Magnetic Field Configuration Models and Reconstruction Methods for Interplanetary Coronal Mass Ejections
N. Al-Haddad, T. Nieves-Chinchilla, N. P. Savani, C. M\"ostl, K., Marubashi, M. Hidalgo, I. I. Roussev, S. Poedts, C. J. Farrugia

TL;DR
This paper compares various magnetic field models and reconstruction methods for interplanetary coronal mass ejections (ICMEs), analyzing 59 events to evaluate their effectiveness and consistency in characterizing magnetic structures.
Contribution
It provides a comprehensive comparison of four different magnetic field reconstruction techniques applied to a large event set, highlighting their success rates and differences.
Findings
Grad-Shafranov method is effective for magnetic clouds but less so for non-MC ICMEs.
Other three methods successfully fit over 65% of all events.
Magnetic field magnitude is consistent across models, but axis orientation varies.
Abstract
This study aims to provide a reference to different magnetic field models and reconstruction methods for interplanetary coronal mass ejections (ICMEs). In order to understand the differences in the outputs of those models and codes, we analyze 59 events from the Coordinated Data Analysis Workshop (CDAW) list, using four different magnetic field models and reconstruction techniques; force-free fitting (Goldstein,1983,Burlaga,1988,Lepping et al.,1990), magnetostatic reconstruction using a numerical solution to the Grad-Shafranov equation (Hu and Sonnerup, 2001), fitting to a self-similarly expanding cylindrical configuration (Marubashi and Lepping, 2007) and elliptical, non-force free fitting (Hidalgo,2003). The resulting parameters of the reconstructions for the 59 events are compared statistically, as well as in selected case studies. The ability of a method to fit or reconstruct an…
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