基于交通灯时间和燃油消耗模型的燃油效率预测优化

Tianyi Guan, C. Frey
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引用次数: 31

摘要

能源效率已成为贸易、运输和环境保护中的一个重大问题。虽然下一代零排放推进系统仍在开发中,但通过采用更省油的驾驶行为,已经有可能提高普通车辆的燃油效率。燃油效率取决于车辆的具体特性,例如发动机效率和变速箱配置。它还取决于当前和未来环境中的事件,例如交通灯或其他交通参与者。本文提出了一种方法,使预测使用交通灯的时间,同时也纳入有关车辆的动力系统的知识。优化主要基于动态规划。其结果是驾驶员可以遵循的速度和换挡指导。仿真结果表明,与无辅助驾驶相比,系统辅助驾驶可以显著节省燃油。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive fuel efficiency optimization using traffic light timings and fuel consumption model
Energy efficiency has become a major issue in trade, transportation and environment protection. While the next generation of zero emission propulsion systems are still under development, it is already possible to increase fuel efficiency in regular vehicles by applying a more fuel efficient driving behaviour. Fuel efficiency depends on vehicle specific characteristics, e.g. engine efficiency and transmission configuration. It also depends on current and future events in the environment, e.g. traffic lights or other traffic participants. This paper proposes an approach to make predictive use of traffic light timings while also incorporating knowledge about the vehicle's power-train. The optimization is largely based on dynamic programming. The results are a velocity and gear shift guidance for the driver to follow. Results based on simulations show that a system assisted driver can achieve significant fuel savings compared to an unassisted driver.
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