METHOD FOR DETERMINING AMPLITUDE OF STICK-SLIP ON A VALVE ASSEMBLY AND IMPLEMENTATION THEREOF
20180142807 ยท 2018-05-24
Inventors
Cpc classification
G05B2219/25232
PHYSICS
F16K37/0083
MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
G05B23/0235
PHYSICS
International classification
Abstract
A method for processing operating data (e.g., position, setpoint, and pressure) for a valve assembly. The method is configured to associate characteristics of operation for the valve assembly with a root cause and/or a contributing factor. In one embodiment, the method can assign a first amplitude with a value that quantifies movement or jump of the valve stem that results from stick-slip on the valve assembly. The method can also assign a second amplitude with a value that quantifies a change in the data for the setpoint. The method can further ascertain the relationship or position of the first amplitude relative to the second amplitude, or vice versa. The method can use the relationship between the first amplitude and the second amplitude to indicate the root cause of the operation of the valve assembly.
Claims
1. A method, comprising: calculating a metric from set point data and position data for a valve assembly; using the metric to identify a cycling condition on the valve assembly; selecting a process in response to the cycling condition; using the process to identify a contributing factor to the cycling condition; and generating an alert in response to the contributing factor, the alert comprising one or more of, instructions to change process parameters, and instructions to perform maintenance on the valve assembly.
2. The method of claim 1, wherein the metric corresponds to a ratio of the position data to the set point data.
3. The method of claim 1, wherein the metric corresponds to a ratio of a first p-norm function to a second p-norm function that use the position data and the set point data, respectively.
4. The method of claim 1, further comprising: comparing the metric to a threshold criteria, wherein the threshold criteria has a value that correlates the metric with stick slip on the valve assembly.
5. The method of claim 1, wherein the process includes, setting the contributing factor according to a relationship between the set point data and the position data.
6. The method of claim 1, wherein the process includes, setting the contributing factor according to a relationship between amplitude of the set point data and amplitude of the position data.
7. The method of claim 1, wherein the process includes, setting the contributing factor according to a relationship between a first amplitude of the position data and a second amplitude of the position data, wherein one of the first amplitude and the second amplitude indicates that the position data forms a square wave.
8. An apparatus, comprising: a processor configured to access a memory that has one or more executable instructions stored thereon, the executable instruction comprising one or more instructions that configure the apparatus for, calculating a metric from set point data and position data for a valve assembly; using the metric to identify a cycling condition on the valve assembly; selecting a process in response to the cycling condition; using the process to identify a contributing factor to the cycling condition; and generating an alert in response to the contributing factor, the alert comprising one or more of, instructions to change process parameters, and instructions to perform maintenance on the valve assembly.
9. The apparatus of claim 8, wherein the metric corresponds to a ratio of the position data to the set point data.
10. The apparatus of claim 8, wherein the metric corresponds to a ratio of a first p-norm function to a second p-norm function that use the position data and the set point data, respectively.
11. The apparatus of claim 8, wherein the executable instruction comprise one or more instructions that configure the processor for: comparing the metric to a threshold criteria, wherein the threshold criteria has a value that correlates the metric with stick slip on the valve assembly.
12. The apparatus of claim 8, wherein the process includes, setting the contributing factor according to a relationship between the set point data and the position data.
13. The apparatus of claim 8, wherein the process includes, setting the contributing factor according to a relationship between amplitude of the set point data and amplitude of the position data.
14. The apparatus of claim 8, wherein the process includes, setting the contributing factor according to a relationship between a first amplitude of the position data and a second amplitude of the position data, wherein one of the first amplitude and the second amplitude indicates that the position data forms a square wave.
15. A valve assembly, comprising a seat; a closure member that moves relative to the seat, an actuator coupled with the closure member; and a valve positioner coupled with the actuator, the valve positioner configured to, calculate a metric from set point data and position data; use the metric to identify a cycling condition of the closure member; select a process in response to the cycling condition; using the process to identify a contributing factor to the cycling condition; and generate an alert in response to the contributing factor, the alert comprising one or more of, instructions to change process parameters, and instructions to perform maintenance.
16. The valve assembly of claim 15, wherein the metric corresponds to a ratio of the position data to the set point data.
17. The valve assembly of claim 15, wherein the metric corresponds to a ratio of a first p-norm function to a second p-norm function that use the position data and the set point data, respectively.
18. The valve assembly of claim 15, wherein the valve positioner is configured to: compare the metric to a threshold criteria, wherein the threshold criteria has a value that correlates the metric with stick slip.
19. The valve assembly of claim 15, wherein the process includes, setting the contributing factor according to a relationship between the set point data and the position data.
13. The valve assembly of claim 15, wherein the process includes, setting the contributing factor according to a relationship between amplitude of the set point data and amplitude of the position data.
20. The valve assembly of claim 15, wherein the process includes, setting the contributing factor according to a relationship between a first amplitude of the position data and a second amplitude of the position data, wherein one of the first amplitude and the second amplitude indicates that the position data forms a square wave.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0007] Reference is now made briefly to the accompanying drawings, in which:
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[0017] Where applicable like reference characters designate identical or corresponding components and units throughout the several views, which are not to scale unless otherwise indicated. Moreover, the embodiments disclosed herein may include elements that appear in one or more of the several views or in combinations of the several views.
DETAILED DESCRIPTION
[0018] The discussion below offers a solution to determine the root cause of operating conditions on a valve assembly. Unlike previous techniques, which for the most part only detect or establish the presence of the operating condition, the embodiments herein can readily identify what is causing the operating condition to occur on the valve assembly. This information can enlighten the process owner/operator to better address the operating condition, effectively saving time and money by avoiding unnecessary repairs to valve assemblies that would not otherwise require maintenance.
[0019]
[0020] Broadly, the method 100 can configure the valve assembly and/or the process control system, generally, to process data in a way that associates characteristics of operation of the valve assembly with a root cause and/or a contributing factor. The data samples may correspond with operating parameters, for example, values for position, setpoint, and pressure for the valve assembly. These values are readily available and stored as part of normal operation and control of the valve assembly. In use, the method 100 can assign the first amplitude with a value that quantifies movement or jump of the valve stem that results from stick-slip on the valve assembly. This movement typically occurs between a first position and a second position. The method 100 can assign the second amplitude with a value that quantifies a change in the data for the setpoint and/or the position, for example, as between a first setpoint and a second setpoint. As noted above, the method 100 can ascertain the relationship or relative position of the first amplitude relative to the second amplitude, or vice versa. This relative position may convey that the first amplitude is greater than the second amplitude, that the first amplitude is less than the second amplitude, and/or that the first amplitude is the same as (also equal to) the second amplitude.
[0021] Notably, the present disclosure contemplates that the method 100 can use the relationship between the first amplitude and the second amplitude to indicate the root cause of the operation of the valve assembly. This relationship may, for example, indicate that stick slip is the root cause of repeated up-and-down travel of the valve stem (also, valve stem cycling and/or valve cycling). On the other hand, the relationship may indicate that abnormal or out-of-control process conditions on the process line are the root cause of the valve stem cycling. Such process conditions often prompt the process control system to issue the command signal in a manner that is the root cause of the valve stem cycling. The method 100 can tailor the output to provide an alert or like indicator that instructs as to the root cause. This indicator can focus the response of an end user (e.g., process owner/operator) on the problem, e.g., to avoid unnecessary repairs to the valve assembly in the event that the root cause relates to abnormal process conditions.
[0022]
[0023] The embodiments herein can process the data in each of
[0024]
TABLE-US-00001 TABLE 1 Stick-Slip Relative Contributing Example Present Position Factor 1 No A.sub.1 > F.sub.1 A.sub.2 Positioner Tuning 2 No A.sub.1 < F.sub.2 A.sub.2 Process Control 3 Yes A.sub.2 > F.sub.3 A.sub.ST Process Control 4 Yes A.sub.2 < F.sub.4 A.sub.ST Stick-Slip
[0025] As noted above, the method 200 is configured to identify one or more contributing factors that cause cycling on the valve assembly. In Table 1, the amplitudes A.sub.1, A.sub.2, and A.sub.ST correspond with, respectively, the amplitude of position POS (
[0026] The steps of determining whether the stick-slip condition is present (e.g., at step 214) also analyze the data for the position POS and the setpoint SP. These steps may include, for example, determining a stick-slip condition metric, an example of which is noted in Equation (1) below,
[0027] in which M.sub.ST is the stick-slip condition metric, M.sub.P is a position metric, and M.sub.S is a setpoint metric. The method 300 can include steps for comparing the stick-slip condition metric M.sub.ST to a threshold criteria, which may identify a value for the ratio of the position metric M.sub.P to the setpoint metric M.sub.S that corresponds with and/or relates to stick-slip on the valve assembly. Examples of the value for the threshold criteria may be in a range from about 1 to about 3. In one implementation, if the stick-slip condition metric M.sub.ST does not satisfy (e.g., is greater than, less than, and/or equal to) this threshold criteria, then the stick-slip condition is not present on the valve assembly. The output can convey that stick-slip is present and/or not present on the valve assembly. In one example, the value for the first amplitude corresponds with the stick-slip condition metric being less than or equal to the value for the threshold criteria.
[0028] The method 300 can also include steps for calculating the position metric and/or the setpoint metric using p-norm functions, as set forth in Equations (2) and (3) below,
in which P.sub.i-1 is a first data sample for the position, P.sub.i is a second data sample for the position that is adjacent the first data sample in the sample set, S.sub.i-1 is a first data sample for the setpoint, S.sub.i is a second data sample for the setpoint that is adjacent the first data sample in the sample set, N is a number of data samples in the sample set, and X is a p-norm parameter. Examples of the p-norm parameter can be in a range of from about 2 to about 6, but this disclosure does contemplate certain configurations of the methods herein in which the p-norm parameter falls outside of this range.
[0029]
[0030] This disclosure contemplates implementation of the method 300 as an iterative process to process a plurality of data samples. In this connection, the method 300 can include steps for calculating one or more sample intervals, for example, one that occurs between data samples that are adjacent to one another in the sample set of data. The steps can also include steps for comparing each of the sample intervals to the first threshold value that relates to the position. Examples of the total interval value may be calculated by steps for adding together (and/or summing and/or aggregating) the one or more sample intervals to arrive at the total interval value. In one example, the total interval value may only include the one or more sample intervals that satisfy (also, where applicable, deviate from) the first threshold value for the data samples in the data set. This criteria may indicate that the one or more sample intervals are each greater than, less than, and/or equal to the first threshold value, as desired. In another example, the steps may include steps for incrementing the cycle variable for each of the one or more sample intervals that exceed the first threshold value. The steps may also arrive at the value for the first amplitude by incorporating one or both of the cycle variable and the total interval value, for example, where the value for the first amplitude is equal to the ratio of the total interval value to the cycle count.
[0031] The method 300 can include steps that provide a value for the first sample interval as positive and/or non-negative (and/or greater than or equal to zero). This feature is useful to calculate the amplitude of the jump independent of the direction of movement of the valve stemi.e., in both the positive direction and the negative direction. In one embodiment, the method 300 may include steps to calculate the first sample interval in accordance with Equation (4) below,
I=|P.sub.2P.sub.1|,Equation (4)
in which I is a first sample interval among the one or more sample intervals, P.sub.1 is a previously-stored data sample, and P.sub.2 is a data sample that is adjacent the previously-stored data sample P.sub.1 in the sample set of data.
[0032] The method 300 can also include steps to generate a value for the first threshold value that, like the value for the first sample interval, is also positive and/or non-negative. This value may reflect use of a p-norm function. In one embodiment, the method 300 may include steps to calculate the first threshold value in accordance with Equation (5) below,
in which RMP.sub.Position is the first threshold value, P.sub.i-1 is a first data sample for the position in the sample set, P.sub.i is a second data sample for the position that is adjacent the first data sample in the sample set, N is a number of data samples in the sample set, and X is a p-norm parameter. Examples of the p-norm parameter can be in a range of from about 2 to about 6, but this disclosure does contemplate certain configurations of the methods herein in which the p-norm parameters falls outside of this range.
[0033]
[0034] The direction of travel can influence further processing of the data samples. As also shown in
[0035] When the direction of travel is decreasing, then the method 400 continues, at step 414, comparing the selected data sample to the first vertex. If the selected data sample is less than the first vertex, then the method 400 includes, at step 416, storing the selected data sample as the first vertex and continues back to step 412 to select a different data sample. If the selected data sample is greater than the first vertex, the method 400 can include, at step 418, comparing the second deviation between the selected data sample and the first vertex to the second threshold. If the second deviation is greater than the second threshold value, then the method continues to include, at step 420, incrementing a vertex count that identifies each occurrence of a vertex in the sample set of data. The method 400 also includes, at step 422, identifying the selected data sample as the first vertex, and, at step 424, changing the direction of travel to increasing. The method 400 can continue to include, at step 426, determining whether the selected data sample is the last data sample in the data set. If the selected data sample is the last data sample in the data set, then the method 400 can continue to include, at step 428 and/or step 430, determining a cycle count and/or determining a cycle amplitude, as set forth herein.
[0036]
[0037] In
[0038]
[0039]
[0040] The data may reside on a data source, often locally in one or more memories on the valve positioner 12 (
[0041] In view of the foregoing, the embodiments above deploy features that can determine the amplitude of jump that results from stick-slip during operation of the valve assembly. The embodiments are also configured to use this amplitude to identify the root cause or contributing factor to cycling of the valve stem. A technical effect is to trigger an alarm or an output, generally, that can alert the process owner/operator to the root cause and, thus, direct attention to specific solutions (i.e., process solutions) that can avoid unnecessary repairs and maintenance on the valve assemblies of the process line.
[0042] The embodiments may be implemented on any device where relevant data is present and/or otherwise accessible. For example, the embodiments can be implemented as executable instructions (e.g., firmware, hardware, software, etc.) on the valve positioner. The valve positioner can transmit the output of the embodiments to a distributed control system, asset management system, independent monitoring computing device (e.g., a desktop computer, laptop computer, tablet, smartphone, mobile device, etc.). In another embodiment, the embodiments can obtain data from a historian (e.g., a repository, memory, etc.), and send to an independent diagnostic computing device. The historian is conventionally connected to the asset management system or distributed control system. The diagnostic computing device has all the capabilities of the monitoring computer and, often, the additional capability to execute executable instructions for the embodiment to process the given data. In another embodiment, the valve positioner is configured to send data by wires or wirelessly to the diagnostic computing device, as well as through peripheral and complimentary channels (e.g., through intermediate devices such as a DCS or may be connected directly to the diagnostic computer).
[0043] One or more of the steps of the methods can be coded as one or more executable instructions (e.g., hardware, firmware, software, software programs, etc.). These executable instructions can be part of a computer-implemented method and/or program, which can be executed by a processor and/or processing device. The processor may be configured to execute these executable instructions, as well as to process inputs and to generate outputs, as set forth herein. For example, the software can run on the process device, the diagnostics server, and/or as software, application, or other aggregation of executable instructions on a separate computer, tablet, laptop, smart phone, wearable device, and like computing device. These devices can display the user interface (also, a graphical user interface) that allows the end user to interact with the software to view and input information and data as contemplated herein.
[0044] The computing components (e.g., memory and processor) can embody hardware that incorporates with other hardware (e.g., circuitry) to form a unitary and/or monolithic unit devised to execute computer programs and/or executable instructions (e.g., in the form of firmware and software). Exemplary circuits of this type include discrete elements such as resistors, transistors, diodes, switches, and capacitors. Examples of a processor include microprocessors and other logic devices such as field programmable gate arrays (FPGAs) and application specific integrated circuits (ASICs). Memory includes volatile and non-volatile memory and can store executable instructions in the form of and/or including software (or firmware) instructions and configuration settings. Although all of the discrete elements, circuits, and devices function individually in a manner that is generally understood by those artisans that have ordinary skill in the electrical arts, it is their combination and integration into functional electrical groups and circuits that generally provide for the concepts that are disclosed and described herein.
[0045] Aspects of the present disclosure may be embodied as a system, method, or computer program product. The embodiments may take the form of an entirely hardware embodiment, an entirely software embodiment (including firmware, software, etc.) or an embodiment combining software and hardware aspects that may all generally be referred to herein as a circuit, module or system. The computer program product may embody one or more non-transitory computer readable medium(s) having computer readable program code embodied thereon.
[0046] Computer program code for carrying out operations for aspects of the present invention may be written in any combination of one or more programming languages, including an object oriented programming language and conventional procedural programming languages. Program code embodied on a computer readable medium may be transmitted using any appropriate medium, including but not limited to wireless, wireline, optical fiber cable, RF, etc., or any suitable combination of the foregoing.
[0047] As used herein, an element or function recited in the singular and proceeded with the word a or an should be understood as not excluding plural said elements or functions, unless such exclusion is explicitly recited. Furthermore, references to one embodiment of the claimed invention should not be interpreted as excluding the existence of additional embodiments that also incorporate the recited features.
[0048] This written description uses examples to disclose the invention, including the best mode, and also to enable any person skilled in the art to practice the invention, including making and using any devices or systems and performing any incorporated methods. The patentable scope of the invention is defined by the claims, and may include other examples that occur to those skilled in the art. Such other examples are intended to be within the scope of the claims if they have structural elements that do not differ from the literal language of the claims, or if they include equivalent structural elements with insubstantial differences from the literal language of the claims.