An Intelligent Control Strategy in a Parallel Hybrid Vehicle

A. Abdollahi
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引用次数: 9

Abstract

This paper presents a design procedure for an adaptive power management control strategy based on a driving cycle recognition algorithm. The design goal of the control strategy is to minimize fuel consumption and engine-out NOx, HC and CD emissions on a set of diversified driving schedules. Seven facility-specific drive cycles are considered to represent different driving scenarios. For each facility-specific drive cycle, the fuel economy and emission are optimized and obtained proper split between the two energy sources (engine and electric motor). A driving pattern recognition algorithm is subsequently developed and used to classify the current driving cycle in to one of the facility-specific drive cycles; thus, the most appropriate control algorithm is adaptively selected. This control scheme was tested on a typical driving cycle and was found to work satisfactorily.
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并联混合动力汽车的智能控制策略
本文提出了一种基于驱动周期识别算法的自适应电源管理控制策略的设计过程。该控制策略的设计目标是在一套多样化的驾驶计划下,最大限度地减少燃油消耗和发动机排出的氮氧化物、HC和CD排放。七个设施特定的驾驶循环被认为代表不同的驾驶场景。针对每个特定设备的驱动循环,对燃油经济性和排放进行优化,并在两种能源(发动机和电动机)之间获得适当的分配。随后开发了一种驾驶模式识别算法,并用于将当前驾驶周期分类为特定于设施的驾驶周期之一;从而自适应选择最合适的控制算法。该控制方案在一个典型的行驶工况上进行了测试,结果令人满意。
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