Electric submersible pumping systems are used in a variety of pumping applications, including downhole well applications. For example, electric submersible pumping systems can be used to pump hydrocarbon production fluids to a surface location or to inject fluids into a formation surrounding a wellbore. Repair or replacement of an electric submersible pumping system located downhole in a wellbore is expensive and time-consuming. However, predicting run life and/or failure of the electric submersible pumping system is difficult and this limits an operator's ability to make corrective actions that could extend the run life of the pumping system.
In general, a technique is provided to help predict the run life of a pumping system, e.g. an electric submersible pumping system (ESP). Knowledge regarding the predicted run life and factors affecting that predicted run life enables selection of corrective actions. The corrective actions may involve adjustment of operational parameters related to the pumping system so as to prolong the first run life of the pumping system. The technique utilizes an algorithm which combines various models, e.g. physical models and degradation models, to provide various failure/run life predictions. The various models utilize a variety of sensor data which may include first sensor data and second sensor data to both evaluate the state of the pumping system and the predicted run life of the pumping system.
However, many modifications are possible without materially departing from the teachings of this disclosure. Accordingly, such modifications are intended to be included within the scope of this disclosure as defined in the claims.
Certain embodiments of the disclosure will hereafter be described with reference to the accompanying drawings, wherein like reference numerals denote like elements. It should be understood, however, that the accompanying figures illustrate the various implementations described herein and are not meant to limit the scope of various technologies described herein, and:
In the following description, numerous details are set forth to provide an understanding of some embodiments of the present disclosure. However, it will be understood by those of ordinary skill in the art that the system and/or methodology may be practiced without these details and that numerous variations or modifications from the described embodiments may be possible.
The present disclosure generally relates to a technique which improves the ability to predict run life of a pumping system, e.g. an electric submersible pumping system. Depending on the application, the prediction of run life may be based on evaluation of the overall electric submersible pumping system, selected components of the electric submersible pumping system, or both the overall system and selected components. Knowledge regarding the predicted run life and factors affecting that predicted run life enables selection of corrective actions.
The corrective actions selected to prolong the run life of a pumping system, e.g. an electric submersible pumping system, can vary substantially depending on the specifics of, for example, an environmental change, an indication of component failure, goals of a production or injection operation, and/or other system or operational considerations. For example, corrective actions may involve adjustment of operational parameters regarding the electric submersible pumping system, including slowing the pumping rate, adjusting a choke (94), or temporarily stopping the pumping system.
The technique for predicting failure/run life of the pumping system utilizes an algorithm which combines various models, e.g. physical models and degradation models, to provide failure/run life predictions. The models may utilize a variety of sensor data including first sensor data and second sensor data to both evaluate the state of the pumping system and the predicted run life of the pumping system. The overall algorithm may be adjusted to accommodate specific system considerations, environmental considerations, operational considerations, and/or other application-specific considerations.
Referring generally to
As illustrated, wellbore 24 is lined with a wellbore casing 36 having perforations 38 through which fluid flows between formation 26 and wellbore 24. For example, a hydrocarbon-based fluid may flow from formation 26 through perforations 38 and into wellbore 24 adjacent pumping system 22. Upon entering wellbore 24, pumping system 22 is able to produce the fluid upwardly through tubing 34 to wellhead 28 and on to a desired collection point.
Although pumping system 22 may comprise a wide variety of components, the example in
In the embodiment illustrated, submersible electric motor 44 receives electrical power via a power cable 46 and is pressure balanced and protected from deleterious wellbore fluid by a motor protector 48. In addition, pumping system 22 may comprise other components including a connector 50 for connecting the components to deployment system 32. Another illustrated component is a sensor unit 52 utilized in sensing a variety of wellbore parameters. It should be noted, however, that sensor unit 52 may comprise a variety of sensors and sensor systems deployed along electric submersible pumping system 22, along casing 36, or along other regions of wellbore 24 to obtain data for determining one or more desired parameters, as described more fully below. Furthermore, a variety of sensor systems 52 may comprise sensors located at surface 30 to obtain desired data helpful in the process of determining measured parameters related to prediction of failures/run life of electric submersible pumping system 22 or specific components of pumping system 22.
Data from the sensors of sensor system 52 may be transmitted to a processing system 54, e.g. a computer-based control system, which may be located at surface 30 or at other suitable locations proximate or away from wellbore 24. The processing system 54 may be used to process data from the sensors and/or other data according to a desired overall algorithm which facilitates prediction of system run life. In some applications, the processing system 54 is in the form of a computer-based control system which may be used to control, for example, a surface power system 56 which is operated to supply electrical power to pumping system 22 via power cable 46. Surface power system 56 may be controlled in a manner which enables control over operation of submersible electric motor 44, e.g. control over motor speed, and thus control over the pumping rate or other aspects of pumping system 22 operation.
Referring generally to
In the illustrated example, CPU 58 may be used to process data according to an overall algorithm 66. As discussed in greater detail below, overall algorithm 66 may utilize a variety of models, such as physical models 68, degradation models 70, and optimizer models 72, e.g. optimizer engines, to evaluate data and predict run life/failure with respect to electric submersible pumping system 22. Additionally, processing system 54 may be used to process data received from first sensors 74 forming part of sensor system 52. Processing system 54 also may be used to process second sensor data from second sensors 76. By way of example, the data from first sensors 74 and second sensors 76 may be processed on CPU 58 according to desired models or other processing techniques embodied in overall algorithm 66.
As illustrated, processing system 54 also may be used to control operation of the pumping system by, for example, controlling surface power system 56. This allows processing system 54 to be used as a control system for adjusting operation of the electric submersible pumping system 22 in response to predictions of run life or component failure. In some applications, the control aspects of processing system 54 may be automated so that automatic adjustments to the operation of pumping system 22 may be implemented in response to run life/component failure predictions resulting from data processed according to overall algorithm 66.
Referring generally to
According to this method, mission profile 78 provides inputs to processing system 54 as a function of run time. For example, mission profile 78 may input “loads” such as pressure rise, vibration, stop/start of pumping system 22, and/or other inputs as a function of time. These loads are then input to physical model 68 of the particular electric submersible pumping system 22 or of a specific component of the electric submersible pumping system 22. Physical model 68 is then used to predict “stresses” or system outputs as a function of run time. By way of example, such system outputs may comprise shaft cycle stress, pump front seal leakage velocity, motor winding temperature, and/or other system outputs. The system outputs are then input to degradation model 70.
Degradation model 70 predicts the useful life of the overall electric submersible pumping system 22 or a component of the electric submersible pumping system 22. Degradation model 70 is configured to process the data from first sensors 74 according to, for example, shaft fatigue analysis, stage front seal erosion models, motor insulation temperature degradation data analysis, and/or other suitable data analysis techniques selected to determine a predicted life of a given component or of the overall electric submersible pumping system 22.
Depending on the application, physical model 68 may include, for example, data related to component mechanical stress, thermal stress, vibration, wear, and/or leakage. Various degradation models 70 may be selected to process the data from physical model 68 via processing system 54. For example, degradation model or models 70 may further comprise wear models, empirical test data, and/or fatigue models to improve prediction of the component or system life based on data from physical model 68.
Referring generally to
In this example, “stresses” are measured in real-time by first sensors 74 which may be disposed along the electric submersible pumping system 22 and/or at other suitable locations. For example, first sensors 74 may be located along pumping system 22 to monitor parameters related to an individual component or to combinations of components. In some applications, first sensors 74 may be located to monitor the motor winding temperature of submersible electric motor 44. The measured motor winding temperatures are then used in the corresponding degradation model 70 to predict in real-time the remaining useful life of the pumping string component, e.g. submersible electric motor 44. In this specific example, degradation model 70 may be programmed or otherwise configured to predict the remaining useful life of the motor magnet wire based on the motor winding temperatures according to predetermined relationships between useful life and temperatures.
However, the use of first sensor data in combination with degradation model 70 may be applied to a variety of components according to this embodiment of overall algorithm 66. For example, first sensors 74 may be used to monitor specific motor temperatures and this data may be provided to degradation model 70 to predict the aging of a motor lead wire, a magnet wire, and/or a coil retention system. According to another example, first sensors 74 may be positioned to monitor water ingress into, for example, motor protector 48 and submersible electric motor 44. This data is then used by degradation model 70 to predict when the water front will reach the submersible electric motor 44 in a manner which corrupts operation of the submersible electric motor 44.
In another example, the first sensors 74 are used to monitor temperatures along the well system 20, e.g. along electric submersible pumping system 22. This temperature data is then used by degradation model 70 to predict aging and stress relaxation (sealability) of elastomeric seals (90) along the electric submersible pumping system 22. The first sensors 74 also may be positioned at appropriate locations along the electric submersible pumping system 22 to measure vibration. The vibration data is then analyzed according to degradation model 70 to predict failure of bearings (92) within the electric submersible pumping system 22.
A variety of sensors may be used to collect data related to various aspects of pumping system operation, and selected degradation models 70 may be used for analysis of that data on processing system 54. In many applications, the output from degradation model 70 regarding remaining useful life of a given component can be used to make appropriate adjustments to operation of electric submersible pumping system 22. In some applications, the appropriate adjustments may be performed automatically via processing/control system 54.
Referring generally to
According to this method, “loads” measured in real-time by first sensors 74 positioned along electric submersible pumping system 22 are used by the physical model or models 68 to predict “second stresses” on the electric submersible pumping system 22 or components of the pumping system 22 in real-time. Furthermore, first stresses measured by first sensors 74 may be used together with the physical model(s) 68 and optimizer engine 72 to determine a set of measured system loads and second system loads. The second system loads are system loads not measured by first sensors 74 but which provide a desired correlation between first stresses measured by first sensors 74 and the same second stresses predicted by the physical model(s) 68. The set of second loads and measured loads as well as the set of second stresses and measured stresses determined according to this method provide an improved description of the “system state” of the pumping system 22 as a function of operating time. The set of first measured stresses and second stresses are then used by degradation model 70 to predict a remaining useful life of the pumping system components or the overall electric submersible pumping system 22.
In various applications, a “system identification” process may be employed for determining the second loads, as represented by module 81 in
Generally, the system identification process employs statistical methods for constructing mathematical models of dynamic systems from measured data, e.g. the data obtained from first sensors 74. The system identification process also may comprise generating informative data used to fit such models and to facilitate model reduction. By way of example, such a system identification process may utilize measurements of electric submersible pumping system behavior and/or external influences on the pumping system 22 based on data obtained from first sensors 74.
The data is then used to determine a mathematical relationship between the data and a state or occurrence, e.g. a second load or even a run life or component failure. This type of “system identification” approach enables determination of such mathematical relationships without necessarily obtaining details on what firstly occurs within the system of interest, e.g. within the electric submersible pumping system 22. White box methodologies may be used when activities within the pumping system 22 and their relationship to run life are known, while grey box methodologies may be used when the activities and/or relationships are partially understood. Black box methodologies may comprise system identification algorithms and may be employed when no prior model for understanding the activities/relationships is known. A variety of system identification techniques are available and may be used to establish second loads and/or to develop failure/run life predictions.
The use of such second stresses may be helpful in a variety of applications to predict remaining useful life. For example, the use of second motor temperature data from locations other than locations at which temperature data is measured by first sensors 74 can be useful in predicting the aging of, for example, motor lead wire, magnet wire, and coil retention systems. Similarly, second motor temperature data from locations other than locations monitored by first sensors 74 can be useful in predicting aging and stress relaxation (sealability) of elastomeric seals (90) in the electric submersible pumping system 22. Additionally, the use of second water front data can be used to effectively predict when a water front will reach the submersible electric motor 44.
In various applications, second bearing data, e.g. bearing contact stress, lubricant film thickness, and/or vibration can be used to predict the remaining life of pumping system bearings (92). Similarly, second pump thrust washer loads may be used to predict washer life. Second wear data, such as second pump erosive and abrasive wear data, can be used to predict pump stage bearing life and pump stage performance degradation. Additionally, second torque shaft data may be used to predict torsional fatigue life damage and remaining fatigue life of various shafts in submersible pumping system 22. Second shaft seal data, e.g. contact stress, misalignment, vibration, may be used to predict the remaining life of various seals. Second data may be combined with first data in many ways to improve the ability to predict run life of a given component or system. As described above, the second data may be in the form of second stresses predicted by physical model(s) 68 and first data may be in the form of first stresses measured by first sensors 74.
Referring generally to
The system state of measured parameters and second parameters is then used to identify events such as undesirable or non-optimum operating conditions. Examples of such conditions include gas-lock or other conditions which limit or prevent operation of the electric submersible pumping system 22. The system state of measured parameters and second parameters may be further used to control the electric submersible pumping system 22 by, for example, processor/control system 54. For example, the processor/control system 54 may utilize overall algorithm 66 to correct for conditions in the first system state to achieve a new desired system state 84, as illustrated in
In this method, processor/control system 54 may be programmed according to a variety of models, algorithms or other techniques to automatically adjust operation of electric submersible pumping system 22 from a detected first system state to a desired system state. Depending on the application, the first system state may be determined by first sensor data, second sensor data, or a combination of first and second sensor data. In some applications, both first measured data and second data may be used as described above with respect to the embodiment illustrated in
Depending on the application, the electric submersible pumping system 22 may have a variety of configurations and/or components. Additionally, overall algorithm 66 may be configured to sense and track a variety of first data and second data to monitor first states of specific components or of the overall pumping system 22. The first data and second data also may be related to various combinations of components and/or operational parameters. Additionally, the first data and second data may be processed by various techniques selected according to the type of data and the types of conditions being monitored. Based on predictions of run life determined from the first data and/or second data, various operational adjustments may be made manually or automatically to achieve desired system states so as to enhance longevity and/or other operational aspects related to the run life of the electric submersible pumping system.
Depending on the application, the methodologies described herein may be used to predict a run life of a pumping string, e.g. electric submersible pumping system, prior to installation based on an anticipated mission profile. The methodologies also may be used to predict remaining run life during operation of the pumping system. For example, the methodologies may be used to predict not simply imminent potential failure but also the time to failure throughout the life of the pumping system. In electric submersible pumping system applications, for example, the methodologies provide an operator or an automated control system with a substantial warning period prior to failure of the pumping system.
The methodologies described herein further facilitate improved responses to dynamic changes in, for example, an electric submersible pumping system string due to variable operating conditions. The improved responses enhance production and/or extend the run life of the electric submersible pumping system prior to failure. In various applications, second data is calculated according to a physical model for parameters other than those for which first measured data is available. The second data may be used alone or in combination with first measured data to enable a more comprehensive evaluation of potential pumping system failure modes. The more comprehensive evaluation enables improved control responses to mitigate those failure modes.
Although a few embodiments of the disclosure have been described in detail above, those of ordinary skill in the art will readily appreciate that many modifications are possible without materially departing from the teachings of this disclosure. Accordingly, such modifications are intended to be included within the scope of this disclosure as defined in the claims.
This application is a continuation application of U.S. application Ser. No. 15/301,618 filed Oct. 3, 2016, which is a U.S. National Stage Application of International Application No. PCT/US2015/023606, filed Mar. 31, 2015, which claims the benefit of and priority to U.S. Provisional Application No. 61/974,786, filed Apr. 3, 2014, the entire disclosures of which are incorporated by reference herein in their entireties.
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