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Multi-Source Partial Discharge Signal Separation and recognition Method Based on manifold Learning in Oil-pressboard Insulation System

机译:基于歧管绝缘系统歧管学习的多源部分放电信号分离与识别方法

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Oil pressboard insulation system is one of the most important systems in the power system., Various insulation structures such as oil and pressboard may produce partial discharge in the oil pressboard insulation system, releasing UHF and ultrasonic signals, and even multiple parts of the oil pressboard insulation system may have partial discharge faults at the same time, which will cause the partial discharge signals to cross and overlap affecting the identification and location of partial discharge faults. In this paper, a manifold learning based ultrasonic and UHF partial discharge signal separation and recognition strategy for oil pressboard insulation system is proposed. Firstly, the high-dimensional information of each PD signal sample is projected to the two-dimensional plane by the improved t-SNE algorithm, and then the equivalent Euler distance is calculated. Then, the partial discharge pulses from different PD sources are identified by improved possible CMeans method, and the effectiveness of the separation is verified by the experiments of partial discharge UHF and ultrasonic signals in the laboratory artificial defect model. The results show that the manifold learning oil pressboard insulation system can effectively separate the suspension, oil, and tip discharge sources.
机译:油压板绝缘系统是电力系统中最重要的系统之一。,各种绝缘结构,如石油和压板,可以在油压板绝缘系统中产生局部放电,释放UHF和超声波信号,甚至甚至均多部分油压绝缘系统可以同时具有局部放电故障,这将导致部分放电信号交叉和重叠影响局部放电故障的识别和位置。本文提出了一种基于歧管的超声波和UHF局部放电信号分离及识别油压板绝缘系统的识别策略。首先,通过改进的T-SNE算法将每个PD信号样本的高维信息投射到二维平面,然后计算等效的欧拉距离。然后,通过改进的可能的Cmeans方法来识别来自不同PD源的部分放电脉冲,通过在实验室人工缺陷模型中的局部放电UHF和超声信号的实验来验证分离的有效性。结果表明,歧管学习油压板绝缘系统可以有效地分离悬架,油和尖端放电源。

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