Inferring Plasma Flows at Granular and Supergranular Scales With a New Architecture for the DeepVel Neural Network

The wealth of observational data available has been instrumental in investigating physical features relevant to solar granulation, supergranulation and Active Regions. Meanwhile, numerical models have attempted to bridge the gap between the physics of the solar interior and such observations. Howeve...

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Main Authors: Benoit Tremblay, Raphaël Attie
Format: Article
Language:English
Published: Frontiers Media S.A. 2020-06-01
Series:Frontiers in Astronomy and Space Sciences
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fspas.2020.00025/full
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spelling doaj-ab7b46c564a640238be13d225ecd13082020-11-25T03:22:14ZengFrontiers Media S.A.Frontiers in Astronomy and Space Sciences2296-987X2020-06-01710.3389/fspas.2020.00025540858Inferring Plasma Flows at Granular and Supergranular Scales With a New Architecture for the DeepVel Neural NetworkBenoit Tremblay0Benoit Tremblay1Raphaël Attie2Raphaël Attie3National Solar Observatory, Boulder, CO, United StatesDepartment of Physics, Université de Montréal, Montréal, QC, CanadaNASA Goddard Space Flight Center, Greenbelt, MD, United StatesDepartment of Physics and Astronomy, George Mason University, Fairfax, VA, United StatesThe wealth of observational data available has been instrumental in investigating physical features relevant to solar granulation, supergranulation and Active Regions. Meanwhile, numerical models have attempted to bridge the gap between the physics of the solar interior and such observations. However, there are relevant physical quantities that can be modeled but that cannot be directly measured and must be inferred. For example, direct measurements of plasma motions at the photosphere are limited to the line-of-sight component. Methods have consequently been developed to infer the transverse plasma motions from continuum images in the case of the Quiet Sun and magnetograms in the case of Active Regions. Correlation-based tracking methods calculate the optical flows by correlating series of images locally while other methods like “Coherent Structure Tracking” or “Balltracking” exploit the coherency of photospheric granules to track them and use the group motions of the granules as a proxy of the average plasma flows advecting them. Recently, neural network computing has been used in conjunction with numerical models of the Sun to be able to recover the full velocity vector in photospheric plasma from continuum images. We experiment with a new architecture for the DeepVel neural network which takes inspiration from the U-Net architecture. Simulation data of the Quiet Sun and Active Regions are then used to evaluate the response at granular and supergranular scales of the aforementioned method.https://www.frontiersin.org/article/10.3389/fspas.2020.00025/fullactive regiongranulationphotosphereneural networkssimulationssunspots
collection DOAJ
language English
format Article
sources DOAJ
author Benoit Tremblay
Benoit Tremblay
Raphaël Attie
Raphaël Attie
spellingShingle Benoit Tremblay
Benoit Tremblay
Raphaël Attie
Raphaël Attie
Inferring Plasma Flows at Granular and Supergranular Scales With a New Architecture for the DeepVel Neural Network
Frontiers in Astronomy and Space Sciences
active region
granulation
photosphere
neural networks
simulations
sunspots
author_facet Benoit Tremblay
Benoit Tremblay
Raphaël Attie
Raphaël Attie
author_sort Benoit Tremblay
title Inferring Plasma Flows at Granular and Supergranular Scales With a New Architecture for the DeepVel Neural Network
title_short Inferring Plasma Flows at Granular and Supergranular Scales With a New Architecture for the DeepVel Neural Network
title_full Inferring Plasma Flows at Granular and Supergranular Scales With a New Architecture for the DeepVel Neural Network
title_fullStr Inferring Plasma Flows at Granular and Supergranular Scales With a New Architecture for the DeepVel Neural Network
title_full_unstemmed Inferring Plasma Flows at Granular and Supergranular Scales With a New Architecture for the DeepVel Neural Network
title_sort inferring plasma flows at granular and supergranular scales with a new architecture for the deepvel neural network
publisher Frontiers Media S.A.
series Frontiers in Astronomy and Space Sciences
issn 2296-987X
publishDate 2020-06-01
description The wealth of observational data available has been instrumental in investigating physical features relevant to solar granulation, supergranulation and Active Regions. Meanwhile, numerical models have attempted to bridge the gap between the physics of the solar interior and such observations. However, there are relevant physical quantities that can be modeled but that cannot be directly measured and must be inferred. For example, direct measurements of plasma motions at the photosphere are limited to the line-of-sight component. Methods have consequently been developed to infer the transverse plasma motions from continuum images in the case of the Quiet Sun and magnetograms in the case of Active Regions. Correlation-based tracking methods calculate the optical flows by correlating series of images locally while other methods like “Coherent Structure Tracking” or “Balltracking” exploit the coherency of photospheric granules to track them and use the group motions of the granules as a proxy of the average plasma flows advecting them. Recently, neural network computing has been used in conjunction with numerical models of the Sun to be able to recover the full velocity vector in photospheric plasma from continuum images. We experiment with a new architecture for the DeepVel neural network which takes inspiration from the U-Net architecture. Simulation data of the Quiet Sun and Active Regions are then used to evaluate the response at granular and supergranular scales of the aforementioned method.
topic active region
granulation
photosphere
neural networks
simulations
sunspots
url https://www.frontiersin.org/article/10.3389/fspas.2020.00025/full
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AT benoittremblay inferringplasmaflowsatgranularandsupergranularscaleswithanewarchitectureforthedeepvelneuralnetwork
AT raphaelattie inferringplasmaflowsatgranularandsupergranularscaleswithanewarchitectureforthedeepvelneuralnetwork
AT raphaelattie inferringplasmaflowsatgranularandsupergranularscaleswithanewarchitectureforthedeepvelneuralnetwork
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