Shi Yuan, Lau Kevin Ka-Lun, Ng Edward
School of Architecture, The Chinese University of Hong Kong, Shatin, N.T., Hong Kong S.A.R., China.
Institute of Environment, Energy and Sustainability (IEES), The Chinese University of Hong Kong, Shatin, N.T., Hong Kong S.A.R., China; Institute Of Future Cities (IOFC), The Chinese University of Hong Kong, Shatin, N.T., Hong Kong S.A.R., China; CUHK Jockey Club Institute of Ageing, The Chinese University of Hong Kong, Shatin, N.T., Hong Kong S.A.R., China.
Environ Res. 2017 Aug;157:17-29. doi: 10.1016/j.envres.2017.05.007. Epub 2017 May 11.
Urban air quality serves as an important function of the quality of urban life. Land use regression (LUR) modelling of air quality is essential for conducting health impacts assessment but more challenging in mountainous high-density urban scenario due to the complexities of the urban environment. In this study, a total of 21 LUR models are developed for seven kinds of air pollutants (gaseous air pollutants CO, NO, NO, O, SO and particulate air pollutants PM, PM) with reference to three different time periods (summertime, wintertime and annual average of 5-year long-term hourly monitoring data from local air quality monitoring network) in Hong Kong. Under the mountainous high-density urban scenario, we improved the traditional LUR modelling method by incorporating wind availability information into LUR modelling based on surface geomorphometrical analysis. As a result, 269 independent variables were examined to develop the LUR models by using the "ADDRESS" independent variable selection method and stepwise multiple linear regression (MLR). Cross validation has been performed for each resultant model. The results show that wind-related variables are included in most of the resultant models as statistically significant independent variables. Compared with the traditional method, a maximum increase of 20% was achieved in the prediction performance of annual averaged NO concentration level by incorporating wind-related variables into LUR model development.
城市空气质量是城市生活质量的一项重要指标。空气质量的土地利用回归(LUR)模型对于开展健康影响评估至关重要,但在山地高密度城市环境中,由于城市环境的复杂性,构建此类模型更具挑战性。本研究针对香港本地空气质量监测网络的三种不同时间段(夏季、冬季以及5年长期每小时监测数据的年平均值)的七种空气污染物(气态空气污染物一氧化碳、一氧化氮、二氧化氮、臭氧、二氧化硫以及颗粒空气污染物细颗粒物、粗颗粒物),共开发了21个LUR模型。在山地高密度城市环境中,我们基于地表地貌分析,将风的可利用性信息纳入LUR模型,从而改进了传统的LUR建模方法。结果,通过使用“ADDRESS”自变量选择方法和逐步多元线性回归(MLR),对269个自变量进行了检验,以构建LUR模型。对每个所得模型都进行了交叉验证。结果表明,在大多数所得模型中,与风相关的变量作为具有统计学意义的自变量被纳入。与传统方法相比,通过将与风相关的变量纳入LUR模型构建,年平均二氧化氮浓度水平的预测性能最多提高了20%。