Library Portal | UWC Portal
    • Login
    Contact Us | Quick Submission Guide | About Us | FAQs | Login
    View Item 
    •   Repository Home
    • Faculty of Natural Sciences
    • Physics
    • Research Articles (Physics)
    • View Item
    •   Repository Home
    • Faculty of Natural Sciences
    • Physics
    • Research Articles (Physics)
    • View Item
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    Predicting the neutral hydrogen content of galaxies from optical data using machine learning

    Thumbnail
    View/Open
    Rafieferantsoa_Predicting-the-neutral_2018.pdf (8.408Mb)
    Date
    2018
    Author
    Rafieferantsoa, Mika
    Andrianomena, Sambatra
    Dave, Romeel
    Metadata
    Show full item record
    Abstract
    We develop a machine learning-based framework to predict the Hi content of galaxies using more straightforwardly observable quantities such as optical photometry and environmental parameters. We train the algorithm on z = 0 - 2 outputs from the Mufasa cosmological hydrodynamic simulation, which includes star formation, feedback, and a heuristic model to quench massive galaxies that yields a reasonable match to a range of survey data including Hi. We employ a variety of machine learning methods (regressors), and quantify their performance using the root mean square error (rmse) and the Pearson correlation coefficient (r). Considering SDSS photometry, 3rd nearest neighbor environment and line of sight peculiar velocities as features, we obtain r > 0:8 accuracy of the Hi-richness prediction, corresponding to rmse< 0:3. Adding near-IR photometry to the features yields some improvement to the prediction. Compared to all the regressors, random forest shows the best performance, with r > 0:9 at z = 0, followed by a Deep Neural Network with r > 0:85. All regressors exhibit a declining performance with increasing redshift, which limits the utility of this approach to z ~<1, and they tend to somewhat over-predict the Hi content of low-Hi galaxies which might be due to Eddington bias in the training sample.We test our approach on the RESOLVE survey data. Training on a subset of RESOLVE, we find that our machine learning method can reasonably well predict the Hi-richness of the remaining RESOLVE data, with rmse~ 0:28. Whenwe train on mock data fromMufasa and test onRESOLVE, this increases to rmse~ 0:45. Our method will be useful for making galaxy-by-galaxy survey predictions and incompleteness corrections for upcoming Hi 21cm surveys such as the LADUMA and MIGHTEE surveys on MeerKAT, over regions where photometry is already available.
    URI
    http://dx.doi.org/10.1093/mnras/sty1777
    http://hdl.handle.net/10566/4005
    Collections
    • Research Articles (Physics) [112]

    DSpace 5.5 | Ubuntu 14.04 | Copyright © University of the Western Cape
    Contact Us | Send Feedback
    Theme by 
    @mire NV
     

     

    Browse

    All of RepositoryCommunities & CollectionsBy Issue DateAuthorsTitlesSubjectsThis CollectionBy Issue DateAuthorsTitlesSubjects

    My Account

    LoginRegister

    Statistics

    View Usage Statistics

    DSpace 5.5 | Ubuntu 14.04 | Copyright © University of the Western Cape
    Contact Us | Send Feedback
    Theme by 
    @mire NV