Using naturalistic driving data to identify driving style based on longitudinal driving operation conditions

Nengchao Lyu;Yugang Wang;Chaozhong Wu;Lingfeng Peng;Alieu Freddie Thomas
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引用次数: 18

Abstract

Purpose - An individual's driving style significantly affects overall traffic safety. However, driving style is difficult to identify due to temporal and spatial differences and scene heterogeneity of driving behavior data. As such, the study of real-time driving-style identification methods is of great significance for formulating personalized driving strategies, improving traffic safety and reducing fuel consumption. This study aims to establish a driving style recognition framework based on longitudinal driving operation conditions (DOCs) using a machine learning model and natural driving data collected by a vehicle equipped with an advanced driving assistance system (ADAS). Design/methodology/approach - Specifically, a driving style recognition framework based on longitudinal DOCs was established. To train the model, a real-world driving experiment was conducted. First, the driving styles of 44 drivers were preliminarily identified through natural driving data and video data; drivers were categorized through a subjective evaluation as conservative, moderate or aggressive. Then, based on the ADAS driving data, a criterion for extracting longitudinal DOCs was developed. Third, taking the ADAS data from 47 Kms of the two test expressways as the research object, six DOCs were calibrated and the characteristic data sets of the different DOCs were extracted and constructed. Finally, four machine learning classification (MLC) models were used to classify and predict driving style based on the natural driving data. Findings - The results showed that six longitudinal DOCs were calibrated according to the proposed calibration criterion. Cautious drivers undertook the largest proportion of the free cruise condition (FCC), while aggressive drivers primarily undertook the FCC, following steady condition and relative approximation condition. Compared with cautious and moderate drivers, aggressive drivers adopted a smaller time headway (THW) and distance headway (DHW). THW, time-to-collision (TTC) and DHW showed highly significant differences in driving style identification, while longitudinal acceleration (LA) showed no significant difference in driving style identification. Speed and TTC showed no significant difference between moderate and aggressive drivers. In consideration of the cross-validation results and model prediction results, the overall hierarchical prediction performance ranking of the four studied machine learning models under the current sample data set was extreme gradient boosting > multi-layer perceptron > logistic regression > support vector machine. Originality/value - The contribution of this research is to propose a criterion and solution for using longitudinal driving behavior data to label longitudinal DOCs and rapidly identify driving styles based on those DOCs and MLC models. This study provides a reference for real-time online driving style identification in vehicles equipped with onboard data acquisition equipment, such as ADAS.
利用自然驾驶数据识别基于纵向驾驶操作条件的驾驶风格
目的-个人的驾驶风格会显著影响整体交通安全。然而,由于驾驶行为数据的时间和空间差异以及场景异质性,驾驶风格很难识别。因此,研究实时驾驶风格识别方法对制定个性化驾驶策略、提高交通安全性和降低油耗具有重要意义。本研究旨在使用机器学习模型和配备高级驾驶辅助系统(ADAS)的车辆收集的自然驾驶数据,建立一个基于纵向驾驶操作条件(DOC)的驾驶风格识别框架。设计/方法/方法-具体而言,建立了一个基于纵向DOC的驾驶风格识别框架。为了训练模型,进行了一个真实世界的驾驶实验。首先,通过自然驾驶数据和视频数据,初步识别了44名驾驶员的驾驶风格;驾驶员通过主观评价分为保守型、中度或攻击型。然后,基于ADAS驾驶数据,提出了提取纵向DOC的标准。第三,以两条测试高速公路47公里的ADAS数据为研究对象,对6个DOCs进行了标定,提取并构建了不同DOCs的特征数据集。最后,基于自然驾驶数据,使用四个机器学习分类模型对驾驶风格进行分类和预测。调查结果-结果显示,根据拟议的校准标准对六个纵向DOC进行了校准。谨慎的驾驶员承担了最大比例的自由巡航条件(FCC),而激进的驾驶员主要承担FCC,遵循稳定条件和相对近似条件。与谨慎和温和的驾驶员相比,激进的驾驶员采用较小的时间间隔(THW)和距离间隔(DHW)。THW、碰撞时间(TTC)和DHW在驾驶风格识别方面表现出高度显著的差异,而纵向加速度(LA)在驾驶风格辨别方面没有表现出显著差异。速度和TTC在温和和激进驾驶员之间没有显著差异。考虑到交叉验证结果和模型预测结果,所研究的四个机器学习模型在当前样本数据集下的整体分层预测性能排名为极端梯度提升>多层感知器>逻辑回归>支持向量机。独创性/价值-本研究的贡献是提出了一种标准和解决方案,用于使用纵向驾驶行为数据来标记纵向DOC,并基于这些DOC和MLC模型快速识别驾驶风格。该研究为配备ADAS等车载数据采集设备的车辆实时在线驾驶风格识别提供了参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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