Vote for your favorite mineral in #MinCup25! - Paddlewheelite vs. Mannardite
entice people to vote
Log InRegister
Quick Links : The Mindat ManualThe Rock H. Currier Digital LibraryMindat Newsletter [Free Download]
Home PageAbout MindatThe Mindat ManualHistory of MindatCopyright StatusWho We AreContact UsAdvertise on Mindat
Donate to MindatCorporate SponsorshipSponsor a PageSponsored PagesMindat AdvertisersAdvertise on Mindat
Learning CenterWhat is a mineral?The most common minerals on earthInformation for EducatorsMindat ArticlesThe ElementsThe Rock H. Currier Digital LibraryGeologic Time
Minerals by PropertiesMinerals by ChemistryAdvanced Locality SearchRandom MineralRandom LocalitySearch by minIDLocalities Near MeSearch ArticlesSearch GlossaryMore Search Options
Search For:
Mineral Name:
Locality Name:
Keyword(s):
 
The Mindat ManualAdd a New PhotoRate PhotosLocality Edit ReportCoordinate Completion ReportAdd Glossary Item
Mining CompaniesStatisticsUsersMineral MuseumsClubs & OrganizationsMineral Shows & EventsThe Mindat DirectoryDevice SettingsThe Mineral Quiz
Photo SearchPhoto GalleriesSearch by ColorNew Photos TodayNew Photos YesterdayMembers' Photo GalleriesPast Photo of the Day GalleryPhotography

Rao, Liting; Wu, Xin; Dang, Bo; Gao, Jianshen (2025) Fast and practical inversion for semi-airborne transient electromagnetic data based on supervised descent learning technique. Journal of Applied Geophysics, 241. doi:10.1016/j.jappgeo.2025.105806

Advanced
   -   Only viewable:
Reference TypeJournal (article/letter/editorial)
TitleFast and practical inversion for semi-airborne transient electromagnetic data based on supervised descent learning technique
JournalJournal of Applied Geophysics
AuthorsRao, LitingAuthor
Wu, XinAuthor
Dang, BoAuthor
Gao, JianshenAuthor
Year2025 (October)Volume241
PublisherElsevier BV
DOIdoi:10.1016/j.jappgeo.2025.105806Search in ResearchGate
Generate Citation Formats
Mindat Ref. ID18571574Long-form Identifiermindat:1:5:18571574:8
GUID0
Full ReferenceRao, Liting; Wu, Xin; Dang, Bo; Gao, Jianshen (2025) Fast and practical inversion for semi-airborne transient electromagnetic data based on supervised descent learning technique. Journal of Applied Geophysics, 241. doi:10.1016/j.jappgeo.2025.105806
Plain TextRao, Liting; Wu, Xin; Dang, Bo; Gao, Jianshen (2025) Fast and practical inversion for semi-airborne transient electromagnetic data based on supervised descent learning technique. Journal of Applied Geophysics, 241. doi:10.1016/j.jappgeo.2025.105806
In(2025) Journal of Applied Geophysics Vol. 241. Elsevier BV

References Listed

These are the references the publisher has listed as being connected to the article. Please check the article itself for the full list of references which may differ. Not all references are currently linkable within the Digital Library.

Not Yet Imported: Inverse Problems - journal-article : 10.1088/0266-5611/25/12/123012

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Chen (2017) Chin. J. Geophys. 1D OCCAM inversion of SOTEM data and its application to 3D models 60, 3667
Not Yet Imported: IEEE Transactions on Industrial Electronics - journal-article : 10.1109/TIE.2019.2897535

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Lin (2021) Chin. J. Geophys. Technological innovation of semi-airborne electromagnetic detection method 64, 2995
Lu (2022) IEEE Geosci. Remote Sens. Lett. 1-D inversion of GREATEM data by supervised descent learning 19, 1
Not Yet Imported: - journal-article : 10.1137/0111030

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Nabighian (1988)
Not Yet Imported: - book-chapter : 10.1190/1.9781560801719.ch5

If you would like this item imported into the Digital Library, please contact us quoting Book ID 9781560801306
Not Yet Imported: IEEE Access - journal-article : 10.1109/ACCESS.2020.2963917

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1016/j.tust.2022.104893

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Teng (2022) Chin. J. Geophys. Theory on exploring mineral resources in the second deep space and practices with electromagnetic method 65, 3975
Not Yet Imported: IEEE Access - journal-article : 10.1109/ACCESS.2019.2930961

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Wu (2023) Chin. J. Geophys. Research on key technologies of the low-noise system for Semi-airborne electromagnetic method 66, 3904
Xiong (2013) Supervised descent method and its applications to face alignment , 532
Not Yet Imported: IEEE Access - journal-article : 10.1109/ACCESS.2020.3013626

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1029/2021RS007304

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Xue (2023) IEEE Trans. Geosci. Remote Sens. 3-D Inversion based on the particle swarm optimization-Quasi-Newton hybrid algorithm for SOTEM 61, 1
Xue (2023) Chin. J. Geophys. Research of the short-offset TEM (SOTEM) system 66, 3514
Zhang (2023) IEEE Trans. Geosci. Remote Sens. Application of supervised descent method for 3-D gravity data focusing inversion 61, 1
Zhdanov (2015)


See Also

These are possibly similar items as determined by title/reference text matching only.

 
and/or  
Mindat.org is an outreach project of the Hudson Institute of Mineralogy, a 501(c)(3) not-for-profit organization.
Copyright © mindat.org and the Hudson Institute of Mineralogy 1993-2025, except where stated. Most political location boundaries are © OpenStreetMap contributors. Mindat.org relies on the contributions of thousands of members and supporters. Founded in 2000 by Jolyon Ralph.
To cite: Ralph, J., Von Bargen, D., Martynov, P., Zhang, J., Que, X., Prabhu, A., Morrison, S. M., Li, W., Chen, W., & Ma, X. (2025). Mindat.org: The open access mineralogy database to accelerate data-intensive geoscience research. American Mineralogist, 110(6), 833–844. doi:10.2138/am-2024-9486.
Privacy Policy - Terms & Conditions - Contact Us / DMCA issues - Report a bug/vulnerability Current server date and time: September 16, 2025 00:02:26
Go to top of page