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A High-Resolution Algorithm for Supraharmonic Analysis Based on Multiple Measurement Vectors and Bayesian Compressive Sensing

Zhuang, Shuangyong; Zhao, Wei; Wang, Qing; Wang, Zhe; Chen, Lei; Huang, Songling

Authors

Shuangyong Zhuang

Wei Zhao

Lei Chen

Songling Huang



Abstract

Supraharmonics emitted by electrical equipment have caused a series of electromagnetic interference in power systems. Conventional supraharmonic analysis algorithms, e.g., discrete Fourier transform (DFT), have a relatively low frequency resolution with a given observation time. Our previous work supplied a significant improvement on the frequency resolution based on multiple measurement vectors and orthogonal matching pursuit (MMV-OMP). In this paper, an improved algorithm for supraharmonic analysis, which employs Bayesian compressive sensing (BCS) for further improving the frequency resolution, is proposed. The performance of the proposed algorithm on the simulation signal and experimental data show that the frequency resolution can be improved by about a magnitude compared to that of the MMV-OMP algorithm, and the signal frequency estimation error is about 20 times better. In order to identify the signals in two adjacent frequency grids with one resolution, a normalized inner product criterion is proposed and verified by simulations. The proposed algorithm shows a potential for high-accuracy supraharmonic analysis

Citation

Zhuang, S., Zhao, W., Wang, Q., Wang, Z., Chen, L., & Huang, S. (2019). A High-Resolution Algorithm for Supraharmonic Analysis Based on Multiple Measurement Vectors and Bayesian Compressive Sensing. Energies, 12(13), Article 2559. https://doi.org/10.3390/en12132559

Journal Article Type Article
Acceptance Date Jun 28, 2019
Online Publication Date Jul 3, 2019
Publication Date Jul 3, 2019
Deposit Date Jul 12, 2019
Publicly Available Date Jul 12, 2019
Journal Energies
Publisher MDPI
Peer Reviewed Peer Reviewed
Volume 12
Issue 13
Article Number 2559
DOI https://doi.org/10.3390/en12132559

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