Role of sensors in the paradigm of industry 4.0 and IIoT

Q3 Engineering Telfor Journal Pub Date : 2022-01-01 DOI:10.5937/telfor2202091p
A. Porokhnya, Ilia Yakimenko
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Abstract

The purpose of this article is to review new trends in monitoring the condition of oil on all factory area processes. New solutions are being introduced into this industry with new advantages in the development of artificial intelligence, as well as machine learning and sensor technologies, which are applicable for data-based maintenance. They are called predictive maintenance. This paradigm is going to replace the old one. It changes the traditional routine preventive maintenance scheme and provides a deep understanding of the equipment performance [1]. Monitoring and checkout of conditions are necessary to maintain in a real-time environment because on-line control of equipment status can put down an operating cost, by eliminating the need for equipment outage for everyday diagnostics. The analysis based on oil samples is an effective tribotechnical systems approach for early diagnosis of failures, as it contains valuable information about the process of degradation of oil and the state of tribotechnical pairs [2]. But there are some problems with this method. The first is the way of oil sampling. There are lots of mistakes that may be made during the oil sampling process, and they can affect the results. The second is a delivery to laboratory which complicates the diagnostic process. That's why we cannot say this approach is an on-line method of diagnostics. For the better prognosis of pending machinery failure one needs to know a real-time correlation between size, shapes, and concentration of wear debris parts [3].
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传感器在工业4.0和工业物联网范式中的作用
本文的目的是回顾在所有工厂区域过程中监测油品状况的新趋势。新的解决方案正在引入这个行业,在人工智能以及机器学习和传感器技术的发展方面具有新的优势,这些技术适用于基于数据的维护。它们被称为预测性维护。这种模式将取代旧的模式。它改变了传统的例行预防性维护方案,提供了对设备性能的深入了解。在实时环境中,监测和检查条件是必要的,因为设备状态的在线控制可以降低运营成本,消除了设备停机进行日常诊断的需要。基于油样的分析是早期诊断故障的有效摩擦系统方法,因为它包含有关油降解过程和摩擦副状态的有价值信息。但是这种方法存在一些问题。首先是采油方式。在采油过程中可能会出现很多错误,从而影响采油结果。第二种是送到实验室,这使诊断过程变得复杂。这就是为什么我们不能说这种方法是一种在线诊断方法。为了更好地预测即将发生的机械故障,需要了解磨损碎片零件[3]的尺寸、形状和集中程度之间的实时相关性。
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
Telfor Journal
Telfor Journal Engineering-Media Technology
CiteScore
1.50
自引率
0.00%
发文量
8
审稿时长
23 weeks
期刊介绍: The TELFOR Journal is an open access international scientific journal publishing improved and extended versions of the selected best papers initially reported at the annual TELFOR Conference (www.telfor.rs), papers invited by the Editorial Board, and papers submitted by authors themselves for publishing. All papers are subject to reviewing. The TELFOR Journal is published in the English language, with both electronic and printed versions. Being an IEEE co-supported publication, it will follow all the IEEE rules and procedures. The TELFOR Journal covers all the essential branches of modern telecommunications and information technology: Telecommunications Policy and Services, Telecommunications Networks, Radio Communications, Communications Systems, Signal Processing, Optical Communications, Applied Electromagnetics, Applied Electronics, Multimedia, Software Tools and Applications, as well as other fields related to ICT. This large spectrum of topics accounts for the rapid convergence through telecommunications of the underlying technologies towards the information and knowledge society. The Journal provides a medium for exchanging research results and technological achievements accomplished by the scientific community from academia and industry.
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