MIST

Magnetosphere, Ionosphere and Solar-Terrestrial

About MIST

MIST is the community of Magnetosphere, Ionosphere and Solar-Terrestrial researchers working in the United Kingdom. We represent the interests of MIST scientists and hold meetings to showcase MIST science twice a year.

  • News: News relevant to members of the MIST community.
  • Science: MIST science nuggets, as well as briefing papers designed to introduce policymakers to our research.
  • Meetings: Details of upcoming MIST meetings and summer schools, as well as the list of past MIST meetings.
  • Community: Find out about MIST researchers through the UK, MIST Council, MIST's mailing list, as well as the MIST Charter and history of the organisation.
  • Awards: The awards that MIST researchers are eligible for, alongside a list of those who have been honoured.

Nudging solar wind forecasts back towards reality

By Mathew J. Owens, University of Reading, UK.

In order to forecast space weather, it is necessary to accurately model the solar wind, the continually expanding solar atmosphere which fills the solar system. At present, telescopic observations of the Sun's surface are used to provide the starting conditions for computer simulations of the solar wind, which then propagate conditions all the way from the Sun to Earth. But spacecraft also make direct measurements of the solar wind, which provide useful additional information that is not presently used. In this study we use a simple solar wind model to develop a method to routinely "assimilate" spacecraft observations into the model and thus improve space‐weather forecasts. This data assimilation (DA) approach closely follows that of terrestrial weather prediction, where DA has led to increasingly accurate forecasts. We use artificial and real spacecraft observations to test the new solar wind DA method and show that the error in predicting the near‐Earth solar wind can be reduced by around a fifth using available observations.

For more information, please see the paper below:

Lang, M.S., and M.J Owens. (2018), A variational approach to Data Assimilation in the SolarWind, Space Weather, 16. https://doi.org/10.1029/2018SW001857 

Figure: Model near-Earth solar wind speed before (blue) and after (green) assimilation of STEREO in situ observations. The DA enables the model to capture a previously missed fast stream, corrects a false alarm and improves the timing of a third stream