X-ray/UV/optical variability of NGC 4593 with Swift: Reprocessing of X-rays by an extended reprocessor
I M McHardy, S D Connolly, K Horne E M Cackett, J Gelbord, B M, Peterson, M Pahari, N Gehrels, R Edelson, M Goad, P Lira, P Arevalo, R D, Baldi, N Brandt, E Breedt, H Chand, G Dewangan, C Done, M Elvis, D, Emmanoulopoulos, M M Fausnaugh, S Kaspi, C S Kochanek, K Korista, I E

TL;DR
This study uses Swift observations to analyze the multiwavelength variability of NGC 4593, revealing complex reprocessing mechanisms involving the accretion disc and surrounding gas, with implications for understanding AGN emission regions.
Contribution
It provides detailed timing analysis of X-ray, UV, and optical variability in NGC 4593, highlighting the role of extended reprocessing regions and refining models of AGN emission.
Findings
UV/optical lags mostly match disc reprocessing predictions
U-band lag is larger due to broad line region emission
X-ray to UV lags exceed simple disc reprocessing expectations
Abstract
We report the results of intensive X-ray, UV and optical monitoring of the Seyfert 1 galaxy NGC 4593 with Swift. There is no intrinsic flux-related spectral change in the the variable components in any band with small apparent variations due only to contamination by a second constant component, possibly a (hard) reflection component in the X-rays and the (red) host galaxy in the UV/optical bands. Relative to the shortest wavelength band, UVW2, the lags of the other UV and optical bands are mostly in agreement with the predictions of reprocessing of high energy emission from an accretion disc. The U-band lag is, however, far larger than expected, almost certainly because of reprocessed Balmer continuum emission from the more distant broad line region gas. The UVW2 band is well correlated with the X-rays but lags by ~6x more than expected if the UVW2 results from reprocessing of X-rays on…
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