Dynamic Conflict Mitigation for Cooperative Driving Control of Intelligent Vehicles

Mohamed Radjeb Oudainia, C. Sentouh, Anh‐Tu Nguyen, J. Popieul
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引用次数: 1

Abstract

The work described in this paper proposes a new dynamic conflict attenuation strategy in driving shared control for intelligent vehicles lane keeping systems (LKS). This strategy takes into account the activity and availability of the driver as well as the external risk and conflict between the driver and the control system in order to manage and adapt the level of assistance in real time. The design of an adaptive shared controller is based on a dynamic multi-objective cost function that changes according to the level of assistance. Based on Lyapunov stability arguments, the global asymptotical stability of the closed-loop control system with the adaptive cost function and the variation in vehicle speed is proven and an LMI optimization is used to formulate the control design. The simulation results, conducted with the SHERPA dynamic car simulator under real-world driving situations, for different scenarios show the importance of adapting the controller in real time in order to decrease the conflict between the driver and the lane keeping system and to ensure the safety of the vehicle as well as to increase the confidence and acceptability of the driver.
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智能汽车协同驾驶控制的动态冲突缓解
本文提出了一种新的智能车辆车道保持系统(LKS)驾驶共享控制中的动态冲突衰减策略。该策略考虑了驾驶员的活动和可用性,以及驾驶员与控制系统之间的外部风险和冲突,以便实时管理和调整辅助水平。自适应共享控制器的设计基于一个动态多目标代价函数,该函数随辅助水平的变化而变化。基于Lyapunov稳定性论证,证明了具有自适应代价函数和车速变化的闭环控制系统的全局渐近稳定性,并采用LMI优化方法进行控制设计。利用SHERPA动态汽车模拟器在真实驾驶情况下进行的不同场景的仿真结果表明,实时调整控制器对于减少驾驶员与车道保持系统之间的冲突,保证车辆安全,增加驾驶员的信心和接受度具有重要意义。
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