Reinforcement Learning for Collaborative Robots Pick-and-Place Applications: A Case Study

Natanael Magno Gomes, F. N. Martins, José Lima, H. Wörtche
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引用次数: 8

Abstract

The number of applications in which industrial robots share their working environment with people is increasing. Robots appropriate for such applications are equipped with safety systems according to ISO/TS 15066:2016 and are often referred to as collaborative robots (cobots). Due to the nature of human-robot collaboration, the working environment of cobots is subjected to unforeseeable modifications caused by people. Vision systems are often used to increase the adaptability of cobots, but they usually require knowledge of the objects to be manipulated. The application of machine learning techniques can increase the flexibility by enabling the control system of a cobot to continuously learn and adapt to unexpected changes in the working environment. In this paper we address this issue by investigating the use of Reinforcement Learning (RL) to control a cobot to perform pick-and-place tasks. We present the implementation of a control system that can adapt to changes in position and enables a cobot to grasp objects which were not part of the training. Our proposed system uses deep Q-learning to process color and depth images and generates an ϵ-greedy policy to define robot actions. The Q-values are estimated using Convolution Neural Networks (CNNs) based on pre-trained models for feature extraction. To reduce training time, we implement a simulation environment to first train the RL agent, then we apply the resulting system on a real cobot. System performance is compared when using the pre-trained CNN models ResNext, DenseNet, MobileNet, and MNASNet. Simulation and experimental results validate the proposed approach and show that our system reaches a grasping success rate of 89.9% when manipulating a never-seen object operating with the pre-trained CNN model MobileNet.
协作机器人拾取和放置应用的强化学习:一个案例研究
工业机器人与人类共享工作环境的应用越来越多。适用于此类应用的机器人配备了符合ISO/TS 15066:2016的安全系统,通常被称为协作机器人(cobots)。由于人机协作的性质,协作机器人的工作环境会受到人类不可预见的改变。视觉系统通常用于提高协作机器人的适应性,但它们通常需要了解要操作的对象。机器学习技术的应用可以使协作机器人的控制系统不断学习和适应工作环境的意外变化,从而增加灵活性。在本文中,我们通过研究使用强化学习(RL)来控制协作机器人执行拾取任务来解决这个问题。我们提出了一种控制系统的实现,它可以适应位置的变化,并使协作机器人能够抓住不属于训练范围的物体。我们提出的系统使用深度q学习来处理颜色和深度图像,并生成ϵ-greedy策略来定义机器人的动作。基于预训练的特征提取模型,使用卷积神经网络(cnn)估计q值。为了减少训练时间,我们实现了一个模拟环境来首先训练RL代理,然后我们将得到的系统应用到一个真实的协作机器人上。在使用预训练的CNN模型ResNext、DenseNet、MobileNet和MNASNet时,比较了系统性能。仿真和实验结果验证了所提出的方法,并表明我们的系统在使用预训练的CNN模型MobileNet操作从未见过的物体时达到了89.9%的抓取成功率。
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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