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Issue No.04 - July-Aug. (2013 vol.28)
pp: 60-66
Zhao Yang Dong , University of Sydney
Yan Xu , University of Newcastle
Pei Zhang , Accenture
Kit Po Wong , University of Western Australia
ABSTRACT
How can an intelligent system (IS) improve electric power system real-time stability assessment? Here, some techniques are described that address critical issues and offer solutions surrounding IS development and implementation.
INDEX TERMS
Power system reliability, Real-time systems, Electric power, Stability analysis,intelligent systems, electric power system, stability assessment
CITATION
Zhao Yang Dong, Yan Xu, Pei Zhang, Kit Po Wong, "Using IS to Assess an Electric Power System's Real-Time Stability", IEEE Intelligent Systems, vol.28, no. 4, pp. 60-66, July-Aug. 2013, doi:10.1109/MIS.2011.41
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