Continuous-Time Receding-Horizon Estimation via Primal-Dual Dynamics on Vehicle Path-Following Control

Kaito Sato, K. Sawada
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引用次数: 1

Abstract

In vehicle control, state estimation is essential even as the sensor accuracy improves with technological development. One of the vehicle estimation methods is receding-horizon estimation (RHE), which uses a past series of the measured state and input of the plant, and determines the estimated states based on linear or quadratic programming. It is known that RHE can estimate the vehicular state to which the extended Kalman filter cannot be applied owing to modeling errors. This study proposes a new computational form of the RHE based on primal-dual dynamics. The proposed form is expressed by a dynamic system; therefore, we can consider the computational stability based on the dynamic system theory. In this study, we propose a continuous-time representation of the RHE algorithm and redundant filters to improve the convergence performance of the estimation and demonstrate its effectiveness through a vehicle path-following control problem.
基于原始对偶动力学的车辆路径跟随控制连续时间后退地平线估计
在车辆控制中,随着技术的发展,传感器的精度不断提高,状态估计也是必不可少的。其中一种车辆估计方法是后退水平估计(RHE),它利用过去的一系列测量状态和输入,并基于线性或二次规划确定估计状态。已知RHE可以估计出由于建模误差而不能应用扩展卡尔曼滤波器的车辆状态。本文提出了一种新的基于原始对偶动力学的RHE计算形式。所提出的形式由一个动态系统来表达;因此,我们可以考虑基于动态系统理论的计算稳定性。在本研究中,我们提出了RHE算法的连续时间表示和冗余滤波器来提高估计的收敛性能,并通过车辆路径跟踪控制问题证明了其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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