614 / 2019-03-17 19:43:26
Study on Online Recognition Method of Cascading Trip-off Evaluation of the Renewable Energy Based on Machine Learning
support vector machine,trip-off of the renewable energy,online Recognition,cascading failure
Draft Rejected
Machine learning has been extensively studied in power system safety and stability evaluation. Considering that there are many factors affecting cascading trip-off of the renewable energy, it has both accuracy and speed to identify cascading tripping of the renewable energy by machine learning。A method of cascading trip-off evaluation based on support vector machine considering conservatism is proposed. The method combines causal analysis and statistical theory to extract key feature quantities, and establishes the mapping relationship between system feature quantities and trip-off by training, identifies cascading tripping of the renewable energy under pre-faults, and updates the prediction model rolling with simulation results to avoid the occurrence of misjudgement to a great extent.The validity of the proposed method is verified by an example of actual power system, which shows that the proposed method is practical.
Important Date
  • Conference Date

    Oct 21

    2019

    to

    Oct 24

    2019

  • Oct 13 2019

    Abstract Notification of Acceptance

  • Oct 13 2019

    Draft paper submission deadline

  • Oct 14 2019

    Draft Paper Acceptance Notification

  • Oct 24 2019

    Registration deadline

  • Oct 29 2019

    Final Paper Deadline

Organized By
Xi'an Jiaotong University
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