Autonomous cars can reduce road traffic accidents and provide a safer mode of transport. However, key technical challenges, such as safe navigation in complex urban environments, need to be addressed before deploying these vehicles on the market. Teleoperation can help smooth the transition from human operated to fully autonomous vehicles since it still has human in the loop providing the scope of fallback on driver. This paper presents an Active Safety System (ASS) approach for teleoperated driving. The proposed approach helps the operator ensure the safety of the vehicle in complex environments, that is, avoid collisions with static or dynamic obstacles. Our ASS relies on a model predictive control (MPC) formulation to control both the lateral and longitudinal dynamics of the vehicle. By exploiting the ability of the MPC framework to deal with constraints, our ASS restricts the controller's authority to intervene for lateral correction of the human operator's commands, avoiding counter-intuitive driving experience for the human operator. Further, we design a visual feedback to enhance the operator's trust over the ASS. In addition, we propose an MPC's prediction horizon data based novel predictive display to mitigate the effects of large latency in the teleoperation system. We tested the performance of the proposed approach on a high-fidelity vehicle simulator in the presence of dynamic obstacles and latency.
翻译:自动驾驶汽车可以减少道路交通事故,提供更安全的运输方式。然而,在市场上部署这些车辆之前,需要解决关键技术挑战,如在复杂的城市环境中安全航行等。远程操作可以帮助从人操作的车辆顺利过渡到完全自主的车辆,因为它在回旋中仍然具有人性,可以对驾驶员提供回旋范围。本文介绍了自动驾驶的动态安全系统(ASS)方法。拟议方法有助于操作员确保车辆在复杂环境中的安全,即避免与静态或动态障碍发生碰撞。我们的自动操作系统依靠模型预测控制(MPC)的配方来控制车辆的横向和纵向动态动态。通过利用移动控制中心框架处理限制的能力,我们的自动操作器限制了控制员进行干预的权力,以便横向纠正操作员的指令,避免人类操作员的反直觉驾驶经验。此外,我们设计视觉反馈,以提高操作员对自动或动态障碍的信任。此外,我们提议以模型预测视野数据为基础,根据新型预测数据来控制车辆的横向和纵向动态动态动态动态动态动态动态动态动态显示,以缓解大规模机动性操作。