The present disclosure relates generally to using artificial gas lift to aid production in well systems. More specifically, but not by way of limitation, this disclosure relates to real-time optimized control of gas lift parameters during production from a wellbore.
A well can include a wellbore drilled through a subterranean formation. The subterranean formation can include a rock matrix permeated by the oil that is to be extracted. The oil distributed through the rock matrix can be referred to as a reservoir. Reservoirs are often modeled with standard statistical techniques in order to make projections or determine parameter values that can be used in drilling or production to maximize the yield. As one example, partial differential equations referred to as the “black-oil” equations can be used to model a reservoir based on production ratios and other production data.
One method of augmenting oil production from a reservoir is to use artificial gas lift. Artificial gas lift involves injecting gas into the production string, or tubing, to decrease the density of the fluid, thereby decreasing the hydrostatic head to allow the reservoir pressure to act more favorably on the oil being lifted to the surface. This gas injection can be accomplished by pumping or forcing gas down the annulus between the production tubing and the casing of the well and then into the production tubing. Gas bubbles mix with the reservoir fluids, thus reducing the overall density of the mixture and improving lift.
Certain aspects and features relate to a system that improves, and makes more efficient, the projection of optimized values for controllable artificial gas lift parameters such as gas lift injection rate and choke size. The controllable parameters can be computed, taking into account reservoir data and a physics-based or machine learning or hybrid physics-based machine learning reservoir model. The parameters can be utilized for real-time control and automation in a gas lift system to maximize production efficiency.
The system according to some examples described herein can provide gas lift optimization using a reservoir production simulation to formulate an objective function based on the amount of oil produced and the rate of gas injected to provide the artificial lift. Optimized gas lift parameters can be projected using Bayesian optimization (BO). The objective function can be based on simulated production data generated from the physics-based or machine learning or hybrid physics-based machine learning reservoir model. The reservoir model can be used to generate the necessary data required for the optimization. The examples couple the reservoir model with gas lift parameters and input minimization using Bayesian optimization. The Bayesian optimization can provide the gas lift parameters for in-the-field optimization with multiple wells in a cluster of wells drawing from the same reservoir.
In some examples, a system includes a gas supply arrangement to inject gas into one or more wellbores and a computing device in communication with the gas supply arrangement. The computing device includes a memory device with instructions that are executable by the computing device to cause the computing device to receive reservoir data associated with a subterranean reservoir to be penetrated by the wellbores and simulate production using the reservoir data and using a physics-based or machine learning or hybrid physics-based machine learning model for the subterranean reservoir. The production simulation provides production data. A Bayesian optimization of an objective function of the production data subject to any gas injection constraints is performed to produce gas lift parameters in response to convergence criteria being met. The gas lift parameters are applied to the gas supply to control the injection of gas into the wellbore or wellbores.
During operation of system 105 of
Still referring to
The processing device 202 shown in
Still referring to the example of
In some examples, the computing device 140 includes a communication interface 206. The communication interface 206 can represent one or more components that facilitate a network connection or otherwise facilitate communication between electronic devices. Examples include, but are not limited to, wired interfaces such as Ethernet, USB, IEEE 1394, and/or wireless interfaces such as IEEE 802.11. Bluetooth, near-field communication (NFC) interfaces. RFID interfaces, or radio interfaces for accessing cellular telephone networks (e.g., transceiver/antenna for accessing a CDMA, GSM, UMTS, or other mobile communications network).
In some examples, the computing device 140 includes a user input device 224. The user input device 224 can represent one or more components used to input data. Examples of the user input device 224 can include a keyboard, mouse, touchpad, button, or touch-screen display, etc. In some examples, the computing device 140 includes a display device 226. Examples of the display device 226 can include a liquid-crystal display (LCD), a television, a computer monitor, a touch-screen display, etc. In some examples, the user input device 224 and the display device 226 can be a single device, such as a touch-screen display.
Process 300 of
The example process shown in
Q*price*(fraction of revenue retained)−(gas rate)*(gas price)
The fraction of revenue retained from a particular well cluster would be the fraction of revenue left after paying leases and operating costs. Q is the oil production rate, which is a function of the fracture length, fracture width, and conductivity of the reservoir as modeled. These relationships provide the objective function that is used for Bayesian optimization as described herein. An objective function is sometimes also referred to as a “cost function.”
The example process described herein was used for a well with a reservoir model including 12 layers with permeability of 0.002 mD, porosity of 25%, initial water saturation of 0.2, initial pressure of 3500 psia, 23 hydraulic fractures with half-length of 500 ft, an aperture of 0.1 in, conductivity at a perf of 3 mD, and porosity of 30%.
Unless specifically stated otherwise, it is appreciated that throughout this specification that terms such as “processing,” “calculating,” “determining,” “operations,” or the like refer to actions or processes of a computing device, such as the controller or processing device described herein, that can manipulate or transform data represented as physical electronic or magnetic quantities within memories, registers, or other information storage devices, transmission devices, or display devices. The order of the process blocks presented in the examples above can be varied, for example, blocks can be re-ordered, combined, or broken into sub-blocks. Certain blocks or processes can be performed in parallel. The use of “configured to” herein is meant as open and inclusive language that does not foreclose devices configured to perform additional tasks or steps. Additionally, the use of “based on” is meant to be open and inclusive, in that a process, step, calculation, or other action “based on” one or more recited conditions or values may, in practice, be based on additional conditions or values beyond those recited. Elements that are described as “connected,” “connectable,” or with similar terms can be connected directly or through intervening elements.
As used below, any reference to a series of examples is to be understood as a reference to each of those examples disjunctively (e.g., “Examples 1-4” is to be understood as “Examples 1, 2, 3, or 4”).
A system includes a gas supply arrangement to inject gas into at least one wellbore in proximity to production tubing for the at least one wellbore and a computing device in communication with the gas supply arrangement. The computing device includes a non-transitory memory device including instructions that are executable by the computing device to cause the computing device to perform operations. The operations include receiving reservoir data associated with a subterranean reservoir to be penetrated by the at least one wellbore, simulating production using the reservoir data associated with the subterranean reservoir and using a physics-based model, a machine learning model, or a hybrid physics-based machine learning model for the subterranean reservoir to provide production data, performing a Bayesian optimization of an objective function of the production data subject to gas injection constraints and convergence criteria to produce gas lift parameters, and applying the gas lift parameters to the gas supply arrangement in response to the convergence criteria being met to control an injection of gas into the at least one wellbore.
The system of example 1 wherein the at least one wellbore includes multiple clustered wellbores. The system further includes a production tubing string disposed in at least one of the plurality of clustered wellbores, an injection port connected to the production tubing string to inject gas into the production tubing string downhole, and a gas storage device connected to the production tubing string.
The system of example(s) 1-2 wherein the gas lift parameters include gas injection rate and choke size.
The system of example(s) 1-3 wherein the gas injection rate is constant.
The system of example(s) 1-4 wherein the gas injection rate is a function of time.
The system of example(s) 1-5 wherein the convergence criteria include a maximum number of iterations.
The system of example(s) 1-6 wherein the convergence criteria include convergence within a specified tolerance to a maximum production rate and a minimum friction value for the production tubing.
A method includes receiving, by a processing device, reservoir data associated with a subterranean reservoir to be penetrated by at least one wellbore, simulating, by the processing device, production using the reservoir data associated with the subterranean reservoir and using a physics-based model, a machine learning model, or a hybrid physics-based machine learning model for the subterranean reservoir to provide production data, performing, by the processing device, a Bayesian optimization of an objective function of the production data subject to gas injection constraints and convergence criteria to produce gas lift parameters, and applying, by the processing device, the gas lift parameters to a gas supply arrangement in response to the convergence criteria being met to control an injection of gas into the at least one wellbore.
The method of example 8 wherein the at least one wellbore includes multiple clustered wellbores. At least one of the wellbores includes a production tubing string. The method further includes injecting gas into the production tubing string downhole, and capturing gas at a gas storage device connected to the production tubing string.
The method of example(s) 8-9 wherein the gas lift parameters include gas injection rate and choke size.
The method of example(s) 8-10 wherein the gas injection rate is constant.
The method of example(s) 8-11 wherein the gas injection rate is a function of time.
The method of example(s) 8-12 wherein the convergence criteria include a maximum number of iterations.
The method of example(s) 8-13 wherein the convergence criteria include convergence within a specified tolerance to a maximum production rate and a minimum friction value for production tubing.
A non-transitory computer-readable medium includes instructions that are executable by a processing device for causing the processing device to perform a method. The method includes receiving reservoir data associated with a subterranean reservoir to be penetrated by a cluster of wellbores, simulating production using the reservoir data associated with the subterranean reservoir and using a physics-based model, a machine learning model, or a hybrid physics-based machine learning model for the subterranean reservoir to provide production data, performing a Bayesian optimization of an objective function of the production data subject to gas injection constraints and convergence criteria to produce gas lift parameters, and applying the gas lift parameters to a gas supply arrangement in response to the convergence criteria being met to control an injection of gas into at least one wellbore of the cluster of wellbores.
The non-transitory computer-readable medium of example 15 wherein the gas lift parameters include gas injection rate and choke size.
The non-transitory computer-readable medium of example(s) 15-16 wherein the gas injection rate is constant
The non-transitory computer-readable medium of example(s) 15-17 wherein the gas injection rate is a function of time.
The non-transitory computer-readable medium of example(s) 15-18 further includes instructions that are executable by a processing device for causing the processing device to inject gas into a production tubing string downhole and capture gas at a gas storage device connected to the production tubing string.
The non-transitory computer-readable medium of example(s) 15-19 wherein the convergence criteria includes at least one of a maximum number of iterations, or convergence within a specified tolerance to a maximum production rate and a minimum friction value for the production tubing.
The foregoing description of certain examples, including illustrated examples, has been presented only for the purpose of illustration and description and is not intended to be exhaustive or to limit the disclosure to the precise forms disclosed. Numerous modifications, adaptations, and uses thereof will be apparent to those skilled in the art without departing from the scope of the disclosure.
Filing Document | Filing Date | Country | Kind |
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PCT/US2018/045949 | 8/9/2018 | WO | 00 |
Publishing Document | Publishing Date | Country | Kind |
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WO2020/032949 | 2/13/2020 | WO | A |
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Number | Date | Country | |
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20210404302 A1 | Dec 2021 | US |