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基于振动信号区间特征快速提取的断路器储能状态辨识方法
引用本文:夏小飞,芦宇峰,苏毅,杨健. 基于振动信号区间特征快速提取的断路器储能状态辨识方法[J]. 中国电力, 2021, 54(2): 58-65. DOI: 10.11930/j.issn.1004-9649.202004012
作者姓名:夏小飞  芦宇峰  苏毅  杨健
作者单位:广西电网有限责任公司电力科学研究院,广西 南宁 530023
基金项目:中国南方电网有限责任公司科技项目(GXKJXM20180905)。
摘    要:针对断路器伴随振动信号分析故障的特征提取费时、实时性差无法用于在线监测问题,提出一种基于快速提取区间特征的断路器储能状态辨识方法.首先由峭度-小波模极大值检测断路器储能状态起始点,将振动信号通过KS检验标记包络幅值差异明显区间,然后提取信号包络和作为特征向量,采用ReliefF-SFS方法对特征进行筛选降维得到最优特征...

关 键 词:区间特征  KS检验  ReliefF-SFS  KFCM-SVM  状态辨识
收稿时间:2020-04-06
修稿时间:2020-12-14

Circuit Breaker Energy Storage State Identification Based on Quick Extraction of Vibration Signal Interval Features
XIA Xiaofei,LU Yufeng,SU Yi,YANG Jian. Circuit Breaker Energy Storage State Identification Based on Quick Extraction of Vibration Signal Interval Features[J]. Electric Power, 2021, 54(2): 58-65. DOI: 10.11930/j.issn.1004-9649.202004012
Authors:XIA Xiaofei  LU Yufeng  SU Yi  YANG Jian
Affiliation:Electric Power Research Institute of Guangxi Power Grid Co., Ltd., Nanning 530023, China
Abstract:The vibration signal based circuit breaker faults diagnosis has the problem of time-consuming in feature extraction and poor real-time, which makes the method inapplicable to on-line monitoring. We therefore proposed a circuit breaker energy storage state identification method based on fast extraction of interval features. Firstly, the starting point of the energy storage state of the circuit breaker was detected by the kurtosis-wavelet modulus maximum value, and the vibration signals were marked through KS test to indicate the significant difference in the envelope amplitude. Then the signal envelope was extracted and used as the feature vector, and the ReliefF-SFS method was used to reduce the dimensionality of features to obtain the optimal feature subset. Finally,the fuzzy C-means clustering(KFCM) was used to pre-classify the features to obtain the optimal hyperplane with the least risk, and a training model was established with support vector machine(SVM) for state identification. The experimental results show that the proposed state identification method only takes 0.2 s to extract features with reliable recognition accuracy, which has important application value in the field of circuit breaker state monitoring.
Keywords:interval feature  KS test  ReliefF-SFS  KFCM-SVM  state identification
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