Title :
Unsupervised event extraction within substations using rough classification
Author :
Hor, Ching-Lai ; Crossley, Peter A.
Author_Institution :
Center for Renewable Energy Syst. Technol., Loughborough
Abstract :
Microprocessor technology, broader bandwidth communications, and cheaper storage medium have greatly improved the capability to process, transmit, and store the large quantities of data available in a substation. Intelligent electronic devices (IEDs) normally acquire some of these data as raw facts, which then need to be interpreted in order to extract the useful information that engineers and operators require. Human interpretation is becoming increasingly impractical and the effect can hamper, or even prevent, an operator responding correctly to an emergency. This paper explains how a rough classification technique enhances the capabilities of substation informatics and provides valuable insight into the information contained in a substation dataset. This paper emphasizes postfault analysis of the protection and breaker responses in a substation. It is designed to help the operator understand overwhelming alarm messages or longer term to help engineers analyze what went wrong. The formulated methodology is generic and applicable to any type of transmission and distribution substation
Keywords :
data acquisition; rough set theory; substation automation; substation protection; distribution substation; intelligent electronic devices; rough classification technique; substation breaker responses; substation protection; transmission substation; unsupervised event extraction; Bandwidth; Communications technology; Data engineering; Data mining; Humans; Power system protection; Protective relaying; Remote monitoring; Renewable energy resources; Substation protection; Discernibility matrix; intelligent electronic devices (IEDs); knowledge extraction; rough sets; unsupervised event extraction;
Journal_Title :
Power Delivery, IEEE Transactions on
DOI :
10.1109/TPWRD.2006.874670