{"title":"A Case for Optical Pollution Monitoring of Bushings","authors":"F. Fernandes, J. Van Coller, N. Mahatho","doi":"10.1109/ROBOMECH.2019.8704794","DOIUrl":null,"url":null,"abstract":"The proposed research aims to optically monitor the dry pollution level on transformer bushings and determine the possible leakage current should the dry polluted surface be critically wetted. The research involves the implementation of an image capturing system with appropriate image processing. Preliminary image capture of four artificial levels of salt deposit pollution: clean, light, medium and heavy is successfully achieved. The percentage level of surface pollution is found using image binary thresholding. For light pollution, the pollution surface coverage is found to be 8%, with each consecutive level increasing by 3%. These serve as part of the input to a neural network that will output the predicted dry pollution level and type in the image. The leakage current must be measured at various known pollution levels under wetted conditions. These values are stored as a reference that the neural network must then use to correlate the predicted dry pollution level to leakage current under wetted conditions. The standard methods used to classify pollution types and severity is presented. The dynamics governing bushing flashover under polluted conditions is discussed. The actual pollution level and type is quantified using Equivalent Salt Deposit Density (ESDD) and Non-Soluble Deposit Density (NSDD). Image segmentation and border extraction are illustrated to output four variables related to surface pollutants: area ratio, coverage, shape factor and eccentricity. The first two parameters are proposed as measures of surface pollution density, while the latter two may assist in pollution type identification. For more accurate pollution type identification, reflectance transformation imaging (RTI) is proposed. With a saliency mapping resolution of approximately 100 μm, the feature recognition between salt deposits and dust and dust deposits is more readily attained.","PeriodicalId":344332,"journal":{"name":"2019 Southern African Universities Power Engineering Conference/Robotics and Mechatronics/Pattern Recognition Association of South Africa (SAUPEC/RobMech/PRASA)","volume":"5 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2019-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"2019 Southern African Universities Power Engineering Conference/Robotics and Mechatronics/Pattern Recognition Association of South Africa (SAUPEC/RobMech/PRASA)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1109/ROBOMECH.2019.8704794","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 1

Abstract

The proposed research aims to optically monitor the dry pollution level on transformer bushings and determine the possible leakage current should the dry polluted surface be critically wetted. The research involves the implementation of an image capturing system with appropriate image processing. Preliminary image capture of four artificial levels of salt deposit pollution: clean, light, medium and heavy is successfully achieved. The percentage level of surface pollution is found using image binary thresholding. For light pollution, the pollution surface coverage is found to be 8%, with each consecutive level increasing by 3%. These serve as part of the input to a neural network that will output the predicted dry pollution level and type in the image. The leakage current must be measured at various known pollution levels under wetted conditions. These values are stored as a reference that the neural network must then use to correlate the predicted dry pollution level to leakage current under wetted conditions. The standard methods used to classify pollution types and severity is presented. The dynamics governing bushing flashover under polluted conditions is discussed. The actual pollution level and type is quantified using Equivalent Salt Deposit Density (ESDD) and Non-Soluble Deposit Density (NSDD). Image segmentation and border extraction are illustrated to output four variables related to surface pollutants: area ratio, coverage, shape factor and eccentricity. The first two parameters are proposed as measures of surface pollution density, while the latter two may assist in pollution type identification. For more accurate pollution type identification, reflectance transformation imaging (RTI) is proposed. With a saliency mapping resolution of approximately 100 μm, the feature recognition between salt deposits and dust and dust deposits is more readily attained.
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套管光学污染监测的一个案例
该研究旨在光学监测变压器套管的干污染水平,并确定当干污染表面被严重润湿时可能产生的泄漏电流。本研究涉及到一个具有适当图像处理的图像捕获系统的实现。初步实现了净、轻、中、重4个人工盐沉积污染等级的图像捕获。利用图像二值化阈值法确定地表污染的百分比水平。光污染的污染面覆盖率为8%,连续每一级增加3%。这些作为神经网络输入的一部分,神经网络将在图像中输出预测的干污染水平和类型。在潮湿条件下,泄漏电流必须在各种已知污染水平下测量。这些值被存储为一个参考,然后神经网络必须使用它来将预测的干污染水平与湿条件下的泄漏电流联系起来。提出了污染类型和严重程度分类的标准方法。讨论了污染条件下衬套闪络的动力学控制。采用等效盐沉积密度(ESDD)和不溶性沉积物密度(NSDD)对实际污染水平和类型进行量化。图像分割和边界提取可以输出与表面污染物相关的四个变量:面积比、覆盖率、形状因子和偏心。建议将前两个参数作为地表污染密度的度量,而后两个参数可能有助于识别污染类型。为了更准确地识别污染类型,提出了反射变换成像(RTI)技术。在约100 μm的显着映射分辨率下,更容易实现盐沉积与粉尘和粉尘沉积之间的特征识别。
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