首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part D. Journal of Automobile Engineering >Battery electric vehicle energy consumption prediction for a trip based on route information
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Battery electric vehicle energy consumption prediction for a trip based on route information

机译:基于路线信息的电池电动车能耗预测

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Drivers of battery electric vehicles (BEVs) require an accurate and reliable energy consumption prediction along a chosen route to reduce range anxiety. The energy consumption for a future trip depends on a number of factors such as driving behavior, road topography information, weather conditions and traffic situation. This paper discusses an algorithm to predict the energy consumption for a future trip considering these influencing factors. The route information is obtained from OpenStreetMap and Shuttle Radar Topography Mission. The algorithm consists of an offline algorithm and an online algorithm. The offline algorithm is designed to provide information for the driver to make future driving plans, which provides a nominal energy consumption value and an energy consumption range before a trip begins. The online algorithm is designed to adjust the energy consumption prediction result based on current driving, which includes a vehicle parameter estimation algorithm and a driving behavior correction algorithm. The energy consumption prediction algorithm is verified by 30 driving tests, including city, rural, highway and hilly driving. A comparison shows that the measured energy consumption of all trips is within the energy consumption range provided by the offline algorithm and most of the differences between the measurement and nominal prediction are smaller than 10%. The offline prediction is used as a starting point and is corrected by the online algorithm during driving. The mean absolute percentage error between the measured energy consumption value and online prediction result of all trips is within 5%.
机译:电池电动汽车(BEV)的驱动器需要沿着所选途径准确可靠的能耗预测,以减少焦虑症。未来旅行的能源消耗取决于许多因素,例如驾驶行为,道路形貌信息,天气条件和交通状况。本文讨论了考虑这些影响因素的未来旅行能耗的算法。路线信息是从OpenStreetMap和Shuttle Radar地形任务获得的。该算法包括脱机算法和在线算法。离线算法旨在为驾驶员提供未来驾驶计划的信息,在旅行开始之前提供标称能量消耗值和能量消耗范围。在线算法旨在根据电流驱动调节能量消耗预测结果,其包括车辆参数估计算法和驾驶行为校正算法。能量消耗预测算法由30个驾驶测试验证,包括城市,农村,公路和丘陵驾驶。比较表明,所有跳水的测量能耗在由离线算法提供的能量消耗范围内,并且测量和标称预测之间的大多数差异小于10%。离线预测用作起点,并且在驾驶期间通过在线算法校正。所有TRIPS的测量能耗值和在线预测结果之间的平均绝对百分比误差在5%范围内。

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