Noise Reduction Method for Radio Astronomy Single Station Observation Based on Wavelet Transform and Mathematical Morphology
Ming-wei Qin, Rui Tang, Ying-hui Zhou, Chang-jun Lan, Wen-hao Fu, Huan Wang, Bao-lin Hou, Zamri, Jin-song Ping, Wen-jun Yang, Liang Dong

TL;DR
This paper introduces a novel signal processing approach combining wavelet transform and mathematical morphology to effectively reduce interference in radio astronomy observations, enhancing data accuracy.
Contribution
It presents a new combined method for interference removal in radio signals that improves observation quality in radio astronomy.
Findings
Successfully removes interference signals from radio data
Preserves useful astronomical signals during processing
Enhances the accuracy of radio astronomy measurements
Abstract
The 21 cm radiation of neutral hydrogen provides crucial information for studying the early universe and its evolution. To advance this research, countries have made significant investments in constructing large low-frequency radio telescope arrays, such as the Low Frequency Array (LOFAR) and the Square Kilometre Array Phase 1 Low Frequency (SKA1-low). These instruments are pivotal for radio astronomy research. However, challenges such as ionospheric plasma interference, ambient radio noise, and instrument-related effects have become increasingly prominent, posing major obstacles in cosmology research. To address these issues, this paper proposes an efficient signal processing method that combines wavelet transform and mathematical morphology. The method involves the following steps: Background Subtraction: Background interference in radio observation signals is eliminated. Wavelet…
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