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A novel data assimilation methodology for predicting lithology based on sequence labeling algorithms
Author(s) -
Jeong Jina,
Park Eungyu,
Han Weon Shik,
Kim KueYoung
Publication year - 2014
Publication title -
journal of geophysical research: solid earth
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.983
H-Index - 232
eISSN - 2169-9356
pISSN - 2169-9313
DOI - 10.1002/2014jb011279
Subject(s) - crfs , hidden markov model , computer science , conditional random field , predictability , test data , artificial intelligence , sequence labeling , algorithm , data mining , pattern recognition (psychology) , machine learning , mathematics , statistics , engineering , systems engineering , programming language , task (project management)
A hidden Markov model (HMM) and a conditional random fields (CRFs) model for lithological predictions based on multiple geophysical well‐logging data are derived for dealing with directional nonstationarity through bidirectional training and conditioning. The developed models were benchmarked against their conventional counterparts, and hypothetical boreholes with the corresponding synthetic geophysical data including artificial errors were employed. In the three test scenarios devised, the average fitness and unfitness values of the developed CRFs model and HMM are 0.84 and 0.071 and 0.81 and 0.084, respectively, while those of the conventional CRFs model and HMM are 0.78 and 0.091 and 0.77 and 0.099, respectively. Comparisons of their predictabilities show that the models designed for directional nonstationarity clearly perform better than the conventional models for all tested examples. Among them, the developed linear‐chain CRFs model showed the best or close to the best performance with high predictability and a low training data requirement.

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