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利用 SHRP2 自然驾驶轨迹数据研究雾天条件下驾驶员车道保持能力:关联规则挖掘方法。

Using trajectory-level SHRP2 naturalistic driving data for investigating driver lane-keeping ability in fog: An association rules mining approach.

机构信息

University of Wyoming, Department of Civil & Architectural Engineering, 1000 E University Ave, Dept. 3295, Laramie, WY 82071, United States.

出版信息

Accid Anal Prev. 2019 Aug;129:250-262. doi: 10.1016/j.aap.2019.05.024. Epub 2019 Jun 5.

DOI:10.1016/j.aap.2019.05.024
PMID:31176145
Abstract

The presence of fog has a significant adverse impact on driving. Reduced visibility due to fog obscures the driving environment and greatly affects driver behavior and performance. Lane-keeping ability is a lateral driver behavior that can be very crucial in run-off-road crashes under reduced visibility conditions. A number of data mining techniques have been adopted in previous studies to examine driver behavior including lane-keeping ability. This study adopted an association rules mining method, a promising data mining technique, to investigate driver lane-keeping ability in foggy weather conditions using big trajectory-level SHRP2 Naturalistic Driving Study (NDS) datasets. A total of 124 trips in fog with their corresponding 248 trips in clear weather (i.e., 2 clear trips: 1 foggy weather trip) were considered for the study. The results indicated that affected visibility was associated with poor lane-keeping performance in several rules. Furthermore, additional factors including male drivers, a higher number of lanes, the presence of horizontal curves, etc. were found to be significant factors for having a higher proportion of poor lane-keeping performance. Moreover, drivers with more miles driven last year were found to have better lane-keeping performance. The findings of this study could help transportation practitioners to select effective countermeasures for mitigating run-off-road crashes under limited visibility conditions.

摘要

雾的存在对驾驶有重大的不利影响。雾导致的能见度降低会使驾驶环境变得模糊,并极大地影响驾驶员的行为和表现。保持车道能力是一种横向驾驶员行为,在能见度降低的情况下,对于驶离道路的碰撞非常关键。在之前的研究中,已经采用了许多数据挖掘技术来研究驾驶员行为,包括保持车道能力。本研究采用了关联规则挖掘方法,这是一种很有前途的数据挖掘技术,利用大轨迹级别 SHRP2 自然驾驶研究(NDS)数据集,在雾天条件下研究驾驶员保持车道的能力。共有 124 次雾天行驶和 248 次晴天行驶(即 2 次晴天行驶:1 次雾天行驶)被考虑用于本研究。结果表明,在几个规则中,受影响的能见度与较差的车道保持性能有关。此外,还发现其他一些因素,包括男性驾驶员、更多的车道数量、存在水平曲线等,是导致较差的车道保持性能比例较高的重要因素。此外,发现去年行驶里程较多的驾驶员具有更好的车道保持性能。本研究的结果可以帮助交通从业者选择在能见度有限的情况下减轻驶离道路碰撞的有效对策。

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