A novel multi-layer modular approach for real-time fuzzy-identification
of gravitational-wave signals
- URL: http://arxiv.org/abs/2206.06004v4
- Date: Sat, 16 Dec 2023 15:36:26 GMT
- Title: A novel multi-layer modular approach for real-time fuzzy-identification
of gravitational-wave signals
- Authors: Francesco Pio Barone, Daniele Dell'Aquila, Marco Russo
- Abstract summary: We propose a novel layered framework for real-time detection of gravitational waves inspired by speech processing techniques.
The paper describes the basic concepts of the framework and the derivation of the first three layers.
Compared to more complex approaches, such as convolutional neural networks, our framework has lower accuracy.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Advanced LIGO and Advanced Virgo ground-based interferometers are instruments
capable to detect gravitational wave signals exploiting advanced laser
interferometry techniques. The underlying data analysis task consists in
identifying specific patterns in noisy timeseries, but it is made extremely
complex by the incredibly small amplitude of the target signals. In this
scenario, the development of effective gravitational wave detection algorithms
is crucial. We propose a novel layered framework for real-time detection of
gravitational waves inspired by speech processing techniques and, in the
present implementation, based on a state-of-the-art machine learning approach
involving a hybridization of genetic programming and neural networks. The key
aspects of the newly proposed framework are: the well structured, layered
approach, and the low computational complexity. The paper describes the basic
concepts of the framework and the derivation of the first three layers. Even if
the layers are based on models derived using a machine learning approach, the
proposed layered structure has a universal nature. Compared to more complex
approaches, such as convolutional neural networks, which comprise a parameter
set of several tens of MB and were tested exclusively for fixed length data
samples, our framework has lower accuracy (e.g., it identifies 45% of low
signal-to-noise-ration gravitational wave signals, against 65% of the
state-of-the-art, at a false alarm probability of $10^{-2}$), but has a much
lower computational complexity and a higher degree of modularity. Furthermore,
the exploitation of short-term features makes the results of the new framework
virtually independent against time-position of gravitational wave signals,
simplifying its future exploitation in real-time multi-layer pipelines for
gravitational-wave detection with new generation interferometers.
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