999 / 2019-05-08 15:19:16
Current Transformer Saturation Compensation Based on Deep Learning Approach
Current Transformer, saturation, deep neural network, pre-training, exponential decaying learning rate.
全文录用
Sopheap Key / Myongji University
Vattanak Sok / Myongji University
Sun-Woo Lee / Myongji University
Chang-Sung Ko / Myongji University
Nam-Ho Lee / Korea Electric Power Research Institute
Soon-Ryul Nam / Myongji University
Current Transformer (CT) saturation is regarded as one of the major problems in power system field due to the reason that it negatively impacts the operation of relays, resulting in malfunction protective devices. Recently, deep learning methods have been commonly implemented in most academic fields as the reason of significant generated results.
This paper presents a compensation method for saturated waveform by applying deep learning to the aforementioned problem. To achieve a good network structure, pre-training and fine-tuning mechanism have been implemented because it shows a great performance as it well initializes the optimal weight in the pre-training stage. Finally, a training model is evaluated by the newly-introduced conditions, in which has never been experienced during the training stage.
重要日期
  • 会议日期

    10月21日

    2019

    10月24日

    2019

  • 10月13日 2019

    摘要录用通知日期

  • 10月13日 2019

    初稿截稿日期

  • 10月14日 2019

    初稿录用通知日期

  • 10月24日 2019

    注册截止日期

  • 10月29日 2019

    终稿截稿日期

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