Cictp 2014 2014
DOI: 10.1061/9780784413623.272
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Intersection Signal Control Multi-Objective Optimization Based on Genetic Algorithm

Abstract: A signal control intersection increases not only vehicle delay, but also vehicle emissions and fuel consumption in that area. Because more and more fuel and air pollution problems have arisen recently, an intersection signal control optimization method which aims at reducing vehicle emissions, fuel consumption and vehicle delay is greatly needed. This paper proposes a signal control multi-object optimization method to reduce vehicle emissions, fuel consumption and vehicle delay simultaneously at an intersectio… Show more

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Cited by 9 publications
(11 citation statements)
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References 4 publications
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“…Zhang et al (2013) use the cell transmission model to describe traffic dynamics and vehicle emissions, and devise a signal optimization scheme that takes into account pollutant dispersion affected by weather conditions. Zhou and Cai (2014) develop a multi-objective optimization method based on microscopic traffic simulation at a single intersection, A modal emission and fuel consumption model is used in conjunction with the genetic algorithm to minimize vehicle delay, exhaust emission and fuel consumption at the same time. Osorio and Nanduri (2015) propose a meta-model, simulation-based approach to optimize fixed timing for dynamic traffic networks by incorporating dynamic traffic assignment models.…”
Section: Related Workmentioning
confidence: 99%
“…Zhang et al (2013) use the cell transmission model to describe traffic dynamics and vehicle emissions, and devise a signal optimization scheme that takes into account pollutant dispersion affected by weather conditions. Zhou and Cai (2014) develop a multi-objective optimization method based on microscopic traffic simulation at a single intersection, A modal emission and fuel consumption model is used in conjunction with the genetic algorithm to minimize vehicle delay, exhaust emission and fuel consumption at the same time. Osorio and Nanduri (2015) propose a meta-model, simulation-based approach to optimize fixed timing for dynamic traffic networks by incorporating dynamic traffic assignment models.…”
Section: Related Workmentioning
confidence: 99%
“…Optimizacijom parametara rada svetlosnih signala primenom genetskog algoritma sa ciljem minimiziranja emisija štetnih materija, potrošnje goriva i vremenskih gubitaka su se bavili Zhou & Cai (2014). Kriterijumska funkcija optimizacije je predstavljala ukupne troškove, čije su komponente troškovi potrošnje goriva, troškovi emisije štetnih materija i troškovi vremenskih gubitaka na signalisanim raskrsnicama.…”
Section: Optimizacije Parametara Rada Svetlosnih Signala Sa Aspekta Zaštite žIvotne Sredineunclassified
“…The authors in [35] used genetic algorithms to construct and improve the travel time prediction intervals for buses. Multi-objective optimization using GAs has also been successfully applied for road diet plans within transportation networks in [36], or to reduce vehicle emissions, fuel consumption and vehicle delay simultaneously, in an urban intersection from China [37].…”
Section: Simulation-based Traffic Optimizationmentioning
confidence: 99%