Digital Twin and Deep Reinforcement Learning-Driven Robotic Automation System for Confined Workspaces: A Nozzle Dam Replacement Case Study in Nuclear Power Plants

IF 5.3 3区 工程技术 Q1 ENGINEERING, MANUFACTURING
Su-Young Park, Cheonghwa Lee, Suhwan Jeong, Junghyuk Lee, Dohyeon Kim, Youhyun Jang, Woojin Seol, Hyungjung Kim, Sung-Hoon Ahn
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Abstract

Robotic automation has emerged as a leading solution for replacing human workers in dirty, dangerous, and demanding industries to ensure the safety of human workers. However, practical implementation of this technology remains limited, requiring substantial effort and costs. This study addresses the challenges specific to nuclear power plants, characterized by hazardous environments and physically demanding tasks such as nozzle dam replacement in confined workspaces. We propose a digital twin and deep-reinforcement-learning-driven robotic automation system with an autonomous mobile manipulator. The study follows a four-step process. First, we establish a simplified testbed for a nozzle dam replacement task and implement a high-fidelity digital twin model of the real-world testbed. Second, we employ a hybrid visual perception system that combines deep object pose estimation and an iterative closest point algorithm to enhance the accuracy of the six-dimensional pose estimation. Third, we use a deep-reinforcement-learning method, particularly the proximal policy optimization algorithm with inverse reachability map, and a centroidal waypoint strategy, to improve the controllability of an autonomous mobile manipulator. Finally, we conduct pre-performed simulations of the nozzle dam replacement in the digital twin and evaluate the system on a robot in the real-world testbed. The nozzle dam replacement with precise object pose estimation, navigation, target object grasping, and collision-free motion generation was successful. The robotic automation system achieved a \(92.0\%\) success rate in the digital twin. Our proposed method can improve the efficiency and reliability of robotic automation systems for extreme workspaces and other perilous environments.

Abstract Image

用于密闭工作空间的数字孪生和深度强化学习驱动的机器人自动化系统:核电站喷嘴坝更换案例研究
在肮脏、危险和要求苛刻的行业中,机器人自动化已成为替代人类工人的主要解决方案,以确保人类工人的安全。然而,这项技术的实际应用仍然有限,需要大量的努力和成本。本研究针对核电站所面临的特殊挑战,其特点是危险的环境和体力要求高的任务,如在狭窄的工作空间内更换喷嘴坝。我们提出了一种数字孪生和深度强化学习驱动的机器人自动化系统,该系统带有一个自主移动机械手。这项研究分为四个步骤。首先,我们建立了一个简化的喷嘴水坝更换任务测试平台,并实现了真实世界测试平台的高保真数字孪生模型。其次,我们采用了一种混合视觉感知系统,该系统结合了深度物体姿态估计和迭代最近点算法,以提高六维姿态估计的准确性。第三,我们采用深度强化学习方法,特别是带有反可达性图的近程策略优化算法和向心航点策略,来提高自主移动机械手的可控性。最后,我们在数字孪生中对喷嘴水坝更换进行了预演模拟,并在实际测试平台的机器人上对系统进行了评估。通过精确的物体姿态估计、导航、目标物体抓取和无碰撞运动生成,喷嘴水坝更换获得了成功。机器人自动化系统在数字孪生中的成功率达到了92.0%。我们提出的方法可以提高机器人自动化系统在极端工作空间和其他危险环境中的效率和可靠性。
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来源期刊
CiteScore
10.30
自引率
9.50%
发文量
65
审稿时长
5.3 months
期刊介绍: Green Technology aspects of precision engineering and manufacturing are becoming ever more important in current and future technologies. New knowledge in this field will aid in the advancement of various technologies that are needed to gain industrial competitiveness. To this end IJPEM - Green Technology aims to disseminate relevant developments and applied research works of high quality to the international community through efficient and rapid publication. IJPEM - Green Technology covers novel research contributions in all aspects of "Green" precision engineering and manufacturing.
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