Intelligent condition-based prediction of machinery reliability

The ability to forecast machinery failure is vital to reducing maintenance costs, operation downtime and safety hazards. Recent advances in condition monitoring technologies have given rise to a number of prognostic models that attempt to forecast machinery health based on condition data. This paper...

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Veröffentlicht in:Mechanical systems and signal processing 2009-07, Vol.23 (5), p.1600-1614
Hauptverfasser: Heng, Aiwina, Tan, Andy C.C., Mathew, Joseph, Montgomery, Neil, Banjevic, Dragan, Jardine, Andrew K.S.
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container_end_page 1614
container_issue 5
container_start_page 1600
container_title Mechanical systems and signal processing
container_volume 23
creator Heng, Aiwina
Tan, Andy C.C.
Mathew, Joseph
Montgomery, Neil
Banjevic, Dragan
Jardine, Andrew K.S.
description The ability to forecast machinery failure is vital to reducing maintenance costs, operation downtime and safety hazards. Recent advances in condition monitoring technologies have given rise to a number of prognostic models that attempt to forecast machinery health based on condition data. This paper presents a novel approach for incorporating population characteristics information and suspended condition trending data of historical units into prognosis. The population characteristics information extracted from statistical failure distribution enables longer-range prognosis. The accurate modelling of suspended data is also found to be of great importance, since in practice machines are rarely allowed to run to failure and hence data are commonly suspended. The proposed model consists of a feed-forward neural network whose training targets are asset survival probabilities estimated using a variation of the Kaplan–Meier estimator and a degradation-based failure probability density function (PDF) estimator. The trained network is capable of estimating the future survival probabilities of an operating asset when a series of condition indices are inputted. The output survival probabilities collectively form an estimated survival curve. Pump vibration data were used for model validation. The proposed model was compared with two similar models that neglect suspended data, as well as with a conventional time series prediction model. The results support our hypothesis that the proposed model can predict more accurately and further ahead than similar methods that do not include population characteristics and/or suspended data in prognosis.
doi_str_mv 10.1016/j.ymssp.2008.12.006
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source Elsevier ScienceDirect Journals
subjects Applied sciences
Artificial neural networks
Condition monitoring
Condition-based maintenance
Exact sciences and technology
Fracture mechanics (crack, fatigue, damage...)
Fundamental areas of phenomenology (including applications)
Industrial metrology. Testing
Mechanical engineering. Machine design
Physics
Prognostics
Reliability
Solid mechanics
Structural and continuum mechanics
Suspended data
title Intelligent condition-based prediction of machinery reliability
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