A MACHINE-LEARNING APPROACH TO MEASURING THE ESCAPE OF IONIZING RADIATION FROM GALAXIES IN THE REIONIZATION EPOCH

作者:Jensen Hannes; Zackrisson Erik; Pelckmans Kristiaan; Binggeli Christian; Ausmees Kristiina; Lundholm Ulrika
来源:Astrophysical Journal, 2016, 827(1): 5.
DOI:10.3847/0004-637X/827/1/5

摘要

Recent observations of galaxies at z greater than or similar to 7, along with the low value of the electron scattering optical depth measured by the Planck mission, make galaxies plausible as dominant sources of ionizing photons during the epoch of reionization. However, scenarios of galaxy-driven reionization hinge on the assumption that the average escape fraction of ionizing photons is significantly higher for galaxies in the reionization epoch than in the local universe. The NIRSpec instrument on the James Webb Space Telescope (JWST) will enable spectroscopic observations of large samples of reionization-epoch galaxies. While the leakage of ionizing photons will not be directly measurable from these spectra, the leakage is predicted to have an indirect effect on the spectral slope and the strength of nebular emission lines in the rest-frame ultraviolet and optical. Here, we apply a machine learning technique known as lasso regression on mock JWST/NIRSpec observations of simulated z = 7 galaxies in order to obtain a model that can predict the escape fraction from JWST/NIRSpec data. Barring systematic biases in the simulated spectra, our method is able to retrieve the escape fraction with a mean absolute error of Delta f(esc) approximate to 0.12 for spectra with signal-to-noise ratio approximate to 5 at a rest-frame wavelength of 1500 angstrom. for our fiducial simulation. This prediction accuracy represents a significant improvement over previous similar approaches.

  • 出版日期2016-8-10