Abstract
Circumstance monitoring, a recently coined termed
defines the collection of data reflecting the real network working environment of in-service equipment. This ideally complete data set should reflect the elements of the electrical, mechanical, thermal, chemical and environmental stress factors present on the network. This must be distinguished from condition monitoring, which is the collection of data reflecting the status of in-service equipment. This contribution investigates the significance of considering circumstance monitoring on diagnostic interpretation of condition monitoring data.
Electrical treeing partial discharge activity from various
harmonic polluted waveforms have been recorded and subjected to a series of machine learning techniques. The outcome provides a platform for improved interpretation of the harmonic influenced partial discharge patterns. The main conclusion of this exercise suggests that any diagnostic interpretation is dependent on the immunity of condition monitoring measurements to the stress factors influencing the operational conditions. This enables the asset manager to have an improved holistic view of an asset's health.
Original language | English |
---|---|
Publication status | Published - Jun 2010 |
Event | IEEE International Symposium on Electrical Insulation 2010 (IEEE ISEI) - San Diego, USA Duration: 6 Jun 2010 → 9 Jun 2010 |
Conference
Conference | IEEE International Symposium on Electrical Insulation 2010 (IEEE ISEI) |
---|---|
City | San Diego, USA |
Period | 6/06/10 → 9/06/10 |
Keywords
- circumstance monitoring
- condition monitoring
- electrical insulation