IET Generation, Transmission & Distribution (Dec 2022)

A machine learning‐based approach for dielectric strength prediction of long air gaps with engineering configurations

  • Zhibin Qiu,
  • Zijian Wu,
  • Louxing Zhang,
  • Yu Song,
  • Jianben Liu

DOI
https://doi.org/10.1049/gtd2.12635
Journal volume & issue
Vol. 16, no. 23
pp. 4726 – 4737

Abstract

Read online

Abstract It is a long‐term goal in external insulation studies to determine the discharge voltages of complicated engineering gaps by simulation methods. Based on the one‐to‐one correspondence between air gap structure and the static electric field (EF) distribution, this paper characterizes the transmission tower gap configuration by spatial EF features, which were used for machine learning to achieve switching impulse discharge voltage prediction. An interelectrode path and a conical zone between the energized sub‐conductor and the crossarm or the tower window were considered as EF regions strongly associated with gap breakdown, where 73 parameters were extracted to construct a feature set. Taking 15 extra‐high voltage (EHV) transmission tower gaps as training samples, with different gap distances and tower configurations, their EF features were input to a support vector machine (SVM) for model training to establish the relationships with discharge voltages. The trained SVM model was used to predict the impulse discharge voltages of 20 EHV and ultra‐high voltage (UHV) transmission tower gaps. The prediction results with different feature dimensions and various sizes of conical zones were compared to the experimental values, which demonstrate similar variation trends and acceptable errors. This study contributes to realize insulation strength calculation of engineering gaps.

Keywords