Baseline correction for FAST radio recombination lines: a modified penalized least squares smoothing technique
Bin Liu, Lixin Wang, Junzhi Wang, Bo Peng, and Hongjun Wang

TL;DR
This paper introduces a modified penalized least squares smoothing technique, rrlPLS, for baseline correction in radio astronomical spectra, improving the detection of weak signals affected by interference and noise in FAST RRL surveys.
Contribution
The paper develops and validates a new baseline correction method, rrlPLS, optimized for FAST RRL data, outperforming existing techniques in sensitivity and reliability.
Findings
rrlPLS effectively reveals emission features in noisy spectra
The method reduces profile distortion for low signal-to-noise lines
Optimized parameters enhance baseline correction accuracy
Abstract
A pilot project has been proceeded to map 1 deg on the Galactic plane for radio recombination lines (RRLs) using the Five hundred meter Aperture Spherical Telescope (FAST). The motivation is to verify the techniques and reliabilities for a large-scale Galactic plane RRL survey with FAST aiming to investigate the ionized environment in the Galaxy. The data shows that the bandpass of the FAST 19 beam L-band is severely affected by radio frequency interferences (RFIs) and standing wave ripples, which can hardly be corrected by traditional low order polynomials. In this paper, we investigate a series of penalized least square (PLS) based baseline correction methods for radio astronomical spectra that usually contain weak signals with high level of noise. Three promising penalized least squares based methods, AsLS, arPLS, and asPLS are evaluated. Adopting their advantages, a modified…
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Taxonomy
TopicsStructural Health Monitoring Techniques · Radio Astronomy Observations and Technology · Advanced Adaptive Filtering Techniques
