Stuck pipe optimization using duellist algorithm

T. R. Biyanto, H. Cordova, Matradji, T. O. Anggrea, H. Suryowicaksono, S. Irawan

Research output: Contribution to journalConference articlepeer-review

2 Citations (Scopus)

Abstract

Stuck pipes are one of the most serious drilling problems, stuck pipes can cost the oil industry hundreds of millions of dollars per year. One way to avoid the risk of a stuck pipe is to predict the condition of a stuck pipe with the available drilling parameters. Throughout the years, a lot research has been dedicated to finding the causes that lead to stuck pipe events. But it still not reached the study in the calculation of the optimization of drilling operation costs. In this final project, Artificial Neural Network (ANN) is used for prediction stuck pipe and optimized using the Duellist Algorithm (DA). As well as Increasing fewer data that will get easier to make it in to the model. In this model, it use 1 The input layer contains 12 input nodes, 14 hidden layers trained with 1 to 30 hidden nodes, and 1 output layer in 14 hidden layers with an RMSE value of 0. At the end of the optimization, the lowest cost is USD 17300/hour at RPM 195, 69, and mudflow 722.28 GPM. As well as constraint conditions are maintained and not stuck.

Original languageEnglish
Article number012104
JournalIOP Conference Series: Earth and Environmental Science
Volume672
Issue number1
DOIs
Publication statusPublished - 7 Apr 2021
Event3rd International Conference on Food and Agriculture: Development and Improvement of Suistanable Agricultural Practices Toward Environmental and Global Well-Beings, ICoFA 2020 - Jember, East Java, Indonesia
Duration: 7 Nov 20208 Nov 2020

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