Abstract

Gravitational-wave data (discovered first in 2015 by the Advanced LIGO interferometers and awarded by the Nobel Prize in 2017) are characterized by non-Gaussian and non-stationary noise. The ever-increasing amount of acquired data requires the development of efficient denoising algorithms that will enable the detection of gravitational-wave events embedded in low signal-to-noise-ratio (SNR) environments. In this paper, an algorithm based on the local polynomial approximation (LPA) combined with the relative intersection of confidence intervals (RICI) rule for the filter support selection is proposed to denoise the gravitational-wave burst signals from core collapse supernovae. The LPA-RICI denoising method’s performance is tested on three different burst signals, numerically generated and injected into the real-life noise data collected by the Advanced LIGO detector. The analysis of the experimental results obtained by several case studies (conducted at different signal source distances corresponding to the different SNR values) indicates that the LPA-RICI method efficiently removes the noise and simultaneously preserves the morphology of the gravitational-wave burst signals. The technique offers reliable denoising performance even at the very low SNR values. Moreover, the analysis shows that the LPA-RICI method outperforms the approach combining LPA and the original intersection of confidence intervals (ICI) rule, total-variation (TV) based method, the method based on the neighboring thresholding in the short-time Fourier transform (STFT) domain, and three wavelet-based denoising techniques by increasing the improvement in the SNR by up to 118.94% and the peak SNR by up to 138.52%, as well as by reducing the root mean squared error by up to 64.59%, the mean absolute error by up to 55.60%, and the maximum absolute error by up to 84.79%.

Highlights

  • The first detection of a gravitational-wave signal from a compact binary coalescence (CBC)system [1,2] was made in 2015 by the Advanced LIGO (Laser Interferometer Gravitational-WaveObservatory) detectors [3]

  • An algorithm based on the local polynomial approximation (LPA) combined with the relative intersection of confidence intervals (RICI) rule for the filter support selection is proposed to denoise the gravitational-wave burst signals from core collapse supernovae

  • The analysis of the experimental results obtained by several case studies indicates that the LPA-RICI method efficiently removes the noise and simultaneously preserves the morphology of the gravitational-wave burst signals

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Summary

Introduction

The first detection of a gravitational-wave signal from a compact binary coalescence (CBC). This work was extended in [64] where the TV-based denoising method was successfully applied for denoising of gravitational-wave signals embedded in real noise data acquired from Advanced LIGO detectors, providing a detailed analysis of the model regularization parameter selection. We apply the LPA-RICI algorithm to the denoising of gravitational-wave bursts from CCSNs. The data are obtained by injecting numerically generated signals into the real-life non-Gaussian and non-stationary noise data obtained by the Advanced LIGO Livingston detector. The numerical analysis done on the experimental results indicates that the proposed denoising method provides an accurate estimation of the original gravitational-wave signal corrupted by real-life noise data, by efficiently removing the noise and simultaneously preserving the characteristic features of CCSN bursts.

Materials and Methods
The LPA Filter Design Method
The RICI Algorithm
Data Conditioning
Whitening Procedure
Data Denoising
Performance Indices
Case Study—Signal s20a1o05
Case Study—Signal s20a2o09
Full Text
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