This application claims the benefit of priority to Canadian Patent Application No. 2,989,566 filed on Dec. 20, 2017, the contents of which are incorporated herein by reference.
The following relates to systems for monitoring and analyzing piping networks, including monitoring systems that obtain temperature, displacement, and vibration data from such piping networks.
Many industrial systems include piping or piping networks that carry fluids between locations in a plant or apparatus. Depending on the particular application, these piping networks may be subjected to certain potentially harsh environmental conditions. For instance, piping that carries pressurized fluids such as steam can experience high temperatures, and can be subjected to wear due to impurities carried with the fluid, e.g., within blowdown circuits in a coker unit used in upgrading heavy oil, bitumen, vacuum bottoms or similar heavy hydrocarbons.
Any such harsh conditions can contribute to ongoing maintenance-, ageing-, and downtime-related issues, for which monitoring and prevention mechanisms are often desirable or even required.
The collection of temperature, displacement and vibration data using strategically placed sensors in a piping network enables potentially high stress locations to be monitored and subsequent actions and/or modeling applied. For example, multi-phase flow effects found in blowdown circuits and other applications can lead to equipment damage issues that could benefit from advance procedures being implemented. Piping networks with tees, elbows and other such high stress locations are found to be impacted during operation in a manner that inputs and outputs alone provide less than the overall state of the piping network.
In one aspect, there is provided a method of monitoring a piping network, the method comprising: obtaining data comprising temperature, displacement, and vibration measurements from a plurality of sensor assemblies selectively installed at a plurality of locations in the piping network, the piping network being subjected to at least one multi-phase flow effect during its operation; and analyzing the data using at least one model to: predict pipe life, detect an operational or pipe damage event, and/or trigger preventative maintenance.
In another aspect, there is provided a system for monitoring a piping network, comprising: a plurality of sensor assemblies selectively installed at a plurality of locations in the piping network, the plurality of sensor assemblies operable to obtain data comprising temperature, displacement, and vibration measurements, the piping network being subjected to at least one multi-phase flow effect during its operation; data acquisition equipment in communication with the plurality of sensor assemblies to acquire the data obtained by the sensor assemblies; and an analytics module comprising a processor operable to analyze the data using at least one model to: predict pipe life, detect an operational or pipe damage event, and/or to trigger preventative maintenance.
In yet another aspect, there is provided a method of monitoring a piping network, the method comprising: obtaining data comprising temperature, displacement, and vibration measurements from a plurality of sensor assemblies selectively installed at a plurality of locations in the piping network, the piping network being subjected to at least one multi-phase flow effect during its operation; and analyzing the data using at least one model to predict pipe life based on stresses experienced by the piping network.
In yet another aspect, there is provided a system for monitoring a piping network, comprising: a plurality of sensor assemblies selectively installed at a plurality of locations in the piping network, the plurality of sensor assemblies operable to obtain data comprising temperature, displacement, and vibration measurements, the piping network being subjected to at least one multi-phase flow effect during its operation; data acquisition equipment in communication with the plurality of sensor assemblies to acquire the data obtained by the sensor assemblies; and an analytics module comprising a processor operable to perform the above method.
In yet another aspect, there is provided a method of monitoring a piping network, the method comprising: obtaining data comprising temperature, displacement, and vibration measurements from a plurality of sensor assemblies selectively installed at a plurality of locations in the piping network, the piping network being subjected to at least one multi-phase flow effect during its operation; and analyzing the data using at least one model to detect an operational or pipe damage event by detecting that an output or effect is not expected.
In yet another aspect, there is provided a system for monitoring a piping network, comprising: a plurality of sensor assemblies selectively installed at a plurality of locations in the piping network, the plurality of sensor assemblies operable to obtain data comprising temperature, displacement, and vibration measurements, the piping network being subjected to at least one multi-phase flow effect during its operation; data acquisition equipment in communication with the plurality of sensor assemblies to acquire the data obtained by the sensor assemblies; and an analytics module comprising a processor operable to perform the above method
In yet another aspect, there is provided a method of monitoring a piping network, the method comprising: obtaining data comprising temperature, displacement, and vibration measurements from a plurality of sensor assemblies selectively installed at a plurality of locations in the piping network, the piping network being subjected to at least one multi-phase flow effect during its operation; and analyzing the data using at least one model to trigger preventative maintenance based on expected events or stresses to the piping network.
In yet another aspect, there is provided a system for monitoring a piping network, comprising: a plurality of sensor assemblies selectively installed at a plurality of locations in the piping network, the plurality of sensor assemblies operable to obtain data comprising temperature, displacement, and vibration measurements, the piping network being subjected to at least one multi-phase flow effect during its operation; data acquisition equipment in communication with the plurality of sensor assemblies to acquire the data obtained by the sensor assemblies; and an analytics module comprising a processor operable to perform the above method.
Advantages of the systems and methods described herein can include the collection and storage of data from a piping network for use in subsequent data analytics and determining when to initiate preventative action. Moreover, model validation of a particular piping network can also be performed, in order to validate a design for, demonstrate the operability of, or detect events in the piping network. A central data center also enables multiple piping networks to be monitored and a larger data set created, to more generally model and generate predictions or alerts, as well as contribute to the design of future piping networks.
Embodiments will now be described with reference to the appended drawings wherein:
The collection and storage of data acquired from a piping network, for use in subsequent data analytics and preventative action, can be achieved by deploying temperature, displacement, and vibration sensors at strategic locations in a piping network. The following system is particularly suitable for lines that experience temperature fluctuations, vibrations and other displacements, and multi-phase flow effects that can contribute to pipe life issues such as piping stress and reduced life. It has been found that blowdown circuits have historically experienced failures resulting from thermal bowing and liquid slug events. The system and methods described herein enable monitoring, modeling, and predictions to be conducted to improve the reliability and operability of those systems.
Turning now to the figures,
An analytics module 38 can be used to apply machine learning and/or deep learning using neural networks, to train failure- or event- prediction algorithms and/or to refine existing models such as prediction models 42 and fatigue models 44 that may not capture all events in the piping network 10. For example, a specific prediction model 42 can be developed to enable a continuous analysis and allow for timely prediction of fatigue failure and/or line integrity issues, and subsequent inspection and maintenance planning. Any such machine learning can be used to continually improve the models as more training data is gathered. This also allows additional sensors 18, 20, 22 to be added, removed, or moved as the models demonstrate justification, desire, or a need to do so. By placing the central data center 14 in a remote location, data collection and ongoing monitoring can be implemented without requiring a human presence at the piping network's location.
The piping network 10 is provided with various sensing devices. In this example, temperature sensors 18, displacement sensors 20 and, optionally, vibration sensors 22 are placed throughout the piping network 10 and connected to a data acquisition (DAQ) device 24 in a particular one of the base stations 12 (with connections to base station 1 shown in
Stand-alone vibration sensors 22 can be provided using any sensor device or package that has a capability of detecting movement. For example, the vibration sensor 22 can be or include an accelerometer, gyroscope, magnetometer, etc. For such devices, both high and low frequency sensors 22 can be used to detect different behaviours depending on the application. The vibration sensors 22 can be mounted using magnetic bases, bolt-on attachment, glue, cement, epoxy, or any other suitable attachment device or compound.
The data gathered by the DAQ device 24 can be provided to a local data collection computer 32 and/or sent to a remote data storage device 36 via a network 34. The network 34 can include a wired network, cellular or other wireless network, or a combination of both wired and wireless networks. It can be appreciated that the data can also be sent over the network 34 via the local data collection computer 32 if a separate Ethernet switch and router (not shown) is not provided. As illustrated in
The central data center 14 can include the analytics module 38, which includes or otherwise has access to the data stored in the data storage device 36. As indicated above, the analytics module 38 can be used to predict or identify events by referencing one or more prediction models 42, to estimate pipe life by referencing one or more fatigue models 44, and provide particular data and information to the preventative maintenance system 16. The analytics module 38 can also be used to validate the performance of the piping network 10 in comparison to a finite element analysis (FEA) model 40. This can be done, for example, to demonstrate that the piping network 10 (or its design) is “fit for service”, e.g., for procedural or regulatory approvals, inspections, etc. In this way, the FEA model 40 can be validated, refined, or challenged on the basis of real data collected within the environment experienced by the piping in the piping network 10. The data stored in the data storage device 36 can also be analyzed by the analytics module 38 to determine if inputs to a particular system appear to be different than before. For example, changes in behaviour experienced by the piping network 10 as reflected in the acquired data can be used to determine that outputs or other effects do not match what is expected, in order to predict that one or more of the inputs are incorrect. For instance, a valve that is left open may affect the amount of fluid entering the piping network 10, which in turn causes a behaviour that can be detected from the acquired data.
As indicated above, in environments such as a blowdown circuit with large temperature fluctuations and multi-phase flow effects (e.g., slug events) monitoring and evaluating only inputs and outputs can be insufficient to model the stresses and potential failures caused by these environments. By collecting temperature, displacement, and vibration measurements throughout the piping network 10 in strategic locations along the line(s) (e.g., at tees, elbows and other high stress locations), a more complete view of what is being experienced throughout the entire piping network 10 can be obtained, modeled, validated, and events related thereto detected and/or predicted.
A schematic illustration of a laser-based displacement measurement setup is shown in
The assembly 70 is connected by a first cable 76 to an enclosure 78 that houses a signal converter 80 to convert the laser's signal into an analog signal. The converted signal is provided to the base station enclosure 54 via a second cable 84, e.g., non-incendive cabling. As explained above, cable glands 60 can be used to pass cabling into and out of the enclosures 70, 78, 54. It can be appreciated that the enclosures 70, 78, 54 can be explosion proof for safety and protection purposes. The second cable 84 connects to a DC power source 86 and the DAQ module (D) 28 in the DAQ device 24 that is housed in the enclosure 54. As with
For displacement measurements, up to three degrees of freedom (DOFs) can be measured with respect to displacement of the pipe 50 using the laser sensors 20. To measure one DOF, namely in the vertical direction, a laser sensor 20 can be mounted above the pipe 50 with a leveled target placed on top of the pipe 50. In this arrangement it should be assumed that the pipe 50 does not undergo significant rotation during operation. To measure two DOFs, namely two non-axial translational DOFs, a pair of laser sensors 20 can be mounted at ninety (90) degrees from each other (i.e., orthogonally) and aligned perpendicular to the pipes' surface. In this arrangement, it should be assumed that the pipe 50 does not undergo significant rotation and that the pipe's cross-section is and remains circular. To measure three DOFs, three laser sensors 20 can be used. For these measurements, two perpendicularly oriented laser sensor assemblies 70 are directed towards the pipe 50 similar to the two DOF arrangement, with a third laser sensor assembly 70 facing axially along the length of the pipe 50 to a target fixed to the pipe 50.
It can be appreciated that unless already present, support frames are built on and/or around the pipe 50 to create fixed reference points.
With the sensor assemblies 70 mounted as illustrated in
It can be appreciated that stand-alone vibration sensors 22 can be positioned at a particular section of pipe 50 and wired to the DAQ device 24 in a similar manner, which accommodates and accounts for any hardware elements required to send, convert, and otherwise process the data acquired by the sensor 22. This can be done to ensure the data is in a format that is understandable to the DAQ device 24.
For example, the first sensor profile 90 can include seven sensors arranged as shown in
It can be appreciated that the number of and location for the temperature sensors 18 can vary based on varying expectations as to whether or not such areas would be high stress locations. The number of and position for such temperature sensors 18 can also be changed over time based on the data acquisition readings and as the piping network 10 or its operations change. It can be appreciated that the sensor profiles 90, 92 shown in
As shown in
It can be appreciated that the number of and location for the laser sensors 20 can vary based on the expectation that such areas would be high stress locations or otherwise experience line movement or upset events. The number of and position for such sensors 20 can also be changed over time based on the data acquisition readings and as the piping network 10 or its operation changes. This enables sufficient flexibility to adapt and refine the monitoring system as the environment, equipment, operating conditions and/or other factors change.
To increase the accuracy and reliability of the displacement measurements, the absolute position of at least one of the displacement measurement assemblies 70 can be determined when the sensor layout is first set up. This allows the “zeroing” of a reference point to provide absolute reference coordinates for determining a slope or sag in a line as well as the displacements relative to the absolute reference coordinates. The absolute reference can be chosen using a fixed object or structure, such as a support beam for the assembly 70. By zeroing all displacement measurement assemblies prior to using the monitoring system, numerous relative measurements can be obtained over time. For example, slope measurements between laser sensor assemblies 70 can provide insight into bowing or sagging of a line the extends between the points of measurement.
Any of the translations measured by the displacement sensors 20 can also track information about vibration of the piping network 10, e.g., where an event causes a particular portion of the pipe 50 to move in a particular direction at a measured frequency. For example, the displacement sensors 20 illustrated herein have been found to provide enough sensitivity to vibrations to capture vibrations up to 100 Hz. As indicated above, vibration measurements can be obtained using the displacement sensors 20, separate vibration sensors 22, or both. For example, over time as additional vibration measurements are desired, vibration sensors 22 can be added without necessarily requiring additional displacement sensors 20.
Data in the piping network 10 can be collected and managed using any suitable data collection scheme. For example, when using thermocouples for the temperature sensors 18, data can be collected at a sample rate of 1 sample/second, and one data point saved per 30 second period. However, faster sampling rates may be desired in some applications or with certain sensors 18 located in targeted areas. As such, the example data collection metrics exemplified here are for illustrative purposes only. When a temperature change is detected during that sampling period, additional data points can be saved and more frequent data points saved thereafter until the temperature change drops to below a threshold. In other words, data collection and data storage techniques can be used to manage the potentially large amounts of data that would accumulate over time, such that important data points are captured periodically or during temperature rise/fall events. Displacement data can also be collected at a particular sampling rate, e.g., 40 samples/second. Similar to the temperature sensors 18 faster or slower sampling rates may be desired in certain applications or at certain locations.
As indicated above, the data that is collected by the sensors deployed in the piping network 10 are fed to the base stations 12 and received by a local data collection computer 32 and/or router (not shown in figures). This allows data to be saved locally using the computer 32 and periodically transmitted (e.g., hourly) to the central data center 14 over a network 34 for primary data collection and storage from all base stations 12 in the data storage device 36. In this way, the entire piping network 10 can be modeled and analyzed over time in a centralized manner. Moreover, multiple piping networks 10, each potentially having multiple base stations 12 can feed data to the central data storage device 36 to perform larger studies across multiple plants/apparatus/locations/applications, etc.
Two examples are shown in
Various data reports can be generated periodically, for instance on a weekly basis. Such data reports can include observations based on the data collected during that period, or specific temperature, displacement and/or vibration-specific reports. Some example temperature reports include:
Some example displacement reports include:
Some example vibration reports include:
The ME Scope Animation refers to the ability to stitch together a video or animation of the piping network 10 or a portion thereof, to illustrate how the piping network 10 is affected by certain events and to show how this changes over time, in a controlled and analytical manner. For example, stress inducing or failure events can be animated in slow motion to track and detect particular issues. This can lead to the deployment of additional sensors 18, 20, 22 for further analyses, or an intervention, routine maintenance or other remedial action.
It can be appreciated that any suitable analytics can be applied to the data that is stored to improve operations, prevent or minimize maintenance disruptions, design future piping networks 10 in similar applications, etc. and the examples shown herein are illustrative. In particular, the system shown in
For simplicity and clarity of illustration, where considered appropriate, reference numerals may be repeated among the figures to indicate corresponding or analogous elements. In addition, numerous specific details are set forth in order to provide a thorough understanding of the examples described herein. However, it will be understood by those of ordinary skill in the art that the examples described herein may be practiced without these specific details. In other instances, well-known methods, procedures and components have not been described in detail so as not to obscure the examples described herein. Also, the description is not to be considered as limiting the scope of the examples described herein.
It will be appreciated that the examples and corresponding diagrams used herein are for illustrative purposes only. Different configurations and terminology can be used without departing from the principles expressed herein. For instance, components and modules can be added, deleted, modified, or arranged with differing connections without departing from these principles.
It will also be appreciated that any module or component exemplified herein that executes instructions may include or otherwise have access to computer readable media such as storage media, computer storage media, or data storage devices (removable and/or non-removable) such as, for example, magnetic disks, optical disks, or tape. Computer storage media may include volatile and non-volatile, removable and non-removable media implemented in any method or technology for storage of information, such as computer readable instructions, data structures, program modules, or other data. Examples of computer storage media include RAM, ROM, EEPROM, flash memory or other memory technology, CD-ROM, digital versatile disks (DVD) or other optical storage, magnetic cassettes, magnetic tape, magnetic disk storage or other magnetic storage devices, or any other medium which can be used to store the desired information and which can be accessed by an application, module, or both. Any such computer storage media may be part of the base station 12 or central data center 14, any component of or related thereto, etc., or accessible or connectable thereto. Any application or module herein described may be implemented using computer readable/executable instructions that may be stored or otherwise held by such computer readable media.
The steps or operations in the flow charts and diagrams described herein are just for example. There may be many variations to these steps or operations without departing from the principles discussed above. For instance, the steps may be performed in a differing order, or steps may be added, deleted, or modified.
Although the above principles have been described with reference to certain specific examples, various modifications thereof will be apparent to those skilled in the art as outlined in the appended claims.
Number | Date | Country | Kind |
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2989566 | Dec 2017 | CA | national |