galaxy color matching in catalogs
DESCRIPTION
Galaxy Color Matching in Catalogs. Bryce Kalmbach University of Washington. What are we doing?. Finding best fit model SEDs for galactic catalog objects Need SEDs to provide observational catalogs Link between cosmological simulations and working science groups. Matching Algorithm. - PowerPoint PPT PresentationTRANSCRIPT
Galaxy Color Matchingin CatalogsBryce Kalmbach
University of Washington
What are we doing?
• Finding best fit model SEDs for galactic catalog objects
• Need SEDs to provide observational catalogs
• Link between cosmological simulations and working science groups
Matching Algorithm• Calculate colors for model SEDs we want to
match– Use tools in sims_photUtils
• Find best least-squares fit across all colors for each catalog object– See readGalfast in sims_photUtils for example
Sample Matching Result
Current SED Models• Bruzual and Charlot (2003) with Chabrier (2003) IMF
• 4 different Star Formation Histories:• Burst• Constant• Exp• Instant
• Age grid from 1.585 Myr to 12.5 Gyr
• Metallicity from .5% to 250% Z_Solar using Padova (1994) isochrones
B & C Model Coverage
B & C Model Coverage
B & C Model Coverage
Galacticus Catalog
• Currently working with galacticus catalogs– Developed by Andrew Benson (see Benson 2010)
• Does not seem to match well with B&C SEDs
Comparing Galacticus
Comparing Galacticus
Comparing Galacticus
Need Better Coverage
• Should we get new SEDs?– FSPS (Conroy, Gunn & White 2009)
Comparing with FSPS
Comparing with FSPS
Comparing with FSPS
Need Better Coverage
• Should we get new SEDs?– FSPS (Conroy, Gunn & White 2009)
• Refine the coverage of our grid?
Changing Grid Coverage
Current Issues
• Bluer catalog objects than can currently match to SEDs– Single Star Populations?
Individual Stars 10Myr
(J. Dalcanton)
Current Issues
• Bluer catalog objects than can currently match to SEDs– Single Star Populations?
• Need more statistics from galaxy catalog– Will be provided in next run
Future Work
• PCA (Principal Component Analysis)– Determine axes of maximum variance and use
these as new basis vectors– Reduce Dimensionality• Storage Savings
Capture Information in Few Components
Capture Information in Few Components
Capture Information in Few Components
99.8% Information in 10 Principal Components…but…
Now 99.99999%, unfortunately with 2x components, but good color match
Future Work
• PCA (Principal Component Analysis)– Determine axes of maximum variance and use
these as new basis functions– Reduce Dimensionality• Storage Savings• Challenge: What is the minimum number of
components we can get the maximum amount of accuracy from?
Future Work
• PCA (Principal Component Analysis)– Continuous coverage of sample space rather than
grid
PCA will provide continuum
Future Work
• PCA (Principal Component Analysis)– Continuous coverage of sample space rather than
grid• Challenge: How do we sample to get the best set of
eigenspectra? • Challenge: How do we find the eigenvalues that
generate an SED that best matches the object color?
– Will need new methods that can combine linear combinations of eigenspectra
Thank You!
Contact: [email protected]