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Utilizing naturalistic driving data for in-depth analysis of driver lane-keeping behavior in rain: Non-parametric MARS and parametric logistic regression modeling approaches
Institution:1. The Pennsylvania State University, 119 Health and Human Development Building, University Park, PA, 16802, United States;2. Clemson University, 418 Brackett Hall, Clemson, SC, 29634, United States;1. The Key Laboratory of Road and Traffic Engineering, Ministry of Education, Shanghai 201804, China;2. School of Transportation Engineering, Tongji University, Shanghai 201804, China;3. School of Civil & Building Engineering, Loughborough University, Loughborough LE11 3TU, United Kingdom;1. University of Wyoming, Department of Civil & Architectural Engineering, 1000 E University Ave, Dept. 3295, Laramie, WY 82071, United States;2. FHWA Turner-Fairbank Highway Research Center, 6300 Georgetown Pike, McLean, VA 22101, United States;3. The University of Texas at Austin, United States;4. Gonzaga University, Department of Civil Engineering, 502 E. Boone Ave., Herak 212, Spokane, WA 99258, United States
Abstract:It is known that adverse weather conditions can affect driver performance due to reduction in visibility and slippery surface conditions. Lane keeping is one of the main factors that might be affected by weather conditions. Most of the previous studies on lane keeping have investigated driver lane-keeping performance from driver inattention perspective. In addition, the majority of previous lane-keeping studies have been conducted in controlled environments such as driving simulators. Therefore, there is a lack of studies that investigate driver lane-keeping ability considering adverse weather conditions in naturalistic settings. In this study, the relationship between weather conditions and driver lane-keeping performance was investigated using the SHRP2 naturalistic driving data for 141 drivers between 19 and 89 years of age. Moreover, a threshold was introduced to differentiate lane keeping and lane changing in naturalistic driving data. Two lane-keeping models were developed using the logistic regression and multivariate adaptive regression splines (MARS) to better understand factors affecting driver lane-keeping ability considering adverse weather conditions. The results revealed that heavy rain can significantly increase the standard deviation of lane position (SDLP), which is a very widely used method for analyzing lane-keeping ability. It was also found that traffic conditions, driver age and experience, and posted speed limits have significant effects on driver lane-keeping ability. An interesting finding of this study is that drivers have a better lane-keeping ability in roadways with higher posted speed limits. The results from this study might provide better insights into understanding the complex effect of adverse weather conditions on driver behavior.
Keywords:Naturalistic driving study  Lane keeping  Lane departure warning system  Adverse weather conditions  SHRP2  Multivariate adaptive regression splines
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