Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Real-Time ESP Management Framework Using Hybrid Physics-Based and ML Models

View through CrossRef
Abstract Water injection is a crucial field development strategy to meet targeted production requirements and improve the oil recovery from carbonate reservoirs in the Middle East. Electrical Submersible Pump (ESP) failures cause disruptions both in the producers and water supply wells, leading to an increase in downtime and a decrease in well availability. This study introduces hybrid physics-based and ML models to identify and predict various specific failure modes, enabling proactive maintenance and improved system reliability. ESP datasets were collected from surface and downhole monitoring equipment over 5 years from 120 wells from producers and water source wells. The datasets, including high-frequency pump data, production data, failure cause, downtime, and reservoir information, are applied to design the real-time failure prediction framework. 13 key parameters were implemented as the foundation layer for the water injection system consisting of oil production wells and water source wells. Descriptive analytics is the next layer for using data mining methods to provide insight into past failure root cause analysis. Hybrid physics-based and ML models were implemented to predict the potential ESP failures in the water injection system as the predictive analytics layer. Most ESP operational failures are characterized as electrical failures and pump failures. The proposed integrated prediction framework evaluated 18 water supply wells and 40 producers, and the model successfully predicted 40% of historical failures. Moreover, if the solutions had been deployed in the real-time system and could have forecast failures 15 minutes to 30 days before actual failures. The limitations in ESP real-time data availability and dismantling, inspection, and failure analysis report issues impacted model accuracy. Also, several fault types were inherently unpredictable. The proposed ESP failure prediction framework enhanced the water source wells availability by 25% and the oil production well availability by 10%, significantly increasing water injection system capacity. These physics-based and ML models will assist operators in avoiding undesirable events, reducing downtime, and extending the lifespan for several specific ESP failure types. The presented framework integrates essential elements of ESP surveillance and prediction analysis into fully digitized intelligent software for water injection systems, allowing engineers to monitor early signs, diagnose potential causes, and take preventive actions.
Title: Real-Time ESP Management Framework Using Hybrid Physics-Based and ML Models
Description:
Abstract Water injection is a crucial field development strategy to meet targeted production requirements and improve the oil recovery from carbonate reservoirs in the Middle East.
Electrical Submersible Pump (ESP) failures cause disruptions both in the producers and water supply wells, leading to an increase in downtime and a decrease in well availability.
This study introduces hybrid physics-based and ML models to identify and predict various specific failure modes, enabling proactive maintenance and improved system reliability.
ESP datasets were collected from surface and downhole monitoring equipment over 5 years from 120 wells from producers and water source wells.
The datasets, including high-frequency pump data, production data, failure cause, downtime, and reservoir information, are applied to design the real-time failure prediction framework.
13 key parameters were implemented as the foundation layer for the water injection system consisting of oil production wells and water source wells.
Descriptive analytics is the next layer for using data mining methods to provide insight into past failure root cause analysis.
Hybrid physics-based and ML models were implemented to predict the potential ESP failures in the water injection system as the predictive analytics layer.
Most ESP operational failures are characterized as electrical failures and pump failures.
The proposed integrated prediction framework evaluated 18 water supply wells and 40 producers, and the model successfully predicted 40% of historical failures.
Moreover, if the solutions had been deployed in the real-time system and could have forecast failures 15 minutes to 30 days before actual failures.
The limitations in ESP real-time data availability and dismantling, inspection, and failure analysis report issues impacted model accuracy.
Also, several fault types were inherently unpredictable.
The proposed ESP failure prediction framework enhanced the water source wells availability by 25% and the oil production well availability by 10%, significantly increasing water injection system capacity.
These physics-based and ML models will assist operators in avoiding undesirable events, reducing downtime, and extending the lifespan for several specific ESP failure types.
The presented framework integrates essential elements of ESP surveillance and prediction analysis into fully digitized intelligent software for water injection systems, allowing engineers to monitor early signs, diagnose potential causes, and take preventive actions.

Related Results

Harsh Environment ESP System
Harsh Environment ESP System
Objective/Scope When operating an Electric Submersible Pump (ESP) in a location with high installation or worker costs, the installation can cost much more than t...
High Rate Slim ESP Viability Assessment in the Field
High Rate Slim ESP Viability Assessment in the Field
Abstract Producing oil at full potential with an electrical submersible pump (ESP) in a slim well remains a challenge in the petroleum industry. A conventional slim ...
Improving ESP LifeTime Performance Evaluation by Deploying an ESP Tracking and Inventory Management System
Improving ESP LifeTime Performance Evaluation by Deploying an ESP Tracking and Inventory Management System
Abstract One of the most popular and efficient artificial lift mechanisms is the electrical submersible pump (ESP). According to recent statistics, there are more th...
Electric Submersible Pump Reliability Improvement Lean Six Sigma (LSS) Study
Electric Submersible Pump Reliability Improvement Lean Six Sigma (LSS) Study
Abstract Electric Submersible Pumping (ESP) is a common artificial lift method when technically viable for high flow rate application. ESP reliability, on the other ...
ESP Energy Efficiency Analysis on Western Siberia Fields
ESP Energy Efficiency Analysis on Western Siberia Fields
Abstract The paper is devoted to the estimation of energy efficiency of wells equipped with ESP at different operating conditions in Western Siberia. As a measure of...
Exploring the Enhancement of Rigless Deployed ESP Technology for Ad-Interim Production
Exploring the Enhancement of Rigless Deployed ESP Technology for Ad-Interim Production
Abstract The electrical submersible pump (ESP) change-out using the workover rig contributes to significantly deferred production, including waiting for rig availabi...
ESP Pod System With Down-hole Mechanical Isolation Enhances Pump Run-Life in Harsh Wellbore Conditions-A Case Study
ESP Pod System With Down-hole Mechanical Isolation Enhances Pump Run-Life in Harsh Wellbore Conditions-A Case Study
Abstract Harsh wellbore environments reduce the run-life of an Electrical Submersible Pump (ESP), adversely affect casing integrity and require expensive ESP replace...
A Comparative Analysis of Conventional ESP and Fiber-Optic Distributed Sensing (DTS/DAS)
A Comparative Analysis of Conventional ESP and Fiber-Optic Distributed Sensing (DTS/DAS)
Abstract This paper compares traditional Electric Submersible Pump (ESP) downhole sensors with fiber-optic distributed sensing technologies (Distributed Temperatu...

Back to Top