期刊
ASTRONOMICAL JOURNAL
卷 124, 期 1, 页码 127-146出版社
IOP PUBLISHING LTD
DOI: 10.1086/341040
关键词
galaxies : dwarf; galaxies : evolution; galaxies : interactions; methods : N-body simulations
Recent observations of surface brightness distributions of both Milky Way and M31 satellite galaxies have revealed many instances of sudden changes or breaks in the slope of the surface brightness profiles ( at some break radius r(break)). These breaks are often accompanied by increasingly elliptical isophotes and sometimes by isophote twisting. We investigate the hypothesis of a tidal origin for these features by applying the same ellipse-fitting techniques that are used on observed galaxies to numerical simulations of the destruction of satellites, represented by spherical, single-component systems. We examine how observed quantities such as r(break), ellipticity e, and position angle phi of the fitted ellipses and amplitude of the extra-break population vary with the satellite's orbital eccentricity and phase, as well as our viewpoint relative to the orbit. We also look at orbit and viewpoint dependence of the rate of change of the latter three quantities with radius. We find that there are trends with orbital phase and eccentricity in all observed quantities, many of which are preserved through a wide variety of viewing angles. In particular, a generic feature of all simulations is a depletion zone just interior to an excess zone, regions in which the surface brightness is lower and higher, respectively, than the initial pro le. A clear interpretation of any individual image, however, is likely to be hampered by the dependence of the observable features on these multiple parameters. For example, breaks can be excited by several physical processes and can occur well within the bound satellite population. Nevertheless, we do find we can place loose constraints on the tidal radius, mass-loss rate, orbital type and phase of the satellite, and nature of breaks, using photometric data alone.
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