Magnetic Field Line Random Walk and Solar Energetic Particle Path Lengths: Stochastic Theory and PSP/ISoIS Observation
R. Chhiber, W. H. Matthaeus, C.M.S. Cohen, D. Ruffolo, W. Sonsrettee,, P. Tooprakai, A. Seripienlert, P.Chuychai, A. V. Usmanov, M. L. Goldstein, D., J. McComas, R. A. Leske, E. R. Christian, R. A. Mewaldt, A.W. Labrador, J. R., Szalay, C. J. Joyce, J. Giacalone, N. A. Schwadron

TL;DR
This paper develops a stochastic formalism and uses simulations to explain the observed long path lengths of solar energetic particles, attributing it to magnetic field line wandering and particle gyromotion.
Contribution
The study introduces a new formalism for estimating magnetic field line path lengths in turbulent solar wind, validated by simulations and observations.
Findings
Field line path length increases with turbulence-induced wandering.
Particle guiding centers have shorter path lengths than full orbits.
Particle gyromotion can significantly extend effective path lengths.
Abstract
Context:In 2020 May-June, six solar energetic ion events were observed by the Parker Solar Probe/ISoIS instrument suite at 0.35 AU from the Sun. From standard velocity-dispersion analysis, the apparent ion path length is 0.625 AU at the onset of each event. Aims:We develop a formalism for estimating the path length of random-walking magnetic field lines, to explain why the apparent ion pathlength at event onset greatly exceeds the radial distance from the Sun for these events. Methods:We developed analytical estimates of the average increase in pathlength of random-walking magnetic field lines, relative to the unperturbed mean field. Monte Carlo simulations of fieldline and particle trajectories in a model of solar wind turbulence are used to validate the formalism and study the path lengths of particle guiding-center and full-orbital trajectories. The formalism is implemented in a…
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