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Control Synthesis and Classification for Unicycle Dynamics using the Gradient and Value Sampling Particle Filters ?

机译:使用梯度和价值采样粒子滤波器控制单轮循环动力学的合成和分类

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Value functions arising from dynamic programming can be used to synthesize optimal control inputs for general nonlinear systems with state and/or input constraints; however, the inputs generated by steepest descent on these value functions often lead to chattering behavior. In [Traft & Mitchell, 2016] we proposed the Gradient Sampling Particle Filter (GSPF), which combines robot state estimation and nonsmooth optimization algorithms to alleviate this problem. In this paper we extend the GSPF to velocity controlled unicycle (or equivalently differential drive) dynamics. We also show how the algorithm can be adapted to classify whether an exogenous input—such as one arising from shared human-in-the-loop control—is desirable. The two algorithms are demonstrated on a ground robot.
机译:动态编程引起的值函数可用于合成具有状态和/或输入约束的一般非线性系统的最佳控制输入;然而,通过最陡血管产生这些值函数产生的输入通常导致抖动行为。在[爬联机和Mitchell,2016]中,我们提出了梯度采样粒子滤波器(GSPF),它结合了机器人状态估计和非光滑优化算法来缓解这个问题。在本文中,我们将GSPF扩展到速度控制的单轮循环(或等待等效的驱动)动态。我们还展示了算法如何适于分类外源性输入是否是由共用的LOOP控制 - 是期望的外源性输入。这两个算法在地面机器人上进行了演示。

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