@inproceedings{386dda347b8942318a3d11417e026cc2,
title = "Harmonic Detection in Power Electronics Converters Using Machine Learning",
abstract = "Ensuring precise classification of a Power Quality Disturbance (PQD) signal is crucial for maintaining the safety of power system networks. Non-linear loads introduce harmonics into the system, causing distortion in voltage and current signals. This study introduces a method for identifying power quality issues by decomposing the voltage waveform in the frequency domain and applying Kernel Support Vector Machines (SVM) to the preprocessed voltage data. The research compares the performance of AI-based classification of power quality events using time-domain data and data preprocessed with the Fourier transform, followed by machine learning techniques on an optimized model to evaluate its accuracy. Simulation results indicate that Kernel-based SVM outperforms traditional probabilistic algorithms in detecting harmonics in PQD signals.",
keywords = "and detection, classification, kernel-SVM, machine learning, power quality disturbance",
author = "Mohammad Suhail and \{El Moursi\}, Mohamed and \{Al Hosani\}, \{Khalifa Hassan\}",
note = "Publisher Copyright: {\textcopyright} 2024 IEEE.; 6th International Conference on Smart Power and Internet Energy Systems, SPIES 2024 ; Conference date: 04-12-2024 Through 06-12-2024",
year = "2024",
doi = "10.1109/SPIES63782.2024.10983872",
language = "British English",
series = "2024 6th International Conference on Smart Power and Internet Energy Systems, SPIES 2024",
publisher = "Institute of Electrical and Electronics Engineers Inc.",
pages = "1--6",
booktitle = "2024 6th International Conference on Smart Power and Internet Energy Systems, SPIES 2024",
address = "United States",
}