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Gravitational wave science with machine learning / Elena Cuoco, editor

Contributor(s): Resource type: Ressourcentyp: Buch (Online)Book (Online)Language: English Series: Springer series in astrophysics and cosmologyPublisher: Singapore : Springer, 2025Copyright date: © 2025Description: 1 Online-Ressource (XXV, 289 Seiten)ISBN:
  • 9789819617371
Subject(s): Additional physical formats: 9789819617364 | 9789819617388 | 9789819617395 | Erscheint auch als: Gravitational wave science with machine learning. Druck-Ausgabe. Cham : Springer, 2025. xxv, 289 SeitenDDC classification:
  • 523.01 23
DOI: DOI: 10.1007/978-981-96-1737-1Online resources:
Contents:
1. Neural network time-series classifiers for gravitational-wave searches in single-detector periods -- 2. A simple self similarity-based unsupervised noise monitor for gravitational-wave detectors -- 3 Simulation of transient noise bursts in gravitational wave interferometers -- 4. Efficient ML Algorithms for Detecting Glitches and Data Patterns in LIGO Time Series -- 5. Denoising gravitational-wave signals from binary black holes with dilated convolutional autoencoder.
Summary: This book highlights the state of the art of machine learning applied to the science of gravitational waves. The main topics of the book range from the search for astrophysical gravitational wave signals to noise suppression techniques and control systems using machine learning-based algorithms. During the four years of work in the COST Action CA17137-A network for Gravitational Waves, Geophysics and Machine Learning (G2net), the collaboration produced several original publications as well as tutorials and lectures in the training schools we organized. The book encapsulates the immense amount of finding and achievements. It is a timely reference for young researchers approaching the analysis of data from gravitational wave experiments, with alternative approaches based on the use of artificial intelligence techniques.PPN: PPN: 1922926817Package identifier: Produktsigel: ZDB-2-SEB | ZDB-2-PHA | ZDB-2-SXP
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