GB2376704A - Apparatus and method for the management of hydrocarbon production from a downhole well - Google Patents

Apparatus and method for the management of hydrocarbon production from a downhole well Download PDF

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Publication number
GB2376704A
GB2376704A GB0224693A GB0224693A GB2376704A GB 2376704 A GB2376704 A GB 2376704A GB 0224693 A GB0224693 A GB 0224693A GB 0224693 A GB0224693 A GB 0224693A GB 2376704 A GB2376704 A GB 2376704A
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data
well
production
devices
intelligent
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GB2376704B (en
Inventor
Paul S Tubel
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Baker Hughes Holdings LLC
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Baker Hughes Inc
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Classifications

    • EFIXED CONSTRUCTIONS
    • E21EARTH DRILLING; MINING
    • E21BEARTH DRILLING, e.g. DEEP DRILLING; OBTAINING OIL, GAS, WATER, SOLUBLE OR MELTABLE MATERIALS OR A SLURRY OF MINERALS FROM WELLS
    • E21B47/00Survey of boreholes or wells
    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
    • G05B17/00Systems involving the use of models or simulators of said systems
    • G05B17/02Systems involving the use of models or simulators of said systems electric
    • EFIXED CONSTRUCTIONS
    • E21EARTH DRILLING; MINING
    • E21BEARTH DRILLING, e.g. DEEP DRILLING; OBTAINING OIL, GAS, WATER, SOLUBLE OR MELTABLE MATERIALS OR A SLURRY OF MINERALS FROM WELLS
    • E21B43/00Methods or apparatus for obtaining oil, gas, water, soluble or meltable materials or a slurry of minerals from wells
    • E21B43/12Methods or apparatus for controlling the flow of the obtained fluid to or in wells
    • EFIXED CONSTRUCTIONS
    • E21EARTH DRILLING; MINING
    • E21BEARTH DRILLING, e.g. DEEP DRILLING; OBTAINING OIL, GAS, WATER, SOLUBLE OR MELTABLE MATERIALS OR A SLURRY OF MINERALS FROM WELLS
    • E21B2200/00Special features related to earth drilling for obtaining oil, gas or water
    • E21B2200/22Fuzzy logic, artificial intelligence, neural networks or the like

Abstract

An apparatus (and method of use) for the management of hydrocarbon production from a downhole well which comprises a production management system having supervisory control and data acquisition (SCADA) software, an intelligent device having a processor unit and memory in which the SCADA software executes, a source of historical data relevant to said downhole well in communication with the production management system, a sensor capable of communicating sensed data representative of a parameter of hydrocarbon production and a controllable device capable of controlling a production process variable and being in communication with the production management system wherein said production management system utilizes said sensed data and said historical data to control said controllable device to manage said hydrocarbon production.

Description

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AUTOMATIC HYDROCARBON PRODUCTION MANAGEMENT SYSTEM 1. Technical Field The present invention relates to oilfield hydrocarbon production management systems capable of managing hydrocarbon production from boreholes. The present invention's intelligent optimization oilfield hydrocarbon production management systems sense and adapt to internal and external process conditions, automatically adjusting operating parameters to optimize production from the wellbore with a minimum of human intervention. Oilfield hydrocarbon production management may be accomplished by systems located downhole, at the surface, subsea, or from a combination of these locations. The present invention's oilfield hydrocarbon production management systems include one or more of the following features: intelligent and non-intelligent well devices such as flow control tools, smart pumps, and sensors; knowledge databases comprising historical databases, reservoir
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models, and wellbore requirements; and supervisory control and data acquisition software comprising one or more oilfield hydrocarbon production management goals, one or more process models, and, optionally, one or more goal seeking intelligent software objects.
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2. Backcrround ilrt In the current art, production management of hydrocarbons from wells ia highly dependent on human operators. However, operation of these wells has become more complex, giving rise to the need for more complex controls, including-concurrent controlling of zcne production, isolating specific zones, monitoring each zone in a particular well, monitoring zones and wells in aL field, and optimizing the operation of wells in realtime across a vast number of optimization criteria. This complexity has placed production management beyond the control of one or even a few humans and necessitates at least some measure of automated controls.
Some current art oilfield hydrocarbon production management systems use computerized controllers to control downhole devices such as hydro-mechanical safety valves. These typically microprocessor-based controllers may also be used for zone control within a well. However, these controllers often fail to achieve the desired production optimization and further require substantial human intervention.
Additionally, current art oilfield hydrocarbon production management systems may use surface controllers that are often haxdwired to downhole sensors which transmit data about conditions such as pressure, temperature, and flow to the surface
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controller. These data may then be processed by a computerized control system at the surface, but such systems still require human intervention and do not provide enforcement of global optimization criteria, focusing instead, if at all, on highly localized optimization, e. g. for one device.
Some current art oilfield hydrocarbon production management systems also disclose downhole intelligent devices, mostly microprocessor-based, including microprocessor-baaed electromechanical control devices and sensors, but do not teach that these downhole intelligent devices may themselves automatically initiate the-control of electromechanical devices based on adaptive process models. Instead, these systems also require control electronics located at the surface as well as human intervention..
United States Patent 4, 676, 313 issued to Rinaldi is illustrative of these prior art oilfield hydrocarbon production management systems. Rinaldi'313 teaches a method of enhancing oil and/or gas recovery using flow control valves and sensors in a well. The valves and sensors are connected to a surface computer. The computer compares fluid flow data from the valves and sensors to a theoretical flow model of the reservoir to determine actual fluid flow paths in the reservoir. The computer then determines the optimum fluid flow rates and paths and adjusts the valve open-close patterns and settings accordingly,
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to force the reservoir fluid flows into those paths. The computer continually performs these operations so as to constantly provide maximum sweep efficiency and therefore optimum reservoir productivity. As opposed to the current invention, Rinaldi 1313 teaches use of a static model where the model is completed using data or information attained through a log and rill stem testing of the well bores, once the model is completed, the model is operated to determine the best production procedure in light of the known reservoir data.
Accordingly, current oilfield hydrocarbon production management systems generally require a surfacs platform associated with each well for supporting the control electronics and associated equipment, In many instances, the well operator would rather forego building and maintaining a costly platform.
None of the current art disclosing intelligent downhole devices for controlling the production from oil and gas wells teaches the use of electronic controllers, electromechanical control devices and sensors-whether located downhole, surface, aubsea, or mixed - together with supervisory control and data acquisition (SCADA) systems which automatically adapt operation of the electronic controllers, electromechanically controllable devices, and/or sensors in accordance with process models and production management goals, or cooperative control of these devices based on a unified, adaptively optimizing system to
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automa. tica. lly enforoe aystem wide set of optimization criteria.
3. Disclosure of Invention It is therefore an objective of the present invention to provide an improved automatic optimization oilfield hydrocarbon production management system. Accordingly, an iinproved automatic optimization oilfield hydrocarbon production management system is described.
4. Brief Description of the Drawings For a further understanding of the nature and objects of the present invention, reference should be had to the following detailed description, taken in conjunction with the accompanying drawings, in which Like elements are given the same or analogous reference numbers and wherein : PIG. 1 is a cross-section of a typical platform indicating several wells, two of which have a plurality of zones ; FIG. 2 is a diagrammatic representation of the present invention's SCADA, including an optional current data source and an optional interrogatable knowledge database ; FIG. 3 is a diagrammatic representation of an intelligent software object ; and FIG. 4 is a diagrammatic representation of intelligent software objects showing flow and hierarchy relationships.
5. Best Mode for Carrying out the Invention Referring now to Pig. 1, a cross-section of a typical
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platform indicating several wells with two of the wells, well 640 and well 641, having a plurality or zones as that term is readily understood by those skilled in the hydrocarbon production arts, the present invention can utilize intelligent and non-intelligent real world'devices 100 located at several locations within or around a well.
TO illustrate and clarify the present invention, a numbering scheme will be used throughout to identify and distinguish specific devices from generic devices. Accordingly, in the various figures, real world devices in general are referred to generally with the numeric series "100", such as downhole generic real world device 101 in zone 640b of well 640, subsea intelligent real world device 112 in well 641, or surface non-intelligent real world device 123 at surface platform 645. Real world devices 100 include specific devices that are referred to generally as follows : sensors indicated by the numeric series "200,"controllable devices by the numeric series"300, 11 injection devices by the numeric series MOO,"and fluid processing devices by the numeric series u500, N In general, the present invention's sensors 200 are capable of providing sensed information about the state of the process to be controlled as well as about the state of other real world devices loo such as controllable devices 300 or even other sensors 200. Controllable devices 300 may include flow control devices familiar to those
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skilled in the hydrocarbon production arts and include valves, pumps, and the like. Injection devices 400 may include surface injection devices 403 such as steam, gas, and water injection devices ; downhole injection devices 401 such as downhole oil/water separation devices ; and/or a combination thereof. Fluid processing devices 500 may include mechanical or phase separators and/or chemical delivery systems at various locations in or at a well.
For all the numeric series above, a middle digit of " : 1'1 indicates an intelligent real world device and a middle digit of "2"indicates a non-intelligent real world device. A middle digit of "0" indicates a generic real world device which can be either an intelligent real world device or a non-intelligent real world device. As used herein, intelligent real world device 110 includes at least one processor unit and computer memory associated with the processor unit. The processor unit may be a general purpose microprocessor or may be any another processing unit, including specialized processors such as those commonly referred to as an ASIC. The computer memory may be volatile, such as random access memory (RAM), changeable such as flash memories, or non-volatile such as read only memory (ROM) or optical memory.
Intelligent real world devices 110 may include intelligent well devices and/or robotic devices as well as more traditional controllers.
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As opposed to the prior art, real world devices 100, and especially intelligent real world devices 110, may be located downhole, at the surface of the well, subaea, remotely, or a combination of these locations. Therefore, in the discussions which follow and in the various drawings, an ending digit of"0" in a numeric series indicates a real world device 100 which can be located anywhere. A real world device 100 located downhole will have an ending digit of'"l", a real world device 100 located subsea will have an ending digit of "2", a real world device loo located at the surface (including above or at the sea's surface) will have an ending digit of 3", and a real world device 100 located remotely from the well will have an ending digit of"4".
Thus, in the discussion herein below and in the various figures, reference to a generic device e. g. sensor 200, may be shown in the figure as a generic device at a specific location e. g. downhole generic sensor 201 in zone 640a of well 640, or a specific device in a specific location, e. g. intelligent downhole sensor 211 located in zone 640b of well 640 or subsea nonintelligent sensor 222 located in well 640.
Referring now to both Fig. 1 and Fig. 2, a diagrammatic representation of the present invention's supervisory control and. data acquisition system (SCADA) 10 (not shown in Fig. l but shown. in Pig. 2), the present invention relates to management of hydrocarbon production from a single production well (e. g. only
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well 642) or from a group of wells, shown in Fig. 1 as well 640, well 641 and well 642. The various embodiments of the present invention's oilfield hydrocarbon production mangement system utilize improved SCADA 11 which is capable of intelligent and proactive control of hydrocarbon production. More specifically, SCADA 11 includes traditional reactive monitoring and control functions as well as one or more production management goals 11c and one or more process models lid, As opposed to the current art, SCADA 11 executes within one or more intelligent real world devices 110 (e. g. aubaea intelligent real world device 112 shown in well 641 or downhole intelligent controllable device 311 shown in zone 640a of well 640) to interact with and proactively control one or more real world devices 100 (e. g. surface non- intelligent controllable device 303 shown in surface platform 645) to automate and optimize hydrocarbon production from a zone or group of zones in one or more wells, a single well, or a group of wells. Real world devices 100 may include sensors 200, such as downhole intelligent sensor 211 in zone 640b; controllable devices 300, such as subsea intelligent controllable device 312 in well 641 ; injection devices 400, such as downhole generic injection device 401 in zone 640b ; fluid processing devices 500 such as downhole generic injection device 501 located in zone 640a ; or any combination of these devices. It is understood that 'any of these real world devices 100, whether intelligent real
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world devices 110 or not, can be located downhole, subsea, at the surface, remotely or any combination of these locations.
Further, intelligent real world devices no may be standalone units, such as traditional controllers embodied in a real world device 100 such as subsea intelligent controllable device 312 located in well 641, may be imbedded within or attached to one or more real world devices 10C, for example intelligent sensors 210 (such as surface intelligent sensor 213 located at surface platform 645), intelligent controllable devices 310 (such as subsea intelligent controllable device 312 located in well 64 : 1), injection devices 410 (such as subsea intelligent injection device 412 located in well 641), fluid processing devices 510 (such as downhole intelligent fluid processing device 512 located in zone 642a of well 642), or a combination of the above.
Communication between real'world devices 100 may be through any acceptable data communications means 36 (shown in Fig. 2) such as but not limited to radio frequency, light frequency, fiber optics, RS-232, coax, local area networks, wide area networks, or combinations thereof.
Sensors 200 may provide SCADA 11 with sensed data and/or historical data. As used herein, sensed data may include instantaneous data, or real-time data as that term is understood by those skilled in the computer sciences arts, as well as data
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acquired over some time interval, but sensed data reflect and/or represent at least one parameter of the production process.
Hisroncal data, as used herein, may include dat : a from the well(s) being controlled and/or from other wells, and may include data reflective of historical conditions and models about well .. processes and/or operations in general ; data net associated with local wells being controlled by SCADA 11 ; data regarding production and fluid parameters, reservoir models, and wellbore reguirements; and/or general historical well data. Sensors 200 may also provide SCADA 11 with sensed da. ta reflecting the state of other real world devices 100. Accordingly, sensors 200 may be located and provide sensed data reflective of 1 : he process environment downhole, such as downhole generic sensor 201 in zone 640a of well 640 ; a-t the surface, such as surface intelligent sensor 213 located in surface platform 645; subsea, such as subsea intelligent : sensor 212 located in well 642; remotely, such as remote intelligent sensor 214 ; or in any combination thereof.
Remote sensors 200 may provide SCADA 11 with information about the process environment external to the local well but important to production nonetheless, such as economic data, weather data, or any other data relevant to production management. For example, remote intelligent sensor 214 may comprise a radio transmitter transmitting weather data via satellite (not shown in Fig. l) to SCADA 11.
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As described more fully herein below, an intelligent software object, or ISO, 10 (nor-shown in Fig. 1) may also be associated with various data sources to act as a"data. miner'', interrogating historical data for data points congruent or similar to SCADA's 11 sensed data which are therefore useful to SCADA 11.
T The present invention lessens if not eliminates the requirement for surface platform 645 to support control electronics and associated equipment as it does not require control electronics located at one particular location, e. g. surface platform 645. Instead, SCADA1 s 11 functionality may optionally be distributed across a plurality of intelligent real world devices 110 in one or more distributed processing configurations, each of which is well understood by those skilled in the computer sciences art. Accordingly, SCADA 11 may solely execute in one of the intelligent devices'110 control electronics or be cooperatively distributed between a plurality of intelligent real world devices 110 located within or distributed between in any combination of downhole, subsea, surface or even remote locations, e. g. distributed in downhole intelligent fluid processing unit 511 located in zone 640c of well 640 and downhole intelligent sensor 211 located in zones
640b of well 640.
Further, whereas current art SCADA 11 software is reactive
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and limited to monitoring sensors for alarm conditions and proceeding to shut down a process when alarm conditions arise, SCADA. 11 adaptively utilizes one or more process models lid of the production process, including models of the well (s) such as well 640, well 641, and well 642, their zone (s) such as zones 640a, 640b, 640c, 641a, and 641b, and real world devices 100 in addition to one or more higher level production management goals lie to proactively control and manage hydrocarbon production.
SCADA 11 may therefore be configured to respond to conditions associated with a single well such as well 640 as a whole, including its zones such as zone 640a, zone 640b, and zone 640c; conditions associated with one or more zones in a single well, such as only zone 640 a or only zone 640a and/or zone 640b; conditions associated with one or more zones in a plurality of wells, such aa zone 640a and zone 64la ; or conditions associated
with an entire oilfield such as well 640, well 641 and well 642.
These conditions may include conditions internal to a given well such as downhole tenperature, pressure,. and/or fluid conditions ; process conditions external to a given well, e. g. field conditioner and non-process conditions, e. g. economic conditions.
Using data from its various sensors 200, e. g downhole generic sensor 201 or downhole intelligent sensor 211, SCADA 11 monitors process paranteters (such as downhole pressure, temperature, flow, gas influx, etc. ) and automatically executes
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control instructions to modify the operating parameters of its various sensors 200, controllable devices 300, injection devices 4oxo, and fluid processing devices 500 in accordance with its process models 11d and production management goals 11c to optimize hydrocarbon production from the well.
SCADA I : L may also adapt its process models 11d based on actual 1 current conditions including remote conditions, past or historical conditions and models, and/or actual responses to SCADA 11 commands. Current conditions may include instantaneous as well as substantially conteniooraneous events. Therefore, as further opposed to the current art that merely monitors for and/or reacts to alarm conditions, SCADA 11 adaptively controls downhole, surface, and subsea devices, whether or not in alarm, in accordance with SCADA's 11 analysis of its models and data from a variety of sources, including external data sources, with a minimum of human intervention.
Referring now generally to Fig. 3, a diagrammatic representation of an ISO 10, in a preferred embodiment SCADA 11 may further comprise one or more ISOs 10. 1SOs 10 provide a variety of functions useful in control and/or optimization applications and may be connected or grouped together in a variety of ways, more fully described herein below.
An ISO 10 comprises intern. al software objects, as that term is understood by those skilled in the computer programming arta.
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ISO's 10 internal software objects may be configurably enabled, disabled, or not configured at all, and may include expert system objects 12 capable of utilizing one or more ru-lea knowledge databases 13, which contain crisp logic rulee 14 and/or fuzzy logic rules 16 ; adaptive models objects 20 which may use multiple, concurrent, differing modeling methodologies to produce adaptive models which"compete"in real-time with each other adaptive model within ISO 10 to predict a real-time process outcome based on current, past, and predicted process parameters ; predictor objects 18 which select from among the various competing adaptive model of the adaptive models objects 20 that adaptive model which bests predicts the measured real-time procesa outcome optimize--objects 22 which decide optimum parameters to be used by an ISO 10 for a given state of the process, calculation, or component to be optimized; communication translator objects 26 which may handle communications between an ISO 10 and anything-outside ISO 10; and ISO sensor objects 25 (which are different than sensors 200) which, in part, act as intelligent data storage and retrieval warehouses and data managers for the state (s) of the controlled process, including the state (s) of the control variables for the process. Sensor objects 25, expert system objects 12, predictor objects is, adaptive models objecte 20, and optimizer objects 22 work together within ISO 10 co find, calculate, interpret, and derive
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new states for the control variables that result in the desired process state (s) or achieve process management goal (a) 32. For example, expert system objects 12, cptimizer objects 22, predictor objects IS, and adaptive models objects 20 communicate and configurably interact Mith each other adaptively, automatically changing each other's behavior in real-time, including creating and deleting other internal software objects.
Further, optimizer object 22 may modify expert system objects' 12 rules knowledge basea 13, and expert system object 12 may modify optimizer objects'22 optimum goals to be sought.
Referring now to Pig. 4, a diagrammatic representation of ISOs 10 in flow and hierarchioal relationships, ISOs 10 can model and represent any device or group of devices including sensors 200, controllable devices 300, fluid processing devices 400, injection devices 500, or any combination thereof. ISOs 10 can also model and represent more abstract processes such as a single zone like 640a, a group of zones such as 640a and 640b, an entire
well such as well 640, or ar-entire field such as wells 640, 641, and 642. To accomplish these models and representations, two or more ISOs 10 may be configured in either"flow relationships that model, or representational1y correspond to, the flow of the material and/or information which is to be controlled, and/or "hierarchical relationships that defins the prioritization and scope relationships between ISOs 10 or groups of ISOs 10, e. g.
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between that which is being modeled. ISOs 10 configured in this manner therefore cooperatively represent the process to be controlled.
Referring now to Fig. 1 and Fig. 4, as an example ISO 610a may represent zone 640a of well 640, as shown in Fig. 1, as an abstract, aggregate process and ISO GlOb may represent zone 640b of well 640 as an abstract, aggregate process. ISO 610c may represent controllable device 301 located in well 640 above zones 640a and 640b, and data wherefore Slow from ISO 610a to and
from ISO 610c, and from ISO 610h to and from ISO 610c to reflect and model the flow of hydrocarbons from those zones into well 640.
Further, ISO 610d may be a "hierarchy" ISO 10 and represent well 640 as an aggregate whole, and ISO 610e may be another "hierarchy" ISO 10 representing well 641 as a whole. Finally, "hierarchy" ISO 610f may represent the field in which well 640 and well 641 are both located. Within ISO each of ISO 610d and 610e can concurrently be Slow"ISOs 10 as well, representing, for example, the flow of hydrocarbons from each well into surface platform 645.
ISOs 10 are therefore very flexible and powerful in their modeling flexibility. An ISO's 10 rules, goals, and optimization criteria may be initialized and/or modified configurably or in real-time by either the ISO 10 itself, other ISOs 10, human
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ir. tervention, or a combination thereof. For example, in Fig. 4, ISO 610c can modify each of ISO 610a and 610b to change their production management, goals 100 based on ISOs 610c production management goals lac. Optimization may therefore be achieved through the cooperation between an ISO's 10 internal software objects as well as between ISOs 10 configured to represent an entire process.
Referring back now to Fig. 1 and Fig. 2, given its one or more process models lid, one or more production management goals lie, and optionally one or more ISOs 10, SCADA 11 further differs from the prior art by proactively using its one or more process models lid-which may further comprise several models of subprocesses and well devices-to issue control commands which impact on and modify operating parameters for real world devices 100, including controllable devices 300, to control production from a we. llbore suoh as well 640 to accomplish SCADA's 11 production management goals 110. SCADA 11 therefore permits fully automatic, concurrent, complex operation and control of single and/or multi-zone production including isolating specific zones such as 640a, 640b, or 640c : monitoring each zone in a particular well such as well 640 ; monitoring zones and wells in a field such as well 640, well 641, and well 642; and optimizing the operation of one or more veils across a vast number of optimization criteria. Accordingly, SCADA 11:can provide for enforcement of
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optindzation criteria with a more global scope rather than being limited to narrowly focusing on highly localized optimization, e. g. for one real world device 100. In doing so, SCADA 11 is better equipped to handle complex operations than human operators. Although human intervention may modify or override SCADA's 11 management of hydrocarbon production, SCADA's 11 ability to rapidly and adoptively react to complex and changing conditions affecting production with a minimum of human intervention allows SCADA 11 to automatically detect and adapt to varying control and communication reliability while still achieving its important control operations. Accordingly, SCADA 11 enhances safe operation of the veil, both from human worker and environmental aspects.
In communication with real world devices loo such as sensors 200 (e. g. generic downhole sensor 201), controllable devices 300 (e. g. downhole intelligent sensor 311), injection devices 400 (e. g. subsea generic injection device 402), and flu-id processing devices 500 (e. g. downhole generic fluid processing device 501), SCADA 11 manages hydrocarbon production from one or more wells according to its process models lld and the conditions of which, it is aware, adaptively nidifying its process tnodels lid to more fully correspond to actual responses to given commands when compared to predicted responses to given commands, thus adaptively and automatically accomplishing its set of one or more
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production management goals lie. SCADA 11 executes in one or more intelligent real world devices 110, including downhole intelligent real world devices 111, subsea intelligent real world devices 111, surface intelligent real world devices 112, remote intelligent real world devices 114 (not shown in Fig. 1), or any combination thereof. SCADA's 11 communication can be unidirectional (for example, from downhole non-intelligent sensor 221 in zone 6400 of well 640) or bidirectional (for example, to
and from intelligent downhole controllable device 311 in zone 640c of well 540).
Referring still to Fig. 1, as is well known, in the art a given well may be divided into a plurality of separate zones, such as zone 640a, zone 640b, and zone 540c. Such zones may be positioned in & single vertical well such as well 640 associated with surface platform 645, or such zones may result when multiple wells are linked or otherwiae joined together (not shown in Fig.
1). These zones may need to be concurrently monitored and/or controlled for efficient production and-management cf the well fluids. Accordingly, intelligent real world devices 110 and nonintelligent devices 120 can co-exist within a single zone, multiple zones of a single well, multiple zones in multiple wells, or any combination thereof. At least one real world device 100 will he an intelligenz real world device 110, e. g. an intelligent sensor 210 such as downhole intelligent sensor 211
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located in zone 640b of well 640 or an. intelligent controllable device 310 such as downhole intelligent controllable device 311 located in zone 640a of well 640.
It ia further contemplated that one or more ISOs 10 may also be resident in one or more intelligent real world devices 110 such as an intelligent sensor 211 or an intelligent controllable device 311. SCADA 11 may communicate with one or more ISOB 10, and may use ISOs 10 to adaptively and cooperatively control the real world devices 110 in which ISOs 10 reside or which ISCs 10 model.
In a further alternative configuration, SCADA 11 may further utilize data from an interrogatable knowledge database lie, comprising historical data about well operations, and/or current data source 700 which is not associated with local wells being controlled by SCADA 11, e. g. wells 640, 641, or 642. For example, SCADA 11 could obtain current data from remote intelligent sensor 214. These data. could include well maintenance schdules, weather reports, price of hydrocarbons, and other nonwell data which do not arise from but may impact optimization of hydrocarbon production from a well. As a further example, SCADA 11 may be programmed with a process model 11d which includes a model of tanker vessel availability and its impact on hydrocarbon production for a subsea well, e. g. well 640. SCADA 11 may then adjust hydrocarbon production, using non-well data such as weather
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data communicated to SCADA 11 which may inpact the arrival schedule of a tanker vessel.
In a like manner, SCADA 11 may utilize in-cerrogatable knowledge database 11e to aid in optimization of hydrocarbon production. Interrogatable knowledge database lie may include historical data, descriptions of relationships between the data, and rules concerning the use of and relationships between these data and data from a single well such as well 640, from a plurality of wells in a field such as wells 640 and 641, and/or from accumulated well production knowledge. Interrogatable knowledge database's : le hi6orical data may therefore comprise data regarding production and fluid parameters, reservoir models, and wellbore requirements, whether from well 640, the field in which the particular downhole well is located, or from general historical downhole well data. SCADA : Ll has the ability to interrogate knowledge database 11e and integrate its data into SCADA's 11 adaptive modification of its predictive models, giving SCADA 11 a broader base of data (historical, current, and predicted) from which to work.
Further, in each configuration described herein above, one or more controllable devices 300 or sensors 200 may be operatively associated with one or more self-propelled robotic devices (not shown in the figures). These robotic devices may be permanently deployed within a ciowricle well and mobile in the
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well and its zones. Additionally, these robotic devices may also be configured to traverse zones within a well such as well 640 ;
wells in a field such as wella 6D, 6l, and 642 ; or exit the "61-M Ir well altogether for other uses such as subsea or surface uses or retrieval. SCADA 11 may be configurably distributed in one or more robotic devices because they are intelligent real world devices 110. For example, robotic devices may be viewed by SCADA 11 as controllable devices 310 like other controllable, devices 300 described herein above and controlled accordingly.
It may be seen from the preceding description that an automatic optimization oilfield hydrocarbon production management system has been described and provided.
It is noted that the embodiment of the automatic optimization oilfield hydrocarbon production management system described herein in detail for exemplary purposes is of course subject to many different variations in structure, design., application and methodology. Because many varying and different embodiments may be made within the scope of the inventive concept (s) herein taught, and because many modifications may be made in the embodiment herein detailed in accordance with the descriptive requirements of the law, it is to be understood that the details herein are to be interpreted as illustrative and not in a limiting sense.
S. Industrial Applicability
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The present invention is used to mange cilfield hydrocarbon production from boreholes, specifically to automatically optimize production of fluids from one or more zones in one or more wells in accordance with one or more production goals with a minimum of human intervention when presented with real-time readings of the process environment internal to the well process such as tenperature, salinity, or pressure, and/or external to the well process but important nonetheless such as providing economic data, weather data, or any other data relevant to production management.

Claims (3)

  1. CLAIMS 1. An apparatus for management of hydrocarbon production from a downhole well comprising: a production management system having supervisory control and data acquisition software; an intelligent device comprising a processor unit and memory associated with said processor unit in which said supervisory control and data acquisition software executes; a source of historical data relevant to said downhole well, capable of communicating said historical data, in communication with production management system; a sensor, capable of communicating sensed data representative of at least one parameter of hydrocarbon production processing, in communication with said production management system; and a controllable device, capable of responding to control commands and controlling at least one production process variable influencing said hydrocarbon production processing, in communication with said production management system wherein said production management systems utilizes said sensed data, and said historical data to control said controllable device to manage said hydrocarbon production.
    <Desc/Clms Page number 27>
  2. 2. The apparatus of Claim 1 further comprising a current data source wherein said current data source provides said production management system with substantially current data other than said sensor data.
  3. 3. A method of management of hydrocarbon production from a downhole well for an apparatus comprising supervisory control and data acquisition software, an intelligent device comprising a processor unit and memory associated with said processor unit in which said supervisory control and data acquisition software executes, a sensor in communication with said supervisory control and data acquisition software, a source of historical data in communication with said supervisory control and data acquisition software, and a controllable device capable of controlling at least one production process variable thereby influencing said production where said controllable device is in communication with said supervisory control and data acquisition software, said method comprising the steps of: providing said supervisory control and data acquisition software with data from said historical data source relevant to said well; providing said supervisory control and data acquisition software with data from said sensor representative of at least one parameter of said management of hydrocarbon production; and
    <Desc/Clms Page number 28>
    having said supervisory control and data acquisition software utilize said data from said historical data source and said data from said sensor to control said controllable device and thereby control at least one production process variable to influence said management of hydrocarbon production.
GB0224693A 1998-05-15 1999-05-14 Automatic hydrocarbon production management system Expired - Lifetime GB2376704B (en)

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GB2400687A (en) * 2003-04-16 2004-10-20 Schlumberger Holdings Configuration of an acquisition and control system
SG127729A1 (en) * 2003-06-23 2006-12-29 Boc Group Inc Method and apparatus for self-configuring supervisory control and data acquisition (scada) system for distributed control
WO2009073803A1 (en) * 2007-12-05 2009-06-11 Schlumberger Canada Limited Method and apparatus for off-rig processing rig sensor data
WO2011037925A2 (en) 2009-09-22 2011-03-31 Baker Hughes Incorporated Method for controlling fluid production from a wellbore by using a script
EP2556462A1 (en) * 2010-04-06 2013-02-13 Exxonmobil Upstream Research Company Hierarchical modeling of physical systems and their uncertainties
US9551213B2 (en) 2009-04-07 2017-01-24 Baker Hughes Incorporated Method for estimation of bulk shale volume in a real-time logging-while-drilling environment

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Cited By (14)

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GB2400687B (en) * 2003-04-16 2005-04-06 Schlumberger Holdings Acquisition and control system
GB2400687A (en) * 2003-04-16 2004-10-20 Schlumberger Holdings Configuration of an acquisition and control system
SG127729A1 (en) * 2003-06-23 2006-12-29 Boc Group Inc Method and apparatus for self-configuring supervisory control and data acquisition (scada) system for distributed control
US9260942B2 (en) 2007-12-05 2016-02-16 Schlumberger Technology Corporation Method and apparatus for off-rig processing rig sensor data
WO2009073803A1 (en) * 2007-12-05 2009-06-11 Schlumberger Canada Limited Method and apparatus for off-rig processing rig sensor data
GB2467695A (en) * 2007-12-05 2010-08-11 Schlumberger Holdings Method and apparatus for off-rig processing rig sensor data
GB2467695B (en) * 2007-12-05 2012-12-19 Schlumberger Holdings Method and apparatus for off-rig processing rig sensor data
US9551213B2 (en) 2009-04-07 2017-01-24 Baker Hughes Incorporated Method for estimation of bulk shale volume in a real-time logging-while-drilling environment
EP2480756A2 (en) * 2009-09-22 2012-08-01 Baker Hughes Incorporated Method for controlling fluid production from a wellbore by using a script
EP2480756A4 (en) * 2009-09-22 2014-04-02 Baker Hughes Inc Method for controlling fluid production from a wellbore by using a script
US9482077B2 (en) 2009-09-22 2016-11-01 Baker Hughes Incorporated Method for controlling fluid production from a wellbore by using a script
WO2011037925A2 (en) 2009-09-22 2011-03-31 Baker Hughes Incorporated Method for controlling fluid production from a wellbore by using a script
EP2556462A4 (en) * 2010-04-06 2014-05-14 Exxonmobil Upstream Res Co Hierarchical modeling of physical systems and their uncertainties
EP2556462A1 (en) * 2010-04-06 2013-02-13 Exxonmobil Upstream Research Company Hierarchical modeling of physical systems and their uncertainties

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