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Generalised additive modelling of air pollution, traffic volume and meteorology

机译:空气污染,交通量和气象学的通用添加剂建模

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We present a general model where the logarithm of hourly concentration of an air pollutant is modelled as a sum of non-linear functions of traffic volume and several meteorological variables. The model can be estimated within the framework of generalised additive models.Although the model is non-linear, it is simple and easy to interpret. It quantifies how meteorological conditions and traffic volume influence the level of air pollution. A measure of relative importance of each predictor variable is presented.Separate models are estimated for the concentration of PM10, PM2.5, the difference PM10-PM2.5, NO2 and NOx at four different locations in Oslo, based on hourly data in the period 2001-2003. We obtain a reasonably good fit, in particular for the largest particles, PM10 and PM10-PM2.5, and for NOx. The most important predictor variables are related to traffic volume and wind. Further, relative humidity has a clear effect on the PM variables, but not on the NO variables. Other predictor variables, such as temperature, precipitation and snow cover on the ground are of some importance for one or more of the pollutants, but their effects are less pronounced. (c) 2005 Elsevier Ltd. All rights reserved.
机译:我们提出了一个通用模型,其中空气污染物每小时浓度的对数被建模为交通量和几个气象变量的非线性函数的总和。该模型可以在广义加性模型的框架内进行估计。尽管该模型是非线性的,但它简单易懂。它量化了气象条件和交通量如何影响空气污染水平。提出了每个预测变量的相对重要性的衡量标准,基于奥斯陆四个不同位置的PM10,PM2.5浓度,PM10-PM2.5,NO2和NOx差异的浓度分别估算模型。 2001-2003年。我们获得了相当好的匹配度,特别是对于最大颗粒PM10和PM10-PM2.5以及NOx。最重要的预测变量与交通量和风能有关。此外,相对湿度对PM变量有明显影响,但对NO变量没有影响。其他预测变量,例如地面上的温度,降水和积雪对一种或多种污染物也有一定的重要性,但其影响不太明显。 (c)2005 Elsevier Ltd.保留所有权利。

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