School of Transportation, Southeast University, Jiangsu Key Laboratory of Urban ITS, Jiangsu Province Collaborative Innovation Center of Modern Urban Traffic Technologies, Dong Nan Da Xue Rd. #2, Nanjing, 211189, China.
Accid Anal Prev. 2020 Feb;135:105345. doi: 10.1016/j.aap.2019.105345. Epub 2019 Nov 18.
Lane changes made during traffic oscillations on freeways largely affect traffic safety and could increase collision potentials. Predicting the impacts of lane change can help to develop optimal lane change strategies of autonomous vehicles for safety improvement. The study aims at proposing a machine learning method for the short-term prediction of lane-changing impacts (LCI) during the propagation of traffic oscillations. The empirical lane-changing trajectory records were obtained from the Next Generation Simulation (NGSIM) platform. A support vector regression (SVR) model was trained in this study to predict the LCI on the crash risks and flow change using microscopic traffic variables such as individual speed, gap and acceleration on both original lanes and target lanes. Sensitivity analyses were conducted in the SVR to quantify the contributions of correlative lane changing factors. The results showed that the trained SVR model achieved an accuracy of 72.81 % for the risk of crashes and 95.34 % in predicting the flow change. The sensitivity analysis explored the optimal speed and acceleration for the lane changer to achieve the lowest time integrated time-to-collision (TIT) value for safety maximization. Finally, we compared the LCI for motorcycles, automobiles and trucks as well as the LCI for both lane-changing directions (from left to right and from right to left). It was found that motorcycles conducted lane changes with smaller gaps and larger speed differences, which brings the highest crash risks. Passenger cars were found to be the safest when they conduct lane changes. Lane changes to the right had more negative impacts on traffic flow and crash risks.
高速公路交通波动期间的变道行为在很大程度上影响交通安全,并可能增加碰撞的可能性。预测变道的影响有助于为自动驾驶车辆制定最优的变道策略,以提高安全性。本研究旨在提出一种机器学习方法,用于预测交通波动传播过程中的变道影响(LCI)。实证变道轨迹记录来自下一代仿真(NGSIM)平台。本研究中训练了一个支持向量回归(SVR)模型,以使用个体速度、间隙和加速度等微观交通变量来预测原始车道和目标车道上的碰撞风险和流量变化的 LCI。在 SVR 中进行了敏感性分析,以量化相关变道因素的贡献。结果表明,训练有素的 SVR 模型在预测碰撞风险方面的准确率为 72.81%,在预测流量变化方面的准确率为 95.34%。敏感性分析探讨了变道者的最佳速度和加速度,以实现最小的时间综合碰撞时间(TIT)值,从而实现最大的安全性。最后,我们比较了摩托车、汽车和卡车的 LCI 以及左右两侧的 LCI。结果发现,摩托车变道时的间隙更小,速度差更大,因此碰撞风险最高。当乘用车变道时,它们是最安全的。向右变道对交通流量和碰撞风险的负面影响更大。