Transfer learning in spatial–temporal forecasting of the solar magnetic field

Machine learning techniques have been widely used in attempts to forecast several solar datasets such as the sunspot count, the sunspot area, flare activity, solar wind magnitude, and solar storms/coronal mass ejections (CMEs) activity. Most of these approaches employ supervised machine learning alg...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Veröffentlicht in:Astronomische Nachrichten 2020-05, Vol.341 (4), p.384-394
1. Verfasser: Covas, Eurico
Format: Artikel
Sprache:eng
Schlagworte:
Online-Zugang:Volltext
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
container_end_page 394
container_issue 4
container_start_page 384
container_title Astronomische Nachrichten
container_volume 341
creator Covas, Eurico
description Machine learning techniques have been widely used in attempts to forecast several solar datasets such as the sunspot count, the sunspot area, flare activity, solar wind magnitude, and solar storms/coronal mass ejections (CMEs) activity. Most of these approaches employ supervised machine learning algorithms which are, in general, very data hungry. This hampers the attempts to forecast some of these data series, particularly the ones that depend on (relatively) recent space observations such as those obtained by the Solar and Heliospheric Observatory and the Solar Dynamics Observatory. Here we focus on an attempt to forecast the solar surface longitudinally averaged unsigned radial component (or line‐of‐sight) magnetic field distribution using a form of spatial–temporal neural networks. Given that the recording of these spatial–temporal datasets only started in 1975 and are therefore quite short, the forecasts are predictably quite modest. However, given that there is a potential physical relationship between sunspots and the magnetic field, we employ another machine learning technique called transfer learning which has recently received considerable attention in the literature. Here, this approach consists in first training the source spatial–temporal neural network on the much longer time/latitude sunspot area dataset, which starts in 1874, then transferring the trained set of layers to a target network, and continue training the latter on the magnetic field dataset. The employment of transfer learning in the field of computer vision is known to obtain a generalized set of feature filters that can be reused for other datasets and tasks. Here we obtain a similar result, whereby we first train the network on the spatial–temporal sunspot area data, then the first few layers of the neural network are able to identify the two main features of the solar cycle, that is, the amplitude variation and the migration to the equator, and therefore can be used to train on the magnetic field dataset and forecast better than a prediction based only on the historical magnetic field data.
doi_str_mv 10.1002/asna.202013690
format Article
fullrecord <record><control><sourceid>proquest_cross</sourceid><recordid>TN_cdi_proquest_journals_2421235655</recordid><sourceformat>XML</sourceformat><sourcesystem>PC</sourcesystem><sourcerecordid>2421235655</sourcerecordid><originalsourceid>FETCH-LOGICAL-c3170-4cd4b3b98559fcebe123a3db033ff4ac9503cf9969f31dfc04b12cbec45648523</originalsourceid><addsrcrecordid>eNqFkM1KAzEUhYMoWKtb1wHXU2_-ps2yFLVCsQvrOmQySU1JJ2MyRbrzHXxDn8QpFV26uhz4vnPhIHRNYEQA6K3OjR5RoEBYKeEEDYigpGBS8lM0AABelIyNz9FFzps-ypKSAVqukm6yswkHq1PjmzX2Dc6t7rwOXx-fnd22MemAXUzW6NwdiOhw92pxjkEnvNXrxnbeYOdtqC_RmdMh26ufO0Qv93er2bxYLB8eZ9NFYRgZQ8FNzStWyYkQ0hlbWUKZZnUFjDnHtZECmHFSltIxUjsDvCLUVNZwUfKJoGyIbo69bYpvO5s7tYm71PQvFeW0bxOlED01OlImxZyTdapNfqvTXhFQh9HUYTT1O1ovyKPw7oPd_0Or6fPT9M_9Bt7Ccko</addsrcrecordid><sourcetype>Aggregation Database</sourcetype><iscdi>true</iscdi><recordtype>article</recordtype><pqid>2421235655</pqid></control><display><type>article</type><title>Transfer learning in spatial–temporal forecasting of the solar magnetic field</title><source>Wiley Online Library All Journals</source><creator>Covas, Eurico</creator><creatorcontrib>Covas, Eurico</creatorcontrib><description>Machine learning techniques have been widely used in attempts to forecast several solar datasets such as the sunspot count, the sunspot area, flare activity, solar wind magnitude, and solar storms/coronal mass ejections (CMEs) activity. Most of these approaches employ supervised machine learning algorithms which are, in general, very data hungry. This hampers the attempts to forecast some of these data series, particularly the ones that depend on (relatively) recent space observations such as those obtained by the Solar and Heliospheric Observatory and the Solar Dynamics Observatory. Here we focus on an attempt to forecast the solar surface longitudinally averaged unsigned radial component (or line‐of‐sight) magnetic field distribution using a form of spatial–temporal neural networks. Given that the recording of these spatial–temporal datasets only started in 1975 and are therefore quite short, the forecasts are predictably quite modest. However, given that there is a potential physical relationship between sunspots and the magnetic field, we employ another machine learning technique called transfer learning which has recently received considerable attention in the literature. Here, this approach consists in first training the source spatial–temporal neural network on the much longer time/latitude sunspot area dataset, which starts in 1874, then transferring the trained set of layers to a target network, and continue training the latter on the magnetic field dataset. The employment of transfer learning in the field of computer vision is known to obtain a generalized set of feature filters that can be reused for other datasets and tasks. Here we obtain a similar result, whereby we first train the network on the spatial–temporal sunspot area data, then the first few layers of the neural network are able to identify the two main features of the solar cycle, that is, the amplitude variation and the migration to the equator, and therefore can be used to train on the magnetic field dataset and forecast better than a prediction based only on the historical magnetic field data.</description><identifier>ISSN: 0004-6337</identifier><identifier>EISSN: 1521-3994</identifier><identifier>DOI: 10.1002/asna.202013690</identifier><language>eng</language><publisher>Weinheim: WILEY‐VCH Verlag GmbH &amp; Co. KGaA</publisher><subject>Algorithms ; Computer vision ; Coronal mass ejection ; Datasets ; Machine learning ; Magnetic fields ; Neural networks ; Observatories ; SOHO Mission ; Solar activity ; Solar corona ; Solar cycle ; Solar magnetic field ; Solar observatories ; Solar storms ; Solar surface ; Solar wind ; Sun: sunspots – Sun: magnetic fields – chaos – methods: data analysis – methods: statistical ; Sunspots ; Training</subject><ispartof>Astronomische Nachrichten, 2020-05, Vol.341 (4), p.384-394</ispartof><rights>2020 WILEY-VCH Verlag GmbH &amp; Co. KGaA, Weinheim</rights><rights>2020 WILEY‐VCH Verlag GmbH &amp; Co. KGaA, Weinheim</rights><lds50>peer_reviewed</lds50><woscitedreferencessubscribed>false</woscitedreferencessubscribed><citedby>FETCH-LOGICAL-c3170-4cd4b3b98559fcebe123a3db033ff4ac9503cf9969f31dfc04b12cbec45648523</citedby><cites>FETCH-LOGICAL-c3170-4cd4b3b98559fcebe123a3db033ff4ac9503cf9969f31dfc04b12cbec45648523</cites></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><linktopdf>$$Uhttps://onlinelibrary.wiley.com/doi/pdf/10.1002%2Fasna.202013690$$EPDF$$P50$$Gwiley$$H</linktopdf><linktohtml>$$Uhttps://onlinelibrary.wiley.com/doi/full/10.1002%2Fasna.202013690$$EHTML$$P50$$Gwiley$$H</linktohtml><link.rule.ids>314,780,784,1417,27924,27925,45574,45575</link.rule.ids></links><search><creatorcontrib>Covas, Eurico</creatorcontrib><title>Transfer learning in spatial–temporal forecasting of the solar magnetic field</title><title>Astronomische Nachrichten</title><description>Machine learning techniques have been widely used in attempts to forecast several solar datasets such as the sunspot count, the sunspot area, flare activity, solar wind magnitude, and solar storms/coronal mass ejections (CMEs) activity. Most of these approaches employ supervised machine learning algorithms which are, in general, very data hungry. This hampers the attempts to forecast some of these data series, particularly the ones that depend on (relatively) recent space observations such as those obtained by the Solar and Heliospheric Observatory and the Solar Dynamics Observatory. Here we focus on an attempt to forecast the solar surface longitudinally averaged unsigned radial component (or line‐of‐sight) magnetic field distribution using a form of spatial–temporal neural networks. Given that the recording of these spatial–temporal datasets only started in 1975 and are therefore quite short, the forecasts are predictably quite modest. However, given that there is a potential physical relationship between sunspots and the magnetic field, we employ another machine learning technique called transfer learning which has recently received considerable attention in the literature. Here, this approach consists in first training the source spatial–temporal neural network on the much longer time/latitude sunspot area dataset, which starts in 1874, then transferring the trained set of layers to a target network, and continue training the latter on the magnetic field dataset. The employment of transfer learning in the field of computer vision is known to obtain a generalized set of feature filters that can be reused for other datasets and tasks. Here we obtain a similar result, whereby we first train the network on the spatial–temporal sunspot area data, then the first few layers of the neural network are able to identify the two main features of the solar cycle, that is, the amplitude variation and the migration to the equator, and therefore can be used to train on the magnetic field dataset and forecast better than a prediction based only on the historical magnetic field data.</description><subject>Algorithms</subject><subject>Computer vision</subject><subject>Coronal mass ejection</subject><subject>Datasets</subject><subject>Machine learning</subject><subject>Magnetic fields</subject><subject>Neural networks</subject><subject>Observatories</subject><subject>SOHO Mission</subject><subject>Solar activity</subject><subject>Solar corona</subject><subject>Solar cycle</subject><subject>Solar magnetic field</subject><subject>Solar observatories</subject><subject>Solar storms</subject><subject>Solar surface</subject><subject>Solar wind</subject><subject>Sun: sunspots – Sun: magnetic fields – chaos – methods: data analysis – methods: statistical</subject><subject>Sunspots</subject><subject>Training</subject><issn>0004-6337</issn><issn>1521-3994</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2020</creationdate><recordtype>article</recordtype><recordid>eNqFkM1KAzEUhYMoWKtb1wHXU2_-ps2yFLVCsQvrOmQySU1JJ2MyRbrzHXxDn8QpFV26uhz4vnPhIHRNYEQA6K3OjR5RoEBYKeEEDYigpGBS8lM0AABelIyNz9FFzps-ypKSAVqukm6yswkHq1PjmzX2Dc6t7rwOXx-fnd22MemAXUzW6NwdiOhw92pxjkEnvNXrxnbeYOdtqC_RmdMh26ufO0Qv93er2bxYLB8eZ9NFYRgZQ8FNzStWyYkQ0hlbWUKZZnUFjDnHtZECmHFSltIxUjsDvCLUVNZwUfKJoGyIbo69bYpvO5s7tYm71PQvFeW0bxOlED01OlImxZyTdapNfqvTXhFQh9HUYTT1O1ovyKPw7oPd_0Or6fPT9M_9Bt7Ccko</recordid><startdate>202005</startdate><enddate>202005</enddate><creator>Covas, Eurico</creator><general>WILEY‐VCH Verlag GmbH &amp; Co. KGaA</general><general>Wiley Subscription Services, Inc</general><scope>AAYXX</scope><scope>CITATION</scope><scope>8FD</scope><scope>H8D</scope><scope>L7M</scope></search><sort><creationdate>202005</creationdate><title>Transfer learning in spatial–temporal forecasting of the solar magnetic field</title><author>Covas, Eurico</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-LOGICAL-c3170-4cd4b3b98559fcebe123a3db033ff4ac9503cf9969f31dfc04b12cbec45648523</frbrgroupid><rsrctype>articles</rsrctype><prefilter>articles</prefilter><language>eng</language><creationdate>2020</creationdate><topic>Algorithms</topic><topic>Computer vision</topic><topic>Coronal mass ejection</topic><topic>Datasets</topic><topic>Machine learning</topic><topic>Magnetic fields</topic><topic>Neural networks</topic><topic>Observatories</topic><topic>SOHO Mission</topic><topic>Solar activity</topic><topic>Solar corona</topic><topic>Solar cycle</topic><topic>Solar magnetic field</topic><topic>Solar observatories</topic><topic>Solar storms</topic><topic>Solar surface</topic><topic>Solar wind</topic><topic>Sun: sunspots – Sun: magnetic fields – chaos – methods: data analysis – methods: statistical</topic><topic>Sunspots</topic><topic>Training</topic><toplevel>peer_reviewed</toplevel><toplevel>online_resources</toplevel><creatorcontrib>Covas, Eurico</creatorcontrib><collection>CrossRef</collection><collection>Technology Research Database</collection><collection>Aerospace Database</collection><collection>Advanced Technologies Database with Aerospace</collection><jtitle>Astronomische Nachrichten</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Covas, Eurico</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Transfer learning in spatial–temporal forecasting of the solar magnetic field</atitle><jtitle>Astronomische Nachrichten</jtitle><date>2020-05</date><risdate>2020</risdate><volume>341</volume><issue>4</issue><spage>384</spage><epage>394</epage><pages>384-394</pages><issn>0004-6337</issn><eissn>1521-3994</eissn><abstract>Machine learning techniques have been widely used in attempts to forecast several solar datasets such as the sunspot count, the sunspot area, flare activity, solar wind magnitude, and solar storms/coronal mass ejections (CMEs) activity. Most of these approaches employ supervised machine learning algorithms which are, in general, very data hungry. This hampers the attempts to forecast some of these data series, particularly the ones that depend on (relatively) recent space observations such as those obtained by the Solar and Heliospheric Observatory and the Solar Dynamics Observatory. Here we focus on an attempt to forecast the solar surface longitudinally averaged unsigned radial component (or line‐of‐sight) magnetic field distribution using a form of spatial–temporal neural networks. Given that the recording of these spatial–temporal datasets only started in 1975 and are therefore quite short, the forecasts are predictably quite modest. However, given that there is a potential physical relationship between sunspots and the magnetic field, we employ another machine learning technique called transfer learning which has recently received considerable attention in the literature. Here, this approach consists in first training the source spatial–temporal neural network on the much longer time/latitude sunspot area dataset, which starts in 1874, then transferring the trained set of layers to a target network, and continue training the latter on the magnetic field dataset. The employment of transfer learning in the field of computer vision is known to obtain a generalized set of feature filters that can be reused for other datasets and tasks. Here we obtain a similar result, whereby we first train the network on the spatial–temporal sunspot area data, then the first few layers of the neural network are able to identify the two main features of the solar cycle, that is, the amplitude variation and the migration to the equator, and therefore can be used to train on the magnetic field dataset and forecast better than a prediction based only on the historical magnetic field data.</abstract><cop>Weinheim</cop><pub>WILEY‐VCH Verlag GmbH &amp; Co. KGaA</pub><doi>10.1002/asna.202013690</doi><tpages>11</tpages></addata></record>
fulltext fulltext
identifier ISSN: 0004-6337
ispartof Astronomische Nachrichten, 2020-05, Vol.341 (4), p.384-394
issn 0004-6337
1521-3994
language eng
recordid cdi_proquest_journals_2421235655
source Wiley Online Library All Journals
subjects Algorithms
Computer vision
Coronal mass ejection
Datasets
Machine learning
Magnetic fields
Neural networks
Observatories
SOHO Mission
Solar activity
Solar corona
Solar cycle
Solar magnetic field
Solar observatories
Solar storms
Solar surface
Solar wind
Sun: sunspots – Sun: magnetic fields – chaos – methods: data analysis – methods: statistical
Sunspots
Training
title Transfer learning in spatial–temporal forecasting of the solar magnetic field
url https://sfx.bib-bvb.de/sfx_tum?ctx_ver=Z39.88-2004&ctx_enc=info:ofi/enc:UTF-8&ctx_tim=2024-12-22T18%3A22%3A04IST&url_ver=Z39.88-2004&url_ctx_fmt=infofi/fmt:kev:mtx:ctx&rfr_id=info:sid/primo.exlibrisgroup.com:primo3-Article-proquest_cross&rft_val_fmt=info:ofi/fmt:kev:mtx:journal&rft.genre=article&rft.atitle=Transfer%20learning%20in%20spatial%E2%80%93temporal%20forecasting%20of%20the%20solar%20magnetic%20field&rft.jtitle=Astronomische%20Nachrichten&rft.au=Covas,%20Eurico&rft.date=2020-05&rft.volume=341&rft.issue=4&rft.spage=384&rft.epage=394&rft.pages=384-394&rft.issn=0004-6337&rft.eissn=1521-3994&rft_id=info:doi/10.1002/asna.202013690&rft_dat=%3Cproquest_cross%3E2421235655%3C/proquest_cross%3E%3Curl%3E%3C/url%3E&disable_directlink=true&sfx.directlink=off&sfx.report_link=0&rft_id=info:oai/&rft_pqid=2421235655&rft_id=info:pmid/&rfr_iscdi=true