An Improved Adaptive Filter Trajectory Tracking Algorithm Based on A Single Steering Wheel AGV

Lei Yu, Zelong Wang, Guoqiang Zhang
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引用次数: 1

Abstract

Trajectory tracking is one of the key technologies to achieve mobile automated guided vehicle (AGV) and a necessary condition for the stable operation of AGV. At present, the most common AGV structure in the field of heavy load handling is the single steering wheel structure, most of the existing trajectory tracking algorithms are very complex and difficult to apply in practice. In this paper, the kinematic model is constructed by analyzing the kinematic state and structural characteristics of a single steering wheel AGV. The adaptive Kalman filtering algorithm is used to establish the equation of state with the position information of the AGV at the last moment and the three parameters set, then the observation equation is established with the position returned by the navigation sensor, and the new information obtained during the movement of the AGV is used to iteratively calculate the control law that makes the system asymptotically stable. The idea of a sliding data window was added to the controller, taking into account the effect of the ground flatness and body assembly tolerances on the control effect during the actual movement. The results show that the algorithm is simple and effective, and meets the requirements of AGV for trajectory tracking, and achieves the ideal application results.
基于单方向盘AGV的改进自适应滤波轨迹跟踪算法
轨迹跟踪是实现移动自动导引车(AGV)的关键技术之一,是AGV稳定运行的必要条件。目前,在重载搬运领域最常见的AGV结构是单方向盘结构,现有的大多数轨迹跟踪算法都非常复杂,难以在实践中应用。本文通过分析单方向盘AGV的运动状态和结构特点,建立了该AGV的运动学模型。采用自适应卡尔曼滤波算法,利用AGV在最后时刻的位置信息和设定的三个参数建立状态方程,然后利用导航传感器返回的位置信息建立观测方程,利用AGV运动过程中获得的新信息迭代计算控制律,使系统渐近稳定。考虑到实际运动过程中地面平整度和车身装配公差对控制效果的影响,在控制器中加入了滑动数据窗口的思想。结果表明,该算法简单有效,满足AGV对轨迹跟踪的要求,取得了理想的应用效果。
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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