The Key Laboratory of Road and Traffic Engineering, Ministry of Education, Tongji University, Shanghai, China; College of Transportation Engineering, Tongji University, 4800 Cao'an Highway, Shanghai 201804, China.
The Key Laboratory of Road and Traffic Engineering, Ministry of Education, Tongji University, Shanghai, China; College of Transportation Engineering, Tongji University, 4800 Cao'an Highway, Shanghai 201804, China.
Accid Anal Prev. 2022 Jan;164:106500. doi: 10.1016/j.aap.2021.106500. Epub 2021 Nov 22.
Proactive lane-changing (LC) risk prediction can assist driver's LC decision-making to ensure driving safety. However, most previous studies on LC risk prediction did not consider the driver's intention recognition, which made it difficult to guarantee the timeliness and practicability of LC risk prediction. Moreover, the difference in driving risks and its influencing factors between LC to left lane (LCL) and LC to right lane (LCR) have rarely been investigated. To bridge the above research gaps, this study proposes a proactive LC risk prediction framework which integrates the LC intention recognition module and LC risk prediction module. The Long Short-term Memory (LSTM) neural network with time-series input was employed to recognize the driver's LC intention. The Light Gradient Boosting Machine (LGBM) algorithm was then applied to predict the LC risk. Feature importance analysis was lastly conducted to obtain the key features that affect the LC risk. The highD trajectory dataset was used for framework validation. Results show that the recognition accuracy of the driver's LCL, LCR and lane-keeping (LK) intentions based on the proposed LSTM model are 97%, 96% and 97%, respectively. Meanwhile, the LGBM algorithm outperforms other machine learning algorithms in LC risk prediction. The results from feature importance analysis show that the interaction characteristics of the LC vehicle and its preceding vehicle in the current lane have the greatest impact on the LC risk. The proposed framework could potentially be implemented in advanced driver-assistance system (ADAS) or autonomous driving system for improved driving safety.
主动变道 (LC) 风险预测可以辅助驾驶员的 LC 决策,确保驾驶安全。然而,大多数之前关于 LC 风险预测的研究都没有考虑驾驶员意图识别,这使得 LC 风险预测的及时性和实用性难以保证。此外,LC 至左车道 (LCL) 和 LC 至右车道 (LCR) 的驾驶风险及其影响因素的差异很少被研究。为了弥补上述研究空白,本研究提出了一种主动 LC 风险预测框架,该框架集成了 LC 意图识别模块和 LC 风险预测模块。采用具有时间序列输入的长短时记忆 (LSTM) 神经网络识别驾驶员的 LC 意图。然后应用轻梯度提升机 (LGBM) 算法预测 LC 风险。最后进行特征重要性分析,以获得影响 LC 风险的关键特征。使用 highD 轨迹数据集对框架进行验证。结果表明,基于所提出的 LSTM 模型,驾驶员的 LCL、LCR 和车道保持 (LK) 意图的识别准确率分别为 97%、96%和 97%。同时,LGBM 算法在 LC 风险预测方面优于其他机器学习算法。特征重要性分析的结果表明,当前车道中 LC 车辆及其前车的交互特征对 LC 风险的影响最大。所提出的框架有可能在先进驾驶辅助系统 (ADAS) 或自动驾驶系统中实施,以提高驾驶安全性。