H. Hassine, F. Omrane, M. Barkallah, J. Louati, M. Haddar
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orgMODELLING VEHICLE EMISSIONS USING ARTIFICIAL NEURAL NETWORK AND MULTIPLE LINEAR REGRESSION METHODS
The road transport sector plays a vital role in economic development and vehicle
numbers are growing. It provides a set of services to meet the different demands of
travel and it is a necessity for human civilization. However, although it is an essential
element in regional development schemes, it generates negative externalities, thus
constituting one of the most important sources of environmental pollution. This paper
aims to develop modelling vehicle emissions, especially, the HC, CO and NOx based
on experimental speed profiles, acceleration and technical parameters related to the
used vehicle. This helps to determine and study vehicle emissions factor related to
different pollutant. Two methods are used to develop two different empirical models:
the multiple regression and Artificial Neural Network (ANN). The developed approach
was applied to two types of vehicle with different technical characteristics. It was
observed that the multiple linear regression method allows to predict vehicle emissions
with a coefficient of determination between 0.723 and 0.921 but the ANN model can
predict exhaust gases with a correlation coefficient in the range of 0.95–0.99.
Simulation results demonstrate the efficiency and superiority of the ANN tool to
estimate vehicle emissions compared to multiple linear regression approach.
期刊介绍:
Journal of Urban and Environmental Engineering (JUEE) provides a forum for original papers and for the exchange of information and views on significant developments in urban and environmental engineering worldwide. The scope of the journal includes: (a) Water Resources and Waste Management [...] (b) Constructions and Environment[...] (c) Urban Design[...] (d) Transportation Engineering[...] The Editors welcome original papers, scientific notes and discussions, in English, in those and related topics. All papers submitted to the Journal are peer reviewed by an international panel of Associate Editors and other experts. Authors are encouraged to suggest potential referees with their submission. Authors will have to confirm that the work, or any part of it, has not been published before and is not presently being considered for publication elsewhere.