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Mind the gap: the power of combining photometric surveys with intensity mapping
The long wavelength modes lost to bright foregrounds in the interferometric 21-cm surveys can partially be recovered using a forward modeling approach that exploits the non-linear coupling between small and large scales induced by gravitational evolution. In this work, we build upon this approach by...
Autores principales: | , , , |
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Lenguaje: | eng |
Publicado: |
2021
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Materias: | |
Acceso en línea: | https://dx.doi.org/10.1088/1475-7516/2021/10/056 http://cds.cern.ch/record/2790827 |
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author | Modi, Chirag White, Martin Castorina, Emanuele Slosar, Anže |
author_facet | Modi, Chirag White, Martin Castorina, Emanuele Slosar, Anže |
author_sort | Modi, Chirag |
collection | CERN |
description | The long wavelength modes lost to bright foregrounds in the interferometric 21-cm surveys can partially be recovered using a forward modeling approach that exploits the non-linear coupling between small and large scales induced by gravitational evolution. In this work, we build upon this approach by considering how adding external galaxy distribution data can help to fill in these modes. We consider supplementing the 21-cm data at two different redshifts with a spectroscopic sample (good radial resolution but low number density) loosely modeled on DESI-ELG at z = 1 and a photometric sample (high number density but poor radial resolution) similar to LSST sample at z = 1 and z = 4 respectively. We find that both the galaxy samples are able to reconstruct the largest modes better than only using 21-cm data, with the spectroscopic sample performing significantly better than the photometric sample despite much lower number density. We demonstrate the synergies between surveys by showing that the primordial initial density field is reconstructed better with the combination of surveys than using either of them individually. Methodologically, we also explore the importance of smoothing the density field when using bias models to forward model these tracers for reconstruction. |
id | cern-2790827 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2021 |
record_format | invenio |
spelling | cern-27908272023-01-31T10:43:22Zdoi:10.1088/1475-7516/2021/10/056http://cds.cern.ch/record/2790827engModi, ChiragWhite, MartinCastorina, EmanueleSlosar, AnžeMind the gap: the power of combining photometric surveys with intensity mappingastro-ph.COAstrophysics and AstronomyThe long wavelength modes lost to bright foregrounds in the interferometric 21-cm surveys can partially be recovered using a forward modeling approach that exploits the non-linear coupling between small and large scales induced by gravitational evolution. In this work, we build upon this approach by considering how adding external galaxy distribution data can help to fill in these modes. We consider supplementing the 21-cm data at two different redshifts with a spectroscopic sample (good radial resolution but low number density) loosely modeled on DESI-ELG at z = 1 and a photometric sample (high number density but poor radial resolution) similar to LSST sample at z = 1 and z = 4 respectively. We find that both the galaxy samples are able to reconstruct the largest modes better than only using 21-cm data, with the spectroscopic sample performing significantly better than the photometric sample despite much lower number density. We demonstrate the synergies between surveys by showing that the primordial initial density field is reconstructed better with the combination of surveys than using either of them individually. Methodologically, we also explore the importance of smoothing the density field when using bias models to forward model these tracers for reconstruction.The long wavelength modes lost to bright foregrounds in the interferometric 21-cm surveys can partially be recovered using a forward modeling approach that exploits the non-linear coupling between small and large scales induced by gravitational evolution. In this work, we build upon this approach by considering how adding external galaxy distribution data can help to fill in these modes. We consider supplementing the 21-cm data at two different redshifts with a spectroscopic sample (good radial resolution but low number density) loosely modeled on DESI-ELG at $z=1$ and a photometric sample (high number density but poor radial resolution) similar to LSST sample at $z=1$ and $z=4$ respectively. We find that both the galaxy samples are able to reconstruct the largest modes better than only using 21-cm data, with the spectroscopic sample performing significantly better than the photometric sample despite much lower number density. We demonstrate the synergies between surveys by showing that the primordial initial density field is reconstructed better with the combination of surveys than using either of them individually. Methodologically, we also explore the importance of smoothing the density field when using bias models to forward model these tracers for reconstruction.arXiv:2102.08116oai:cds.cern.ch:27908272021-02-16 |
spellingShingle | astro-ph.CO Astrophysics and Astronomy Modi, Chirag White, Martin Castorina, Emanuele Slosar, Anže Mind the gap: the power of combining photometric surveys with intensity mapping |
title | Mind the gap: the power of combining photometric surveys with intensity mapping |
title_full | Mind the gap: the power of combining photometric surveys with intensity mapping |
title_fullStr | Mind the gap: the power of combining photometric surveys with intensity mapping |
title_full_unstemmed | Mind the gap: the power of combining photometric surveys with intensity mapping |
title_short | Mind the gap: the power of combining photometric surveys with intensity mapping |
title_sort | mind the gap: the power of combining photometric surveys with intensity mapping |
topic | astro-ph.CO Astrophysics and Astronomy |
url | https://dx.doi.org/10.1088/1475-7516/2021/10/056 http://cds.cern.ch/record/2790827 |
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