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Control System Design and Methods for Collaborative Robots: Review

Applied Sciences(2023)

Warsaw Univ Technol

Cited 13|Views2
Abstract
Collaborative robots cooperate with humans to assist them in undertaking simple-to-complex tasks in several fields, including industry, education, agriculture, healthcare services, security, and space exploration. These robots play a vital role in the revolution of Industry 4.0, which defines new standards of manufacturing and the organization of products in the industry. Incorporating collaborative robots in the workspace improves efficiency, but it also introduces several safety risks. Effective safety measures then become indispensable to ensure safe and robust interaction. This paper presents the review of low-level control methodologies of a collaborative robot to assess the current status of human–robot collaboration over the last decade. First, we discuss the classification of human–robot collaboration, architectures of systems and the complex requirements on control strategies. The most commonly used control approaches were presented and discussed. Several methods of control, reported in industrial applications, are elaborated upon with a prime focus on HR-collaborative assembly operations. Since the physical HRC is a critical control problem for the co-manipulation task, this article identifies key control challenges such as the prediction of human intentions, safety, and human-caused disturbances in motion synchronization; the proposed solutions were analyzed afterwards. The discussion at the end of the paper summarizes the features of the control systems that should be incorporated within the systematic framework to allow the execution of a robotic task from global task planning to low-level control implementation for safe and robust interactions.
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collaborative control,collaborative robots,human–robot collaboration,literature review,modeling and control methodologies
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Chat Paper

要点】:本文综述了协同机器人的低级控制方法,探讨了人机协作的安全问题和控制策略,旨在评估过去十年人-机器人协作的现状,并提出了未来控制系统的设计方向。

方法】:论文通过分类讨论人-机器人协作模式、系统架构和控制策略的复杂需求,分析和讨论了工业应用中最常用的控制方法。

实验】:本文未提供具体实验内容和数据集名称,主要进行了文献回顾和理论分析,总结了控制系统应具备的特征以确保机器人任务的安全和稳定执行。