RT Conference Proceedings T1 Optimising traffic lights with metaheuristics: Reduction of car emissions and consumption A1 García-Nieto, José Manuel A1 Ferrer-Urbano, Francisco Javier A1 Alba-Torres, Enrique K1 Redes neuronales (Informática) AB In last years, enhancing the vehicular traffic flow becomes a mandatory task to minimize the impact of polluting emissions and unsustainable fuel consumption in our cities. Smart Mobility optimisation emerges then, with the goal of improving the traffic management in the city. With this aim, we propose in this paper an optimisation strategy based on swarm intelligence to find efficient cycle programs for traffic lights deployed in large urban areas. In concrete, in this work we focus on the improvement of the traffic flow with the global purpose of reducing contaminant emissions (CO 2 and NO x ) and fuel consumption in the analyzed areas. For the sake of standardization, we follow European Union reference framework for traffic emissions, called HandBook Emission FActors (HBEFA). As a case study, we have concentrated in two extensive urban areas in the cities of Malaga and Seville (in Spain). After several comparisons between different optimisation techniques (Differential Evolution and Random Search), as well as other solutions provided by experts, our proposal is shown to obtain significant reductions of fuel consumption and gas emissions. PB IEEE YR 2014 FD 2014-07 LK https://hdl.handle.net/10630/30201 UL https://hdl.handle.net/10630/30201 LA spa NO Política de acceso abierto de IEEE Proceedings: https://v2.sherpa.ac.uk/id/publication/3559 DS RIUMA. Repositorio Institucional de la Universidad de Málaga RD 20 ene 2026