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Transport of dust across the Solar System: Constraints on the spatial origin of individual micrometeorites from cosmic-ray exposure.

J FeigeA AiroD BergerDennis BruecknerA GärtnerMatthew J GengeIngo LeyaF Habibi MarekaniL HechtNico KlingnerJ LachnerX LiS MerchelJ NissenA B C PatzerS PetersonA SchroppC SagerMartin D SuttleReto TrappitschJ Weinhold
Published in: Philosophical transactions. Series A, Mathematical, physical, and engineering sciences (2024)
The origin of micrometeorites (MMs) from asteroids and comets is well-established, but the relative contribution from these two classes remains poorly resolved. Likewise, determining the precise origin of individual MMs is an open challenge. Here, cosmic-ray exposure ages are used to resolve the spatial origins of 12 MMs collected from urban areas and Antarctica. Their 26 Al and 10 Be concentration, produced during cosmic-ray irradiation in space, were measured by accelerator mass spectrometry. These data are compared to results from a model simulating the transport and irradiation of the MM precursors in space. This model, for the first time, considers a variety of orbits, precursor particle sizes, compositions and densities and incorporates non-isotropic solar and galactic cosmic-ray flux profiles, depth-dependent production rates, as well as spherical evaporation during atmospheric entry. While the origin for six MMs remains ambiguous, two MMs show a preferential tendency towards an origin in the Inner Solar System (Near Earth Objects to the Asteroid Belt) and four towards an origin in the Outer Solar System (Jupiter Family Comets to the Kuiper Belt). These findings challenge the notion that dust originating from the Outer Solar System is unlikely to survive long-term transport and delivery to the terrestrial planets. This article is part of the theme issue 'Dust in the Solar System and beyond'.
Keyphrases
  • mass spectrometry
  • health risk assessment
  • health risk
  • polycyclic aromatic hydrocarbons
  • high resolution
  • radiation induced
  • deep learning
  • ms ms