Distributed real-time processing for gas lift optimization
원문보기
IPC분류정보
국가/구분
United States(US) Patent
등록
국제특허분류(IPC7판)
E21B-047/00
E21B-043/12
출원번호
US-0466750
(2014-08-22)
등록번호
US-9951601
(2018-04-24)
발명자
/ 주소
Rashid, Kashif
Rossi, David John
출원인 / 주소
Schlumberger Technology Corporation
대리인 / 주소
McGinn, Alec J.
인용정보
피인용 횟수 :
1인용 특허 :
32
초록▼
A method, apparatus, and program product perform lift optimization in a field with a plurality of wells, with each well including an artificial lift mechanism controlled by an associated well controller. In a central controller, a network simulation model functioning as a proxy of the field is acces
A method, apparatus, and program product perform lift optimization in a field with a plurality of wells, with each well including an artificial lift mechanism controlled by an associated well controller. In a central controller, a network simulation model functioning as a proxy of the field is accessed to determine an optimal allocation solution for the field, and a well-specific control signal is generated for each of the plurality of wells based upon the determined optimal allocation solution. The well-specific control signal for each of the plurality of wells is communicated to the associated well controller to cause the associated well controller to control a lift parameter associated with the artificial lift mechanism for the well.
대표청구항▼
1. A method of performing lift optimization in a field comprising a plurality of wells, with each well including an artificial lift mechanism controlled by an associated well controller, the method comprising, in a central controller: accessing a network simulation model as a proxy of the field;gene
1. A method of performing lift optimization in a field comprising a plurality of wells, with each well including an artificial lift mechanism controlled by an associated well controller, the method comprising, in a central controller: accessing a network simulation model as a proxy of the field;generating well-specific models for the plurality of wells, wherein the individual well-specific models model a well flow rate relationship with lift gas injection for varying well head pressure values;determining an optimal allocation solution for the field using both the network simulation model and the well-specific models;generating a well-specific control signal for each of the plurality of wells based upon the determined optimal allocation solution;communicating the well-specific control signal for each of the plurality of wells to the associated well controller to cause the associated well controller to control a lift parameter associated with the artificial lift mechanism for the well;retrieving actual field data collected from at least one of the plurality of wells after the field reaches equilibrium;comparing the actual field data to the network simulation model;discontinuing using the network simulation model to determine the optimal allocation solution when a difference between the actual field data and the network simulation model is greater than a predetermined threshold; andwithout using the network simulation model, using an iterative procedure based on the actual field data to determine the optimal allocation solution. 2. The method of claim 1, wherein accessing the network simulation model includes iteratively converging to the optimal allocation solution. 3. The method of claim 2, wherein iteratively converging to the optimal allocation solution includes converging based upon a network solution determined from the network simulation model. 4. The method of claim 2, wherein iteratively converging to the optimal allocation solution includes converging based upon the actual field data collected from at least one of the plurality of wells. 5. The method of claim 1, further comprising running a field-wide simulation to generate the network simulation model. 6. The method of claim 5, further comprising: retuning at least one well-specific model in response to determining from the actual field data that the optimal allocation solution is out of tolerance. 7. The method of claim 1, further comprising generating a set of lift performance curves for each of the plurality of wells from the well-specific models for each of the plurality of wells, wherein generating the well-specific control signal for each of the plurality of wells includes generating the well-specific control signal using the set of lift performance curves for each of the plurality of wells. 8. The method of claim 7, wherein running the field-wide simulation and generating the set of lift performance curves are performed externally to the central controller, the method further comprising communicating the network simulation model and each set of lift performance curves to the central controller. 9. The method of claim 1, wherein the artificial lift mechanism for at least one well comprises a gas lift mechanism, and wherein the lift parameter comprises a gas lift rate. 10. The method of claim 1, further comprising running the network simulation model and the iterative procedure based on the actual field data in parallel to calibrate the network simulation model. 11. A central controller for performing lift optimization in a field comprising a plurality of wells, with each well including an artificial lift mechanism controlled by an associated well controller, the central controller comprising: at least one processor; andprogram code configured upon execution by the at least one processor to: access a network simulation model as a proxy of the field to determine an optimal allocation solution for the field,generate a well-specific control signal for each of the plurality of wells based upon the determined optimal allocation solution,communicate the well-specific control signal for each of the plurality of wells to the associated well controller to cause the associated well controller to control a lift parameter associated with the artificial lift mechanism for the well,retrieve actual field data collected from at least one of the plurality of wells after the field reaches equilibrium;compare the actual field data to the network simulation model;discontinuing using the network simulation model to determine the optimal allocation solution when a difference between the actual field data and the network simulation model is greater than a predetermined threshold; andwithout using the network simulation model, using an iterative procedure based on the actual field data to determine the optimal allocation solution. 12. The central controller of claim 11, wherein the network simulation model is generated from a field-wide simulation. 13. The central controller of claim 12, wherein the program code is further configured to access well-specific models for the plurality of wells, wherein the individual well-specific models model a well flow rate relationship with lift gas injection for varying well head pressure values, wherein the optimal allocation solution for the field is determined using both the network simulation model and the well-specific models. 14. The central controller of claim 13, wherein the program code is further configured to access a set of lift performance curves for each of the plurality of wells, and wherein the program code is configured to generate the well-specific control signal for each of the plurality of wells using the set of lift performance curves for each of the plurality of wells. 15. The central controller of claim 14, wherein the network simulation model and the set of lift performance curves are generated externally from the central controller, and wherein the program code is configured to receive the network simulation model and each set of lift performance curves. 16. The central controller of claim 12, wherein the program code is configured to retune at least one well-specific model in response to determining from the actual field data that the optimal allocation solution is out of tolerance. 17. A non-transitory computer readable storage medium having a set of computer-readable instructions residing thereon that, when executed: access a network simulation model as a proxy of a field;generate well-specific models for a plurality of wells, wherein the individual well-specific models model a well flow rate relationship with lift gas injection for varying well head pressure values;determine an optimal allocation solution for the field using both the network simulation model and the well-specific models;generate a well-specific control signal for each of the plurality of wells based upon the determined optimal allocation solution,communicate the well-specific control signal for each of the plurality of wells to an associated well controller to cause the associated well controller to control a lift parameter associated with an artificial lift mechanism for the well,retrieve actual field data collected from at least one of the plurality of wells after the field reaches equilibrium;compare the actual field data to the network simulation model;discontinue using the network simulation model to determine the optimal allocation solution when a difference between the actual field data and the network simulation model is greater than a predetermined threshold; andwithout using the network simulation model, use an iterative procedure based on the actual field data to determine the optimal allocation solution.
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