TY - JOUR
T1 - Cluster analysis of wind turbine alarms for characterising and classifying stoppages
AU - Leahy, Kevin
AU - Gallagher, Colm
AU - O'Donovan, Peter
AU - O'Sullivan, Dominic T.J.
N1 - Publisher Copyright:
© The Institution of Engineering and Technology 2018.
PY - 2018/7/30
Y1 - 2018/7/30
N2 - Turbine alarm systems can give useful information to remote technicians on the cause of a fault or stoppage. However, alarms are generally generated at much too high a rate to gain meaningful insight from on their own, so generally require extensive domain knowledge to interpret. By grouping together commonly occurring alarm sequences, the burden of analysis can be reduced. Instead of analysing many individual alarms that occur during a stoppage, the stoppage can be linked to a commonly occurring sequence of alarms. Hence, maintenance technicians can be given information about the shared characteristics or root causes of stoppages where that particular alarm sequence appeared in the past. This research presents a methodology to identify relevant alarms from specific turbine assemblies and group together similar alarm sequences as they appear during stoppages. Batches of sequences associated with 456 different stoppages are created, and features are extracted from these batches representing the order the alarms appeared in. The batches are grouped together using clustering techniques, and evaluated using silhouette analysis and manual inspection. Results show that almost half of all stoppages can be attributed to one of 15 different clusters of alarm sequences.
AB - Turbine alarm systems can give useful information to remote technicians on the cause of a fault or stoppage. However, alarms are generally generated at much too high a rate to gain meaningful insight from on their own, so generally require extensive domain knowledge to interpret. By grouping together commonly occurring alarm sequences, the burden of analysis can be reduced. Instead of analysing many individual alarms that occur during a stoppage, the stoppage can be linked to a commonly occurring sequence of alarms. Hence, maintenance technicians can be given information about the shared characteristics or root causes of stoppages where that particular alarm sequence appeared in the past. This research presents a methodology to identify relevant alarms from specific turbine assemblies and group together similar alarm sequences as they appear during stoppages. Batches of sequences associated with 456 different stoppages are created, and features are extracted from these batches representing the order the alarms appeared in. The batches are grouped together using clustering techniques, and evaluated using silhouette analysis and manual inspection. Results show that almost half of all stoppages can be attributed to one of 15 different clusters of alarm sequences.
UR - https://www.scopus.com/pages/publications/85051200198
U2 - 10.1049/iet-rpg.2017.0422
DO - 10.1049/iet-rpg.2017.0422
M3 - Article
AN - SCOPUS:85051200198
SN - 1752-1416
VL - 12
SP - 1146
EP - 1154
JO - IET Renewable Power Generation
JF - IET Renewable Power Generation
IS - 10
ER -