A Comprehensive X-ray Spectral Analysis of the Seyfert 1.5 NGC 3227
A. Markowitz (1), J.N. Reeves (2), I.M. George (3,4), V. Braito (5),, R. Smith (5), S. Vaughan (5), P. Ar\'evalo (6), F. Tombesi (4,7,8,9)

TL;DR
This paper presents a detailed X-ray spectral analysis of NGC 3227, revealing complex absorption, soft excess variability, and Fe line features, advancing understanding of Seyfert galaxy accretion and outflows.
Contribution
It provides the first comprehensive broadband spectral model of NGC 3227, including warm absorber layers, soft excess behavior, and Fe line characteristics, with implications for AGN structure.
Findings
Detection of two warm absorber layers with distinct ionization states.
Soft excess normalization increases independently of the hard X-ray component.
Fe K alpha line width suggests emission from the broad-line region.
Abstract
We present results of a 100 ks XMM observation of the Seyfert 1.5 NGC 3227. Our best-fit broadband model to the pn spectrum consists of a moderately flat (photon index 1.57) hard X-ray power-law absorbed by cold gas with N_H = 3 * 10^21 cm^-2, plus a strong soft excess, modeled as a steep power law with a photon index of 3.35, absorbed by cold gas with N_H = 9 * 10^20 cm^-2. The soft excess normalization increases by ~20% in ~20 ks, independently of the hard X-ray component, and the UV continuum, tracked via the OM, also shows a strong increasing trend over the observation, consistent with reprocessing of soft X-ray emission. Warm absorber signatures are evident in both the EPIC and RGS; we model two layers, with log(xi) = 1.2 and 2.9 erg cm s^-1, and with similar column densities (~1-2 * 10^21 cm^-2). The outflow velocities relative to systemic of the high- and low-ionization absorbers…
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