The RFI Fast Mitigation Algorithm Based on Block LMS Filter

The radio telescope possesses high sensitivity and strong signal collection capabilities. While receiving celestial radiation signals, it also captures Radio Frequency Interferences (RFIs) introduced by human activities. RFI, as signals originating from sources other than the astronomical targets, s...

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Published inResearch in astronomy and astrophysics Vol. 24; no. 1; pp. 15021 - 272
Main Authors Wu, Han, Zhang, Hai-Long, Zhang, Ya-Zhou, Wang, Jie, Du, Xu, Zhang, Ting, Ye, Xin-Chen
Format Journal Article
LanguageEnglish
Published Beijing National Astromonical Observatories, CAS and IOP Publishing 01.01.2024
IOP Publishing
University of Chinese Academy of Sciences,Beijing 100049,China%Xinjiang Astronomical Observatory,Chinese Academy of Sciences,Urumqi 830011,China
Xinjiang Astronomical Observatory,Chinese Academy of Sciences,Urumqi 830011,China
National Astronomical Data Center,Beijing 100101,China
University of Chinese Academy of Sciences,Beijing 100049,China
Key Laboratory of Radio Astronomy,Chinese Academy of Sciences,Nanjing 210008,China
National Astronomical Data Center,Beijing 100101,China%Xinjiang Astronomical Observatory,Chinese Academy of Sciences,Urumqi 830011,China
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ISSN1674-4527
2397-6209
2397-6209
DOI10.1088/1674-4527/ad05e9

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Summary:The radio telescope possesses high sensitivity and strong signal collection capabilities. While receiving celestial radiation signals, it also captures Radio Frequency Interferences (RFIs) introduced by human activities. RFI, as signals originating from sources other than the astronomical targets, significantly impacts the quality of astronomical data. This paper presents an RFI fast mitigation algorithm based on block Least Mean Square (LMS) algorithm. It enhances the traditional adaptive LMS filter by grouping L adjacent time-sampled points into one block and applying the same filter coefficients for filtering within each block. This transformation reduces multiplication calculations and enhances algorithm efficiency by leveraging the time-domain convolution theorem. The algorithm is tested using baseband data from the Parkes 64 m radio telescope’s pulsar observations and simulated data. The results confirm the algorithm’s effectiveness, as the pulsar profile after RFI mitigation closely matches the original pulsar profile.
Bibliography:RAA-2023-0296.R1
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ISSN:1674-4527
2397-6209
2397-6209
DOI:10.1088/1674-4527/ad05e9