6533b86efe1ef96bd12cc986
RESEARCH PRODUCT
Improving the prediction of air pollution peak episodes generated by urban transport networks
Margaret BellFabio GalatiotoMario CatalanoAnil NamdeoAngela Stefania Bergantinosubject
PollutionArtificial neural networkDependency (UML)010504 meteorology & atmospheric sciencesmedia_common.quotation_subjectGeography Planning and DevelopmentAir pollutionF800010501 environmental sciencesManagement Monitoring Policy and LawARIMAX modelmedicine.disease_cause01 natural sciencesF900EconometricsmedicineOperations managementRepresentation (mathematics)Air quality index0105 earth and related environmental sciencesmedia_commonNitrogen dioxideAir pollutant concentrationsArtificial neural networkEnsemble techniquesSpecificationExceedances of pollutant concentration limitsEnvironmental scienceAir quality forecastingdescription
Abstract This paper illustrates the early results of ongoing research developing novel methods to analyse and simulate the relationship between trasport-related air pollutant concentrations and easily accessible explanatory variables. The final scope is to integrate the new models in traditional traffic management support systems for a sustainable mobility of road vehicles in urban areas. This first stage concerns the relationship between the hourly mean concentration of nitrogen dioxide (NO2) and explanatory factors reflecting the NO2 mean level one hour back, along with traffic and weather conditions. Particular attention is given to the prediction of pollution peaks, defined as exceedances of normative concentration limits. Two model frameworks are explored: the Artificial Neural Network approach and the ARIMAX model. Furthermore, the benefit of a synergic use of both models for air quality forecasting is investigated. The analysis of findings points out that the prediction of extreme concentrations is best performed by integrating the two models into an ensemble. The neural network is outperformed by the ARIMAX model in foreseeing peaks, but gives a more realistic representation of the concentration's dependency upon wind characteristics. So, the Neural Network can be exploited to highlight the involved functional forms and improve the ARIMAX model specification. In the end, the study shows that the ability to forecast exceedances of legal pollution limits can be enhanced by requiring traffic management actions when the predicted concentration exceeds a lower threshold than the normative one.
year | journal | country | edition | language |
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2016-06-01 | Environmental Science & Policy |