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Machine Learning Methods in Fault Detection

Ali Hamzeh

Machine Learning Methods in Fault Detection.

Rel. Laura Socco. Politecnico di Torino, Corso di laurea magistrale in Petroleum And Mining Engineering (Ingegneria Del Petrolio E Mineraria), 2021

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As the seismic data obtained during hydrocarbon exploration today are significantly increasing, manual interpretation is getting longer, and study is being increased. For instance, up to one terabyte of data can be produced daily by a single seismic survey, and seismic data sets may exceed many petabytes quickly. In the last decade, interpreters have been using computer applications to accelerate the interpretation process. Research employing machine learning (ML) is being actively conducted in the petroleum industry in recent years. This study reviewed research papers published over the past decade that discuss ML techniques for fault detection and interpretation. The research trends and machine learning models explored in the 79 articles were studied in depth. The results demonstrated that ML studies had been actively conducted in the industry since 2010, primarily for fault interpretation. The convolutional neural network was utilized the most among the ML models, followed by deep learning models.

Relators: Laura Socco
Academic year: 2021/22
Publication type: Electronic
Number of Pages: 110
Corso di laurea: Corso di laurea magistrale in Petroleum And Mining Engineering (Ingegneria Del Petrolio E Mineraria)
Classe di laurea: New organization > Master science > LM-35 - ENVIRONMENTAL ENGINEERING
Aziende collaboratrici: UNSPECIFIED
URI: http://webthesis.biblio.polito.it/id/eprint/19972
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