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首页> 外文期刊>IEEE Transactions on Dielectrics and Electrical Insulation >Digital detection, grouping and classification of partial discharge signals at DC voltage
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Digital detection, grouping and classification of partial discharge signals at DC voltage

机译:对直流电压下的局部放电信号进行数字检测,分组和分类

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In this paper, a digital dc PD pulse detection system with bandwidth of 10 kHz - 40 MHz is introduced, which was developed using some artificial intelligence methodologies. Focus is made on digital detection, grouping and classification of random pulse signals generated by PD phenomena at dc voltage. Digital detection is developed only resorting to a band-pass filter, a high-speed digitizer (100 MS/s) and a PC with data processing software. Grouping is realized with feature extraction of pulse waveshapes using equivalent time-frequency method (ETFM), making the 2D parameters plane or 3D parameters space, then using the unsupervised clustering Fuzzy C-Means (FCM) method to achieve fast separation for pulse sequence. And classification resorts to least square support vector machine (LS-SVM) based on a fingerprint, which is derivate form 2D histograms of basic parameters, the discharge magnitude q and the time between discharges ??t of each sub-group. Field application is made for typical defects of oil-paper insulation under dc voltage. At last, several methods to improve separability of the grouping technique are also given for some special cases, including threshold value grouping, marginal coordinates grouping based on 2D parameters plane and grouping using ETFM preprocessed by wavelet denosing. Experimental results show that the dc PD detection system developed with artificial intelligence methodologies is practical and effective.
机译:本文介绍了使用一些人工智能方法开发的带宽为10 kHz-40 MHz的数字dc PD脉冲检测系统。重点是对直流电压下PD现象产生的随机脉冲信号进行数字检测,分组和分类。仅借助带通滤波器,高速数字化仪(100 MS / s)和带有数据处理软件的PC来开发数字检测。分组是通过使用等效时频方法(ETFM)提取脉冲波形的特征,将2D参数平面或3D参数空间分开,然后使用无监督聚类模糊C均值(FCM)方法来实现脉冲序列的快速分离来实现的。分类采用基于指纹的最小二乘支持向量机(LS-SVM),它是由基本参数的二维直方图,放电量q和每个子组的放电间隔时间t得出的。针对直流电压下油纸绝缘的典型缺陷进行了现场应用。最后,针对一些特殊情况,提出了几种提高分组技术可分离性的方法,包括阈值分组,基于二维参数平面的边际坐标分组以及使用小波去噪预处理的ETFM进行分组。实验结果表明,采用人工智能方法开发的直流局放检测系统是实用有效的。

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