Driving condition recognition for genetic-fuzzy HEV Control

M. Montazeri-Gh, A. Ahmadi, M. Asadi
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引用次数: 38

Abstract

This paper presents a genetic-fuzzy approach for hybrid electric vehicle control based on driving pattern recognition and prediction. In this approach, data collection in the real traffic conditions is employed for classification of several driving patterns. These driving patterns represent different traffic conditions e.g. congested, urban and so on. The analysis used for the driving pattern recognition is based on the definition of microtrips. In addition, a Markov chain modeling is used for traffic condition prediction based on the modeling of probability of the sequence of microtrips. The driving pattern prediction is then utilized for optimization of the HEV control parameters using a genetic-fuzzy approach. In this approach, a fuzzy logic controller (FLC) is designed to be intelligent so as to manage the internal combustion engine (ICE) to work in the vicinity of its optimal condition. The fuzzy membership function parameters are then tuned using the genetic algorithm (GA). Finally, simulation results are presented to show the effectiveness of the approach for reducing the HEV fuel consumption and emissions.
遗传模糊混合动力汽车控制的驾驶状态识别
提出了一种基于驾驶模式识别和预测的混合动力汽车遗传模糊控制方法。该方法通过收集真实交通条件下的数据,对几种驾驶模式进行分类。这些驾驶模式代表了不同的交通状况,如拥堵、城市等。用于驾驶模式识别的分析是基于微行程的定义。此外,在建立微行程序列概率模型的基础上,采用马尔可夫链模型进行交通状况预测。然后利用驱动模式预测,采用遗传模糊方法优化HEV控制参数。在该方法中,设计了一个智能模糊逻辑控制器(FLC),以管理内燃机(ICE)在其最佳状态附近工作。然后利用遗传算法对模糊隶属函数参数进行调整。最后,仿真结果表明了该方法对降低混合动力汽车油耗和排放的有效性。
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