具有重要价值。