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Galaxy Color Matching in Catalogs Bryce Kalmbach University of Washington
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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
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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
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Sample Matching Result
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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
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B & C Model Coverage
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Galacticus Catalog Currently working with galacticus catalogs – Developed by Andrew Benson (see Benson 2010) Does not seem to match well with B&C SEDs
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Comparing Galacticus
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Need Better Coverage Should we get new SEDs? – FSPS (Conroy, Gunn & White 2009)
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Comparing with FSPS
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Need Better Coverage Should we get new SEDs? – FSPS (Conroy, Gunn & White 2009) Refine the coverage of our grid?
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Changing Grid Coverage
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Current Issues Bluer catalog objects than can currently match to SEDs – Single Star Populations?
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Individual Stars 10Myr (J. Dalcanton)
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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
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Future Work PCA (Principal Component Analysis) – Determine axes of maximum variance and use these as new basis vectors – Reduce Dimensionality Storage Savings
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Capture Information in Few Components
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99.8% Information in 10 Principal Components…but…
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Now 99.99999%, unfortunately with 2x components, but good color match
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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?
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Future Work PCA (Principal Component Analysis) – Continuous coverage of sample space rather than grid
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PCA will provide continuum
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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
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Thank You! Contact: brycek@uw.edu
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