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A new method for identifying a fault in T-connected lines based on multiscale S-transform energy entropy and an extreme learning machine

机译:基于多尺度S变换能量熵和极限学习机的T型连接线故障识别新方法

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摘要

Due to the characteristics of T-connection transmission lines, a new method for T-connection transmission lines fault identification based on current reverse travelling wave multi-scale S-transformation energy entropy and limit learning machine is proposed. S-transform are implemented on the faulty reverse traveling waves measured by each traveling wave protection unit of the T-connection transmission line, the reverse travelling wave energy entropies under eight different frequencies are respectively calculated, and a T-connection transmission line fault characteristic vector sample set are thus formed. Establish an intelligent fault identification model of extreme learning machines, and use the sample set for training and testing to identify the specific faulty branch of the T-connection transmission line. The simulation results show that the proposed algorithm can accurately and quickly identify the branch where the fault is located on the T-connection transmission line under various operation conditions.
机译:针对T型连接输电线路的特点,提出了一种基于电流反向行波多尺度S变换能量熵和极限学习机的T型连接输电线路故障识别的新方法。对T连接传输线各行波保护单元测得的故障反向行波进行S变换,分别计算出八个不同频率下的反向行波能量熵,得到T连接传输线故障特征向量这样就形成了样本集。建立极限学习机的智能故障识别模型,并使用样本集进行训练和测试,以识别T型连接传输线的特定故障分支。仿真结果表明,该算法能够在各种工况下准确,快速地识别出T型连接输电线路故障的分支。

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