Title :
Data mining framework for power quality event characterization of iron and steel plants
Author :
Guder, M. ; Salor, O. ; Cadirci, I. ; Ozkan, B. ; Altintas, E.
Author_Institution :
Comput. Eng. Dept., Middle East Tech. Univ., Ankara, Turkey
Abstract :
In this paper, a power quality (PQ) knowledge discovery and modeling framework has been developed for both temporal and spatial PQ event data collected from transformer substations supplying iron and steel (I&S) plants. PQ event characteristics of various I&S plants have been obtained based on clustering and rule discovery techniques. The data are collected by the PQ analyzers, which detect the voltage sags, swells, and interruptions according to the IEC Standard 61000-4-30. The constructed clustering strategy ensures feasible system monitoring by reducing unmanageable number of PQ events collected by the distributed PQ measurement systems into event clusters count. An abstraction for event representation has been developed, through which representative feature bags are constructed for each event to be used in the similarity decisions. The developed model has been applied satisfactorily to PQ event data obtained from 15 major transformer substations supplying heavy industry zones of the transmission system up to a five-year time period and from two additional transformer substations supplying some other industrial zones, for comparison purposes. The developed PQ data mining framework, which is used to identify PQ event distributions based on the event descriptions given in the IEEE Std. 1159, provides a useful analysis and evaluation infrastructure for taking countermeasures against the most probable event occurrences, specific to those feeders of I&S plant transformer substations.
Keywords :
IEC standards; data mining; power engineering computing; power supply quality; power transformers; steel industry; substations; I&S plant transformer substations; IEC standard 61000-4-30; IEEE Std. 1159; PQ analyzers; PQ event characteristics; PQ event data; PQ event distributions; clustering strategy; data mining framework; distributed PQ measurement systems; interruptions; iron and steel plants; power quality event characterization; power quality knowledge discovery; power quality modeling framework; rule discovery techniques; transformer substations; transmission system; voltage sags; voltage swells; Data mining; Metals industry; Monitoring; Power quality; Power system reliability; Substations; Voltage fluctuations; Data mining; metal industry; monitoring; pattern clustering; power quality (PQ); power system faults;
Conference_Titel :
Industry Applications Society Annual Meeting, 2014 IEEE
Conference_Location :
Vancouver, BC
DOI :
10.1109/IAS.2014.6978449