Quantitative Analysis of LISA Pathfinder Test Mass Noise
Luigi Ferraioli, Martin Hewitson, Giuseppe Congedo, Miquel Nofrarias,, Mauro Hueller, Michele Armano, and Stefano Vitale

TL;DR
This paper develops and tests statistical methods for detecting excess noise and estimating noise parameters in low-frequency data from the LISA Pathfinder mission, addressing challenges of non-Gaussian and correlated noise.
Contribution
It introduces two novel excess noise estimators and compares two noise parameter estimation methods, demonstrating their effectiveness on synthetic and realistic data.
Findings
Kolmogorov-Smirnov test adapts well to correlated data
Proposed estimators outperform standard methods
Methods provide unbiased, accurate noise parameter estimates
Abstract
In this paper we discuss two main problems associated with the analysis of the data from LISA Pathfinder (LPF): i) Excess noise detection and ii) Noise parameter identification. The mission is focused on the low frequency region ([0.1; 10] mHz) of the available signal spectrum. In such a region the signal is dominated by the force noise acting on test masses. Noise analysis is expected to deal with a limited amount of non-Gaussian data, since the spectrum statistics will be far from Gaussian and the lowest available frequency is limited by the data length. In this paper we analyze the details of the expected statistics for spectral data and develop two suitable excess noise estimators. One is based on the statistical properties of the integrated spectrum, the other is based on Kolmogorov-Smirnov test. The sensitivity of the estimators is discussed theoretically for independent data,…
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