Leveraging open science machine learning challenges for data constrained planetary mission instruments

Author:

Da Poian Victoria123ORCID,Lyness Eric I12,Qi Jay Y4,Shah Isha4,Lipstein Greg4,Archer Jr. P Doug5,Chou Luoth167,Freissinet Caroline8,Malespin Charles A1,McAdam Amy C1,Knudson Christine A169,Theiling Bethany P1,Hörst Sarah M3

Affiliation:

1. NASA Goddard Space Flight Center , Greenbelt, MD 20771 , USA

2. Microtel LLC , Greenbelt, MD 20770 , USA

3. Johns Hopkins University, Earth and Planetary Science Department , Baltimore, MD 21218 , USA

4. DrivenData , Denver, CO 80206 , USA

5. Jacobs JETSII Contract at the NASA Johnson Space Center , Houston, TX 77058 , USA

6. Center for Research and Exploration in Space Science and Technology II (CRESST II) , Greenbelt, MD 20771 , USA

7. University of Maryland Baltimore County , Baltimore, MD 21250 , USA

8. Laboratoire Atmospheres, Observations Spatiales (LATMOS) , Guyancourt, 78280 , France

9. University of Maryland College Park , MD 20742 , USA

Abstract

Abstract We set up two open-science machine learning (ML) challenges focusing on building models to automatically analyse mass spectrometry (MS) data for Mars exploration. ML challenges provide an excellent way to engage a diverse set of experts with benchmark training data, explore a wide range of ML and data science approaches, and identify promising models based on empirical results, as well as to get independent external analyses to compare with those of the internal team. These two challenges were proof-of-concept projects to analyse the feasibility of combining data collected from different instruments in a single ML application. We selected MS data from (1) commercial instruments and (2) the Sample Analysis at Mars (an instrument suite that includes a mass spectrometer subsystem onboard the Curiosity rover) testbed. These challenges, organized with DrivenData, gathered more than 1150 unique participants from all over the world, and obtained more than 600 solutions contributing powerful models to the analysis of rock and soil samples relevant to planetary science using various MS data sets. These two challenges demonstrated the suitability and value of multiple ML approaches to classifying planetary analogue data sets from both commercial and flight-like instruments. We present the processes from the problem identification, challenge set-ups, and challenge results that gathered creative and diverse solutions from worldwide participants, in some cases with no backgrounds in MS. We also present the potential and limitations of these solutions for ML application in future planetary missions. Our longer term goal is to deploy these powerful methods onboard the spacecraft to autonomously guide space operations and reduce ground-in-the-loop reliance.

Funder

NASA

Publisher

Oxford University Press (OUP)

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