Automatica, Vol.44, No.6, 1632-1641, 2008
A multi-objective nonlinear optimization approach to designing effective air quality control policies
This paper presents the implementation of a two-objective optimization methodology to select effective tropospheric ozone pollution control strategies on a mesoscale domain. The objectives considered are (a) the emission reduction cost and (b) the Air Quality Index. The control variables are the precursor emission reductions due to available technologies. The nonlinear relationship linking air quality objective and precursor emissions is described by artificial neural networks, identified by processing deterministic Chemical Transport Modeling system simulations. Pareto optimal solutions are calculated with the Weighted Sum Strategy. The two-objective problem has been applied to a complex domain in Northern Italy, including the Milan metropolitan area, a region characterized by frequent and persistent ozone episodes. (c) 2008 Elsevier Ltd. All rights reserved.
Keywords:multi-objective optimization;modeling;artificial neural networks;nonlinear control;environmental control