DocumentCode
1255889
Title
Self-Tuning Routine Alarm Analysis of Vibration Signals in Steam Turbine Generators
Author
Costello, Jason J A ; West, Graeme M. ; McArthur, Stephen D J ; Campbell, Graeme
Author_Institution
Dept. ofInstitute for Energy & Environ., Univ. of Strathclyde, Glasgow, UK
Volume
61
Issue
3
fYear
2012
Firstpage
731
Lastpage
740
Abstract
This paper presents a self-tuning framework for the diagnosis of routine alarms in steam turbine generators utilizing a combination of inductive machine learning and knowledge-based heuristics. The techniques provide a novel basis for initializing and updating time series feature extraction parameters used in the automated decision support of vibration events due to operational transients. The data-driven nature of the algorithms allows for machine-specific characteristics of individual turbines to be learned and reasoned about. The paper provides a case study illustrating the routine alarm paradigm, and the applicability of systems using self-tuning techniques. The approaches discussed throughout are presented to provide useful diagnosis tools for the reliability and maintenance analysis of steam turbine generators.
Keywords
feature extraction; learning (artificial intelligence); reliability; steam turbines; time series; turbogenerators; automated decision support; feature extraction parameters; inductive machine learning; knowledge-based heuristics; maintenance analysis; operational transients; reliability; routine alarm paradigm; self-tuning framework; self-tuning routine alarm analysis; steam turbine generators; time series; vibration events; vibration signals; Generators; Knowledge based systems; Time series analysis; Transient analysis; Tuning; Turbines; Vibrations; Condition monitoring; knowledge-based systems; nuclear power generation; self-tuning; time series analysis;
fLanguage
English
Journal_Title
Reliability, IEEE Transactions on
Publisher
ieee
ISSN
0018-9529
Type
jour
DOI
10.1109/TR.2012.2209257
Filename
6255816
Link To Document