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Optimal Control of Multi-Source Electric Vehicles in Real Time Using Advisory Dynamic Programming

机译:基于咨询动态规划的多源电动汽车实时最优控制

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This paper presents a novel method, advisory dynamic programming (AD-DP), for power management of a fuel cell hybrid vehicle (FCHEV). The presented method embraces a new understanding of vehicle states as driver-dependent and-independent states in time domain to define a suitable state space to be used for dynamic programming. Driver-dependent states are defined in terms of multiple characteristic parameters for vehicle speed and power demand, corporately. Driver-independent states are defined in terms of discrete values for supercapacitor's state of charge SoCsc. Transition costs between all states in the state space are calculated offline and tabulated in look-up tables for online implementation. A state predictive model is developed based on the transition statistics of driver-dependent states for a suitable number of driving cycles. Backward calculation of the total transition cost for the predicted horizon in state space is used to define optimal power split strategy for the powertrain. The formulation of optimal control problem, in terms of situation-based solutions related to vehicle states, enables a significant reduction of computational steps and hence addresses the main challenge of real-time applications. The algorithm is adapted in terms of optimization horizon and number of discrete states for DIS to suit the real-time application. Experimental application of AD-DP, using an emulation test-rig, is conducted over different driving cycles. The obtained results reveal an improvement in energy efficiency up to 29% compared to the adaptive rule-based method. The contribution of this paper can be identified as: first, development of a corporate definition for vehicle states, that can be further implemented in optimization-based power management methods. Second, the formulation of an adaptive DP that requires lower computational steps and hence suits real-time applications in hybrid electric vehicles.
机译:本文提出了一种新的方法,咨询动态规划(AD-DP),用于燃料电池混合动力汽车(FCHEV)的电源管理。提出的方法包括对车辆状态的时域上与驾驶员相关和独立的状态的新理解,以定义用于动态编程的合适状态空间。公司根据车辆速度和功率需求的多个特征参数定义了驾驶员相关状态。与驱动器无关的状态是根据超级电容器充电状态SoCsc的离散值定义的。状态空间中所有状态之间的转换成本是离线计算的,并在查找表中列出以供在线实施。基于驾驶员相关状态的过渡统计量,针对适当数量的驾驶循环,开发状态预测模型。状态空间中预测水平的总过渡成本的向后计算用于定义动力总成的最佳功率分配策略。根据与车辆状态有关的基于情况的解决方案,最优控制问题的制定可以显着减少计算步骤,从而解决了实时应用的主要挑战。该算法根据DIS的优化范围和离散状态数进行了调整,以适应实时应用。使用仿真测试台在不同的驾驶周期上进行AD-DP的实验应用。与基于规则的自适应方法相比,所获得的结果表明能效提高了29%。本文的贡献可以确定为:首先,制定车辆状态的公司定义,可以在基于优化的电源管理方法中进一步实施。其次,制定自适应DP所需的计算步骤更少,因此适合混合动力电动汽车中的实时应用。

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