A computer vision approach to improve maintenance automation for thermal power plants lubrication systems

IF 1.8 Q3 ENGINEERING, INDUSTRIAL
Nengsheng Bao, Yuchen Fan, Chaoping Li, Alessandro Simeone
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引用次数: 0

Abstract

Purpose Lubricating oil leakage is a common issue in thermal power plant operation sites, requiring prompt equipment maintenance. The real-time detection of leakage occurrences could avoid disruptive consequences caused by the lack of timely maintenance. Currently, inspection operations are mostly carried out manually, resulting in time-consuming processes prone to health and safety hazards. To overcome such issues, this paper proposes a machine vision-based inspection system aimed at automating the oil leakage detection for improving the maintenance procedures. Design/methodology/approach The approach aims at developing a novel modular-structured automatic inspection system. The image acquisition module collects digital images along a predefined inspection path using a dual-light (i.e. ultraviolet and blue light) illumination system, deploying the fluorescence of the lubricating oil while suppressing unwanted background noise. The image processing module is designed to detect the oil leakage within the digital images minimizing detection errors. A case study is reported to validate the industrial suitability of the proposed inspection system. Findings On-site experimental results demonstrate the capabilities to complete the automatic inspection procedures of the tested industrial equipment by achieving an oil leakage detection accuracy up to 99.13%. Practical implications The proposed inspection system can be adopted in industrial context to detect lubricant leakage ensuring the equipment and the operators safety. Originality/value The proposed inspection system adopts a computer vision approach, which deploys the combination of two separate sources of light, to boost the detection capabilities, enabling the application for a variety of particularly hard-to-inspect industrial contexts.
一种提高火电厂润滑系统维护自动化的计算机视觉方法
目的:润滑油泄漏是火电厂运行现场的常见问题,需要及时对设备进行维护。对泄漏事件的实时检测,可以避免由于不及时维修而造成的破坏性后果。目前,检查操作大多是人工进行的,导致耗时的过程,容易造成健康和安全隐患。为了克服这些问题,本文提出了一种基于机器视觉的检测系统,旨在实现漏油检测的自动化,从而改善维修流程。设计/方法/方法该方法旨在开发一种新型模块化结构的自动检测系统。图像采集模块使用双光(即紫外线和蓝光)照明系统沿着预定义的检测路径收集数字图像,利用润滑油的荧光,同时抑制不必要的背景噪声。图像处理模块旨在检测数字图像内的漏油情况,最大限度地减少检测误差。报告了一个案例研究,以验证所提议的检验系统的工业适用性。现场实验结果表明,该系统能够完成被测工业设备的自动检测程序,泄漏检测精度高达99.13%。实际意义提出的检测系统可用于工业环境中润滑油泄漏的检测,确保设备和操作人员的安全。该检测系统采用计算机视觉方法,将两个独立的光源组合在一起,以提高检测能力,使其能够应用于各种特别难以检测的工业环境。
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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来源期刊
Journal of Quality in Maintenance Engineering
Journal of Quality in Maintenance Engineering Engineering-Safety, Risk, Reliability and Quality
CiteScore
4.00
自引率
13.30%
发文量
24
期刊介绍: This exciting journal looks at maintenance engineering from a positive standpoint, and clarifies its recently elevatedstatus as a highly technical, scientific, and complex field. Typical areas examined include: ■Budget and control ■Equipment management ■Maintenance information systems ■Process capability and maintenance ■Process monitoring techniques ■Reliability-based maintenance ■Replacement and life cycle costs ■TQM and maintenance
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