Literature DB >> 35935034

Incorporating Physical Knowledge Into Machine Learning for Planetary Space Physics.

Abigail R Azari1, Jeffrey W Lockhart2, Michael W Liemohn1, Xianzhe Jia1.   

Abstract

Recent improvements in data collection volume from planetary and space physics missions have allowed the application of novel data science techniques. The Cassini mission for example collected over 600 gigabytes of scientific data from 2004 to 2017. This represents a surge of data on the Saturn system. In comparison, the previous mission to Saturn, Voyager over 20 years earlier, had onboard a ~70 kB 8-track storage ability. Machine learning can help scientists work with data on this larger scale. Unlike many applications of machine learning, a primary use in planetary space physics applications is to infer behavior about the system itself. This raises three concerns: first, the performance of the machine learning model, second, the need for interpretable applications to answer scientific questions, and third, how characteristics of spacecraft data change these applications. In comparison to these concerns, uses of "black box" or un-interpretable machine learning methods tend toward evaluations of performance only either ignoring the underlying physical process or, less often, providing misleading explanations for it. The present work uses Cassini data as a case study as these data are similar to space physics and planetary missions at Earth and other solar system objects. We build off a previous effort applying a semi-supervised physics-based classification of plasma instabilities in Saturn's magnetic environment, or magnetosphere. We then use this previous effort in comparison to other machine learning classifiers with varying data size access, and physical information access. We show that incorporating knowledge of these orbiting spacecraft data characteristics improves the performance and interpretability of machine leaning methods, which is essential for deriving scientific meaning. Building on these findings, we present a framework on incorporating physics knowledge into machine learning problems targeting semi-supervised classification for space physics data in planetary environments. These findings present a path forward for incorporating physical knowledge into space physics and planetary mission data analyses for scientific discovery.

Entities:  

Keywords:  Saturn; automated event detection; domain knowledge; feature engineering; interpretable machine learning; physics-informed machine learning; planetary science; space physics

Year:  2020        PMID: 35935034      PMCID: PMC9354472          DOI: 10.3389/fspas.2020.00036

Source DB:  PubMed          Journal:  Front Astron Space Sci        ISSN: 2296-987X


  6 in total

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Authors:  Karianne J Bergen; Paul A Johnson; Maarten V de Hoop; Gregory C Beroza
Journal:  Science       Date:  2019-03-22       Impact factor: 47.728

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Authors:  Raban Iten; Tony Metger; Henrik Wilming; Lídia Del Rio; Renato Renner
Journal:  Phys Rev Lett       Date:  2020-01-10       Impact factor: 9.161

3.  Stop Explaining Black Box Machine Learning Models for High Stakes Decisions and Use Interpretable Models Instead.

Authors:  Cynthia Rudin
Journal:  Nat Mach Intell       Date:  2019-05-13

Review 4.  Machine learning for molecular and materials science.

Authors:  Keith T Butler; Daniel W Davies; Hugh Cartwright; Olexandr Isayev; Aron Walsh
Journal:  Nature       Date:  2018-07-25       Impact factor: 49.962

Review 5.  Big data need big theory too.

Authors:  Peter V Coveney; Edward R Dougherty; Roger R Highfield
Journal:  Philos Trans A Math Phys Eng Sci       Date:  2016-11-13       Impact factor: 4.226

6.  Random forest versus logistic regression: a large-scale benchmark experiment.

Authors:  Raphael Couronné; Philipp Probst; Anne-Laure Boulesteix
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  6 in total

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