ArXiv TLDR

Machine Learning as a Transformative Tool for (Exo-)Planetary Science

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2604.09152

J. Davoult, V. T. Bickel, C. Haslebacher, Y. Alibert, D. Angerhausen + 9 more

astro-ph.EP

TLDR

This paper reviews how machine learning is transforming (exo-)planetary science by addressing challenges in data processing and interpretation.

Key contributions

  • Applies ML for sequence modeling of 1D data like radial velocities and light curves.
  • Utilizes pattern recognition with CNNs, VAEs for anomaly detection, and unsupervised clustering.
  • Develops generative models and Bayesian analysis for planetary interior structure and formation.

Why it matters

This review highlights how advanced machine learning techniques are revolutionizing the processing and interpretation of complex planetary data. It outlines a paradigm shift, enabling new discoveries and deeper understanding in (exo-)planetary science.

Original Abstract

The exploration of planetary bodies in our Solar system and beyond relies on the processing and interpretation of large, spatio-temporally inconsistent, and heterogeneous datasets. Recent advances in machine learning (ML) provide unprecedented opportunities to address many fundamental challenges posed by these heterogeneous and hyper-dimensional datasets. This review chapter highlights innovative ML methodologies that were developed and used by NCCR PlanetS members to address three overarching challenges in (exo)planetary science. The first challenge is sequence modelling, which encompasses the intricate analysis of one-dimensional data such as time series of radial velocities and light curves, among other examples. Secondly, there is pattern recognition that involves studying correlations, leveraging convolutional neural networks for feature extraction, mapping and cross correlation among other examples., anomaly detection through variational autoencoders, and unsupervised clustering of mass spectrometric data. Lastly, there are generative models and emulation-based Bayesian analysis, which encompass the development of predictive models for planetary interior structure, employing Deep Neural Networks to understand planet formation mechanisms. These innovative ML methodologies herald a paradigm shift in the processing of data and numerical models that represent inherent challenges in planetary and exoplanetary science, paving the way for revolutionary discoveries and ideas in this field.

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