Title :
Shapelet-based remaining useful life estimation
Author :
Malinowski, Simon ; Chebel-Morello, Brigitte ; Zerhouni, N.
Author_Institution :
FEMTO-ST Inst., Univ. de Franche-Comte, Besancon, France
Abstract :
In the Prognostics and Health Management domain, estimating the remaining useful life (RUL) of critical machinery is a challenging task. Various research topics as data acquisition and processing, fusion, diagnostics, prognostivs and decision are involved in this domain. This paper presents an approach for estimating the Remaining Useful Life (RUL) of equipments based on shapelet extraction and characterization. This approach makes use in a first step of an history of run-to-failure data to extract discriminative rul-shapelets, i.e. shapelets that are correlated with the RUL of the considered equipment. A library of rul-shapelets is extracted from this step. Then, in an online step, these rul-shapelets are compared to different test units and the ones that match these units are used to estimate their RULs. This approach is hence different from classical similarity-based approaches that matches the test units with training ones. Here, discriminative patterns from the training set are first extracted and then matched to test units. The performance of our approach is assessed on a data set coming from a previous PHM Challenge. We show that this approach is efficient to estimate the RUL compared to other approaches.
Keywords :
failure analysis; learning (artificial intelligence); machinery; maintenance engineering; production engineering computing; reliability; remaining life assessment; statistical analysis; PHM; RUL; critical machinery; data acquisition; discriminative patterns; discriminative rul-shapelet extraction; machine learning; prognostics and health management domain; run-to-failure data; shapelet characterization; shapelet-based remaining useful life estimation; similarity-based approaches; statistical techniques; test units; training set; Equations; Estimation; Feature extraction; Hidden Markov models; Monitoring; Time series analysis; Training;
Conference_Titel :
Automation Science and Engineering (CASE), 2014 IEEE International Conference on
Conference_Location :
Taipei
DOI :
10.1109/CoASE.2014.6899416