Two-stage multi-level equipment grey state prediction model and application

Author:

Li Qiang,Liu Sifeng,Javed Saad AhmedORCID

Abstract

PurposeThe purpose of this paper is to develop a new approach for equipment states prediction and provide a method for early warning of possible trouble states.Design/methodology/approachA new two-stage multi-level equipment state classification system was proposed to forecast equipment operation status. The first stage involves predicting the equipment's normal state, and the second stage involves forecasting the equipment's abnormal status. Meanwhile, the equipment state classification is done according to the manufacturing company's internal specifications to define various equipment statuses. Then, the trouble state and waiting state were predicted by grey state prediction model.FindingsA new two-stage multi-level equipment status classification system and a new approach for equipment states prediction has been proposed in this paper.Practical implicationsThe application on a real-world case shown that the model is very effective for predicting equipment state. The equipment's major failure risk can be reduced significantly.Originality/valueThe proposed approach can help improve the effective prediction of the equipment's various operation states and reduce the equipment's major failure risk and thus maintenance costs.

Publisher

Emerald

Reference28 articles.

1. Automatic diagnostics and prognostics of energy conversion processes via knowledge based systems;Energy,2004

2. Application of relevance vector machine and logistic regression for machine degradation assessment;Mechanical Systems and Signal Processing,2010

3. Decomposition of symptom observation matrix and grey forecasting in vibration condition monitoring of machines;International Journal of Applied Mathematics and Computer Science,2008

4. GM(1, 1) in bankruptcy forecasting;Grey Systems: Theory and Application,2013

5. Hidden semi-Markov model based methodology for multi-sensor equipment health diagnosis and prognosis;European Journal of Operational, Research,2007

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