Time series methods applied to failure prediction and detection
Research output: Contribution to journal › Article
Colleges, School and Institutes
Point mechanisms are critical track elements on railway networks. A failure in a single point mechanism causes delays, increased railway operating costs and even fatal accidents. This paper describes the development of a new robust and automatic algorithm for failure detection of point mechanisms. Failures are detected by comparing what can be considered the 'expected' form of signals predicted from historical records of point mechanism operation with those actually measured. The expected shape is a forecast from a combination of a VARMA (vector auto-regressive moving-average) model and a harmonic regression model. The algorithm has been tested on a large dataset taken from an in-service point mechanism at Abbotswood Junction in the UK. The results show that the faults can be predicted and detected. (C) 2010 Elsevier Ltd. All rights reserved.
|Number of pages||6|
|Journal||Reliability Engineering and System Safety|
|Publication status||Published - 1 Jun 2010|
- Safety, Failure diagnostic, Railway engineering, Maintenance