基于谱聚类的驾驶行为对燃油经济性影响评价方法

Peng Ping, Wenhu Qin, Yang Xu, C. Miyajima, K. Takeda
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引用次数: 3

摘要

驾驶行为的测量或评估对于先进驾驶辅助系统(ADAS)的发展至关重要。对驾驶员行为的准确评估,使ADAS能够根据驾驶员的个人驾驶风格,提出适当的建议,并与驾驶员和谐相处。传统的驾驶行为分析方法侧重于对驾驶过程进行建模,对于油耗评价等特殊应用而言,建模过程复杂且难以推广。特别是建模过程的复杂性,结合动态驾驶条件,使得对驾驶行为与油耗关系的定量分析难以评价。因此,本文提出了一种基于数据挖掘的方法,利用真实驾驶数据来测量驾驶行为对油耗的影响。首先,我们引入了一种频谱聚类算法,该算法将驾驶数据根据驾驶风格对驾驶员进行分组。然后,我们设计了一个固定交通条件下的驾驶行为评价实验,并设计了一个无线数据采集平台来采集数据。为了获得适合谱聚类算法的实验驾驶数据,提出了一种数据处理机制。最后,以实际燃油消耗量为基础,验证了方法的准确性。结果表明,该方法能较好地测量驾驶行为对车辆油耗的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectral clustering based approach for evaluating the effect of driving behavior on fuel economy
Measurement or evaluation of driving behavior is vital to the development of advanced driver assistance systems (ADAS). Accurate assessment of a driver's behavior allows the ADAS to make appropriate recommendations and function in harmony with the driver by adapting to the driver's personal driving style. Traditional driving behavior analysis methods focus on driving process modeling, which is complex and rarely be generalized for some special application like fuel consumption evaluation. In particular, the complexity of the modeling process, in combination with dynamic driving conditions, makes the quantitative analysis of the relationship between driving behavior and fuel consumption difficult to evaluate. Therefore, in this paper we propose a data mining-based method which can be used to measure the driving behavior's effect on fuel consumption by using real-world driving data. First, we introduce a spectral clustering algorithm which will be used with driving data to group drivers according to their driving styles. Then, we design a driving behavior evaluation experiment with fixed traffic conditions and a wireless data collection platform to collect the data. A data processing mechanism is also proposed to obtain the proper experimental driving data suitable to be the spectral clustering algorithm. Finally, we use actual fuel consumption as the ground truth to verify the accuracy of our method. The results show that the proposed method can measure the driving behavior's effect on the vehicle's fuel consumption well.
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