Domain of Influence analysis: implications for Data Assimilation in space weather forecasting
Dimitrios Millas, Maria Elena Innocenti, Brecht Laperre, Joachim, Raeder, Stefaan Poedts, Giovanni Lapenta

TL;DR
This paper applies Domain of Influence analysis to space weather models to identify optimal observation locations and improve data assimilation, enhancing forecasting of solar-terrestrial interactions and CME impacts.
Contribution
It introduces the use of DOI and RA analyses on space weather models to determine key observation points and model characteristics for better data assimilation.
Findings
DOI analysis highlights critical observation regions like the magnetospheric plasma sheet.
Time-dependent models are more useful for data assimilation than static models.
Initial steps toward identifying key heliospheric parameters for CME prediction.
Abstract
Solar activity, ranging from the background solar wind to energetic coronal mass ejections (CMEs), is the main driver of the conditions in the interplanetary space and in the terrestrial space environment, known as space weather. A better understanding of the Sun-Earth connection carries enormous potential to mitigate negative space weather effects with economic and social benefits. Effective space weather forecasting relies on data and models. In this paper, we discuss some of the most used space weather models, and propose suitable locations for data gathering with space weather purposes. We report on the application of \textit{Representer analysis (RA)} and \textit{Domain of Influence (DOI) analysis} to three models simulating different stages of the Sun-Earth connection: the OpenGGCM and Tsyganenko models, focusing on solar wind - magnetosphere interaction, and the PLUTO model, used…
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