Algoritmo para el cálculo de la velocidad media óptima en una ruta (ASGA)

V. Corcoba Magaña, M. Muñoz Organero

Resumen

En este trabajo se propone un algoritmo para obtener la velocidad media óptima para ahorrar combustible y mejorar la seguridad. El algoritmo propuesto se basa en los algoritmos genéticos. El algoritmo emplea información sobre el entorno, la carretera y el vehículo para obtener la velocidad media que minimice el consumo de combustible sin incrementar drásticamente la duración del trayecto. Además, el algoritmo propuesto mejora la seguridad ya que adecua la velocidad a las condiciones de la vía. La información sobre el entorno se obtiene de servicios web y la información sobre el vehículo se obtiene a través del puerto OBD2. El algoritmo es validado en situaciones reales con incidentes de tráfico y sin ellos. Por otra parte, se analiza el impacto de la velocidad media y los incidentes de tráfico en las aceleraciones y su influencia en el consumo de combustible.

Palabras clave

Conducción eficiente; Sistemas de ayuda a la conducción; Algoritmos Genéticos; Android; Sistemas Inteligentes de Transporte

Texto completo:

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IEEE Transactions on Mobile Computing  vol: 15  num.: 10  primera página: 2437  año: 2016  
doi: 10.1109/TMC.2015.2504976



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Universitat Politècnica de València     https://doi.org/10.4995/riai

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