Deciphering Rod Pump Anomalies: A Deep Learning Autoencoder Approach
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Published:2024-08-29
Issue:9
Volume:12
Page:1845
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ISSN:2227-9717
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Container-title:Processes
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language:en
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Short-container-title:Processes
Author:
Wang Cai1, Ma He2, Zhang Xishun1, Xiang Xiaolong2, Shi Junfeng1, Liang Xingyuan2ORCID, Zhao Ruidong1, Han Guoqing2
Affiliation:
1. Research Institute of Petroleum Exploration and Development, Beijing 100083, China 2. China University of Petroleum Beijing, No. 18 Fuxue Road, Changping District, Beijing 102249, China
Abstract
This paper investigates the application of a self-coder neural network in oilfield rod pump anomaly detection. Rod pumps are critical equipment in oilfield production engineering, and their stability and reliability are crucial to the production efficiency and economic benefits. However, rod pumps are often affected by anomalies such as wax deposition, leading to increased maintenance costs and production interruptions. Traditional wax deposition detection methods are inefficient and fail to provide early warning capabilities. This paper reviews the research progress in sucker rod pump anomaly detection and autoencoder neural networks, providing a detailed description of the construction and training process of the autoencoder neural network model. Utilizing data from the rod-pumped wells of the Tuha oilfield in China, this study achieves the automatic recognition of various anomalies through data preprocessing and the training of an autoencoder model. This study also includes a comparative analysis of the differences in the anomaly detection performance between the autoencoder and traditional methods and verifies the effectiveness and superiority of the proposed method.
Funder
China National Petroleum Corporation Open Fund of China National Petroleum Corporation Research Institute of Science and Technology China National Petroleum Corporation Key Laboratory of Oil and Gas Production
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