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基于声发射特性的玻璃绝缘子污闪预测模型
引用本文:王远东,史文江,韩兴波,蒋兴良,张超,张志劲.基于声发射特性的玻璃绝缘子污闪预测模型[J].电力建设,2021,42(5):138-144.
作者姓名:王远东  史文江  韩兴波  蒋兴良  张超  张志劲
作者单位:国网内蒙古东部电力有限公司检修分公司,内蒙古通辽市028000;输配电装备及系统安全与新技术国家重点实验室(重庆大学) ,重庆市400044
基金项目:国家电网有限公司科技项目
摘    要:绝缘子污秽闪络是电力系统不可忽视的灾害之一,绝缘子污秽局部放电声信号可以有效反映绝缘子接近污闪的"危险情况".首先,在人工污秽实验室内进行大量试验,模拟不同可溶污秽附着密度(soluble contamination density,SCD)、不同灰密对玻璃绝缘子声发射信号的影响.之后,提取了污秽放电声发射信号2个典型...

关 键 词:污秽放电  绝缘子  声发射  危险度预测  广义回归神经网络(GRNN)
收稿时间:2020-07-09

Prediction Model for Pollution Flashover on Glass Insulator According to Acoustical Characteristics
WANG Yuandong,SHI Wenjiang,HAN Xingbo,JIANG Xingliang,ZHANG Chao,ZHANG Zhijin.Prediction Model for Pollution Flashover on Glass Insulator According to Acoustical Characteristics[J].Electric Power Construction,2021,42(5):138-144.
Authors:WANG Yuandong  SHI Wenjiang  HAN Xingbo  JIANG Xingliang  ZHANG Chao  ZHANG Zhijin
Affiliation:1. State Grid East Inner Mongolia Electric Power Maintenance Company, Tongliao 028000, Inner Mongolia, China2. State Key Laboratory of Power Transmission Equipment & System Security and New Technology (Chongqing University), Chongqing 400044, China
Abstract:Insulator pollution flashover is a main disaster of electrical power system. A large number of artificial pollution tests are investigated under different contamination levels (different soluble contaminants densities or dust densities). According to experiment data, seven acoustic signal characteristics are extracted and analyzed. According to the conclusion, the general regression neural network (GRNN) model of risk degree prediction is established, in which the seven acoustic signal characteristics are as the inputs with the risk degrees used as outputs. It is found that the prediction accuracy is affected by soluble contaminants density mostly. The results show that the greater the soluble contaminants density, the smaller the acoustic signal characteristics’randomness, and the better prediction accuracy can be obtained. The conclusion of this paper provides reference for acoustic monitoring of insulators in different regions with different pollution levels.
Keywords:contaminant discharge                                                                                                                        insulator                                                                                                                        acoustical signal                                                                                                                        risk degree prediction                                                                                                                        general regression neural network (GRNN)
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