Kashima Saori, Yorifuji Takashi, Tsuda Toshihide, Doi Hiroyuki
Department of International Health, Okayama University Graduate School of Environmental Science, Okayama, Japan.
Sci Total Environ. 2009 Apr 1;407(8):3055-62. doi: 10.1016/j.scitotenv.2008.12.038. Epub 2009 Jan 30.
A land use regression (LUR) model has been used successfully for predicting traffic-related pollutants, although its application has been limited to Europe and North America. Therefore, we modeled traffic-related pollutants by LUR then examined whether LUR models could be constructed using a regulatory monitoring network in Shizuoka, Japan. We used the annual-mean nitrogen dioxide (NO2) and suspended particulate matter (SPM) concentrations between April 2000 and March 2006 in the study area. SPM accounts for particulate matter with an aerodynamic diameter less than 8 microm (PM(8)). Geographic variables that are considered to predict traffic-related pollutants were classified into four groups: road type, traffic intensity, land use, and physical component. Using geographical variables, we then constructed a model to predict the monitored levels of NO2 and SPM. The mean concentrations of NO2 and SPM were 35.75 microg/m(3) (standard deviation of 11.28) and 28.67 microg/m(3) (standard deviation of 4.73), respectively. The final regression model for the NO2 concentration included five independent variables. R(2) for the NO2 model was 0.54. On the other hand, the regression model for the SPM concentration included only one independent variable. R(2) for the SPM model was quite low (R(2) = 0.11). The present study showed that even if we used regulatory monitoring air quality data, we could estimate NO2 moderately well. This result could encourage the wide use of LUR models in Asian countries.
土地利用回归(LUR)模型已成功用于预测交通相关污染物,尽管其应用仅限于欧洲和北美。因此,我们通过LUR对交通相关污染物进行建模,然后研究是否可以使用日本静冈的监管监测网络构建LUR模型。我们使用了研究区域2000年4月至2006年3月期间二氧化氮(NO2)和悬浮颗粒物(SPM)的年均浓度。SPM指空气动力学直径小于8微米的颗粒物(PM(8))。被认为可预测交通相关污染物的地理变量分为四类:道路类型、交通强度、土地利用和物理成分。利用这些地理变量,我们构建了一个模型来预测监测到的NO2和SPM水平。NO2和SPM的平均浓度分别为35.75微克/立方米(标准差为11.28)和28.67微克/立方米(标准差为4.73)。NO2浓度的最终回归模型包括五个自变量。NO2模型的R(2)为0.54。另一方面,SPM浓度的回归模型仅包括一个自变量。SPM模型的R(2)相当低(R(2)=0.11)。本研究表明,即使使用监管监测的空气质量数据,我们也能较好地估算NO2。这一结果可能会促使LUR模型在亚洲国家得到广泛应用。