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Path-Following with a Bounded-Curvature Vehicle: a Hybrid Control Approach

机译:有界曲率车辆的路径跟踪:一种混合控制方法

摘要

In this paper, we consider the problem of stabilizing the kinematic model of a car to a path in the plane under rather general conditions. The path is subject to very mild restrictions, while the car model, although rather simplified, contains the most relevant limitations inherent in wheeled robots kinematics. Namely, the car can only move forward, its steering radius is lower bounded and a limited sensory information only provides a partial knowledge of some state parameters. In particular, we consider the case that the current distance and the heading angle error with respect to the closest point on the reference path can be measured but only the sign of the path curvature is detected. These constraints are such to make classical control techniques inefficient. As the feedback information is both continuous and discrete, the hybrid systems formalism turns out to be well appropriate to model the problem. The proposed approach is based on optimal control techniques successfully applied in a previous work for following rectilinear path. We propose here an extension to the tracking of more general paths with moderate curvature. The stability of the closed-loop system is proved by means of the hybrid system formalism and hybrid formal verification techniques. Finally, the practicality of the proposed approach, in spite of non--idealities in real-world applications, is discussed by reporting experimental results.
机译:在本文中,我们考虑了在相当普遍的条件下将汽车的运动学模型稳定到平面中的路径的问题。路径受到非常轻微的限制,而汽车模型虽然相当简化,却包含了轮式机器人运动学中固有的最相关的限制。即,汽车只能向前行驶,其转向半径是下界,并且有限的感官信息仅提供了一些状态参数的部分知识。特别地,我们考虑这样一种情况,即可以测量相对于参考路径上最近点的当前距离和航向角误差,但仅检测到路径曲率的符号。这些约束使得传统的控制技术效率低下。由于反馈信息既是连续的又是离散的,因此混合系统形式主义证明非常适合于对问题进行建模。所提出的方法是基于最优控制技术的,该最优控制技术已成功地应用于先前的工作中以遵循直线路径。我们在这里建议扩展跟踪具有中等曲率的更一般路径。通过混合系统形式主义和混合形式验证技术证明了闭环系统的稳定性。最后,尽管在实际应用中存在非理想性,但仍通过报告实验结果来讨论所提出方法的实用性。

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