Energy Management Strategy Implementation for Hybrid Electric Vehicles Using Genetic Algorithm Tuned Pontryagin’s Minimum Principle Controller

A. Panday, H. Bansal
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引用次数: 28

Abstract

To reduce apace extraction of natural resources, to plummet the toxic emissions, and to increase the fuel economy for road transportation, hybrid vehicles are found to be promising. Hybrid vehicles use batteries and engine to propel the vehicle which minimizes dependence on liquid fuels. Battery is an important component of hybrid vehicles and is mainly characterized by its state of charge level. Here a modified state of charge estimation algorithm is applied, which includes not only coulomb counting but also open circuit voltage, weighting factor, and correction factor to track the run time state of charge efficiently. Further, presence of battery and engine together needs a prevailing power split scheme for their efficient utilization. In this paper, a fuel efficient energy management strategy for power-split hybrid electric vehicle using modified state of charge estimation method is developed. Here, the optimal values of various governing parameters are firstly computed with genetic algorithm and then fed to Pontryagin’s minimum principle to decide the threshold power at which engine is turned on. This process makes the proposed method robust and provides better chance to improve the fuel efficiency. Engine efficient operating region is identified to operate vehicle in efficient regions and reduce fuel consumption.
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基于遗传算法的混合动力汽车能量管理策略实现
为了减少自然资源的快速开采,减少有毒气体的排放,提高公路运输的燃油经济性,混合动力汽车被认为是有前途的。混合动力汽车使用电池和发动机来驱动车辆,从而最大限度地减少对液体燃料的依赖。电池是混合动力汽车的重要组成部分,其主要特征是充电状态。本文采用一种改进的电荷状态估计算法,该算法不仅包括库仑计数,还包括开路电压、加权因子和校正因子,以有效地跟踪电荷运行时状态。此外,电池和发动机的同时存在需要一个普遍的功率分配方案,以有效地利用它们。本文提出了一种基于改进的充电状态估计方法的动力分体式混合动力汽车燃油效率管理策略。首先用遗传算法计算各控制参数的最优值,然后将其输入到庞特里亚金最小原理中,确定发动机启动的阈值功率。该过程使所提方法具有鲁棒性,为提高燃油效率提供了更好的机会。确定发动机的有效工作区域,使车辆在有效区域内运行,降低燃油消耗。
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