Our Vision for JGR: Machine Learning and Computation

This editorial introduces the inaugural issue of the Journal of Geophysical Research: Machine Learning and Computation to the scientific community, elucidating the motivations and vision behind its establishment. The landscape of computational tools for geoscientists has undergone a rapid transforma...

Full description

Saved in:
Bibliographic Details
Published inJournal of geophysical research. Machine learning and computation Vol. 1; no. 1
Main Authors Camporeale, E., Marino, R.
Format Journal Article
LanguageEnglish
Published American Geophysical Union/Wiley 01.03.2024
Wiley
Subjects
Online AccessGet full text

Cover

Loading…
Abstract This editorial introduces the inaugural issue of the Journal of Geophysical Research: Machine Learning and Computation to the scientific community, elucidating the motivations and vision behind its establishment. The landscape of computational tools for geoscientists has undergone a rapid transformation in the last decade, akin to a new scientific revolution challenging the traditional scientific method. The paradigm shift emphasizes the integration of data‐driven methods and the possibility of predicting and/or reproducing the evolution of natural phenomena with computers as the fourth pillar of scientific discovery, sparking debates on trustworthiness, and ethical implications. The data science revolution is fueled by the convergence of advancements, including the big‐data revolution, GPU market expansion, and significant investments in Artificial Intelligence and high performance computing by both institutional and private players. This transformation has given rise to a trans‐disciplinary community that has investigated a wide range of questions under the lens of machine learning (ML) approaches and has generally advanced the field of computational methods within the broader geosciences community, the core of the American Geophysical Union (AGU) membership. Responding to an unmet demand in the existing worldwide editorial offer, the Journal of Geophysical Research: Machine Learning and Computation aims to serve as an intellectual crucible, fostering collaborations across multiple geophysical disciplines and data scientists. The journal welcomes papers with strong methodological developments that allow for geoscience advancements grounded in specific computational and data‐driven methods, leveraging ML as well as innovative computational strategies, and leading to breakthrough discoveries and original scientific outcomes. Authors are encouraged to balance succinctness in introducing methods with a thorough exploration of the novelty of the work proposed and its future applications placing special emphasis on the connection between the data science approach and the scientific outcome, considering a broad readership. Emphasis on result reproducibility aligns with AGU guidance, inviting active participation from the community in shaping geophysical research in the era of machine learning and computation. Key Points This editorial introduces JGR: Machine Learning & Computation to the community
AbstractList This editorial introduces the inaugural issue of the Journal of Geophysical Research: Machine Learning and Computation to the scientific community, elucidating the motivations and vision behind its establishment. The landscape of computational tools for geoscientists has undergone a rapid transformation in the last decade, akin to a new scientific revolution challenging the traditional scientific method. The paradigm shift emphasizes the integration of data‐driven methods and the possibility of predicting and/or reproducing the evolution of natural phenomena with computers as the fourth pillar of scientific discovery, sparking debates on trustworthiness, and ethical implications. The data science revolution is fueled by the convergence of advancements, including the big‐data revolution, GPU market expansion, and significant investments in Artificial Intelligence and high performance computing by both institutional and private players. This transformation has given rise to a trans‐disciplinary community that has investigated a wide range of questions under the lens of machine learning (ML) approaches and has generally advanced the field of computational methods within the broader geosciences community, the core of the American Geophysical Union (AGU) membership. Responding to an unmet demand in the existing worldwide editorial offer, the Journal of Geophysical Research: Machine Learning and Computation aims to serve as an intellectual crucible, fostering collaborations across multiple geophysical disciplines and data scientists. The journal welcomes papers with strong methodological developments that allow for geoscience advancements grounded in specific computational and data‐driven methods, leveraging ML as well as innovative computational strategies, and leading to breakthrough discoveries and original scientific outcomes. Authors are encouraged to balance succinctness in introducing methods with a thorough exploration of the novelty of the work proposed and its future applications placing special emphasis on the connection between the data science approach and the scientific outcome, considering a broad readership. Emphasis on result reproducibility aligns with AGU guidance, inviting active participation from the community in shaping geophysical research in the era of machine learning and computation. This editorial introduces JGR: Machine Learning & Computation to the community
Learning and Computation to the scientific community, elucidating the motivations and vision behind its establishment. The landscape of computational tools for geoscientists has undergone a rapid transformation in the last decade, akin to a new scientific revolution challenging the traditional scientific method. The paradigm shift emphasizes the integration of data-driven methods and the possibility of predicting and/or reproducing the evolution of natural phenomena with computers as the fourth pillar of scientific discovery, sparking debates on trustworthiness, and ethical implications. The data science revolution is fueled by the convergence of advancements, including the big-data revolution, GPU market expansion, and significant investments in Artificial Intelligence and high performance computing by both institutional and private players. This transformation has given rise to a trans-disciplinary community that has investigated a wide range of questions under the lens of machine learning (ML) approaches and has generally advanced the field of computational methods within the broader geosciences community, the core of the American Geophysical Union (AGU) membership. Responding to an unmet demand in the existing worldwide editorial offer, the Journal of Geophysical Research: Machine Learning and Computation aims to serve as an intellectual crucible, fostering collaborations across multiple geophysical disciplines and data scientists. The journal welcomes papers with strong methodological developments that allow for geoscience advancements grounded in specific computational and data-driven methods, leveraging ML as well as innovative computational strategies, and leading to breakthrough discoveries and original scientific outcomes. Authors are encouraged to balance succinctness in introducing methods with a thorough exploration of the novelty of the work proposed and its future applications placing special emphasis on the connection between the data science approach and the scientific outcome, considering a broad readership. Emphasis on result reproducibility aligns with AGU guidance, inviting active participation from the community in shaping geophysical research in the era of machine learning and computation. 10.
Abstract This editorial introduces the inaugural issue of the Journal of Geophysical Research: Machine Learning and Computation to the scientific community, elucidating the motivations and vision behind its establishment. The landscape of computational tools for geoscientists has undergone a rapid transformation in the last decade, akin to a new scientific revolution challenging the traditional scientific method. The paradigm shift emphasizes the integration of data‐driven methods and the possibility of predicting and/or reproducing the evolution of natural phenomena with computers as the fourth pillar of scientific discovery, sparking debates on trustworthiness, and ethical implications. The data science revolution is fueled by the convergence of advancements, including the big‐data revolution, GPU market expansion, and significant investments in Artificial Intelligence and high performance computing by both institutional and private players. This transformation has given rise to a trans‐disciplinary community that has investigated a wide range of questions under the lens of machine learning (ML) approaches and has generally advanced the field of computational methods within the broader geosciences community, the core of the American Geophysical Union (AGU) membership. Responding to an unmet demand in the existing worldwide editorial offer, the Journal of Geophysical Research: Machine Learning and Computation aims to serve as an intellectual crucible, fostering collaborations across multiple geophysical disciplines and data scientists. The journal welcomes papers with strong methodological developments that allow for geoscience advancements grounded in specific computational and data‐driven methods, leveraging ML as well as innovative computational strategies, and leading to breakthrough discoveries and original scientific outcomes. Authors are encouraged to balance succinctness in introducing methods with a thorough exploration of the novelty of the work proposed and its future applications placing special emphasis on the connection between the data science approach and the scientific outcome, considering a broad readership. Emphasis on result reproducibility aligns with AGU guidance, inviting active participation from the community in shaping geophysical research in the era of machine learning and computation.
This editorial introduces the inaugural issue of the Journal of Geophysical Research: Machine Learning and Computation to the scientific community, elucidating the motivations and vision behind its establishment. The landscape of computational tools for geoscientists has undergone a rapid transformation in the last decade, akin to a new scientific revolution challenging the traditional scientific method. The paradigm shift emphasizes the integration of data‐driven methods and the possibility of predicting and/or reproducing the evolution of natural phenomena with computers as the fourth pillar of scientific discovery, sparking debates on trustworthiness, and ethical implications. The data science revolution is fueled by the convergence of advancements, including the big‐data revolution, GPU market expansion, and significant investments in Artificial Intelligence and high performance computing by both institutional and private players. This transformation has given rise to a trans‐disciplinary community that has investigated a wide range of questions under the lens of machine learning (ML) approaches and has generally advanced the field of computational methods within the broader geosciences community, the core of the American Geophysical Union (AGU) membership. Responding to an unmet demand in the existing worldwide editorial offer, the Journal of Geophysical Research: Machine Learning and Computation aims to serve as an intellectual crucible, fostering collaborations across multiple geophysical disciplines and data scientists. The journal welcomes papers with strong methodological developments that allow for geoscience advancements grounded in specific computational and data‐driven methods, leveraging ML as well as innovative computational strategies, and leading to breakthrough discoveries and original scientific outcomes. Authors are encouraged to balance succinctness in introducing methods with a thorough exploration of the novelty of the work proposed and its future applications placing special emphasis on the connection between the data science approach and the scientific outcome, considering a broad readership. Emphasis on result reproducibility aligns with AGU guidance, inviting active participation from the community in shaping geophysical research in the era of machine learning and computation. Key Points This editorial introduces JGR: Machine Learning & Computation to the community
Author Camporeale, E.
Marino, R.
Author_xml – sequence: 1
  givenname: E.
  orcidid: 0000-0002-7862-6383
  surname: Camporeale
  fullname: Camporeale, E.
  email: enrico.camporeale@colorado.edu
  organization: University of Colorado
– sequence: 2
  givenname: R.
  orcidid: 0000-0002-6433-7767
  surname: Marino
  fullname: Marino, R.
  organization: Université Claude Bernard Lyon 1
BackLink https://hal.science/hal-04793331$$DView record in HAL
BookMark eNp9kU9Lw0AQxRdRsFZvfoBcBaOzf5LdeJOibSVSEPW6TDa7uiVNyiYq_fZGI1IFPc3w-L038OaA7NZNbQk5pnBGgWXnDJi4mQEAVWKHjFiW8ThhFHa39n1y1LbLnuGcgQI5ImLxEqJH3_qmjlwTopvp3UV0i-bZ1zbKLYba108R1mU0aVbrlw67njwkew6r1h59zTF5uL66n8zifDGdTy7z2LBEJTFH5lJqi8ShkmkBVjKAAjKbylQkMilUZoyxmBooJacmLRymmTCpcgKM4nxM5kNu2eBSr4NfYdjoBr3-FJrwpDF03lRWK8lLKaC0ihmhEotFYbFUEp1VDlD0WSdD1jNWP6Jml7n-0EDIjHNOX2nPng6sCU3bBuu-DRT0R9l6u-weZ79w44eiuoC--st0PpjefGU3_x7Q_VNowt8BRMqOUA
CitedBy_id crossref_primary_10_1002_asl_1268
crossref_primary_10_1007_s11214_025_01143_z
Cites_doi 10.1038/s43017‐023‐00450‐9
10.4324/9780203994627
10.22541/essoar.168132856.66485758/v1
10.1038/s42254‐021‐00314‐5
10.1038/s41586‐021‐03819‐2
10.1007/s10915‐022‐01939‐z
10.1201/9781003143376
ContentType Journal Article
Copyright 2024. The Authors. published by Wiley Periodicals LLC on behalf of American Geophysical Union.
Distributed under a Creative Commons Attribution 4.0 International License
Copyright_xml – notice: 2024. The Authors. published by Wiley Periodicals LLC on behalf of American Geophysical Union.
– notice: Distributed under a Creative Commons Attribution 4.0 International License
CorporateAuthor the Editorial Board
CorporateAuthor_xml – name: the Editorial Board
DBID 24P
AAYXX
CITATION
1XC
VOOES
DOA
DOI 10.1029/2024JH000184
DatabaseName Wiley Online Library Open Access
CrossRef
Hyper Article en Ligne (HAL)
Hyper Article en Ligne (HAL) (Open Access)
DOAJ Open Access Full Text
DatabaseTitle CrossRef
DatabaseTitleList CrossRef



Database_xml – sequence: 1
  dbid: DOA
  name: DOAJ Open Access Full Text
  url: https://www.doaj.org/
  sourceTypes: Open Website
– sequence: 2
  dbid: 24P
  name: Wiley Online Library Open Access
  url: https://authorservices.wiley.com/open-science/open-access/browse-journals.html
  sourceTypes: Publisher
DeliveryMethod fulltext_linktorsrc
EISSN 2993-5210
EndPage n/a
ExternalDocumentID oai_doaj_org_article_873d740de82c485eabbead87afe8f0a4
oai_HAL_hal_04793331v1
10_1029_2024JH000184
JGR15
Genre editorial
GroupedDBID 24P
ACCMX
ALMA_UNASSIGNED_HOLDINGS
0R~
AAYXX
CITATION
GROUPED_DOAJ
M~E
1XC
VOOES
AAMMB
AEFGJ
AGXDD
AIDQK
AIDYY
WIN
ID FETCH-LOGICAL-c2585-3a2f61eb5fa876b0e7200b09e6764575b89cccea6c0d731c6bfa694c68f40c833
IEDL.DBID DOA
ISSN 2993-5210
IngestDate Wed Aug 27 01:30:40 EDT 2025
Fri May 09 12:20:22 EDT 2025
Tue Jul 01 03:43:12 EDT 2025
Thu Apr 24 22:55:46 EDT 2025
Wed Jan 22 16:12:38 EST 2025
IsDoiOpenAccess true
IsOpenAccess true
IsPeerReviewed true
IsScholarly true
Issue 1
Language English
License Attribution
http://creativecommons.org/licenses/by/4.0
Distributed under a Creative Commons Attribution 4.0 International License: http://creativecommons.org/licenses/by/4.0
LinkModel DirectLink
MergedId FETCHMERGED-LOGICAL-c2585-3a2f61eb5fa876b0e7200b09e6764575b89cccea6c0d731c6bfa694c68f40c833
ORCID 0000-0002-6433-7767
0000-0002-7862-6383
0000-0002-2355-2671
OpenAccessLink https://doaj.org/article/873d740de82c485eabbead87afe8f0a4
PageCount 4
ParticipantIDs doaj_primary_oai_doaj_org_article_873d740de82c485eabbead87afe8f0a4
hal_primary_oai_HAL_hal_04793331v1
crossref_primary_10_1029_2024JH000184
crossref_citationtrail_10_1029_2024JH000184
wiley_primary_10_1029_2024JH000184_JGR15
ProviderPackageCode CITATION
AAYXX
PublicationCentury 2000
PublicationDate March 2024
2024-03-00
2024-03
2024-03-01
PublicationDateYYYYMMDD 2024-03-01
PublicationDate_xml – month: 03
  year: 2024
  text: March 2024
PublicationDecade 2020
PublicationTitle Journal of geophysical research. Machine learning and computation
PublicationYear 2024
Publisher American Geophysical Union/Wiley
Wiley
Publisher_xml – name: American Geophysical Union/Wiley
– name: Wiley
References 2016
2005
2021; 3
2022; 92
2023; 4
2023
2021; 596
2022
e_1_2_6_9_1
e_1_2_6_8_1
e_1_2_6_5_1
e_1_2_6_4_1
e_1_2_6_7_1
e_1_2_6_6_1
Biltgen P. (e_1_2_6_2_1) 2016
e_1_2_6_3_1
References_xml – year: 2023
– volume: 596
  start-page: 583
  issue: 7873
  year: 2021
  end-page: 589
  article-title: Highly accurate protein structure prediction with alphafold
  publication-title: Nature
– year: 2005
– year: 2016
– volume: 92
  issue: 3
  year: 2022
  article-title: Scientific machine learning through physics–informed neural networks: Where we are and what’s next
  publication-title: Journal of Scientific Computing
– volume: 3
  start-page: 422
  issue: 6
  year: 2021
  end-page: 440
  article-title: Physics‐informed machine learning
  publication-title: Nature Reviews Physics
– year: 2022
– volume: 4
  start-page: 552
  issue: 8
  year: 2023
  end-page: 567
  article-title: Differentiable modelling to unify machine learning and physical models for geosciences
  publication-title: Nature Reviews Earth & Environment
– ident: e_1_2_6_8_1
  doi: 10.1038/s43017‐023‐00450‐9
– ident: e_1_2_6_7_1
  doi: 10.4324/9780203994627
– ident: e_1_2_6_9_1
  doi: 10.22541/essoar.168132856.66485758/v1
– ident: e_1_2_6_5_1
  doi: 10.1038/s42254‐021‐00314‐5
– volume-title: Activity‐based intelligence: Principles and applications
  year: 2016
  ident: e_1_2_6_2_1
– ident: e_1_2_6_4_1
  doi: 10.1038/s41586‐021‐03819‐2
– ident: e_1_2_6_3_1
  doi: 10.1007/s10915‐022‐01939‐z
– ident: e_1_2_6_6_1
  doi: 10.1201/9781003143376
SSID ssj0003320807
Score 2.2495341
Snippet This editorial introduces the inaugural issue of the Journal of Geophysical Research: Machine Learning and Computation to the scientific community, elucidating...
This editorial introduces the inaugural issue of the Journal of Geophysical Research: Machine Learning and Computation to the scientific community, elucidating...
Learning and Computation to the scientific community, elucidating the motivations and vision behind its establishment. The landscape of computational tools for...
Abstract This editorial introduces the inaugural issue of the Journal of Geophysical Research: Machine Learning and Computation to the scientific community,...
SourceID doaj
hal
crossref
wiley
SourceType Open Website
Open Access Repository
Enrichment Source
Index Database
Publisher
SubjectTerms announcements
computation
Engineering Sciences
machine learning
Other
SummonAdditionalLinks – databaseName: Wiley Online Library Open Access
  dbid: 24P
  link: http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV3fS8MwEA46X3wRRcX5iyAKghTT5tKmvk1xjuFUxMneSpIl80E6mZt_v5e0ju1B8TUcR5u7y3293n0h5JRJK7RxEEmhRASgdJRDrCJjnMATE5wzvt7Re0g7fegOxKAuuPlZmIofYl5w85ERzmsf4Ep_1mQDniMTv9qh2_EYRcIqWfPTtZ47P4GneY2F84RVE9OJb1PDTMXq3ndUcbmoYCkrBfJ-zDVvvjVyEbKGnNPeJBs1WKStyrpbZMWW2wQeZxP6GkbCKSJO2r17vqK90BNpaU2XOqKqHNLqxoaw9Tuk3759uelE9d0HkUkQwUdcJS6NrRZO4Xmlmc3QnTXLbZqlgBBLy9wYY1Vq2DDjsUm1U2kOJpUOmJGc75JGOS7tHqHOJhmiQIxOBQDWSIQI4IRlWlkmXN4kFz_vXpiaGNzfT_FehB_USV4s7lSTnM2lPypCjF_krv02zmU8jXVYGE9GRR0Vhcz4MAM2tDIxIIVVWqNny0w5Kx1TqOQEjbCko9O6L_yap8bnnMdfcZOcBxv9-TgFGiMW-_8XPSDrfrFqNzskjelkZo8Qf0z1cXCyb2WazXc
  priority: 102
  providerName: Wiley-Blackwell
Title Our Vision for JGR: Machine Learning and Computation
URI https://onlinelibrary.wiley.com/doi/abs/10.1029%2F2024JH000184
https://hal.science/hal-04793331
https://doaj.org/article/873d740de82c485eabbead87afe8f0a4
Volume 1
hasFullText 1
inHoldings 1
isFullTextHit
isPrint
link http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwrV1NSwMxEA3akxdRVKwfJYiCIIvZzWQ3661KaylWRaz0tiRpogdZpbQe_e1OsmtpD-rFyx7CECYz2ZmXzewbQo6ZtEIbB5EUSkQASkc5xCoyxgmMmOCc8d87Brdpbwj9kRgttPryNWEVPXBluHOZ8XEGbGxlYkAKq7TGxctMOSsdU4EJFHPewmHKx2DOE4RCWV3pzpLcH_Kh3_OQRsJSDgpU_ZhZXnwh5CJADRmmu0HWa2hI25VKm2TFllsE7mYT-hR-AKeIL2n_-uGCDkIFpKU1OeozVeWYVv0ZgqG3ybDbebzqRXWng8gkiNcjrhKXxlYLpzA6aWYz3Lya5TbNUkBApWVujLEqNWyc8dik2qk0B5NKB8xIzndIo3wr7S6hziYZYj58FxUAWCPROOCEZVpZJlzeJGffay9MTQPuu1G8FuE6OsmLRUs1yclc-r2iv_hB7tKbcS7jSavDALqyqF1Z_OXKJjlCJyzN0WvfFH7ME-FzzuOPuElOg49-VadAZ8Ri7z-U2idrfuaq7OyANKaTmT1EHDLVLbKawH0rbDx8Dj47X5CW2EY
linkProvider Directory of Open Access Journals
linkToHtml http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV3fS-QwEA7-eDhfDkUPV08NoiBIMU0maeqbilrXXU_ElX0rSTbRB1mPRe_vd5L2lvVB8TUMQ5vJZL5OZ74hZI9pL60LkGlpZAZgbFZCbjLngsQbE0JwMd_Rv1HVALpDOWznnMZemIYfYppwi56R7uvo4DEh3bINRJJM_GyHbhVBioZ5sgiKF9EzOdxOkyxCcNa0TPNYp4ahirXF76jiaFbBh7CU2Psx2DzF2shZzJqCzsUy-dmiRXrSmHeFzPnxKoE_bxP6kHrCKUJO2r28O6b9VBTpacuX-kjNeESbkQ1p79fI4OL8_qzK2uEHmeMI4TNheFC5tzIYvLAs8wWeZ8tKrwoFiLGsLp1z3ijHRoXInbLBqBKc0gGY00L8Igvjl7FfJzR4XiAMRPc0AOCdRowAQXpmjWcylB1y-P_da9cyg8cBFc91-kPNy3p2pzpkfyr9t2HE-ETuNG7jVCbyWKeFl8lj3bpFrQsxKoCNvOYOtPTGWjzaujDB68AMKtlFI3zQUZ306rgWufGFEPm_vEMOko2-fJwajZHLje-L7pAf1X2_V_eubq43yVIUaGrPfpOF18mb30Iw8mq304F7B5cr0OM
linkToPdf http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV3dS8MwEA86QXwRRcX5GURBkGLaXNrUt_kx53RziBPfSpIm-iBThvr3e0nrmA-Kr-lxtLlc7tfL3S-E7DNphTYOIimUiACUjnKIVWSME7hjgnPG5zt6_bQzhO6jeKwTbr4XpuKHmCTcvGeE_do7-FvparIBz5GJf-3Q7XiMImGWzIXzPs_sDINJjoXzhFUd04kvU8NIxerad1RxPK3gR1QK5P0Ya559aeQ0ZA0xp71EFmuwSFuVdZfJjB2tELj9GNOH0BJOEXHS7uXdCe2FmkhLa7rUJ6pGJa1ubAhTv0qG7Yv7s05U330QmQQRfMRV4tLYauEU7lea2QyXs2a5TbMUEGJpmRtjrEoNKzMem1Q7leZgUumAGcn5GmmMXkd2nVBnkwxRIHqnAgBrJEIEcMIyrSwTLm-So-9vL0xNDO7vp3gpwgF1khfTM9UkBxPpt4oQ4xe5Uz-NExlPYx0GXsdPRe0Vhcx4mQErrUwMSGGV1riyZaaclY4pVLKHRviho9O6KfyYp8bnnMefcZMcBhv9-ToFGiMWG_8X3SXzg_N2cXPVv94kC_55VXm2RRrv4w-7jVDkXe-E9fYFfKPQFQ
openUrl ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=Our+Vision+for+JGR%3A+Machine+Learning+and+Computation&rft.jtitle=Journal+of+geophysical+research.+Machine+learning+and+computation&rft.au=E.+Camporeale&rft.au=R.+Marino&rft.au=the+Editorial+Board&rft.date=2024-03-01&rft.pub=Wiley&rft.eissn=2993-5210&rft.volume=1&rft.issue=1&rft.epage=n%2Fa&rft_id=info:doi/10.1029%2F2024JH000184&rft.externalDBID=DOA&rft.externalDocID=oai_doaj_org_article_873d740de82c485eabbead87afe8f0a4
thumbnail_l http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=2993-5210&client=summon
thumbnail_m http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=2993-5210&client=summon
thumbnail_s http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=2993-5210&client=summon