利用机器学习检测维修中的漏气故障

IF 1.8 Q3 ENGINEERING, INDUSTRIAL
Neveen Barakat, Liana Hajeir, Sarah Alattal, Zain Hussein, Mahmoud Awad
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引用次数: 0

摘要

目的 本文旨在为气动缸开发基于状态的维护(CBM)方案。CBM 方案将检测两种常见的漏气故障模式,并识别漏气/故障气缸。设计/方法/途径有效实施维护对于降低运营成本、提高生产率并同时提升质量性能非常重要。基于状态的监测是一种有效的维护方案,根据实时或每隔一定时间监测的设备状态触发维护。气动空气系统通常用于包装、分拣和为气动工具提供动力等许多行业。气动气缸的常见故障模式是漏气,这对于有许多连接的复杂系统来说很难检测。所提出的方法包括使用霍尔效应传感器监测气缸内活塞的冲程速度曲线。从速度曲线中提取统计特征,用于开发故障检测机器学习模型。研究结果基于收集到的有限数据,集合机器学习算法的准确率为 88.4%。实际意义及早检测漏气可提高包装茶包的质量,并可节省维修时间和减少能源浪费。据作者所知,本文是首次提出利用活塞速度进行气动系统漏气检测的 CBM 方法。目前的大多数(如果不是全部)检测方法都依赖于昂贵的设备,如红外线或超声波传感器。本文还填补了使用 CBM 的经济合理性方面的研究空白。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Air leaks fault detection in maintenance using machine learning
PurposeThe objective of this paper is to develop a condition-based maintenance (CBM) scheme for pneumatic cylinders. The CBM scheme will detect two common types of air leaking failure modes and identify the leaky/faulty cylinder. The successful implementation of the proposed scheme will reduce energy consumption, scrap and rework, and time to repair.Design/methodology/approachEffective implementation of maintenance is important to reduce operation cost, improve productivity and enhance quality performance at the same time. Condition-based monitoring is an effective maintenance scheme where maintenance is triggered based on the condition of the equipment monitored either real time or at certain intervals. Pneumatic air systems are commonly used in many industries for packaging, sorting and powering air tools among others. A common failure mode of pneumatic cylinders is air leaks which is difficult to detect for complex systems with many connections. The proposed method consists of monitoring the stroke speed profile of the piston inside the pneumatic cylinder using hall effect sensors. Statistical features are extracted from the speed profiles and used to develop a fault detection machine learning model. The proposed method is demonstrated using a real-life case of tea packaging machines.FindingsBased on the limited data collected, the ensemble machine learning algorithm resulted in 88.4% accuracy. The algorithm can detect failures as soon as they occur based on majority vote rule of three machine learning models.Practical implicationsEarly air leak detection will improve quality of packaged tea bags and provide annual savings due to time to repair and energy waste reduction. The average annual estimated savings due to the implementation of the new CBM method is $229,200 with a payback period of less than two years.Originality/valueTo the best of the authors’ knowledge, this paper is the first in terms of proposing a CBM for pneumatic systems air leaks using piston speed. Majority, if not all, current detection methods rely on expensive equipment such as infrared or ultrasonic sensors. This paper also contributes to the research gap of economic justification of using CBM.
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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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