摘要: The penalized least squares (PLS) method with appropriate weights has proven to be a successful baseline
estimation method for various spectral analyses. It can extract the baseline from the spectrum while retaining
the signal peaks in the presence of random noise. The algorithm is implemented by iterating over the weights
of the data points. In this study, we propose a new approach for assigning weights based on the Bayesian
rule. The proposed method provides a self-consistent weighting formula and performs well, particularly for
baselines with different curvature components. This method was applied to analyze Schottky spectra obtained
in
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Kr projectile fragmentation measurements in the experimental Cooler Storage Ring (CSRe) at Lanzhou. It
provides an accurate and reliable storage lifetime with a smaller error bar than existing PLS methods. It is also
a universal baseline-subtraction algorithm that can be used for spectrum-related experiments, such as precision
nuclear mass and lifetime measurements in storage rings.