CMEs in the Heliosphere: III. A Statistical Analysis of the Kinematic Properties Derived from Stereoscopic Geometrical Modelling Techniques Applied to CMEs Detected in the Heliosphere from 2008 to 2014 by STEREO/HI-1
D. Barnes, J. A. Davies, R. A. Harrison, J. P. Byrne, C. H. Perry, V., Bothmer, J. P. Eastwood, P. T. Gallagher, E. K. J. Kilpua, C. M\"ostl, L., Rodriguez, A. P. Rouillard, and D. Odstrcil

TL;DR
This study analyzes 151 CMEs observed by STEREO/HI from 2008 to 2014 using stereoscopic techniques to infer their kinematic properties, highlighting the method's limitations and agreement with single-spacecraft analysis.
Contribution
It applies and evaluates the SSSE stereoscopic technique to a large CME dataset, revealing its strengths and limitations in CME kinematic analysis.
Findings
SSSE velocities agree well with single-spacecraft methods.
Large half-width fits can underestimate CME acceleration near the Sun.
The technique is most effective when spacecraft separation exceeds 180 degrees.
Abstract
We present an analysis of coronal mass ejections (CMEs) observed by the Heliospheric Imagers (HIs) on board NASA's Solar Terrestrial Relations Observatory (STEREO) spacecraft. Between August 2008 and April 2014 we identify 273 CMEs that are observed simultaneously, by the HIs on both spacecraft. For each CME, we track the observed leading edge, as a function of time, from both vantage points, and apply the Stereoscopic Self-Similar Expansion (SSSE) technique to infer their propagation throughout the inner heliosphere. The technique is unable to accurately locate CMEs when their observed leading edge passes between the spacecraft, however, we are able to successfully apply the technique to 151, most of which occur once the spacecraft separation angle exceeds 180 degrees, during solar maximum. We find that using a small half-width to fit the CME can result in observed acceleration to…
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