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Maximum Likelihood Estimation of Departure and Travel Time of Individual Vehicle using Statistics and Dynamic Programming

机译:使用统计和动态规划各车辆的出发和旅行时间的最大似然估计

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Electric Vehicles (EVs) and Plug-in Hybrid Vehicles (PHVs) generally equip a battery of high capacity. Cars such as EVs and PHVs are expected to work not only as transportation devices, but also as power storages. However, in order to use the battery effectively, we need to know the future Profile of the Departure and Travel Time (PDTT) of the car. This paper presents an estimation method of the PDTT of the car over one day from the present time based on the Statistics of the Departure and Travel Time (SDTT) and dynamic programming. The prediction problem of PDTT of the car is formulated as a maximum-likelihood estimation problem under the condition that the SDTT is available. In order to find a global optimal solution within a reasonable computational cost, first of all, a Markov model representing all possible PDTT of the car is derived from the SDTT. Then, the dynamic programming is applied to find the most likely PDTT of the car. The usefulness of the proposed method is evaluated by numerical experiments, wherein the SDTT is created by real driving data.
机译:电动车(EVS)和插入式混合动力车辆(PHV)通常配备电池的高容量。 EVS和PHV等汽车预计不仅可以作为运输设备,而且是作为电力存储器的工作。但是,为了有效地使用电池,我们需要了解汽车的离开和旅行时间(PDTT)的未来轮廓。本文从现在的差点和行驶时间(SDTT)和动态编程的统计数据,从当前时间介绍了汽车PDTT的估计方法。在SDTT可用的条件下,将汽车PDTT的预测问题作为最大似然估计问题。为了在合理的计算成本内找到全局最佳解决方案,首先,主要代表汽车的所有可能PDTT的马尔可夫模型是从SDTT导出的。然后,应用动态编程来找到最可能的汽车PDTT。通过数值实验评估所提出的方法的有用性,其中通过实际驾驶数据创建SDTT。

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