Javascript must be enabled to continue!
Hydraulic Fracturing Pressure Prediction with Deep Learning Approach
View through CrossRef
Abstract
Maintaining proper treating pressure is critical in the execution of hydraulic fracturing. Inappropriate pressure management could lead to early bridging or premature screenout, which is detrimental to well completion efficiency and well productivity. In theory, treating pressure can be calculated; however, many factors make this task complex. In the field, pressure-based decisions predominantly rely on the experience of the engineer. In our work, a convolutional neural network (CNN) is used to predict treating pressure. In this way, human expertise and the deep learning method can synergize in the wellsite decision making and the fracturing job success rate can be improved.
The workflow started with the comprehensive data preprocessing process in which the treating data from 631 stages in 271 wells in a tight gas sandstone field were collected and analyzed. Data were cleaned by an algorithm so that only meaningful main treatment data were preserved. The dataset contained wells with similar configuration and formations to remove the impact of outliers. To honor the physical process in the fracturing treatment, bottomhole treating pressure (BHP) and pressure derivatives were selected as additional features.
A multilayer 1D CNN model was set up to train the dataset with the objective of predicting the treating pressure trend in a short time window, based on the input of a window of treating parameters. Surface pressure, pumping rate, proppant concentrations, and other hyperparameters were optimized based on the grid search method. A trained 1D CNN which split treating pressure with other inputs and honored historical treating pressure channel would be compared with a simple 1D CNN. K-fold validation methods were used to fully reflect the model's performance. It was possible to generate the pressure trend in a short time window in the future based on the input of historical treating pressure, pumping rate, proppant concentrations, and calculated BHP, etc. Both simple CNN and multihead CNN models could predict the treating pressure with reasonable accuracy.
The deep learning approach can augment human decision making in managing treating pressure. This approach serves fast and reliable reference and helpful for staff training.
Title: Hydraulic Fracturing Pressure Prediction with Deep Learning Approach
Description:
Abstract
Maintaining proper treating pressure is critical in the execution of hydraulic fracturing.
Inappropriate pressure management could lead to early bridging or premature screenout, which is detrimental to well completion efficiency and well productivity.
In theory, treating pressure can be calculated; however, many factors make this task complex.
In the field, pressure-based decisions predominantly rely on the experience of the engineer.
In our work, a convolutional neural network (CNN) is used to predict treating pressure.
In this way, human expertise and the deep learning method can synergize in the wellsite decision making and the fracturing job success rate can be improved.
The workflow started with the comprehensive data preprocessing process in which the treating data from 631 stages in 271 wells in a tight gas sandstone field were collected and analyzed.
Data were cleaned by an algorithm so that only meaningful main treatment data were preserved.
The dataset contained wells with similar configuration and formations to remove the impact of outliers.
To honor the physical process in the fracturing treatment, bottomhole treating pressure (BHP) and pressure derivatives were selected as additional features.
A multilayer 1D CNN model was set up to train the dataset with the objective of predicting the treating pressure trend in a short time window, based on the input of a window of treating parameters.
Surface pressure, pumping rate, proppant concentrations, and other hyperparameters were optimized based on the grid search method.
A trained 1D CNN which split treating pressure with other inputs and honored historical treating pressure channel would be compared with a simple 1D CNN.
K-fold validation methods were used to fully reflect the model's performance.
It was possible to generate the pressure trend in a short time window in the future based on the input of historical treating pressure, pumping rate, proppant concentrations, and calculated BHP, etc.
Both simple CNN and multihead CNN models could predict the treating pressure with reasonable accuracy.
The deep learning approach can augment human decision making in managing treating pressure.
This approach serves fast and reliable reference and helpful for staff training.
Related Results
Study of Damage Evaluation of Hydraulic Fracturing to Reservoirs
Study of Damage Evaluation of Hydraulic Fracturing to Reservoirs
Abstract
Classic hydraulic fracturing analysis is based on tensile strength of rock, failure criteria of fracture mechanics or Mohr-Coulomb criteria. The existing...
Perspectives of Unconventional Water Sources Implementation in Hydraulic Fracturing
Perspectives of Unconventional Water Sources Implementation in Hydraulic Fracturing
Abstract
Currently, Russia experienced a rapid growth in horizontal wells drilling. The most popular method of completion is hydraulic fracturing. About 99% of hydra...
Three-Dimensional Geomechanical Modeling and Well Spacing Optimization Application in Sichuan Shale Gas Block
Three-Dimensional Geomechanical Modeling and Well Spacing Optimization Application in Sichuan Shale Gas Block
ABSTRACT:
At present, unconventional reservoirs require horizontal drilling and large-scale hydraulic fracturing technology to increase artificial fracture networ...
Experimental and Numerical Investigation on Fracture Propagation Sensitivity Parameters in Deep Coal Seams
Experimental and Numerical Investigation on Fracture Propagation Sensitivity Parameters in Deep Coal Seams
ABSTRACT:
Hydraulic fracturing is the primary method for increasing hydrocarbon production in the extraction of deep coal bed methane. Understanding the initiatio...
Multistage Stimulation: Fracturing Optimization at Samotlorskoe Field
Multistage Stimulation: Fracturing Optimization at Samotlorskoe Field
Abstract
Accelerated multi-stage hydraulic fracturing at the Samotlor Field significantly contributes to the reduction of time and financial costs for well construct...
Numerical Simulation Research on Hydraulic Fracturing Promoting Coalbed Methane Extraction
Numerical Simulation Research on Hydraulic Fracturing Promoting Coalbed Methane Extraction
Although hydraulic fracturing technology has been comprehensively investigated, few scholars have studied the influence of hydraulic fracturing on the effect of coalbed methane (CB...
Horizontal Well Orientation Optimization Based on the Integration of Hydraulic Fracturing Network Simulation and Productivity Prediction
Horizontal Well Orientation Optimization Based on the Integration of Hydraulic Fracturing Network Simulation and Productivity Prediction
ABSTRACT:
Horizontal drilling and large-scale hydraulic fracturing are currently used to increase artificial fracture networks and per well production in unconven...
Tailoring of the Fracturing Technologies to Challenging Geological Conditions of Jurassic Formation of Yamal Peninsula
Tailoring of the Fracturing Technologies to Challenging Geological Conditions of Jurassic Formation of Yamal Peninsula
Abstract
Novoportovskoe field is one of the largest oil, gas and condensate fields on the Yamal Peninsula. The Jurassic reservoir is the main productive horizon at t...

