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基于多尺度熵-分形维数复合特征的配电网故障区域自适应隔离

Adaptive isolation of fault areas in distribution networks based on multi-scale entropy fractal dimension composite features

  • 摘要: 随着分布式电源的大规模接入,电网时常出现负荷随机波动现象。当配电网发生故障时,故障电流、电压等电气信号会呈现高度非线性特征,导致难以准确提取故障区域特征信息,进而影响故障区域的定位精度,无法实现精准隔离,为此提出基于多尺度熵-分形维数复合特征的配电网故障区域自适应隔离。通过构建多尺度熵-分形维数复合模型,提取配电网故障特征,构建复合特征向量并通过主成分分析得出故障特征子集,并结合馈线终端感知能力构建故障状态矩阵,引入Pearson相关系数判定故障类别,通过故障行波分析确定故障位置,结合配电网拓扑图计算设备故障关联度以明确隔离范围,引入人工神经网络设计隔离方案启动依据,并按照规定流程实施隔离操作。经实验验证,该方法对电网故障区域进行自适应隔离后,配电网内电气信息特征与故障特征的相似度低于3%,这表明该方法可以准确对配电网故障区域进行自适应隔离,避免故障特征的传播。

     

    Abstract: With the large-scale integration of distributed power sources, the power grid often experiences random load fluctuations. When a fault occurs in the distribution network, electrical signals such as fault current and voltage exhibit highly nonlinear characteristics, making it difficult to accurately extract fault area feature information, which in turn affects the positioning accuracy of the fault area and cannot achieve precise isolation. Therefore, a multi-scale entropy fractal dimension composite feature based adaptive isolation of distribution network fault areas is proposed. By constructing a multi-scale entropy fractal dimension composite model, fault features of the distribution network are extracted, a composite feature vector is constructed, and a subset of fault features is obtained through principal component analysis. Combined with the perception ability of feeder terminals, a fault state matrix is constructed, and Pearson correlation coefficient is introduced to determine the fault category. The fault location is determined through fault traveling wave analysis, and the equipment fault correlation degree is calculated based on the distribution network topology to clarify the isolation range. An artificial neural network is introduced to design the basis for starting the isolation scheme, and isolation operations are implemented according to the prescribed process. Through experimental verification, this method adaptively isolates the fault area of the power grid, and the similarity between the electrical information features and the fault features in the distribution network is less than 3%. This indicates that this method can accurately adaptively isolate the fault area of the distribution network and avoid the propagation of fault features.

     

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