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Adaptive Pontryagin's Minimum Principle supervisory controller design for the plug-in hybrid GM Chevrolet Volt

机译:插电式混合动力通用雪佛兰Volt的自适应庞特里亚金最小原理监督控制器设计

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This paper presents an adaptive supervisory controller, based on Pontryagin's Minimum Principle (PMP), for on-line energy management optimization of a plug-in hybrid electric vehicle. Using minimum driving information, such as the total trip length and the average cycle speed, the proposed algorithm relies on adaptation of the control parameter from state of charge feedback. The proposed strategy is referred in the paper to as Adaptive-PMP (A-PMP). The new controller is applied to a detailed forward vehicle simulator of the plug-in hybrid Chevrolet Volt manufactured by General Motors, where an experimentally validated LG Chem battery model is used. The strategy we propose aims at achieving a blended trajectory of the state of charge to minimize the consumed fuel, resulting in an overall better performance than the actual Charge Depleting/Charge Sustaining (CD/CS) strategy currently used on-board of the vehicle. A comparative analysis of three strategies, i.e., the optimal one (PMP), the proposed one (A-PMP) and the in-vehicle one (CD/CS), is conducted in simulation which shows that improvement above 20% in fuel consumption may be achieved when the proposed algorithm is used instead of the current on-board strategy. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文提出了一种基于庞特里亚金最小原理(PMP)的自适应监督控制器,用于插电式混合动力汽车的在线能量管理优化。利用最小的驾驶信息,例如总行程长度和平均循环速度,该算法依赖于充电状态反馈对控制参数的适应。本文提出的策略称为Adaptive-PMP(A-PMP)。新的控制器应用于通用汽车公司生产的插电式混合动力雪佛兰Volt的详细前驱车辆模拟器,在该模拟器中使用了经过实验验证的LG Chem电池模型。我们提出的策略旨在实现充电状态的混合轨迹,以最大程度地减少消耗的燃料,从而导致总体上比目前车辆上实际使用的“消耗/充电维持”(CD / CS)策略更好。在仿真中对三种策略进行了比较分析,即最佳策略(PMP),拟议策略(A-PMP)和车载策略(CD / CS),这表明油耗降低了20%以上当使用所提出的算法代替当前的机载策略时,可以实现该目标。 (C)2015 Elsevier Ltd.保留所有权利。

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