Title :
Predictive driving strategies under urban conditions for reducing fuel consumption based on vehicle environment information
Author :
Raubitschek, Christian ; Schütze, Nico ; Kozlov, Evgeny ; Bäker, Bernard
Author_Institution :
BMW AG, München, Germany
fDate :
June 29 2011-July 1 2011
Abstract :
This brief deals with the improvement of a vehicle´s pass-through of predictively known urban driving situations concerning its fuel consumption. Today´s technology enables the prediction of information about traffic events. This information can be used to identify efficient driving strategies. The main aim is to reduce the dynamics in the velocity profiles of driving situations and with it the corresponding fuel consumption in urban traffic. An algorithm has been built to calculate fuel consumption optimized driving trajectories. Input parameters are temporal and spatial depending constraints of the driving situation as well as other restrictions like a speed-limit. The main objective of the function was to enable a situation adaptive reaction to every predictively known forthcoming traffic event. Thus an optimized driving trajectory can be steadily calculated for the next route section of the vehicle provided that predictive information about the traffic events are available. The higher the availability of information the better an optimization of the driving strategies will be possible. Fuel characteristics and other energetically relevant data for a real-world vehicle have been created by detailed simulation to evaluate the fuel consumption of the driving strategies. For demonstration purposes the common driving situation ”traffic light” was chosen. The fuel consumption calculated for the predictive driving strategies is compared to the consumption of a simulated average driver without predictive information. The calculated potentials have been verified by measuring the fuel consumption of an experimental vehicle for the simulated driving strategies.
Keywords :
fuel economy; optimisation; road vehicles; transportation; fuel consumption reduction; optimization; predictive driving strategies; traffic event information prediction; traffic light; urban driving situations; vehicle environment information; Acceleration; Driver circuits; Fuels; Ice; Roads; Vehicle dynamics; Vehicles;
Conference_Titel :
Integrated and Sustainable Transportation System (FISTS), 2011 IEEE Forum on
Conference_Location :
Vienna
Print_ISBN :
978-1-4577-0990-6
Electronic_ISBN :
978-1-4577-0991-3
DOI :
10.1109/FISTS.2011.5973609