Skip to content

End-to-end demonstration of an autoencoder compression algorithm for plasma ion data from the MMS/FPI space instrument. Accompanies the publications da Silva et al., Frontiers in Astronomy and Space Sciences (2023) and da Silva et al., NeurIPS (2022)

License

Notifications You must be signed in to change notification settings

ddasilva/plasma-compression-neurips-2022

Repository files navigation

From Particles to Fluids: Dimensionality Reduction for Non-Maxwellian Plasma Velocity Distributions Validated in the Fluid Context

This code accompanies two papers: a short conference proceedings paper to the NeurIPS 2022 conference, and a full-length version of that paper published early the following year in Frontiers in Astronomy and Space Sciences. The title of the NeurIPS paper is above, and the full-length paper is titled "The Impact of Dimensionality Reduction of Ion Counts Distributions on Preserving Moments with Applications to Data Compression".

This code trains a learned, patch-based, dimensionality reductive method for plasma ion counts distributions using data from the MMS satellite mission's FPI/DIS instrument. It requires data from MMS FPI/DIS, available for free online at the MMS Science Data Center.

References

Contact

The author can be reached at daniel.e.dasilva@nasa.gov or mail@danieldasilva.org.

About

End-to-end demonstration of an autoencoder compression algorithm for plasma ion data from the MMS/FPI space instrument. Accompanies the publications da Silva et al., Frontiers in Astronomy and Space Sciences (2023) and da Silva et al., NeurIPS (2022)

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published