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Assessing the transferability of landuse regression models for ultrafine particles across two Canadian cities

机译:评估加拿大两个城市中超细颗粒的土地利用回归模型的可转移性

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Land use regression (LUR) models have been increasingly used to predict intra-city variations in the concentrations of different air pollutants. However, limited research assessing the transferability of these models between cities has been published to date. In this study, LUR models were generated for Ultra-Fine Particles (UFP) (0.1 um) using data collected from mobile monitoring campaigns in two Canadian cities, Montreal and Toronto. City-specific models were first generated for each city before the models were transferred to the second city with and without recalibration. The calibrated transferred models showed only a slight decrease in performance, with the coefficient of determination (R-2), dropping from 0.49 to 0.36 for Toronto and from 0.41 to 0.38 for Montreal. Transferring models between cities with no calibration resulted in low R-2; 0.11 in Toronto and 0.18 in Montreal. Moreover, two additional models were generated by combining data from the two cities. The first combined model (CM1) assumed a spatially invariant effect of the predictors, while the second (CM2) relaxed the assumption of spatial invariance for some of the model coefficients. The performance of both combined models (R-2 ranged between 0.41 for CM1 and 0.43 for CM2; root mean squared error (RMSE) ranged between 0.34 for CM1 and 0.33 for CM2) was found to be on par with the Toronto city-specific model and outperformed the Montreal model. The results of this study highlight that the UFP LUR models appear to support transferability of model structures between cities with similar geographical characteristics, with a minor drop in model fit and predictive skill. (C) 2019 Elsevier B.V. All rights reserved.
机译:土地使用回归(LUR)模型已越来越多地用于预测城市内不同空气污染物浓度的变化。但是,迄今为止,评估这些模型在城市之间的可移植性的研究很少。在这项研究中,使用从加拿大两个城市蒙特利尔和多伦多的移动监测活动收集的数据,生成了超细颗粒(UFP)(<0.1 um)的LUR模型。首先将为每个城市生成特定于城市的模型,然后再将模型转移到第二个城市,无论是否进行重新校准。校准的转移模型仅显示性能略有下降,测定系数(R-2)从多伦多的0.49降至0.36,从蒙特利尔的0.41降至0.38。在没有校准的城市之间转移模型会导致R-2低;多伦多为0.11,蒙特利尔为0.18。此外,通过合并来自两个城市的数据生成了另外两个模型。第一个组合模型(CM1)假设了预测变量的空间不变性效应,而第二个组合模型(CM2)放松了某些模型系数的空间不变性假设。两种组合模型的性能(R-2介于CM1的0.41和CM2的0.43;均方根误差(RMSE)介于CM1的0.34和CM2的0.33之间)与多伦多市特定模型相当并超越了蒙特利尔模式。这项研究的结果表明,UFP LUR模型似乎支持具有相似地理特征的城市之间模型结构的可转移性,模型拟合和预测技巧方面的下降很小。 (C)2019 Elsevier B.V.保留所有权利。

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