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Blending gear shift strategy design and comparison study for a battery electric city bus with AMT

机译:AMT电池城市客车混合换挡策略设计与对比研究

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To improve the performance of heuristic strategy used in most of the electric city buses equipped with automated manual transmission (AMT) currently, this paper proposes a systematic blending extraction method to optimize and accelerate the shift schedule design process. The crucial related factors, including the shift time, transmission efficiency and various driving cycle features, are considered to assure the online practicability. Dynamic programming (DP) algorithm is applied over featured velocity profiles to explore the global optimal operating points offline. Then k-means clustering algorithm is adopted to extract the explicit optimal shift schedule, where the number of centroids is determined by hierarchical analysis process and a new distance calculation method is performed considering proper weighting factors to blend the shift points from different driving conditions. The stochastical driving cycle is generated randomly from the previous data and is used to validate the comprehensive performance by chassis dynamometer tests. A comparison study is conducted among the proposed and conventional shift strategies. Experimental results demonstrate that the extracted blending strategy can improve the energy consumption significantly and is proved to be efficient, flexible, and online implementable compared to the other strategies. (C) 2019 Elsevier Ltd. All rights reserved.
机译:为了提高当前大多数配备自动手动变速器(AMT)的电动城市公交车上使用的启发式策略的性能,本文提出了一种系统的混合提取方法,以优化和加速换挡计划的设计过程。关键的相关因素,包括换档时间,变速箱效率和各种驾驶循环特性,被认为可以确保在线实用性。动态编程(DP)算法应用于特征速度曲线,以离线浏览全局最佳工作点。然后采用k均值聚类算法提取显式最优换挡计划,通过层次分析法确定质心的数量,并考虑适当的加权因子进行新的距离计算方法,以融合不同驾驶条件下的换挡点。随机行驶周期是根据先前的数据随机生成的,并通过底盘测功机测试来验证综合性能。在建议的换档策略和传统的换档策略之间进行了比较研究。实验结果表明,提取的混合策略可以显着降低能耗,并且与其他策略相比,被证明是高效,灵活和可在线实施的。 (C)2019 Elsevier Ltd.保留所有权利。

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