Rapid parameter estimation of discrete decaying signals using autoencoder networks

Visschers, Jim C and Budker, Dmitry and Bougas, Lykourgos (2021) Rapid parameter estimation of discrete decaying signals using autoencoder networks. Machine Learning: Science and Technology, 2 (4). 045024. ISSN 2632-2153

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Abstract

In this work we demonstrate the use of neural networks for rapid extraction of signal parameters of discretely sampled signals. In particular, we use dense autoencoder networks to extract the parameters of interest from exponentially decaying signals and decaying oscillations. By using a three-stage training method and careful choice of the neural network size, we are able to retrieve the relevant signal parameters directly from the latent space of the autoencoder network at significantly improved rates compared to traditional algorithmic signal-analysis approaches. We show that the achievable precision and accuracy of this method of analysis is similar to conventional algorithm-based signal analysis methods, by demonstrating that the extracted signal parameters are approaching their fundamental parameter estimation limit as provided by the Cramér–Rao bound. Furthermore, we demonstrate that autoencoder networks are able to achieve signal analysis, and, hence, parameter extraction, at rates of 75 kHz, orders-of-magnitude faster than conventional techniques with similar precision. Finally, our exploration of the limitations of our approach in different computational systems suggests that analysis rates of $\gt$200 kHz are feasible using neural networks in systems where the transfer time between the data-acquisition system and data-analysis modules can be kept below ∼3 µs.

Item Type: Article
Subjects: South Archive > Multidisciplinary
Depositing User: Unnamed user with email support@southarchive.com
Date Deposited: 05 Jul 2023 04:30
Last Modified: 03 Jun 2024 12:43
URI: http://ebooks.eprintrepositoryarticle.com/id/eprint/1239

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