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Deceleration Planning Algorithm Based on Classified Multi-Layer Perceptron Models for Smart Regenerative Braking of EV in Diverse Deceleration Conditions

机译:基于分类多层感知器模型的减速规划算法在不同减速条件下电动汽车的智能再生制动

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摘要

The smart regenerative braking system (SRS) is an autonomous version of one-pedal driving in electric vehicles. To implement SRS, a deceleration planning algorithm is necessary to generate the deceleration used in automatic regenerative control. To reduce the discomfort from the automatic regeneration, the deceleration should be similar to human driving. In this paper, a deceleration planning algorithm based on multi-layer perceptron (MLP) is proposed. The MLP models can mimic the human driving behavior by learning the driving data. In addition, the proposed deceleration planning algorithm has a classified structure to improve the planning performance in each deceleration condition. Therefore, the individual MLP models were designed according to three different deceleration conditions: car-following, speed bump, and intersection. The proposed algorithm was validated through driving simulations. Then, time to collision and similarity to human driving were analyzed. The results show that the minimum time to collision was 1.443 s and the velocity root-mean-square error (RMSE) with human driving was 0.302 m/s. Through the driving simulation, it was validated that the vehicle moves safely with desirable velocity when SRS is in operation, based on the proposed algorithm. Furthermore, the classified structure has more advantages than the integrated structure in terms of planning performance.
机译:智能再生制动系统(SRS)是电动汽车单踏板驾驶的自主版本。为了实现SRS,必须使用减速计划算法来生成自动再生控制中使用的减速。为了减少自动再生带来的不适,减速度应类似于人工驾驶。提出了一种基于多层感知器的减速规划算法。 MLP模型可以通过学习驾驶数据来模仿人类的驾驶行为。另外,所提出的减速计划算法具有分类的结构,以提高每种减速条件下的计划性能。因此,根据三种不同的减速条件设计了各个MLP模型:跟车,减速带和交叉点。通过驾驶仿真验证了该算法的有效性。然后,分析了碰撞时间和与人类驾驶的相似性。结果表明,最短碰撞时间为1.443 s,人类驾驶的速度均方根误差(RMSE)为0.302 m / s。通过驾驶仿真,基于所提出的算法,验证了当SRS运行时,车辆能够安全地以期望的速度行驶。此外,就计划绩效而言,分类结构比集成结构具有更多优势。

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