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首页> 外文期刊>Mechatronics: The Science of Intelligent Machines >A two-level stochastic approach to optimize the energy management strategy for fixed-route hybrid electric vehicles
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A two-level stochastic approach to optimize the energy management strategy for fixed-route hybrid electric vehicles

机译:一种用于固定路线混合动力电动汽车的能源管理策略优化的两级随机方法

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摘要

Many hybrid electric vehicle (HEV) energy management strategies are developed and evaluated under fixed driving cycles. However in the real-world driving, vehicles are very unlikely to keep running under a fixed known cycle. Instead, a lot of vehicles run on fixed routes. Unfortunately, human driving data collected on a driving simulator shows that it is very difficult to select or create a determined typical driving cycle to represent the fixed-route driving due to the uncertainties in traffic light stops and driver behaviors. This paper presents a two-level stochastic approach to optimize the energy management strategy for fixed-route HEVs. The historical data on the fixed route are utilized and a road-segment-based stochastic HEV energy consumption model is built. The higher-level energy optimization problem is solved by stochastic dynamic programming (SDP). The SDP computation uses the vehicle model and historical driving data on the fixed route and it can be conducted offline. The result of SDP is a 2-dimension lookup table of parameters for lower-level control strategy therefore this approach can be easily real-time implemented in practice. The developed stochastic approach is compared with three strategies using the data collected on the driving simulator: the optimal energy consumption by assuming all trip information is known in advance and solved via dynamic programming (DP), a determined energy management approach using typical trip data of the fixed-route driving, and a simple strategy which does not require any route data. Simulation results show that the proposed stochastic energy management strategy consumes 1.8% more energy than the optimal result after 24 trips on the fixed route and considerably outperforms the other two real-time HEV energy management strategies. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在固定行驶周期下开发并评估了许多混合电动汽车(HEV)能源管理策略。但是,在现实世界中,车辆极不可能以已知的固定周期继续行驶。相反,许多车辆在固定路线上行驶。不幸的是,在驾驶模拟器上收集的人类驾驶数据显示,由于交通信号灯停靠点和驾驶员行为的不确定性,很难选择或创建确定的典型驾驶周期来表示固定路线的驾驶。本文提出了一种两级随机方法来优化固定路线混合动力汽车的能源管理策略。利用固定路线的历史数据,建立基于路段的随机混合动力汽车能耗模型。通过随机动态规划(SDP)解决了更高级别的能源优化问题。 SDP计算使用固定路径上的车辆模型和历史驾驶数据,并且可以离线进行。 SDP的结果是用于低级控制策略的二维参数查找表,因此该方法可以在实践中轻松实时地实现。使用在驾驶模拟器上收集的数据,将开发的随机方法与三种策略进行比较:假设所有行程信息都事先已知并通过动态编程(DP)求解,则可实现最佳的能耗;使用典型的行程数据确定能量管理方法固定路线驾驶,以及不需要任何路线数据的简单策略。仿真结果表明,所提出的随机能源管理策略在固定路线上行驶24次后比最佳结果多消耗1.8%的能量,并且大大优于其他两种实时HEV能源管理策略。 (C)2015 Elsevier Ltd.保留所有权利。

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