Visible to the public Synchrophasor Data Baselining and Mining for Online Monitoring of Dynamic Security Limits

TitleSynchrophasor Data Baselining and Mining for Online Monitoring of Dynamic Security Limits
Publication TypeJournal Article
Year of Publication2014
AuthorsKaci, A., Kamwa, I., Dessaint, L.A., Guillon, S.
JournalPower Systems, IEEE Transactions on
Volume29
Pagination2681-2695
Date PublishedNov
ISSN0885-8950
Keywordsangle shifts, Baselining, clustering, critical interfaces, data mining, dynamic security assessment (DSA), dynamic security limits, look-up tables, medoid clustering, Monitoring, network backbone buses, nomograms, online monitoring, PAM clustering, partitioning around medoids (PAM), pattern clustering, phase-angle differences, phasor measurement, phasor measurement unit (PMU), phasor measurement units, power engineering computing, power system reliability, power system security, power system stability, power transfer measurement, random forest (RF), SBSA, SCADA measurements, SCADA systems, seasonal security margins, security, security monitoring, Stability criteria, synchrophasor, synchrophasor data baselining, synchrophasor-based situational awareness, system interfaces, system reliability, system stress, system visibility, Table lookup
Abstract

When the system is in normal state, actual SCADA measurements of power transfers across critical interfaces are continuously compared with limits determined offline and stored in look-up tables or nomograms in order to assess whether the network is secure or insecure and inform the dispatcher to take preventive action in the latter case. However, synchrophasors could change this paradigm by enabling new features, the phase-angle differences, which are well-known measures of system stress, with the added potential to increase system visibility. The paper develops a systematic approach to baseline the phase-angles versus actual transfer limits across system interfaces and enable synchrophasor-based situational awareness (SBSA). Statistical methods are first used to determine seasonal exceedance levels of angle shifts that can allow real-time scoring and detection of atypical conditions. Next, key buses suitable for SBSA are identified using correlation and partitioning around medoid (PAM) clustering. It is shown that angle shifts of this subset of 15% of the network backbone buses can be effectively used as features in ensemble decision tree-based forecasting of seasonal security margins across critical interfaces.

URLhttp://ieeexplore.ieee.org/document/6782395/
DOI10.1109/TPWRS.2014.2312418
Citation Key6782395