Understanding the Origins of Problem Geomagnetic Storms Associated With "Stealth" Coronal Mass Ejections
Nariaki V. Nitta, Tamitha Mulligan, Emilia K. J. Kilpua, Benjamin J., Lynch, Marilena Mierla, Jennifer O'Kane, Paolo Pagano, Erika Palmerio, Jens, Pomoell, Ian G. Richardson, Luciano Rodriguez, Alexis P. Rouillard, Suvadip, Sinha, Nandita Srivastava, Dana-Camelia Talpeanu

TL;DR
This paper reviews the elusive nature of 'stealth' CMEs that cause geomagnetic storms, exploring their observational challenges, potential origins, and implications for space weather prediction.
Contribution
It provides a comprehensive review of stealth CMEs, analyzing their characteristics, possible origins, and the limitations of current observational and modeling techniques.
Findings
Some stealth CMEs are only detectable through long-term coronal evolution.
Certain geomagnetic storms lack clear solar signatures, indicating undetected or weak CMEs.
Numerical models suggest multiple scenarios for the origin of stealth CMEs.
Abstract
Geomagnetic storms are an important aspect of space weather and can result in significant impacts on space- and ground-based assets. The majority of strong storms are associated with the passage of interplanetary coronal mass ejections (ICMEs) in the near-Earth environment. In many cases, these ICMEs can be traced back unambiguously to a specific coronal mass ejection (CME) and solar activity on the frontside of the Sun. Hence, predicting the arrival of ICMEs at Earth from routine observations of CMEs and solar activity currently makes a major contribution to the forecasting of geomagnetic storms. However, it is clear that some ICMEs, which may also cause enhanced geomagnetic activity, cannot be traced back to an observed CME, or, if the CME is identified, its origin may be elusive or ambiguous in coronal images. Such CMEs have been termed "stealth CMEs." In this review, we focus on…
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