This invention relates generally to pipeline monitoring systems and more particularly concerns a sensor for detecting passage of an object, such as a pipeline pig, through a pipeline.
Various means have been developed for detecting the passage of a pig through a pipeline. “Dumb pigs” or “smart pigs” may be detected by intrusive mechanical devices such as threaded adapters with spring-loaded shafts. The shaft has an exposed end with a spring loaded-lever or flag and an opposing end that extends into the interior space of the pipe. Intrusive detection devices, however, require making a hole or hot-tapping into an active piping, an often costly and inconvenient process for a pipeline operator. As a result, non-intrusive detection devices, which are fully located outside of the pipeline and do not require additional hot-tapping or welding, are often preferred by the pipeline operator.
There are two main types of non-intrusive detection devices: acoustic/ultrasonic detectors, which detect a change in sound, and electromagnetic detectors, which detect a change in ambient magnetic field. Passive acoustic detectors can detect a change in sound caused by an object travelling through a pipeline but cannot easily distinguish between this sound change and that caused by a surrounding noise such as a pump or motor vehicle. Active acoustic detectors can eliminate this problem by transmitting an ultrasonic signal, but these devices are costly, require a high level of power and, because of the power requirements, limit or prevent battery-power options.
Electromagnetic detectors often use one or more coils to detect a change in magnetic flux over time. A change in the ambient magnetic field inducts a voltage in the coil or coils proportional to the change of the magnetic field over time. As a result, a slow travelling ferromagnetic object may not generate enough voltage in the coils to generate a detection event.
Magnetometers—which determine a change in magnetic flux by measuring the instantaneous flux over time—are not object-speed dependent. Magnetometers, therefore, can detect any object causing a change in the electromagnetic field regardless of object speed. Magnetometers, however, can be subject to false alarms. Therefore, appropriate methods must be used for noise cancellation, signal processing, and shielding of ambient magnetic fields.
A system and method for detecting the passage of an object in a pipeline includes a non-intrusive detection device that houses one or more shielded magnetometer sensors and a microcontroller with adaptive thresholding detection means. An AC/DC power source with a backup battery source is employed to provide power to the device. The battery backup power source is preferably configured to break electrical contact prior to exposure to ambient environment, thereby making the detection device suitable for use in explosion-proof zones.
The magnetometer sensors are preferably magnetic flux sensors using a variable permeability material to directly measure flux and are arranged orthogonal to one another. The inner shield surrounding the sensors is an electrically insulating material. The outer shield is a magnetic permeable material. A display unit in communication with the microcontroller displays various statistics, including the number of objects detected and the time of their passage.
The detection device may have an adjustable end for orienting the display unit and positioning the magnetometer sensors near the exterior surface of the pipeline. A reed switch or other means for locking out the detection device may be used when positioning the device on the pipeline or when moving it to a different location on the pipeline. Once the detection device is in its proper position and unlocked, the magnetometer sensors and microcontroller, which process the input magnetic flux data stream, can signal a detection.
The adaptive thresholding detection means employed first removes the outlier data from the magnetic flux data stream. This outlier-free data stream is then passed through four low pass filters. The first low pass filter estimates a baseline by removing a bias value from the magnetic flux data stream and limiting the data stream to a value no greater than an outlier limit. The second low pass filter then uses the baseline estimate to produce a noise estimate. The third low pass filter is a boxcar filter that provides a smoothed magnitude of the data stream. The smoothed magnitude is compared to a set of upper and lower detection limits and then passed through the fourth low pass filter to determine the length of a passage event. If a passage event has occurred, a counter of the display unit is incremented and a time of passage is recorded. Because a single object may produce multiple detections or detection events, the detector may be locked-out for a predetermined period of time after the passage event to prevent a second detection of the same object as it passes the detector. A Bayesian lockout estimator is preferred for this purpose.
A better understanding of the invention will be obtained from the following detailed description of the preferred embodiments taken in conjunction with the drawings and the attached claims.
The magnetometer-based detector that is described below is not limited in its application to the details of the construction, arrangement of the parts, and process flows illustrated in the accompanying drawings. The invention is capable of other embodiments and of being practiced or carried out in a variety of ways. The phraseology and terminology employed herein are for purposes of description and not limitation.
Elements shown by the drawings are identified by the following numbers:
Referring first to
Measurements from the magnetometer sensor 60 are processed by detection algorithm 100, which is an adaptive thresholding algorithm, to produce a “passage event.” This event may be displayed and/or counted by a digital display 70 or light emitting diode 87. The event can also trigger outputs used to signal remote devices such as a control system for controlling the opening and closing of valves in the pipeline.
As illustrated in
Located at the upper end 37 of conduit assembly section 30 is a display housing 90. Display housing 90 is preferably detachably secured to conduit assembly section 30. Display housing 90 receives a display insert 70 that provides various indicators and statistics (see text below discussing
Conduit assembly section 30 is located at the upper end 21 of sensor housing 20. The conduit assembly section 30 includes a tee fitting 35 for connecting detector 10 to a field wiring conduit box 33. Conduit box 33 may include wiring for placing detector 10 in communication with an AC/DC power supply, for hardwiring detector 10 to a control room, or for providing wiring to a remote display insert 70. A fill plug 31 may also be provided to add packing, filler, potting compound or sealant.
Referring now to
Display insert 70 also includes a power source indicator 83 that indicates whether detector 10 is operating under battery power (
Digital display 71 also includes a locked/unlocked status indicator 85. A magnetic reed switch 89B places detector 10 in the locked or unlocked mode, thereby providing the ability to control unwanted detection. When in locked mode, detector 10 is prevented from detecting objects and may be moved between locations on the pipeline. Reed switch 89B also allows a user to interact with the statistics and scroll through the object history as indicated by indicators 75 and 81. A second magnetic reed switch 89A resets timer 79. Display unit 70 also includes light-emitting diode indicators 87 to indicate whether a recent passage occurred. Light-emitting diode indicators 87A and 87B light up when reed switches 89A and 89B are triggered, respectively.
As illustrated in
Referring now to
Detector 10 may use a 1-D, 2-D, 3-D, or n-D array of magnetometer sensors 60 which may differ in orientation relative to one another, separation of the individual sensor elements, or both. Orthogonal orientations, as illustrated in
Various magnetometer technologies may be employed for sensor 60. In a preferred embodiment, sensor 60 is a magnetic flux sensor using a variable permeability material. Changes in the flux alter the effective inductance of the magnetometer. A flux sensor manufactured by PNI Corporation, Inc. (Santa Rosa, Calif.) is an effective magnetic flux sensor 60.
Digital signal processing is essential to the detection process and a digital, adaptive detection algorithm is the preferred signal processing algorithm. As illustrated in
Detection process 100, which is implemented by microcontroller 51, may include all of the following processing steps: automatic elimination of outliers, computation and removal of the measurement offset, estimation of the measurement noise, establishing threshold(s) with and without hysteresis, sequential detection, and event time discrimination/detection. Sensor(s) 60 collect magnetometer data 101 (“mag data” or mag) for processing and detection event 103 is determined by a number of criteria including but not limited to amplitude, duration, and previous events. The fine structure of the response of sensor(s) 60 may also be accounted for by using pattern recognition techniques.
Mag data 101 is first processed by processing step 110, elimination of outliers:
magi=min(magi−baseline estimatei-1*signum(magi), outlier limit) (Eq. 1)
See
Processing step 130, estimation of the baseline, is:
baseline estimatei=baseline estimatei-1+(magi−baseline estimatei-1)*f/65536 (Eq. 2)
See
The value for time constant “f” may be in the range of 1 to 4096. The preferred value for “f” is 128. The baseline estimate is:
baseline estimate=H1(z)*mag (Eq. 4)
Processing step 150 provides a noise estimate:
See
The value for time constant “fn” may be in the range of 1 to 256. The preferred value for “fn” is 32. The noise estimate is:
noise=H2(z)*(abs(mag−baseline)) (Eq. 7)
The input magnetometer values are then smoothed using a “boxcar” low pass filter in processing step 170. See
This filter is used to shape the response after magnitude processing (absolute value). The length of the rectangular window may be in the range of 2 to 128. In the preferred configuration the length is 32.
Following input smoothing, the detection process occurs in processing step 190. See
if (H3(z)*(abs(magi)−baseline estimatei)≧upper thresholdi) and (detectori-1=0) then detectori=1 (Eq. 9a)
If (H3(z)*(abs(magi)−baseline estimatei)≦lower thresholdi) and (detectori-1=1) then detectori=0 (Eq. 9b)
else detectori=detectori-1 (Eq. 9c)
The determination of the upper and lower detection thresholds is:
upper thresholdi=p1*noisei (Eq. 10a)
lower thresholdi=p2*noisei (Eq. 10b)
The value for p1 and p2 may be in the range of 1 to 10. The preferred value for p1 is 3. The preferred value for p2 is 1.
Following a detection event, processing step 210 uses time to determine the extent of the event. See
This transfer function operates on the detected output, whose value is 0 or 1. Various lengths of rectangular windows can be used to discriminate between short and long events. The longest window, passing the detection limit, indicates the extent of a single event:
event detect=H4(z)*detect (Eq. 12).
Because a single pig or object may present multiple magnetic fields, processing step 230, lockout discriminator, may be employed to prevent multiple passage events being detected for a single object as the object passes by detector 10. See
While detector 10 and process 100 have been described with a certain degree of particularity, many changes may be made in the details of construction and the arrangement of components or steps without departing from the spirit and scope of this disclosure. The invention, therefore, is not limited to the embodiments set forth herein for purposes of exemplification, but is to be limited only by the scope of the attached claims, including the full range of equivalency to which each element thereof is entitled.
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