4.7 Article Proceedings Paper

Statistical models to assess the health effects and to forecast ground-level ozone

期刊

ENVIRONMENTAL MODELLING & SOFTWARE
卷 21, 期 4, 页码 547-558

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.envsoft.2004.12.002

关键词

statistical models; ground-level ozone; health effects; logistic model; forecasting; prediction performance; neural network; generalised additive model; integrated assessment

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By means of statistical approaches we attempt to bridge both aspects of the ground-level ozone problem: assessment of health effects and forecasting and warning. Disagreement has been highlighted in the literature recently regarding the adverse health effects of tropospheric ozone Pollution. Based on a panel study of children in Leipzig we identified a non-linear (quadratic) concentration-response relationship between ozone and respiratory symptoms. Our results indicate that using ozone as a linear covariate might be a misspecification of the model, which might explain non-uniform results of Several field studies in health effects of ozone. We conclude that there is urgent demand for forecasting episodes of high ozone that may help susceptible persons to avoid high exposure. Novel approaches to statistical modelling and data mining are helpful tools in operational smog forecasting. We present a rigorous assessment of the performance of 15 different statistical techniques ill an inter-comparison study based on data sets from 10 European regions. To evaluate the results of the inter-comparison exercise we suggest an integgrated assessment procedure, which takes the unbalanced study design into consideration. This procedure is based oil estimating a statistical model for the performance indices depending on predefined factors, Such as site, forecasting technique, forecasting horizon. etc. We find that the best predictions can be achieved for sites located in rural and Suburban areas in Central Europe. For application in operational air pollution forecasting we may recommend neural network and generalised additive models, which can handle non-linear associations between atmospheric variables. As an example we demonstrate the application of a Generalised Additive Model (GAM). GAMs are based oil smoothing splines for the covariates, i.e., meteorological parameters and concentrations of other pollutants. Finally, it transpired that respiratory symptoms are associated with the daily maximum of the 8-h average ozone concentration, which in turn is best predicted by means of non-linear statistical models. The new air quality directive of the European Commission (Directive 2002/3/EC) accounts for the special relevance of the 8 h mean ozone concentration. (c) 2005 Elsevier Ltd. All rights reserved.

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