THERMAL SCIENCE
International Scientific Journal
A METHOD FOR LOGGING DATA RECONSTRUCTION BASED ON TRANSFER LEARNING
ABSTRACT
This paper proposes a logging data reconstruction method based on migration learning, which can reduce the dependence on labeled data and also help to improve the generalization ability of data-driven models. Reconstruction experiments are carried out using data from a block in the Junggar Basin of Xinjiang, and compared with the conventional data-driven long short-term memory network and recurrent neural network methods. The results show that the reconstruction results based on migration learning improve the accuracy by 21%, which is significantly better than the remaining two methods, and proves the feasibility of the method.
KEYWORDS
PAPER SUBMITTED: 2024-03-24
PAPER REVISED: 2024-03-29
PAPER ACCEPTED: 2024-05-11
PUBLISHED ONLINE: 2024-09-28
THERMAL SCIENCE YEAR
2024, VOLUME
28, ISSUE
Issue 4, PAGES [3451 - 3456]
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