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Degradation curves integration in physics-based models: Towards the predictive maintenance of industrial robots

机译:降解曲线在基于物理的模型中的集成:迈向工业机器人的预测维护

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摘要

Predictive maintenance has been proposed to maximize the overall plant availability of modem manufacturing systems. To this end, research has been conducted mainly on data-driven prognostic techniques for machinery equipment individual components. However, the lack of historical data together with the intricate design of industrial machines, e.g. robots, stimulate the use of advanced methods exploiting simulation capabilities. This paper aims to address this challenge by introducing a generic framework for the enhancement of advanced physics-based models with degradation curves. The creation of a robot's simulation model and its enrichment with data from the degradation curves of the robot's components is presented. Following, the extraction of information from degradation curves during the simulation of the robot's dynamic behaviour is addressed. The Digital Twin concept is employed to monitor the health status of the robot and ensure the convergence of the simulated to the actual robot behaviour. The output of the simulation can enable to estimate the future behaviour of the robot and make predictions for the quality of the products to be produced, as well as to estimate the robot's Remaining Useful Life. The proposed approach is applied in a case study coming from the white goods industry, where it is investigated whether the robot will experience some failure within the next 18 months.
机译:提出了预测性维护,以最大限度地提高调制解调器制造系统的整体植物可用性。为此,研究主要是关于机械设备各个组件的数据驱动的预后技术。然而,缺乏历史数据以及工业机器的复杂设计,例如,机器人,刺激使用先进方法利用模拟能力。本文旨在通过引入增强基于先进物理的模型的通用框架来解决这一挑战。提出了创建机器人的模拟模型及其与来自机器人组件的降级曲线的数据的丰富。遵循,解决了在机器人的动态行为的模拟期间从劣化曲线提取信息。数字双胞胎概念用于监测机器人的健康状况,并确保模拟到实际机器人行为的收敛性。模拟的输出可以使估计机器人的未来行为,并对要生产的产品的质量进行预测,以及估计机器人的剩余使用寿命。拟议的方法适用于来自白品行业的案例研究,在那里调查机器人是否会在未来18个月内遇到一些故障。

著录项

  • 来源
    《Robotics and Computer-Integrated Manufacturing》 |2021年第10期|102177.1-102177.16|共16页
  • 作者单位

    Laboratory for Manufacturing Systems and Automation Department of Mechanical Engineering and Aeronautics University of Patras Patras Greece;

    Laboratory for Manufacturing Systems and Automation Department of Mechanical Engineering and Aeronautics University of Patras Patras Greece;

    Laboratory for Manufacturing Systems and Automation Department of Mechanical Engineering and Aeronautics University of Patras Patras Greece;

    Laboratory for Manufacturing Systems and Automation Department of Mechanical Engineering and Aeronautics University of Patras Patras Greece;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Enriched physics-based simulation; Predictive maintenance; Digital twin; Degradation curve integration; Deterioration profile;

    机译:富集的基于物理的模拟;预测维护;数字双胞胎;降级曲线集成;恶化剖面;

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