PREDICTION OF DRILL PIPE STUCK BY IMPLEMENTING OF ARTIFICIAL NEURAL NETWORKS

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Date

2022-04-13

Authors

Kizayev, Talgat

Journal Title

Journal ISSN

Volume Title

Publisher

Nazarbayev University School of Mining and Geosciences

Abstract

Considered to be conservative, the oil and gas industry, especially automation in the sector drilling sphere is encountering an extensive metamorphosis charged by new approaches of engineers thinking and digital innovations. The drilling part in the petroleum industry is very extortionate, especially considering the rate of unproductive time due to drill string stuck cases. Nevertheless, due to subject’s input, the lion's share of the research papers gives off the impression of being dispersed. In more detail, it regards the disadvantages of the existing statistical methods compared to machine learning algorithms in terms of stuck pipe prediction during drilling operations in petroleum fields, therefore creating an illusion of fragmentation. The primary purpose of this research is to determine parameters influences in the pipe stuck accidents 11oost model and to analyze the minimum iteration number of stuck pipe using neural network...

Description

Keywords

Neural Networks, CNN, convolutional neural networks, Research Subject Categories::TECHNOLOGY, Type of access: Gated Access

Citation

KIZAYEV, T. (2022). PREDICTION OF DRILL PIPE STUCK BY IMPLEMENTING OF ARTIFICIAL NEURAL NETWORKS (Unpublished master's thesis). Nazarbayev University, Nur-Sultan, Kazakhstan