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Vehicle speed trajectory optimization under limits in time and spatial domains

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Fahrerassistenzsysteme 2017

Part of the book series: Proceedings ((PROCEE))

Zusammenfassung

Among various aspects for predictive vehicle energy management optimization, driving speed profile optimization is a key factor for reducing energy consumption. Focus of this article is to optimize the speed trajectory of the vehicle along a given route, to reduce the energy consumption without sacrificing the overall travel time, which is a typical trade-off with energy consumption.

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Correspondence to Ziqi Ye .

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Ye, Z., Plum, T., Pischinger, S., Andert, J., Stapelbroek, M., Pfluger, J. (2017). Vehicle speed trajectory optimization under limits in time and spatial domains. In: Isermann, R. (eds) Fahrerassistenzsysteme 2017. Proceedings. Springer Vieweg, Wiesbaden. https://doi.org/10.1007/978-3-658-19059-0_18

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