Prediction of Circuit Breaker Closing Time Under Small-Sample Conditions with an Augmented Consistency Regularization Neural Network
ID:127 View Protection:ATTENDEE Updated Time:2025-11-03 11:46:18 Hits:359 Oral Presentation

Start Time:2025-11-09 11:05(Asia/Shanghai)

Duration:15min

Session:S5 5.AI-driven technology » S55.AI-driven technology

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Abstract
When transformers or shunt capacitors are energized on no-load, unknown residual flux or residual voltage can provoke severe inrush current. The resulting high peaks may cause relay mal-operation and endanger equipment. Although controlled closing can effectively reduce inrush current, it demands extremely precise control of the closing angle. Owing to mechanical scatter and environmental influences, an SF₆ breaker’s closing time is inherently dispersed. This paper proposes a neural-network predictor trained with historical data and ambient variables; an Augmented Consistency Regularization Neural Network (ACR-NN) is proposed to cope with the limited data set. Tests show a prediction error below 0.5 ms, fully satisfying the requirement for inrush suppression and verifying the algorithm’s practicality and effectiveness.
Keywords
inrush-current suppression,neural network,prediction algorithm,ACR-NN,SF6 circuit breaker
Speaker
Jia Zhou
China Southern Grid

Submission Author
Jia Zhou China Southern Grid
Zhi Wang China Southern Grid
Dongqi Liu Changsha University of Science and Techonolgy
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Important Date
  • Conference Date

    Nov 07

    2025

    to

    Nov 09

    2025

  • Oct 30 2025

    Draft paper submission deadline

  • Nov 10 2025

    Registration deadline

Sponsored By
IEEE西南交通大学IAS学生分会
Organized By
西南交通大学电气工程学院
SPACI车网关系研究室
四川大学电力系统稳定与高压直流输电研究团队