Development of Machine Learning Approaches for Geoid-referred Sea Level Forecasting = Masinõppe meetodite väljatöötamine geoidi suhtes määratletava merepinna taseme prognoosimiseks
author
supervisor
statement of authorship
Saeed Rajabi Kiasari ; [supervisor: Artu Ellmann, co-supervisor: Nicole Delpeche-Ellmann ; pre-reviewer: Sander Varbla ; Tallinn University of Technology, School of Engineering, Department of Civil Engineering and Architecture]
type of dissertation
doktoritöö
university/scientific institution
Tallinna Tehnikaülikool
location of publication
Tallinn
publisher
year of publication
pages
179 p. : ill
series
Tallinn University of Technology. Doctoral thesis = Tallinna Tehnikaülikool. Doktoritöö ; 20/2026
subject term
subject of location
subject of form
ISSN
2585-6898
2585-6901 (PDF)
ISBN
978-9916-80-478-0 (PDF)
978-9916-80-477-3
notes
Autori publikatsioonide nimekiri leheküljel 7
Bibliogr. lk. 94-102
Kokkuvõte eesti keeles
Kättesaadav ka võrguteavikuna
Autori CV inglise ja eesti keeles, lk. 178-179
Thesis (Ph.D.) : Tallinn University of Technology, 2026
url
Open Access
Open Access
scientific publication
teaduspublikatsioon
classifier
TalTech department
language
inglise
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Rajabi Kiasari, S. Development of Machine Learning Approaches for Geoid-referred Sea Level Forecasting = Masinõppe meetodite väljatöötamine geoidi suhtes määratletava merepinna taseme prognoosimiseks. Tallinn : TalTech Press, 2026. 179 p. : ill. (Tallinn University of Technology. Doctoral thesis = Tallinna Tehnikaülikool. Doktoritöö ; 20/2026). https://digikogu.taltech.ee/et/Item/96a4a7e5-a188-467e-a3f1-52a862c1fe43 https://www.ester.ee/record=b6042268*est https://doi.org/10.23658/taltech.20/2026