Artículo
A constrained filtering algorithm for freeway traffic state estimation
Fecha de publicación:
01/2020
Editorial:
Taylor and Francis Ltd.
Revista:
Transportmetrica A: Transport Science
ISSN:
1812-8602
e-ISSN:
2324-9943
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
A real-time traffic state estimation algorithm is developed and applied to a freeway. The evolution of the traffic is defined by a second-order macroscopic model which computes, for each section of the freeway, the density, and the mean speed according to several nonlinear equations. Different extensions of the Kalman method were already applied to this model, though none of them considers the natural constraints in the state variables. In this work, a new method that incorporates those natural constraints is applied to the macroscopic model obtaining better results. To validate the proposed method, a simulation over a freeway section was made using two different tools: the macroscopic simulator called METANET and the microscopic simulator called SUMO. Promising results were obtained using both approaches.
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Articulos(CCT - TANDIL)
Articulos de CTRO CIENTIFICO TECNOLOGICO CONICET - TANDIL
Articulos de CTRO CIENTIFICO TECNOLOGICO CONICET - TANDIL
Citación
Risso, Mariano Angel; Bhouri, Neila; Rubiales, Aldo Jose; Lotito, Pablo Andres; A constrained filtering algorithm for freeway traffic state estimation; Taylor and Francis Ltd.; Transportmetrica A: Transport Science; 16; 2; 1-2020; 316-336
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