PGNets: Planet mass prediction using convolutional neural networks for radio continuum observations of protoplanetary disks
Shangjia Zhang, Zhaohuan Zhu, Mingon Kang

TL;DR
This paper introduces PGNets, a convolutional neural network approach that accurately predicts planet masses from protoplanetary disk images, outperforming traditional methods and capturing complex disk features.
Contribution
The paper presents a novel CNN-based method for inferring planet mass from 2D disk images, improving accuracy and efficiency over previous simulation-based approaches.
Findings
Classification accuracy of 92% in predicting planet mass.
Regression approach achieves 0.16 dex accuracy for planet mass.
Reproduces known degeneracy scaling between viscosity and planet mass.
Abstract
We developed Convolutional Neural Networks (CNNs) to rapidly and directly infer the planet mass from radio dust continuum images. Substructures induced by young planets in protoplanetary disks can be used to infer the potential young planets' properties. Hydrodynamical simulations have been used to study the relationships between the planet's properties and these disk features. However, these attempts either fine-tuned numerical simulations to fit one protoplanetary disk at a time, which was time-consuming, or azimuthally averaged simulation results to derive some linear relationships between the gap width/depth and the planet mass, which lost information on asymmetric features in disks. To cope with these disadvantages, we developed Planet Gap neural Networks (PGNets) to infer the planet mass from 2D images. We first fit the gridded data in Zhang et al. (2018) as a classification…
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Taxonomy
TopicsAstrophysics and Star Formation Studies · Stellar, planetary, and galactic studies · Spectroscopy and Laser Applications
