Evaluation of a simplified top-down model for the spatial assessment of hot traffic emissions in mid-sized cities

Devis Tuia*, Margarita Ossés de Eicker, Rainer Zah, Mauricio Osses, Erika Zarate, Alain Clappier

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

47 Citations (Scopus)

Abstract

Traffic emission estimation in developing countries is a key-issue for air pollution management. In most cases, comprehensive bottom-up methodologies cannot be applied in mid-sized cities because of the resource cost related to their application. In this paper, a simplified emission estimation model (SEEM) is evaluated. The model is based on a top-down approach and gives annual global hot emission. Particular attention is paid to the quality of the input traffic data. The quality of results is assessed by application of the SEEM model in the Chilean Gran Concepción urban area and by comparison with a bottom-up approach that has been led for the year 2000. The SEEM model estimates emissions with an accuracy of about 20 % and is related to important resource savings. The results of the SEEM model are then distributed in space with a disaggregation approach and using GIS techniques. The relevancy of the disaggregation approach is evaluated among several possibilities through statistical methods. A spatial disaggregation using principal roads density gives the best results in terms of emissions repartition and gives a globally accurate image of the distribution of hot emissions in a mid-sized city.

Original languageEnglish
Pages (from-to)3658-3671
Number of pages14
JournalAtmospheric Environment
Volume41
Issue number17
DOIs
Publication statusPublished - 1 Jun 2007
Externally publishedYes

Keywords

  • Chile
  • Data quality
  • Estimation accuracy
  • GIS
  • Hot emissions
  • Spatial disaggregation
  • Top-down models
  • Traffic

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