Abstract
Mechanical faults are the main causes of abnormal opening, refusal operation, or malfunction of high-voltage circuit breakers. Accurately assessing the operational condition of high-voltage circuit breakers and delivering fault evaluations is essential for the power grid’s safety and reliability. This article develops a circuit breaker fault monitoring device, which diagnoses the mechanical faults of the circuit breaker by monitoring the vibration information data. At the same time, the article adopts an improved deep learning method to train vibration information of high-voltage circuit breakers, and based on this, a systematic research method is employed to identify circuit breaker faults. Firstly, vibration information data of high-voltage circuit breakers is obtained through monitoring devices, this vibration data is then trained using deep learning methods to extract features corresponding to various fault types. Secondly, using the extracted features, circuit breaker faults are classified and recognized with a systematic analysis of the progression traits across various fault categories. Finally, the circuit breaker’s fault type is ascertained by comparing the test set’s characteristics with those of the training set, using the vibration data. The experimental results show that for the same type of circuit breaker, the accuracy of this method is over 95%, providing a more efficient, intuitive, and practical method for online diagnosis and fault warning of high-voltage circuit breakers.
Funder
National Natural Science Foundation of China
Natural Science Foundation of Shandong Province
Publisher
Public Library of Science (PLoS)
Reference28 articles.
1. Failure frequencies for high-voltage circuit breakers, disconnectors, earthing switches, instrument transformers, and gas-insulated switchgear;M. Runde;IEEE Transactions on Power Delivery,2013
2. Development and research of native and foreign hybrid circuit breaker;Minfu LIAO;High Voltage Engineering,2016
3. High-voltage circuit breaker fault diagnosis using a hybrid feature transformation approach based on random forest and stacked auto-encoder;S MA;IEEE Transactions on Industrial Electronics,2018
4. Fault diagnosis for industrial robots based on a combined approach of mainfold learnin, treelet transform and naïve bayes;Y WU;Review of Scientific Instruments,2020
5. Fault diagnosis for high voltage circuit breaker based on timing parameteras and FCM;S WAN;IEICE Electronics Express,2018