Robust Learning Based Condition Diagnosis Method for Distribution
Network Switchgear
- URL: http://arxiv.org/abs/2311.07956v2
- Date: Thu, 7 Dec 2023 00:17:41 GMT
- Title: Robust Learning Based Condition Diagnosis Method for Distribution
Network Switchgear
- Authors: Wenxi Zhang, Zhe Li, Weixi Li, Weisi Ma, Xinyi Chen, Sizhe Li
- Abstract summary: This paper introduces a robust, learning-based method for diagnosing the state of distribution network switchgear.
Our method incorporates an expanded feature vector that includes environmental data, temperature readings, switch position, motor operation, insulation conditions, and local discharge information.
- Score: 8.515214508489558
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper introduces a robust, learning-based method for diagnosing the
state of distribution network switchgear, which is crucial for maintaining the
power quality for end users. Traditional diagnostic models often rely heavily
on expert knowledge and lack robustness. To address this, our method
incorporates an expanded feature vector that includes environmental data,
temperature readings, switch position, motor operation, insulation conditions,
and local discharge information. We tackle the issue of high dimensionality
through feature mapping. The method introduces a decision radius to categorize
unlabeled samples and updates the model parameters using a combination of
supervised and unsupervised loss, along with a consistency regularization
function. This approach ensures robust learning even with a limited number of
labeled samples. Comparative analysis demonstrates that this method
significantly outperforms existing models in both accuracy and robustness.
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