Influence of solar wind parameters on unsupervised solar wind
classification with k-means
Abstract
The properties of the solar wind represent a mixture of indicators for
solar origin and transport effects. Both are of interest for the
understanding of heliophysics and space weather effects. Most
available solar wind classifications focus on the solar origin, in
part based on transport effected properties. We aim to identify the
solar wind properties that are most important for solar wind
classification. We select seven solar wind properties: proton density,
proton speed, proton temperature, absolute magnetic field strength,
proton-proton collisional age, the ratio between the densities of
O6+ and O7+ and the mean charge state of Fe. We apply an unsupervised
machine learning method, k-means, to each subset of the these
parameters and compare the results to a reference case based on all
seven solar wind properties. Two scenarios are considered which
provide a simple and a detailed solar wind classification,
respectively. We identified the proton density as the most important
solar wind property for solar wind classification. Furthermore, we
found that charge state composition is important to accurately
identify the solar source region. This holds for the simple case of
three solar wind types but is even more important for a more detailed
classification. In comparison to proton density and proton
temperature, the solar wind speed turns out to be a less influential
property. Our results underscore the importance of highly accurate
measurements, in particular for proton density, proton temperature and
the charge state composition.