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A novel diagnostic and prognostic framework for incipient fault detection and remaining service life prediction with application to industrial rotating machines

机译:一种新的初期故障检测诊断和预测框架,剩余使用寿命预测与工业旋转机器的应用

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摘要

Data-driven machine health monitoring systems (MHMS) have been widely investigated and applied in the field of machine diagnostics and prognostics with the aim of realizing predictive maintenance. It involves using data to identify early warnings that indicate potential system malfunctioning, predict when system failure might occur, and pre-emptively service equipment to avoid unscheduled downtime. One of the most critical aspects of data-driven MHMS is the provision of incipient fault diagnosis and prognosis regarding the system's future working conditions. In this work, a novel diagnostic and prognostic framework is proposed to detect incipient faults and estimate remaining service life (RSL) of rotating machinery. In the proposed framework, a novel canonical variate analysis (CVA)-based monitoring index, which takes into account the distinctions between past and future canonical variables, is employed for carrying out incipient fault diagnosis. By incorporating the exponentially weighted moving average (EWMA) technique, a novel fault identification approach based on Pearson correlation analysis is presented and utilized to identify the influential variables that are most likely associated with the fault. Moreover, an enhanced metabolism grey forecasting model (MGFM) approach is developed for RSL prediction. Particle filter (PF) is employed to modify the traditional grey forecasting model for improving its prediction performance. The enhanced MGFM approach is designed to address two generic issues namely dealing with scarce data and quantifying the uncertainty of RSL in a probabilistic form, which are often encountered in the prognostics of safety-critical and complex assets. The proposed CVA-based index is validated on slowly evolving faults in a continuous stirred tank reactor (CSTR) system, and the effectiveness of the proposed integrated diagnostic and prognostic method for the monitoring of rotating machinery is demonstrated for slow involving faults in two case studies of an operational industrial centrifugal pump and one case study of an operational centrifugal compressor. (C) 2019 Elsevier B.V. All rights reserved.
机译:数据驱动的机器健康监测系统(MHM)已被广泛调查和应用于机器诊断和预测领域,目的是实现预测性维护。它涉及使用数据来识别表明潜在系统故障的早期警告,预测系统故障时可能发生,并且先发制人的服务设备以避免未划分的停机时间。数据驱动MHM的最关键方面之一是提供有关系统未来工作条件的初期故障诊断和预后。在这项工作中,提出了一种新的诊断和预后框架来检测旋转机械的初始故障和估计剩余的使用寿命(RSL)。在拟议的框架中,基于新的规范变化分析(CVA)的监测指数,其考虑过去和未来的规范变量之间的区别,用于进行初期的故障诊断。通过掺入指数加权的移动平均(EWMA)技术,提出并利用了基于Pearson相关分析的新型故障识别方法,以识别最可能与故障相关的有影响变量。此外,为RSL预测开发了增强的代谢灰度预测模型(MGFM)方法。采用粒子滤波器(PF)来修改传统的灰色预测模型以提高其预测性能。增强的MGFM方法旨在解决两个通用问题,即处理稀缺数据并量化RSL以概率形式的不确定性,这些形式通常遇到安全关键和复杂资产的预后。在连续搅拌釜反应器(CSTR)系统中缓慢不断变化的故障验证了所提出的基于CVA的指标,并对两种案例研究中的累计断层进行了缓慢的涉及故障,证明了所提出的综合诊断和预后方法的有效性作业工业离心泵的运营型离心泵和操作离心压缩机的一种案例研究。 (c)2019年Elsevier B.V.保留所有权利。

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