A System to Detect Oilwell Anomalies Using Deep Learning and Decision Diagram Dual Approach

Author:

Aranha P. E.1ORCID,Lopes L. G. O.2ORCID,Paranhos Sobrinho E. S.2ORCID,Oliveira I. M. N.2ORCID,de Araújo J. P. N.2ORCID,Santos B. B.2ORCID,Lima Junior E. T.2ORCID,da Silva T. B.2ORCID,Vieira T. M. A.2ORCID,Lira W. W. M.2ORCID,Policarpo N. A.3ORCID,Sampaio M. A.3ORCID

Affiliation:

1. Well Construction Department, Petrobras / Department of Mining and Petroleum Engineering, Universidade de São Paulo (Corresponding author)

2. Laboratory of Scientific Computing and Visualization, Federal University of Alagoas

3. Department of Mining and Petroleum Engineering, Universidade de São Paulo

Abstract

Summary Detecting unexpected events is a field of interest in oil and gas companies to improve operational safety and reduce costs associated with nonproductive time (NPT) and failure repair. This work presents a system for real-time monitoring of unwanted events using the production sensor data from oil wells. It uses a combination of long short-term memory (LSTM) autoencoder and a rule-based analytic approach to perform the detection of anomalies from sensor data. Initial studies are conducted to determine the behavior and correlations of pressure and temperature values for the most common combinations of well valve states. The proposed methodology uses pressure and temperature sensor data, from which a decision diagram (DD) classifies the well status, and this response is applied to the training of neural networks devoted to anomaly detection. Data sets related to several operations in wells located at different oil fields are used to train and validate the dual approach presented. The combination of the two techniques enables the deep neural network to evolve constantly through the normal data collected by the analytical method. The developed system exhibits high accuracy, with true positive detection rates exceeding 90% in the early stages of anomalies identified in both simulated and actual well production scenarios. It was implemented in more than 20 floating production, storage, and offloading (FPSO) vessels, monitoring more than 250 production/injection subsea wells, and can be applied both in real-time operation and in testing scenarios.

Publisher

Society of Petroleum Engineers (SPE)

Subject

Geotechnical Engineering and Engineering Geology,Energy Engineering and Power Technology

Reference35 articles.

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