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Automated Machine Health Monitoring at an Expert Level

机译:专家级的自动化机器健康监测

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Abstract Machine health condition monitoring is evidently a crucial challenge nowadays. Unscheduled breakdowns increase operating costs due to repairs and production losses. Scheduled maintenance implies taking the risk of replacing fully operational components. Human expertise is a solution for an outstanding expertise but at a high cost and for a limited quantity of data only, the analysis being time-consuming. Industry 4.0 and digital factory offer many alternatives to human monitoring. Time, cost and skills are the real stakes. The key point is how to automate each part of the process knowing that each one is valuable. Leaving aside scheduled maintenance, this paper copes with condition-based preventive maintenance and focuses on one fundamental step: the signal processing. After a brief overview of this specific area in which numerous technologies already exist, this paper argues for an automated signal processing at an expert level. The objective is to monitor a system over days, weeks, or years with as great accuracy as a human expert, and even better in regard to data investigation and analysis efficiency. After a data validation step most often ignored, any multimodal signal (vibration, current, acoustic, …) is processed over its entire frequency band in view of identifying all harmonic families and their sidebands. Sophisticated processing such as filtering and demodulation creates relevant features describing the fine complex structures of each spectrum. A time–frequency feature tracking constructs trends over time to not only detect a failure but also to characterize and localize it. Such an automated expert-level processing is a way to raise alarms with a reduced false alarm probability.
机译:摘要 机器健康状态监测是当今面临的严峻挑战。由于维修和生产损失,计划外故障会增加运营成本。定期维护意味着冒着更换完全运行的组件的风险。人类专业知识是针对杰出专业知识的解决方案,但成本高昂,并且仅针对有限的数据量,分析非常耗时。工业 4.0 和数字化工厂为人工监控提供了许多替代方案。时间、成本和技能才是真正的利害关系。关键是如何自动化流程的每个部分,知道每个部分都是有价值的。撇开定期维护不谈,本文将处理基于状态的预防性维护,并重点关注一个基本步骤:信号处理。在简要概述了这个已经存在众多技术的特定领域之后,本文主张在专家层面上进行自动信号处理。目标是在数天、数周或数年内以与人类专家一样高的准确性监控系统,甚至在数据调查和分析效率方面做得更好。在数据验证步骤之后,任何多模态信号(振动、电流、声学等)都会在其整个频带上进行处理,以识别所有谐波族及其边带。滤波和解调等复杂处理可创建描述每个频谱的精细复杂结构的相关特征。时频特征跟踪构建随时间变化的趋势,不仅可以检测故障,还可以对其进行表征和定位。这种自动化的专家级处理是一种以降低误报概率发出警报的方法。

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