4.8 Article

Intelligent Early Warning of Power System Dynamic Insecurity Risk: Toward Optimal Accuracy-Earliness Tradeoff

Journal

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
Volume 13, Issue 5, Pages 2544-2554

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2017.2676879

Keywords

Dynamic insecurity risk; early warning; extreme learning machine (ELM); intelligent system (IS); multiobjective programming (MOP)

Funding

  1. China Southern Power Grid Company [WYKJ00000027]
  2. Faculty of Engineering and Information Technologies, University of Sydney
  3. Australian Postgraduate Award
  4. Nanyang Technological University, Singapore

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Dynamic insecurity risk of a power system has been increasingly concerned due to the integration of stochastic renewable power sources (such as wind and solar power) and complicated demand response. In this paper, an intelligent early-warning system to achieve reliable online detection of risky operating conditions is proposed. The proposed intelligent system (IS) consists of an ensemble learning model based on extreme learning machine (ELM) and a decision-making process under a multiobjective programming framework. Taking an ensemble form, the randomness existing in individual ELM training is generalized and reliable classification results can be obtained. The decision making is designed for ELM ensemble whose parameters are optimized to search for the optimal tradeoff between the warning accuracy and the warning earliness of the proposed IS. The compromise solution turns out to significantly speed up the overall computation with an acceptable sacrifice in the accuracy (e.g., from 100% to 99.9%). More importantly, the proposed IS can provide multiple and switchable performances to the operators in order to satisfy different local dynamic security assessment requirements.

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