Fault detection and classification in overhead transmission lines through comprehensive feature extraction using temporal convolution neural network
Nadeem Ahmed Tunio,
Ashfaque Ahmed Hashmani,
Suhail Khokhar
et al.
Abstract:Faults in transmission lines cause instability of power system and result in degrading end users sophisticated equipment. Therefore, in case of fault and for the quick restoration of problematic phases, reliable and accurate fault detection and classification techniques are required to categorize the faults in a minimum time. In this work, 500 kV transmission line (Jamshoro‐New Karachi), Sindh, Pakistan has been modeled in MATLAB. The discrete wavelet transform (DWT) has been used to extract features from the … Show more
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