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Iterative learning control for a distributed cloud robot with payload delivery

Jiehao Li, Shoukun Wang, Junzheng Wang, Jing Li, Jiangbo Zhao, Liling Ma

2021Assembly Automation37 citationsDOI

Abstract

Purpose When it comes to the high accuracy autonomous motion of the mobile robot, it is challenging to effectively control the robot to follow the desired trajectory and transport the payload simultaneously, especially for the cloud robot system. In this paper, a flexible trajectory tracking control scheme is developed via iterative learning control to manage a distributed cloud robot (BIT-6NAZA) under the payload delivery scenarios. Design/methodology/approach Considering the relationship of six-wheeled independent steering in the BIT-6NAZA robot, an iterative learning controller is implemented for reliable trajectory tracking with the payload transportation. Meanwhile, the stability analysis of the system ensures the effective convergence of the algorithm. Findings Finally, to evaluate the developed method, some demonstrations, including the different motion models and tracking control, are presented both in simulation and experiment. It can achieve flexible tracking performance of the designed composite algorithm. Originality/value This paper provides a feasible method for the trajectory tracking control in the cloud robot system and simultaneously promotes the robot application in practical engineering.

Topics & Concepts

Payload (computing)Iterative learning controlTrajectoryRobotComputer scienceController (irrigation)Mobile robotCloud computingRobot controlMotion controlConvergence (economics)Control engineeringControl theory (sociology)EngineeringSimulationArtificial intelligenceControl (management)EconomicsAgronomyNetwork packetComputer networkPhysicsAstronomyBiologyEconomic growthOperating systemModular Robots and Swarm IntelligenceRobotics and Automated SystemsSoft Robotics and Applications
Iterative learning control for a distributed cloud robot with payload delivery | Litcius