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首页> 外文期刊>Atmospheric environment >Agglomeration and infrastructure effects in land use regression models for air pollution - Specification, estimation, and interpretations
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Agglomeration and infrastructure effects in land use regression models for air pollution - Specification, estimation, and interpretations

机译:用于空气污染的土地利用回归模型的集聚和基础设施效果 - 规范,估计和解释

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Established land use regression (LUR) techniques such as linear regression utilize extensive selection of predictors and functional form to fit a model for every data set on a given pollutant. In this paper, an alternative to established LUR modeling is employed, which uses additive regression smoothers. Predictors and functional form are selected in a data-driven way and ambiguities resulting from specification search are mitigated. The approach is illustrated with nitrogen dioxide (NO2) data from German monitoring sites using the spatial predictors longitude, latitude, altitude and structural predictors; the latter include population density, land use classes, and road traffic intensity measures. The statistical performance of LUR modeling via additive regression smoothers is contrasted with LUR modeling based on parametric polynomials. Model evaluation is based on goodness of fit, predictive performance, and a diagnostic test for remaining spatial autocorrelation in the error terms. Additionally, interpretation and counterfactual analysis for LUR modeling based on additive regression smoothers are discussed. Our results have three main implications for modeling air pollutant concentration levels: First, modeling via additive regression smoothers is supported by a specification test and exhibits superior in- and out-of-sample performance compared to modeling based on parametric polynomials. Second, different levels of prediction errors indicate that NO2 concentration levels observed at background and traffic/industrial monitoring sites stem from different processes. Third, accounting for agglomeration and infrastructure effects is important: NO2 concentration levels tend to increase around major cities, surrounding agglomeration areas, and their connecting road traffic network.
机译:已建立的土地使用回归(LUR)技术,如线性回归利用广泛的选择预测器和功能形式,以适合在给定污染物上设置的每个数据的模型。在本文中,采用了建立LUR建模的替代方案,其使用添加剂回归SMOOTHERS。以数据驱动的方式选择预测器和功能形式,并且减轻了由规范搜索产生的含糊不清。该方法用来自德国监测站点的氮二氧化氮(NO2)数据使用空间预测因子经度,纬度,高度和结构预测因子来说明;后者包括人口密度,土地利用课程和道路交通强度措施。基于参数多项式的LUR建模对比LUR型号的统计性能与LUR建模对比。模型评估基于拟合,预测性能的良好,以及在误差项中剩余空间自相关的诊断测试。此外,讨论了基于添加性回归流泡的LUR建模的解释和反事实分析。我们的研究结果具有三种主要含义对造型的空气污染物浓度水平:首先,与基于参数多项式的建模相比,通过添加剂回归SmoOthers的建模并具有卓越的内容和样品性能。其次,不同水平的预测误差表明在背景和交通/工业监测网站中观察到的NO 2浓度水平源自不同的过程。第三,核算集聚和基础设施效应很重要:No2浓度水平往往围绕主要城市,周围集聚区域及其连通道路交通网络增加。

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