LAPSE:2023.26330
Published Article

LAPSE:2023.26330
Restoration of Missing Pressures in a Gas Well Using Recurrent Neural Networks with Long Short-Term Memory Cells
April 3, 2023
Abstract
This study proposes a data-driven method based on recurrent neural networks (RNNs) with long short-term memory (LSTM) cells for restoring missing pressure data from a gas production well. Pressure data recorded by gauges installed at the bottom hole and wellhead of a production well often contain abnormal or missing values as a result of gauge malfunctions, noise, outliers, and operational instability. RNNs employing LSTM cells to prevent long-term memory loss have been widely used to predict time series data. In this study, an RNN with the LSTM method was used to restore abnormal or missing wellhead and bottom-hole pressures in three intervals within a production sequence of more than eight years in duration. The pressure restoration was performed using various input features for RNNs with LSTM models based on the characteristics of the available data. It was carried out through three sequential processes and the results were acceptable with a mean absolute percentage error no more than 5.18%. The reliability of the proposed method was verified through a comparison with the results of a physical model.
This study proposes a data-driven method based on recurrent neural networks (RNNs) with long short-term memory (LSTM) cells for restoring missing pressure data from a gas production well. Pressure data recorded by gauges installed at the bottom hole and wellhead of a production well often contain abnormal or missing values as a result of gauge malfunctions, noise, outliers, and operational instability. RNNs employing LSTM cells to prevent long-term memory loss have been widely used to predict time series data. In this study, an RNN with the LSTM method was used to restore abnormal or missing wellhead and bottom-hole pressures in three intervals within a production sequence of more than eight years in duration. The pressure restoration was performed using various input features for RNNs with LSTM models based on the characteristics of the available data. It was carried out through three sequential processes and the results were acceptable with a mean absolute percentage error no more than 5.18%. The reliability of the proposed method was verified through a comparison with the results of a physical model.
Record ID
Keywords
long short-term memory, LSTM, missing pressure data, recurrent neural network, restoration, RNN
Suggested Citation
Ki S, Jang I, Cha B, Seo J, Kwon O. Restoration of Missing Pressures in a Gas Well Using Recurrent Neural Networks with Long Short-Term Memory Cells. (2023). LAPSE:2023.26330
Author Affiliations
Ki S: E&P Technical Center, Korean National Oil Corporation, Ulsan 44538, Korea
Jang I: Department of Energy and Resources Engineering, Chosun University, Gwangju 61452, Korea [ORCID]
Cha B: E&P Domestic Business Unit, Korean National Oil Corporation, Ulsan 44538, Korea
Seo J: E&P Technical Center, Korean National Oil Corporation, Ulsan 44538, Korea
Kwon O: E&P Technical Center, Korean National Oil Corporation, Ulsan 44538, Korea
Jang I: Department of Energy and Resources Engineering, Chosun University, Gwangju 61452, Korea [ORCID]
Cha B: E&P Domestic Business Unit, Korean National Oil Corporation, Ulsan 44538, Korea
Seo J: E&P Technical Center, Korean National Oil Corporation, Ulsan 44538, Korea
Kwon O: E&P Technical Center, Korean National Oil Corporation, Ulsan 44538, Korea
Journal Name
Energies
Volume
13
Issue
18
Article Number
E4696
Year
2020
Publication Date
2020-09-09
ISSN
1996-1073
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Original Submission
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PII: en13184696, Publication Type: Journal Article
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LAPSE:2023.26330
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https://doi.org/10.3390/en13184696
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Apr 3, 2023
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