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Robustness of intra urban land-use regression models for ultrafine particles and black carbon based on mobile monitoring

机译:基于移动监测的超细颗粒和黑碳城市内部土地利用回归模型的鲁棒性

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摘要

Land-use regression (LUR) models for ultrafine particles (UFP) and Black Carbon (BC) in urban areas have been developed using short-term stationary monitoring or mobile platforms in order to capture the high variability of these pollutants. However, little is known about the comparability of predictions of mobile and short-term stationary models and especially the validity of these models for assessing residential exposures and the robustness of model predictions developed in different campaigns. We used an electric car to collect mobile measurements (n = 5236 unique road segments) and short-term stationary measurements (3 × 30 min, n = 240) of UFP and BC in three Dutch cities (Amsterdam, Utrecht, Maastricht) in 2014-2015. Predictions of LUR models based on mobile measurements were compared to (i) measured concentrations at the short-term stationary sites, (ii) LUR model predictions based on short-term stationary measurements at 1500 random addresses in the three cities, (iii) externally obtained home outdoor measurements (3 × 24 h samples; n = 42) and (iv) predictions of a LUR model developed based upon a 2013 mobile campaign in two cities (Amsterdam, Rotterdam). Despite the poor model R~2 of 15%, the ability of mobile UFP models to predict measurements with longer averaging time increased substantially from 36% for short-term stationary measurements to 57% for home outdoor measurements. In contrast, the mobile BC model only predicted 14% of the variation in the short-term stationary sites and also 14% of the home outdoor sites. Models based upon mobile and short-term stationary monitoring provided fairly high correlated predictions of UFP concentrations at 1500 randomly selected addresses in the three Dutch cities (R~2 = 0.64). We found higher UFP predictions (of about 30%) based on mobile models opposed to short-term model predictions and home outdoor measurements with no clear geospatial patterns. The mobile model for UFP was stable over different settings as the model predicted concentration levels highly correlated to predictions made by a previously developed LUR model with another spatial extent and in a different year at the 1500 random addresses (R2 = 0.80). In conclusion, mobile monitoring provided robust LUR models for UFP, valid to use in epidemiological studies.
机译:为了捕获这些污染物的高变异性,已经使用短期固定监测或移动平台开发了城市地区超细颗粒物(UFP)和黑碳(BC)的土地利用回归(LUR)模型。但是,关于流动和短期固定模型的预测的可比性,尤其是这些模型用于评估居民暴露的有效性以及在不同活动中开发的模型预测的鲁棒性,鲜为人知。 2014年,我们使用电动汽车收集了三个荷兰城市(阿姆斯特丹,乌得勒支,马斯特里赫特)的UFP和BC的移动测量(n = 5236个独特路段)和短期固定测量(3×30分钟,n = 240) -2015。将基于移动测量的LUR模型预测与(i)在短期固定站点测量的浓度进行比较,(ii)基于在三个城市1500个随机地址的短期固定测量的LUR模型预测,(iii)在外部获得了家庭户外测量结果(3×24小时样本; n = 42),并且(iv)基于2013年在两个城市(阿姆斯特丹,鹿特丹)的移动活动开发的LUR模型的预测。尽管模型R〜2的差值为15%,但移动UFP模型预测平均时间较长的测量的能力已从短期固定测量的36%大幅提高到家庭户外测量的57%。相比之下,移动BC模型仅预测了短期固定站点中14%的变化,还预测了家庭室外站点中的14%。基于移动和短期固定监测的模型在三个荷兰城市的1500个随机选择的地址(R〜2 = 0.64)上提供了相当高的UFP浓度相关预测。我们发现基于移动模型的UFP预测更高(约30%),与短期模型预测和没有清晰地理空间格局的家庭室外测量相反。 UFP的移动模型在不同的设置下稳定,因为该模型预测的浓度水平与先前开发的LUR模型的预测高度相关,该预测具有另一个空间范围,并且在不同的年份在1500个随机地址处(R2 = 0.80)。总之,移动监控为UFP提供了可靠的LUR模型,可用于流行病学研究。

著录项

  • 来源
    《Environmental research》 |2017年第11期|500-508|共9页
  • 作者单位

    Institute for Risk Assessment Sciences (IRAS), Division of Environmental Epidemiology, Utrecht University, 3584 CK Utrecht, The Netherlands;

    Institute for Risk Assessment Sciences (IRAS), Division of Environmental Epidemiology, Utrecht University, 3584 CK Utrecht, The Netherlands;

    Institute for Risk Assessment Sciences (IRAS), Division of Environmental Epidemiology, Utrecht University, 3584 CK Utrecht, The Netherlands;

    Institute for Risk Assessment Sciences (IRAS), Division of Environmental Epidemiology, Utrecht University, 3584 CK Utrecht, The Netherlands;

    Dept of Civil, Architectural and Environmental Engineering, University of Texas at Austin, USA,Environmental Defense Fund, Austin, TX, USA;

    Institute for Risk Assessment Sciences (IRAS), Division of Environmental Epidemiology, Utrecht University, 3584 CK Utrecht, The Netherlands,Julius Center for Health Sciences and Primary Care, University Medical Center, University of Utrecht, 3584 CK Utrecht, The Netherlands;

    MRC-PHE Centre for Environment and Health, Department of Epidemiology and Biostatistics, Imperial College London, St Mary's Campus, London, United Kingdom;

    Institute for Risk Assessment Sciences (IRAS), Division of Environmental Epidemiology, Utrecht University, 3584 CK Utrecht, The Netherlands,Julius Center for Health Sciences and Primary Care, University Medical Center, University of Utrecht, 3584 CK Utrecht, The Netherlands,MRC-PHE Centre for Environment and Health, Department of Epidemiology and Biostatistics, Imperial College London, St Mary's Campus, London, United Kingdom;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Mobile monitoring; UFP; BC; LUR models; Spatial variation;

    机译:移动监控;UFP;公元前;LUR模型;空间变异;

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