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Uncertainty quantification for an electric motor inverse problem - tackling the model discrepancy challenge
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Bibliographic Details
Main Author:
John, David
(Author)
Format:
Book/Monograph
Thesis
Language:
English
Published:
Heidelberg
November 8, 2020
Subjects:
Hochschulschrift
Online Access:
Author Notes:
vorgelegt von David Nicholas John, M.Sc. ; advisors: Prof. Dr. Vincent Heuveline, Prof. Dr.-Ing. Carsten Proppe
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Other Versions (1)
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