A novel framework inspired by human behavior for peg-in-hole assembly

Peng Guo, Weiyong Si, Chenguang Yang
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Abstract

Purpose The purpose of this paper is to enhance the performance of robots in peg-in-hole assembly tasks, enabling them to swiftly and robustly accomplish the task. It also focuses on the robot’s ability to generalize across assemblies with different hole sizes. Design/methodology/approach Human behavior in peg-in-hole assembly serves as inspiration, where individuals visually locate the hole firstly and then continuously adjust the peg pose based on force/torque feedback during the insertion process. This paper proposes a novel framework that integrate visual servo and adjustment based on force/torque feedback, the authors use deep neural network (DNN) and image processing techniques to determine the pose of hole, then an incremental learning approach based on a broad learning system (BLS) is used to simulate human learning ability, the number of adjustments required for insertion process is continuously reduced. Findings The author conducted experiments on visual servo, adjustment based on force/torque feedback, and the proposed framework. Visual servo inferred the pixel position and orientation of the target hole in only about 0.12 s, and the robot achieved peg insertion with 1–3 adjustments based on force/torque feedback. The success rate for peg-in-hole assembly using the proposed framework was 100%. These results proved the effectiveness of the proposed framework. Originality/value This paper proposes a framework for peg-in-hole assembly that combines visual servo and adjustment based on force/torque feedback. The assembly tasks are accomplished using DNN, image processing and BLS. To the best of the authors’ knowledge, no similar methods were found in other people’s work. Therefore, the authors believe that this work is original.
受人类行为启发的新型孔中钉装配框架
目的本文旨在提高机器人在孔中钉装配任务中的性能,使其能够快速、稳健地完成任务。设计/方法/途径人类在孔中钉装配中的行为可作为灵感来源,在插入过程中,个体首先通过视觉定位孔,然后根据力/扭矩反馈不断调整钉子姿势。作者利用深度神经网络(DNN)和图像处理技术确定孔的位置,然后使用基于广泛学习系统(BLS)的增量学习方法来模拟人类的学习能力,从而不断减少插入过程中所需的调整次数。视觉伺服仅用了约 0.12 秒就推断出了目标孔的像素位置和方向,机器人根据力/力矩反馈进行了 1-3 次调整就实现了插钉。使用建议的框架进行孔中钉装配的成功率为 100%。这些结果证明了所提框架的有效性。 原创性/价值 本文提出了一种孔中钉装配框架,该框架结合了视觉伺服和基于力/扭矩反馈的调整。装配任务通过 DNN、图像处理和 BLS 来完成。据作者所知,其他人的工作中没有发现类似的方法。因此,作者认为这项工作具有原创性。
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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