使用基于对冲矢量的控制器对移动机器人进行轨迹跟踪

IF 2.3 4区 计算机科学 Q3 ROBOTICS
Tien-Duy Nguyen, Sy-Tai Nguyen, Thi Thoa Mac, Hai-Le Bui
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引用次数: 0

摘要

本研究旨在设计基于对冲矩阵(HA)理论的控制器,以控制跟踪参考轨迹的差分机器人。首先,通过为所研究的模型选择合适的定性控制规则库,合成基于 HA 的控制器(简称 HA 控制器),这是一个基于规则的优化问题。然后,基于同时优化规则库、变量参考区间和变量模糊参数的问题,建立基于 HA 的最优控制器(简称为 oHA 控制器)。优化问题旨在最小化机器人与参考轨迹之间的距离。本研究中的优化问题采用了平衡复合运动优化(BCMO)算法。为了进行比较,还加入了一个基于模糊集理论的控制器(称为 FC 控制器),其参数与 HA 控制器相同。仿真结果表明,HA 和 oHA 控制器在参考轨迹跟踪能力、计算时间和控制鲁棒性方面比 FC 控制器更具优势。这项工作的主要贡献包括:(i) 开发了一种新型的 HA 和 oHA 方法来控制移动机器人精确地跟踪参考轨迹;(ii) 提供了基于全局的最佳 BCMO,使跟踪误差最小,计算效率最高;(iii) 研究了 HA 和 oHA 控制器的一个控制规则库,它对许多不同的参考轨道都有效;(v) 与基于模糊集理论的控制器相比,所提出的控制器在机器人与参考轨迹之间的位置误差、控制动作计算时间以及机器人参数变化的鲁棒性能力等方面具有更优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Trajectory tracking of mobile robots using hedge-agebras-based controllers

Trajectory tracking of mobile robots using hedge-agebras-based controllers

This research aims to design controllers based on the hedge-algebras (HA) theory to control differential robots that track reference trajectories. First, the HA-based controller (denoted as HA controller) is synthesized by selecting a suitable qualitative control rule base for the investigated model as a rule-based optimization problem. Then, the optimal HA-based controller (denoted as oHA controller) is established based on the problem of simultaneously optimizing the rule base, the reference interval of variables, and the fuzzy parameters of the variables. Optimization problems aim to minimize the distance between the robot and the reference trajectory. The optimization problems in this study use the Balancing composite motion optimization (BCMO) algorithm. A controller based on fuzzy set theory (denoted as FC controller) with the same parameters as the HA controller is also included for comparison. The simulation results show that the HA and oHA controllers demonstrate many advantages over the FC controller regarding reference trajectory tracking ability, calculation time, and control robustness. The main contribution of this work consists of (i) The development of a novel HA, oHA approaches to control a mobile robot to follow reference trajectories accurately; (ii) Providing optimal global-based BCMO in terms of minimal tracking error with computational efficiency; (iii) The investigation of one control rule base for HA and oHA controllers, which is effective for many different reference orbits; (iv) The development of a robust controller that adapts to the robot’s geometric parameters changes; (v) The proposed controllers have superior performance results compared to controllers based on fuzzy set theory in terms of position error between the robot and the reference trajectory, control action calculation time, and robust ability to change robot parameters.

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来源期刊
CiteScore
5.70
自引率
4.00%
发文量
46
期刊介绍: The journal directs special attention to the emerging significance of integrating robotics with information technology and cognitive science (such as ubiquitous and adaptive computing,information integration in a distributed environment, and cognitive modelling for human-robot interaction), which spurs innovation toward a new multi-dimensional robotic service to humans. The journal intends to capture and archive this emerging yet significant advancement in the field of intelligent service robotics. The journal will publish original papers of innovative ideas and concepts, new discoveries and improvements, as well as novel applications and business models which are related to the field of intelligent service robotics described above and are proven to be of high quality. The areas that the Journal will cover include, but are not limited to: Intelligent robots serving humans in daily life or in a hazardous environment, such as home or personal service robots, entertainment robots, education robots, medical robots, healthcare and rehabilitation robots, and rescue robots (Service Robotics); Intelligent robotic functions in the form of embedded systems for applications to, for example, intelligent space, intelligent vehicles and transportation systems, intelligent manufacturing systems, and intelligent medical facilities (Embedded Robotics); The integration of robotics with network technologies, generating such services and solutions as distributed robots, distance robotic education-aides, and virtual laboratories or museums (Networked Robotics).
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