Welcome to the new version of CaltechAUTHORS. Login is currently restricted to library staff. If you notice any issues, please email coda@library.caltech.edu
Published November 1, 2020 | Published + Submitted
Journal Article Open

Deep Modeling of Quasar Variability

Abstract

Quasars have long been known as intrinsically variable sources, but the physical mechanism underlying the temporal optical/UV variability is still not well understood. We propose a novel nonparametric method for modeling and forecasting the optical variability of quasars utilizing an AE neural network to gain insight into the underlying processes. The AE is trained with ~15,000 decade-long quasar light curves obtained by the Catalina Real-time Transient Survey selected with negligible flux contamination from the host galaxy. The AE's performance in forecasting the temporal flux variation of quasars is superior to that of the damped random walk process. We find a temporal asymmetry in the optical variability and a novel relation—the amplitude of the variability asymmetry decreases as luminosity and/or black hole mass increases—is suggested with the help of autoencoded features. The characteristics of the variability asymmetry are in agreement with those from the self-organized disk instability model, which predicts that the magnitude of the variability asymmetry decreases as the ratio of the diffusion mass to inflow mass in the accretion disk increases.

Additional Information

© 2020 The American Astronomical Society. Received 2020 March 2; revised 2020 September 2; accepted 2020 September 16; published 2020 November 2. We thank the anonymous referee for helpful comments. This work was supported in part by NSF grants AST-1518308, and AST-1815034, and NASA grant 16-ADAP16-0232. The work of D.S. was carried out at the Jet Propulsion Laboratory at the California Institute of Technology, under a contract with NASA.Y.T. was funded by JSPS KAKENHI grant No. JP16J05742. Y.T. studied as a Global Relay of Observatories Watching Transients Happen (GROWTH) intern at Caltech during the summer and fall of 2017. GROWTH is funded by the National Science Foundation under Partnerships for International Research and Education grant No. 1545949. N.K. acknowledges the support by MEXT Kakenhi grant No. 17H06362 and the JPSP PIRE program.

Attached Files

Published - Tachibana_2020_ApJ_903_54.pdf

Submitted - 2003.01241.pdf

Files

Tachibana_2020_ApJ_903_54.pdf
Files (9.6 MB)
Name Size Download all
md5:01da4f477bbd3d0fca87977a162f4009
5.2 MB Preview Download
md5:f9f7eeaa9b3641a6de181ed9df13f15f
4.3 MB Preview Download

Additional details

Created:
August 22, 2023
Modified:
October 20, 2023