2024
DOI: 10.3390/app14072755
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Partial Discharge Signal Denoising Algorithm Based on Aquila Optimizer–Variational Mode Decomposition and K-Singular Value Decomposition

Jun Zhong,
Zhenyu Liu,
Xiaowen Bi

Abstract: Partial discharge (PD) is a primary factor leading to the deterioration of insulation in electrical equipment. However, it is hard for traditional methods to precisely extract PD signals in increasingly complex engineering environments. This paper proposes a new PD signal denoising method combining Aquila Optimizer–Variational Mode Decomposition (AO-VMD) and K-Singular Value Decomposition (K-SVD) algorithms. Firstly, the AO algorithm optimizes critical parameters of the VMD algorithm. For the PD signal overwhe… Show more

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“…The Pearson correlation coefficient is a widely used metric for assessing relationships [24]. It finds extensive application in fields such as data analysis and fault diagnosis [25].…”
Section: Imf Component Screeningmentioning
confidence: 99%
“…The Pearson correlation coefficient is a widely used metric for assessing relationships [24]. It finds extensive application in fields such as data analysis and fault diagnosis [25].…”
Section: Imf Component Screeningmentioning
confidence: 99%