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Single-Photon Level Dispersive Fourier Transform: Ultrasensitive Characterization of Noise-Driven Nonlinear Dynamics

[Image: see text] Dispersive Fourier transform is a characterization technique that allows directly extracting an optical spectrum from a time domain signal, thus providing access to real-time characterization of the signal spectrum. However, these techniques suffer from sensitivity and dynamic rang...

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Autores principales: Sader, Lynn, Bose, Surajit, Kashi, Anahita Khodadad, Boussafa, Yassin, Haldar, Raktim, Dauliat, Romain, Roy, Philippe, Fabert, Marc, Tonello, Alessandro, Couderc, Vincent, Kues, Michael, Wetzel, Benjamin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2023
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10655252/
https://www.ncbi.nlm.nih.gov/pubmed/38027249
http://dx.doi.org/10.1021/acsphotonics.3c00711
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author Sader, Lynn
Bose, Surajit
Kashi, Anahita Khodadad
Boussafa, Yassin
Haldar, Raktim
Dauliat, Romain
Roy, Philippe
Fabert, Marc
Tonello, Alessandro
Couderc, Vincent
Kues, Michael
Wetzel, Benjamin
author_facet Sader, Lynn
Bose, Surajit
Kashi, Anahita Khodadad
Boussafa, Yassin
Haldar, Raktim
Dauliat, Romain
Roy, Philippe
Fabert, Marc
Tonello, Alessandro
Couderc, Vincent
Kues, Michael
Wetzel, Benjamin
author_sort Sader, Lynn
collection PubMed
description [Image: see text] Dispersive Fourier transform is a characterization technique that allows directly extracting an optical spectrum from a time domain signal, thus providing access to real-time characterization of the signal spectrum. However, these techniques suffer from sensitivity and dynamic range limitations, hampering their use for special applications in, e.g., high-contrast characterizations and sensing. Here, we report on a novel approach to dispersive Fourier transform-based characterization using single-photon detectors. In particular, we experimentally develop this approach by leveraging mutual information analysis for signal processing and hold a performance comparison with standard dispersive Fourier transform detection and statistical tools. We apply the comparison to the analysis of noise-driven nonlinear dynamics arising from well-known modulation instability processes. We demonstrate that with this dispersive Fourier transform approach, mutual information metrics allow for successfully gaining insight into the fluctuations associated with modulation instability-induced spectral broadening, providing qualitatively similar signatures compared to ultrafast photodetector-based dispersive Fourier transform but with improved signal quality and spectral resolution (down to 53 pm). The technique presents an intrinsically unlimited dynamic range and is extremely sensitive, with a sensitivity reaching below the femtowatt (typically 4 orders of magnitude better than ultrafast dispersive Fourier transform detection). We show that this method can not only be implemented to gain insight into noise-driven (spontaneous) frequency conversion processes but also be leveraged to characterize incoherent dynamics seeded by weak coherent optical fields.
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spelling pubmed-106552522023-11-17 Single-Photon Level Dispersive Fourier Transform: Ultrasensitive Characterization of Noise-Driven Nonlinear Dynamics Sader, Lynn Bose, Surajit Kashi, Anahita Khodadad Boussafa, Yassin Haldar, Raktim Dauliat, Romain Roy, Philippe Fabert, Marc Tonello, Alessandro Couderc, Vincent Kues, Michael Wetzel, Benjamin ACS Photonics [Image: see text] Dispersive Fourier transform is a characterization technique that allows directly extracting an optical spectrum from a time domain signal, thus providing access to real-time characterization of the signal spectrum. However, these techniques suffer from sensitivity and dynamic range limitations, hampering their use for special applications in, e.g., high-contrast characterizations and sensing. Here, we report on a novel approach to dispersive Fourier transform-based characterization using single-photon detectors. In particular, we experimentally develop this approach by leveraging mutual information analysis for signal processing and hold a performance comparison with standard dispersive Fourier transform detection and statistical tools. We apply the comparison to the analysis of noise-driven nonlinear dynamics arising from well-known modulation instability processes. We demonstrate that with this dispersive Fourier transform approach, mutual information metrics allow for successfully gaining insight into the fluctuations associated with modulation instability-induced spectral broadening, providing qualitatively similar signatures compared to ultrafast photodetector-based dispersive Fourier transform but with improved signal quality and spectral resolution (down to 53 pm). The technique presents an intrinsically unlimited dynamic range and is extremely sensitive, with a sensitivity reaching below the femtowatt (typically 4 orders of magnitude better than ultrafast dispersive Fourier transform detection). We show that this method can not only be implemented to gain insight into noise-driven (spontaneous) frequency conversion processes but also be leveraged to characterize incoherent dynamics seeded by weak coherent optical fields. American Chemical Society 2023-10-25 /pmc/articles/PMC10655252/ /pubmed/38027249 http://dx.doi.org/10.1021/acsphotonics.3c00711 Text en © 2023 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by-nc-nd/4.0/Permits non-commercial access and re-use, provided that author attribution and integrity are maintained; but does not permit creation of adaptations or other derivative works (https://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Sader, Lynn
Bose, Surajit
Kashi, Anahita Khodadad
Boussafa, Yassin
Haldar, Raktim
Dauliat, Romain
Roy, Philippe
Fabert, Marc
Tonello, Alessandro
Couderc, Vincent
Kues, Michael
Wetzel, Benjamin
Single-Photon Level Dispersive Fourier Transform: Ultrasensitive Characterization of Noise-Driven Nonlinear Dynamics
title Single-Photon Level Dispersive Fourier Transform: Ultrasensitive Characterization of Noise-Driven Nonlinear Dynamics
title_full Single-Photon Level Dispersive Fourier Transform: Ultrasensitive Characterization of Noise-Driven Nonlinear Dynamics
title_fullStr Single-Photon Level Dispersive Fourier Transform: Ultrasensitive Characterization of Noise-Driven Nonlinear Dynamics
title_full_unstemmed Single-Photon Level Dispersive Fourier Transform: Ultrasensitive Characterization of Noise-Driven Nonlinear Dynamics
title_short Single-Photon Level Dispersive Fourier Transform: Ultrasensitive Characterization of Noise-Driven Nonlinear Dynamics
title_sort single-photon level dispersive fourier transform: ultrasensitive characterization of noise-driven nonlinear dynamics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10655252/
https://www.ncbi.nlm.nih.gov/pubmed/38027249
http://dx.doi.org/10.1021/acsphotonics.3c00711
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