基于振动信号颗粒复杂网络的变压器绕组状态评估

S. Wang, G. Qian, W. Dai, Z. Hong, J. Ma, F. H. Wang
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引用次数: 0

摘要

变压器油箱在出口短路情况下的振动信号具有非平稳和非线性的特点,包含了丰富的变压器绕组机械状态信息。为了研究变压器暂态振动信号的波动趋势,基于暂态振动信号的时域包络和模糊c均值算法构建了颗粒复杂网络(GCN)。然后计算GCN的度分布,以识别变压器绕组的机械状态。对额定电压为110kV的实际变压器进行了不同短路电流下的短路冲击试验,获得了瞬态振动信号。计算结果表明,GCN能够很好地描述瞬态振动信号的关键信息和隐藏信息。其程度分布可以清楚地说明变压器绕组机械状况的恶化过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Condition Assessment of Transformer Winding Through the Granular Complex Network of Vibration Signals
Vibration signals of transformer tank under the outlet short-circuit show the features of nonstationary and nonlinear, and contain abundant information of the mechanical condition of transformer winding. To investigate the fluctuation trends of transient vibration signals of transformer, the granular complex network (GCN) is built based on the envelope of time domain of transient vibration signals and the Fuzzy C-means algorithm. Then the degree distribution of the GCN are calculated to recognize the mechanical condition of transformer winding. The short-circuit impulse test of a real transformer with rated voltage of 110kV was made for different short-circuit currents to obtain the transient vibration signals. The calculated results have shown that the GCN is capable of describing the key and hidden information of the transient vibration signals. The degree distribution can clearly illustrate the deterioration process of mechanical condition of transformer winding.
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