Constraint-based planning and control for safe, semi-autonomous operation of vehicles

S. J. Anderson, S. Karumanchi, K. Iagnemma
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引用次数: 111

Abstract

This paper presents a new approach to semi-autonomous vehicle hazard avoidance and stability control, based on the design and selective enforcement of constraints. This differs from traditional approaches that rely on the planning and tracking of paths. This emphasis on constraints facilitates “minimally-invasive” control for human-machine systems; instead of forcing a human operator to follow an automation-determined path, the constraint-based approach identifies safe homotopies, and allows the operator to navigate freely within them, introducing control action only as necessary to ensure that the vehicle does not violate safety constraints. The method evaluates candidate homotopies based on “restrictiveness”, rather than traditional measures of path goodness, and designs and enforces requisite constraints on the human's control commands to ensure that the vehicle never leaves the controllable subset of a desired homotopy. Identification of these homotopic classes in off-road environments is performed using geometric constructs. The goodness of competing homotopies and their associated constraints is then characterized using geometric heuristics. Finally, input limits satisfying homotopy and vehicle dynamic constraints are enforced using threat-based feedback mechanisms to ensure that the vehicle avoids collisions and instability while preserving the human operator's situational awareness and mental models. The methods developed in this work are shown in simulation and experimentally demonstrated in safe, high-speed teleoperation of an unmanned ground vehicle.
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基于约束的规划和控制,用于车辆的安全、半自主操作
本文提出了一种基于约束设计和选择性执行的半自主车辆避险与稳定控制新方法。这与依赖于规划和跟踪路径的传统方法不同。这种对约束的强调促进了人机系统的“微创”控制;这种基于约束的方法不是强迫人类操作员遵循自动确定的路径,而是识别安全同伦,并允许操作员在其中自由导航,仅在必要时引入控制动作,以确保车辆不违反安全约束。该方法基于“限制性”来评估候选同伦,而不是传统的路径优度度量,并对人类的控制命令设计和实施必要的约束,以确保车辆永远不会离开期望同伦的可控子集。在非公路环境中,这些同伦类的识别使用几何结构进行。然后用几何启发式来描述竞争同伦及其相关约束的良性。最后,利用基于威胁的反馈机制强制执行满足同伦约束和车辆动态约束的输入限制,以确保车辆在保持驾驶员态势感知和心智模型的同时避免碰撞和不稳定。在这项工作中开发的方法在仿真和实验中得到了验证,并在无人驾驶地面车辆的安全、高速远程操作中得到了验证。
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