SNIa-Cosmology Analysis Results from Simulated LSST Images: from Difference Imaging to Constraints on Dark Energy

dc.contributor.author

Sánchez, B

dc.contributor.author

Kessler, R

dc.contributor.author

Scolnic, D

dc.contributor.author

Armstrong, B

dc.contributor.author

Biswas, R

dc.contributor.author

Bogart, J

dc.contributor.author

Chiang, J

dc.contributor.author

Cohen-Tanugi, J

dc.contributor.author

Fouchez, D

dc.contributor.author

Gris, Ph

dc.contributor.author

Heitmann, K

dc.contributor.author

Hložek, R

dc.contributor.author

Jha, S

dc.contributor.author

Kelly, H

dc.contributor.author

Liu, S

dc.contributor.author

Narayan, G

dc.contributor.author

Racine, B

dc.contributor.author

Rykoff, E

dc.contributor.author

Sullivan, M

dc.contributor.author

Walter, C

dc.contributor.author

Wood-Vasey, M

dc.contributor.author

Collaboration, The LSST Dark Energy Science

dc.date.accessioned

2021-12-25T15:01:26Z

dc.date.available

2021-12-25T15:01:26Z

dc.date.updated

2021-12-25T15:01:24Z

dc.description.abstract

The Vera Rubin Observatory Legacy Survey of Space and Time (LSST) is expected to process ${\sim}10^6$ transient detections per night. For precision measurements of cosmological parameters and rates, it is critical to understand the detection efficiency, magnitude limits, artifact contamination levels, and biases in the selection and photometry. Here we rigorously test the LSST Difference Image Analysis (DIA) pipeline using simulated images from the Rubin Observatory LSST Dark Energy Science Collaboration (DESC) Data Challenge (DC2) simulation for the Wide-Fast-Deep (WFD) survey area. DC2 is the first large-scale (300 deg$^2$) image simulation of a transient survey that includes realistic cadence, variable observing conditions, and CCD image artifacts. We analyze ${\sim}$15 deg$^2$ of DC2 over a 5-year time-span in which artificial point-sources from Type Ia Supernovae (SNIa) light curves have been overlaid onto the images. We measure the detection efficiency as a function of Signal-to-Noise Ratio (SNR) and find a $50%$ efficiency at $\rm{SNR}=5.8$. The magnitude limits for each filter are: $u=23.66$, $g=24.69$, $r=24.06$, $i=23.45$, $z=22.54$, $y=21.62$ $\rm{mag}$. The artifact contamination is $\sim90%$ of detections, corresponding to $\sim1000$ artifacts/deg$^2$ in $g$ band, and falling to 300 per deg$^2$ in $y$ band. The photometry has biases $<1%$ for magnitudes $19.5 < m <23$. Our DIA performance on simulated images is similar to that of the Dark Energy Survey pipeline applied to real images. We also characterize DC2 image properties to produce catalog-level simulations needed for distance bias corrections. We find good agreement between DC2 data and simulations for distributions of SNR, redshift, and fitted light-curve properties. Applying a realistic SNIa-cosmology analysis for redshifts $z<1$, we recover the input cosmology parameters to within statistical uncertainties.

dc.identifier.uri

https://hdl.handle.net/10161/24140

dc.subject

astro-ph.CO

dc.subject

astro-ph.CO

dc.subject

astro-ph.IM

dc.title

SNIa-Cosmology Analysis Results from Simulated LSST Images: from Difference Imaging to Constraints on Dark Energy

dc.type

Journal article

duke.contributor.orcid

Scolnic, D|0000-0002-4934-5849

duke.contributor.orcid

Walter, C|0000-0003-2035-2380

pubs.organisational-group

Trinity College of Arts & Sciences

pubs.organisational-group

Physics

pubs.organisational-group

Duke

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
2111.06858v1.pdf
Size:
9.67 MB
Format:
Adobe Portable Document Format