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Bayesian-optimized LSTM-DWT approach for reliable fault detection in MMC-based HVDC systems
by
Khalid, Saqib
, Yousaf, Muhammad Zain
, Singh, Arvind R.
, Kumar, B. Hemanth
, Zaitsev, Ievgen
, Bajaj, Mohit
in
639/166
/ 639/166/4073
/ 639/166/987
/ 639/4077
/ Alternative energy sources
/ Bayesian analysis
/ DC circuit breaker (DCCB)
/ Discrete wavelet transform (DWT)
/ Energy resources
/ Energy sources
/ Environmental conditions
/ High voltage
/ High voltage direct current (HVDC)
/ Humanities and Social Sciences
/ Immunological memory
/ Long short-term memory
/ Long short-term-memory (LSTM)
/ multidisciplinary
/ Primary protection
/ Renewable energy
/ Renewable resources
/ Science
/ Science (multidisciplinary)
/ Transmission lines
/ Wavelet transforms
/ Wind power
2024
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Bayesian-optimized LSTM-DWT approach for reliable fault detection in MMC-based HVDC systems
by
Khalid, Saqib
, Yousaf, Muhammad Zain
, Singh, Arvind R.
, Kumar, B. Hemanth
, Zaitsev, Ievgen
, Bajaj, Mohit
in
639/166
/ 639/166/4073
/ 639/166/987
/ 639/4077
/ Alternative energy sources
/ Bayesian analysis
/ DC circuit breaker (DCCB)
/ Discrete wavelet transform (DWT)
/ Energy resources
/ Energy sources
/ Environmental conditions
/ High voltage
/ High voltage direct current (HVDC)
/ Humanities and Social Sciences
/ Immunological memory
/ Long short-term memory
/ Long short-term-memory (LSTM)
/ multidisciplinary
/ Primary protection
/ Renewable energy
/ Renewable resources
/ Science
/ Science (multidisciplinary)
/ Transmission lines
/ Wavelet transforms
/ Wind power
2024
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Bayesian-optimized LSTM-DWT approach for reliable fault detection in MMC-based HVDC systems
by
Khalid, Saqib
, Yousaf, Muhammad Zain
, Singh, Arvind R.
, Kumar, B. Hemanth
, Zaitsev, Ievgen
, Bajaj, Mohit
in
639/166
/ 639/166/4073
/ 639/166/987
/ 639/4077
/ Alternative energy sources
/ Bayesian analysis
/ DC circuit breaker (DCCB)
/ Discrete wavelet transform (DWT)
/ Energy resources
/ Energy sources
/ Environmental conditions
/ High voltage
/ High voltage direct current (HVDC)
/ Humanities and Social Sciences
/ Immunological memory
/ Long short-term memory
/ Long short-term-memory (LSTM)
/ multidisciplinary
/ Primary protection
/ Renewable energy
/ Renewable resources
/ Science
/ Science (multidisciplinary)
/ Transmission lines
/ Wavelet transforms
/ Wind power
2024
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Bayesian-optimized LSTM-DWT approach for reliable fault detection in MMC-based HVDC systems
Journal Article
Bayesian-optimized LSTM-DWT approach for reliable fault detection in MMC-based HVDC systems
2024
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Overview
As Europe integrates more renewable energy resources, notably offshore wind power, into its super meshed grid, the demand for reliable long-distance High Voltage Direct Current (HVDC) transmission systems has surged. This paper addresses the intricacies of HVDC systems built upon Modular Multi-Level Converters (MMCs), especially concerning the rapid rise of DC fault currents. We propose a novel fault identification and classification for DC transmission lines only by employing Long Short-Term Memory (LSTM) networks integrated with Discrete Wavelet Transform (DWT) for feature extraction. Our LSTM-based algorithm operates effectively under challenging environmental conditions, ensuring high fault resistance detection. A unique three-level relay system with multiple time windows (1 ms, 1.5 ms, and 2 ms) ensures accurate fault detection over large distances. Bayesian Optimization is employed for hyperparameter tuning, streamlining the model’s training process. The study shows that our proposed framework exhibits 100% resilience against external faults and disturbances, achieving an average recognition accuracy rate of 99.04% in diverse testing scenarios. Unlike traditional schemes that rely on multiple manual thresholds, our approach utilizes a single intelligently tuned model to detect faults up to 480 ohms, enhancing the efficiency and robustness of DC grid protection.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
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