29 / 2024-05-31 18:55:25
Comparative Study of Imbalanced Sample Handling Methods in Nuclear Power Plants
Generative Adversarial Networks; Copula Entropy; Imbalanced Sample Handling; Nuclear Power Plants
Abstract Accepted
Xin Ai / Harbin Engineering University
Yongkuo Liu / Harbin Engineering University
Longfei Shan / harbin engineering university
Gao Jiarong / Harbin Engineering University
Imbalanced sample distribution, with an abundance of normal samples and a scarcity of fault samples, along with uneven distribution among different types of faults, poses a challenge in analyzing operational data from nuclear power plants. Various methods have been proposed in current research to address this issue, including generative adversarial networks (GAN), under-sampling and over-sampling, and ensemble learning techniques. However, there lacks targeted research on the severity of imbalanced samples' impact on diagnostic models for nuclear power plants and a comprehensive performance comparison of various typical methods for handling imbalanced samples. This study focuses on typical approaches such as GAN, SMOTE over-sampling, and SMOTE-Boost ensemble learning, conducting simulations to assess the effects of imbalanced data, evaluate the performance differences, advantages, and disadvantages of these methods. Additionally, it proposes a novel imbalanced sample diagnostic method, CE-GAN-RF, incorporating Copula Entropy (CE) feature extraction module, GAN generation model, and random forest (RF) classification model, to offer new insights into imbalanced sample diagnosis techniques for nuclear power plants.

 
Important Date
  • Conference Date

    Sep 23

    2024

    to

    Sep 25

    2024

  • Sep 24 2024

    Contribution Submission Deadline

  • Sep 25 2024

    Registration deadline

Sponsored By
Harbin Engineering University (HEU)
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