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Industrial-scale autonomous wheeled-vehicle path following by combining iterative learning control with feedback linearization

机译:通过将迭代学习控制与反馈线性化相结合的工业规模自动轮车路径跟踪

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This paper presents a path following method for autonomous wheeled vehicles that combines iterative learning control (ILC) with nonlinear feedback linearization (FBL) to provide anticipatory control action based on stored path following errors over repeated driving trials. By implementing ILC in a fully feedback-linearized space, control corrections are applied to a transformed input, thus allowing for a single back-computation to the nonlinear vehicle's control input. Hence, the approach is comparatively easy to implement and also computationally inexpensive. We first outline the mathematical formulation for this control method and then describe field results from tests conducted by using an industrial-scale wheeled underground mining vehicle in a representative environment to demonstrate effectiveness.
机译:本文提出了一种路径,该路径是自主轮式车辆的方法,该方法将迭代学习控制(ILC)与非线性反馈线性化(FBL)相结合,以基于在重复驾驶试验的错误之后基于存储路径提供预期控制动作。通过在完全反馈线性化空间中实现ILC,控制校正被施加到变换的输入,从而允许对非线性车辆的控制输入进行单个背部计算。因此,该方法比较容易实现并且还计算得廉价。我们首先概述该控制方法的数学制定,然后描述通过在代表性环境中使用工业规模的轮廓地区采矿车辆进行的测试的现场结果,以证明有效性。

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