DPNNet-2.0 Part I: Finding hidden planets from simulated images of
protoplanetary disk gaps
- URL: http://arxiv.org/abs/2107.09086v1
- Date: Mon, 19 Jul 2021 18:00:31 GMT
- Title: DPNNet-2.0 Part I: Finding hidden planets from simulated images of
protoplanetary disk gaps
- Authors: Sayantan Auddy, Ramit Dey, Min-Kai Lin (ASIAA, NCTS Physics Division),
Cassandra Hall
- Abstract summary: We introduce DPNNet-2.0, second in the series after DPNNet citepaud20, for predicting exoplanet masses directly from simulated images of protoplanetary disks.
This work is the first step towards the use of computer vision (implementing CNN) to directly extract mass of an exoplanet from planetary gaps observed in dust-surface density maps by telescopes such as the Atacama Large (sub-)Millimeter Array.
- Score: 6.2194417376659015
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The observed sub-structures, like annular gaps, in dust emissions from
protoplanetary disk, are often interpreted as signatures of embedded planets.
Fitting a model of planetary gaps to these observed features using customized
simulations or empirical relations can reveal the characteristics of the hidden
planets. However, customized fitting is often impractical owing to the
increasing sample size and the complexity of disk-planet interaction. In this
paper we introduce the architecture of DPNNet-2.0, second in the series after
DPNNet \citep{aud20}, designed using a Convolutional Neural Network ( CNN, here
specifically ResNet50) for predicting exoplanet masses directly from simulated
images of protoplanetary disks hosting a single planet. DPNNet-2.0 additionally
consists of a multi-input framework that uses both a CNN and multi-layer
perceptron (a class of artificial neural network) for processing image and disk
parameters simultaneously. This enables DPNNet-2.0 to be trained using images
directly, with the added option of considering disk parameters (disk
viscosities, disk temperatures, disk surface density profiles, dust abundances,
and particle Stokes numbers) generated from disk-planet hydrodynamic
simulations as inputs. This work provides the required framework and is the
first step towards the use of computer vision (implementing CNN) to directly
extract mass of an exoplanet from planetary gaps observed in dust-surface
density maps by telescopes such as the Atacama Large (sub-)Millimeter Array.
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