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用地域回归模型评估墨西哥城的空气污染暴露情况,使用更精细的时空输入参数。

Land use regression models to assess air pollution exposure in Mexico City using finer spatial and temporal input parameters.

机构信息

Department of Environmental and Occupational Health, School of Public Health, Rutgers University, Piscataway, NJ, USA; Office of Global Public Health Affairs, School of Public Health, Rutgers University, Piscataway, NJ, USA.

Department of Pediatrics, University of Alberta, Edmonton, Alberta, Canada.

出版信息

Sci Total Environ. 2018 Oct 15;639:40-48. doi: 10.1016/j.scitotenv.2018.05.144. Epub 2018 May 17.

Abstract

The Mexico City Metropolitan Area (MCMA) is one of the largest and most populated urban environments in the world and experiences high air pollution levels. To develop models that estimate pollutant concentrations at fine spatiotemporal scales and provide improved air pollution exposure assessments for health studies in Mexico City. We developed finer spatiotemporal land use regression (LUR) models for PM, PM, O, NO, CO and SO using mixed effect models with the Least Absolute Shrinkage and Selection Operator (LASSO). Hourly traffic density was included as a temporal variable besides meteorological and holiday variables. Models of hourly, daily, monthly, 6-monthly and annual averages were developed and evaluated using traditional and novel indices. The developed spatiotemporal LUR models yielded predicted concentrations with good spatial and temporal agreements with measured pollutant levels except for the hourly PM, PM and SO. Most of the LUR models met performance goals based on the standardized indices. LUR models with temporal scales greater than one hour were successfully developed using mixed effect models with LASSO and showed superior model performance compared to earlier LUR models, especially for time scales of a day or longer. The newly developed LUR models will be further refined with ongoing Mexico City air pollution sampling campaigns to improve personal exposure assessments.

摘要

墨西哥城大都市区(MCMA)是世界上最大和人口最多的城市环境之一,经历着高空气污染水平。为了开发能够在精细时空尺度上估计污染物浓度的模型,并为墨西哥城的健康研究提供改进的空气污染暴露评估。我们使用混合效应模型和最小绝对收缩和选择算子(LASSO)为 PM、PM、O、NO、CO 和 SO 开发了更精细的时空土地利用回归(LUR)模型。除了气象和节假日变量外,小时交通密度还被用作时间变量。使用传统和新型指标开发并评估了小时、日、月、6 个月和年平均值的模型。除了小时 PM、PM 和 SO 外,开发的时空 LUR 模型产生的预测浓度与测量污染物水平具有良好的空间和时间一致性。大多数 LUR 模型根据标准化指标达到了性能目标。使用 LASSO 的混合效应模型成功开发了大于一小时的时间尺度的 LUR 模型,与早期的 LUR 模型相比,其表现更为优越,尤其是对于一天或更长时间的时间尺度。随着墨西哥城空气污染采样活动的持续进行,新开发的 LUR 模型将进一步完善,以改善个人暴露评估。

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