System and method for detecting and diagnosing pump cavitation

Information

  • Patent Grant
  • 6655922
  • Patent Number
    6,655,922
  • Date Filed
    Friday, August 10, 2001
    23 years ago
  • Date Issued
    Tuesday, December 2, 2003
    21 years ago
Abstract
The present invention provides cavitation detection systems and methods employing a classifier for detecting, diagnosing and/or classifying cavitation in a pumping system. The classifier can be integral to tie cavitation detection system and/or operatively coupled to the cavitation system via a controller, diagnostic device and/or computer. Parameters such as flow, pressure and motor speed arc measured and/or estimated, and then provided to a classifier system Such systems include Bayesian, Fuzzy Set, nonlinear regression, neural networks and other training systems, for example The classifier system provides a signal indicative of the existence and extent of cavitation. An exemplary classification system is presented that delineates cavitation extent into one or more of the following categories: 0 (no cavitation), 1 (incipient cavitation), 2 (medium cavitation), 3 (fill cavitation) and 4 (surging cavitation). The cavitation signal can be utilized for monitoring and/or controlling a pumping system to mitigate pump wear, failure and other conditions associated with cavitation.
Description




TECHNICAL FIELD




The present invention relates to the art of pumping systems, and more particularly to systems and methodologies for detecting and diagnosing pump cavitation.




BACKGROUND OF THE INVENTION




Motorized pumps are employed in industry for controlling fluid flowing in a pipe, fluid level in a tank or container, or in other applications, wherein the pump receives fluid via an intake and provides fluid to an outlet at a different (e.g., higher) pressure and/or flow rate. Such pumps may thus be employed to provide outlet fluid at a desired pressure (e.g., pounds per square inch or PSI), flow rate (e.g., gallons per minute or GPM), or according to some other desired parameter associated with the performance of a system in which the pump is employed. For example, the pump may be operatively associated with a pump control system implemented via a programmable logic controller (PLC) or other type of controller coupled to a motor drive, which controls the pump motor speed in order to achieve a desired outlet fluid flow rate, and which includes I/O circuitry such as analog to digital (A/D) converters for interfacing with sensors and outputs for interfacing with actuators associated with the controlled pumping system. In such a configuration, the control algorithm in the PLC may receive process variable signals from one or more sensors associated with the pump, such as a flow meter in the outlet fluid stream, inlet (suction) pressure sensors, outlet (discharge) pressure sensors, and the like, and may make appropriate adjustments in the pump motor speed such that the desired flow rate is realized.




In conventional motorized pump control systems, the motor speed is related to the measured process variable by a control scheme or algorithm, for example, where the measured flow rate is compared with the desired flow rate (e.g., setpoint). If the measured flow rate is less than the desired or setpoint flow rate, the PLC may determine a new speed and send this new speed setpoint to the drive in the form of an analog or digital signal. The drive may then increase the motor speed to the new speed setpoint, whereby the flow rate is increased. Similarly, if the measured flow rate exceeds the desired flow rate, the motor speed may be decreased. Control logic within the control system may perform the comparison of the desired process value (e.g., flow rate setpoint) with the measured flow rate value (e.g., obtained from a flow sensor signal and converted to a digital value via a typical A/D converter), and provide a control output value, such as a desired motor speed signal, to the motor drive according to the comparison.




The control output value in this regard, may be determined according to a control algorithm, such as a proportional, integral, derivative (PID) algorithm, which provides for stable control of the pump in a given process. The motor drive thereafter provides appropriate electrical power, for example, three phase AC motor currents, to the pump motor in order to achieve the desired motor speed to effectuate the desired flow rate in the controlled process. Load fluctuations or power fluctuations which may cause the motor speed to drift from the desired, target speed are accommodated by logic internal to the drive. The motor speed is maintained in this speed-control manner based on drive logic and sensed or computed motor speed.




Motorized pump systems, however, are sometimes subjected to process disturbances, which disrupt the closed loop performance of the system. In addition, one or more components of the process may fail or become temporarily inoperative, such as when partial or complete blockage of an inlet or outlet pipe occurs, when a pipe breaks, when a coupling fails, or when a valve upstream of the pump fluid inlet or downstream of the pump discharge fluid outlet becomes frozen in a closed position. In certain cases, the form and/or nature of such disturbances or failures may prevent the motorized pump from achieving the desired process performance. For instance, where the pump cannot supply enough pressure to realize the desired outlet fluid flow rate, the control system may increase the pump motor speed to its maximum value. Where the inability of the pump to achieve such pressure is due to inadequate inlet fluid supply, partially or fully blocked outlet passage, or some other condition, the excessive speed of the pump motor may cause damage to the pump, the motor, or other system components.




Some typical process disturbance conditions associated with motorized pump systems include pump cavitation, partial or complete blockage of the inlet and/or outlet, and impeller wear or damage. Cavitation is the formation of vapor bubbles in the inlet flow regime or the suction zone of the pump, which can cause accelerated wear, and mechanical damage to pump seals, bearing and other pump components, mechanical couplings, gear trains, and motor components. This condition occurs when local pressure drops to below the vapor pressure of the liquid being pumped. These vapor bubbles collapse or implode when they enter a higher-pressure zone (e.g., at the discharge section or a higher pressure area near the impeller) of the pump, causing erosion of impeller casings as well as accelerated wear or damage to other pump components.




If a motorized pump runs for an extended period under cavitation conditions, permanent damage may occur to the pump structure and accelerated wear and deterioration of pump internal surfaces, bearings, and seals may occur. If left unchecked, this deterioration can result in pump failure, leakage of flammable or toxic fluids, or destruction of other machines or processes for example. These conditions may represent an environmental hazard and a risk to humans in the area. Thus, it is desirable to provide improved control and/or diagnostic systems for motorized pumps, which minimize or reduce the damage or wear associated with pump cavitation and other process disturbances, failures, and/or faults associated with motorized pump systems and pumping processes.




SUMMARY OF THE INVENTION




The following presents a simplified summary of the invention in order to provide a basic understanding of some aspects of the invention. This summary is not an extensive overview of the invention. It is intended to neither identify key or critical elements of the invention nor delineate the scope of the invention. Rather, the sole purpose of this summary is to present some concepts of the invention in a simplified form as a prelude to the more detailed description that is presented hereinafter. The invention provides methods and systems for detecting cavitation in pumping systems. The methods comprise measuring pressure and flow information related to the pumping system and detecting cavitation using a classifier system, such as a neural network. The systems comprise a classifier system for detecting pump cavitation according to flow and pressure data. The invention may be employed in cavitation monitoring, as well as in control equipment associated with pumping systems, whereby pump wear and failure associated with cavitation conditions may be reduced or mitigated.




One aspect of the invention provides a system for detecting cavitation in a motorized pumping system, comprising a classifier system for detecting pump cavitation according to flow and pressure data. The classifier system may comprise a neural network receiving flow and pressure signals from flow and pressure sensors associated with the pumping system, wherein the neural network is trained using back propagation. The classifier may further receive pump speed data from a speed sensor associated with the pumping system to detect pump cavitation according to the flow, pressure, and speed data. In this manner, pump cavitation may be detected for pumping systems employing variable frequency motor drives. The neural network of the classifier system may be further adapted to determine the extent of cavitation in the pumping system, such as by providing an output according to the degree of cavitation in the pump. The neural network, moreover, may provide a cavitation signal indicative of the existence and extent of cavitation in the pumping system, wherein the cavitation signal may be used to change the operation of the pumping system according to the extent of cavitation.




According to another aspect of the present invention, there is provided a method of detecting cavitation in a pumping system having a motorized pump, comprising measuring pump flow and pressure data, and detecting pump cavitation according to the flow and pressure data using a classifier system. The classifier system may comprise a neural network trained by back propagation, which inputs pressure and flow information and outputs a classification of the existence and the extent of cavitation in the pumping system. Pump speed may also be measured and provided to the neural network, whereby pump cavitation may be detected and diagnosed at different pump speeds. The methodology may further comprise providing a cavitation signal indicative of the extent of cavitation, and changing or altering the operation of the pumping system in accordance therewith, whereby the system may be controlled to reduce or mitigate pump cavitation.











To the accomplishment of the foregoing and related ends, the invention, then, comprises the features hereinafter fully described. The following description and the annexed drawings set forth in detail certain illustrative aspects of the invention. However, these aspects are indicative of but a few of the various ways in which the principles of the invention may be employed. Other aspects, advantages and novel features of the invention will become apparent from the following detailed description of the invention when considered in conjunction with the drawings.




BRIEF DESCRIPTION OF THE DRAWINGS





FIG. 1

is a side elevation view illustrating an exemplary motorized pump system and a cavitation detection system therefor in accordance with an aspect of the present invention;





FIG. 2

is a side elevation view illustrating another exemplary motorized pump system and a cavitation detection system therefor in accordance with the invention;





FIG. 3

is a side elevation view illustrating another exemplary motorized pump system and a cavitation detection system therefor in accordance with the invention;





FIG. 4

is a schematic diagram illustrated further aspects of the exemplary cavitation detection system in accordance with the invention;





FIG. 5

is a schematic diagram further illustrating the exemplary cavitation detection system of

FIG. 4

;





FIG. 6

is a schematic diagram illustrating an exemplary cavitation classification in accordance with the invention;





FIG. 7

is a perspective schematic diagram illustrating an exemplary neural network in accordance with another aspect of the invention; and





FIG. 8

is a flow diagram illustrating an exemplary method of detecting cavitation in a pumping system in accordance with an aspect of the present invention.











DETAILED DESCRIPTION OF THE INVENTION




The various aspects of the present invention will now be described with reference to the drawings, wherein like reference numerals are used to refer to like elements throughout. The invention provides systems and methods by which the adverse effects of pump cavitation may be reduced or mitigated by measuring pressure and flow information associated with a pumping system and detecting cavitation using a classifier system, such as a neural network trained via back propagation, receiving the pressure and flow information as inputs to the classifier. The classifier system may further consider pump speed information in detecting cavitation, whereby cavitation may be diagnosed at different pump speeds.




Referring now to

FIGS. 1-3

, an aspect of the present invention involves systems and apparatus for pump cavitation detection and/or diagnosis. The cavitation detection system may be operatively associated with a pumping system, and may be located in a controller, a stand-alone diagnostic device, or in a host computer, as illustrated and described in greater detail hereinafter with respect to

FIGS. 1

,


2


, and


3


, respectively. An exemplary motorized pumping system


12


is illustrated in

FIG. 1

having a pump


14


, a three phase electric motor


16


, and a control system


18


for operating the system


12


in accordance with a setpoint


19


. Although the exemplary motor


16


is illustrated and described herein as a polyphase asynchronous electric motor, the various aspects of the present invention may be employed in association with single phase motors as well as with DC and other types of motors. In addition, the pump


14


may comprise a centrifugal type pump, however, the invention finds application in association with other pump types not illustrated herein, for example, positive displacement pumps. The control system


18


operates the pump


14


via the motor


16


according to the setpoint


19


and one or more measured process variables, in order to maintain operation of the system


12


commensurate with the setpoint


19


and within the allowable process operating ranges specified in setup information


68


. For example, it may be desired to provide a constant fluid flow, wherein the value of the setpoint


19


is a desired flow rate in gallons per minute (GPM) or other engineering units.




The pump


14


comprises an inlet opening


20


through which fluid is provided to the pump


14


in the direction of arrow


22


as well as a suction pressure sensor


24


, which senses the inlet or suction pressure at the inlet


20


and provides a corresponding suction pressure signal to the control system


18


. Fluid is provided from the inlet


20


to an impeller housing


26


including an impeller (not shown), which rotates together with a rotary pump shaft coupled to the motor


16


via a coupling


28


. The impeller housing


26


and the motor


16


are mounted in a fixed relationship with respect to one another via a pump mount


30


, and motor mounts


32


. The impeller with appropriate fin geometry rotates within the housing


26


so as to create a pressure differential between the inlet


20


and an outlet


34


of the pump. This causes fluid from the inlet


20


to flow out of the pump


14


via the outlet or discharge tube


34


in the direction of arrow


36


. The flow rate of fluid through the outlet


34


is measured by a flow sensor


38


, which provides a flow rate signal to the control system


18


.




In addition, the discharge or outlet pressure is measured by a pressure sensor


40


, which is operatively associated with the outlet


34


and provides a discharge pressure signal to the control system


18


. It will be noted at this point that although one or more sensors (e.g., suction pressure sensor


24


, discharge pressure sensor


40


, outlet flow sensor


38


, and others) are illustrated in the exemplary system


12


as being associated with and/or proximate to the pump


14


, that such sensors may be located remote from the pump


14


, and may be associated with other components in a process or system (not shown) in which the pump system


12


is employed. Alternatively, flow may be approximated rather than measured by utilizing pressure differential information, pump speed, fluid properties, and pump geometry information or a pump model. Alternatively or in combination, inlet and/or discharge pressure values may be estimated according to other sensor signals and pump/process information.




In addition, it will be appreciated that while the motor drive


60


is illustrated in the control system


18


as separate from the motor


16


and from the controller


66


, that some or all of these components may be integrated. Thus, for example, an integrated, intelligent motor may include the motor


16


, the motor drive


60


and the controller


66


. Furthermore, the motor


16


and the pump


14


may be integrated into a single unit (e.g., having a common shaft wherein no coupling


28


is required), with or without integral control system (e.g., control system


18


, comprising the motor drive


60


and the controller


66


) in accordance with the invention.




The control system


18


further receives process variable measurement signals relating to motor (pump) rotational speed via a speed sensor


46


. As illustrated and described further hereinafter, a cavitation detection system


70


within the controller


66


may advantageously detect and/or diagnose cavitation in the pump


14


using a neural network classifier receiving suction and discharge pressure signals from sensors


24


and


40


, respectively, as well as flow and pump speed signals from the flow and speed sensors


38


and


46


. The motor


16


provides rotation of the impeller of the pump


14


according to three-phase alternating current (AC) electrical power provided from the control system via power cables


50


and a junction box


52


on the housing of the motor


16


. The power to the pump


14


may be determined by measuring the current provided to the motor


16


and computing pump power based on current, speed, and motor model information. This may be measured and computed by a power sensor (not shown), which provides a signal related thereto to the control system


18


. Alternatively or in combination, the motor drive


60


may provide motor torque information to the controller


66


where pump input power is calculated according to the torque and possibly speed information.




The control system


18


also comprises a motor drive


60


providing three-phase electric power from an AC power source


62


to the motor


16


via the cables


50


in a controlled fashion (e.g., at a controlled frequency and amplitude) in accordance with a control signal


64


from the controller


66


. The controller


66


receives the process variable measurement signals from the suction pressure sensor


24


, the discharge pressure sensor


40


, the flow sensor


38


, and the speed sensor


46


, together with the setpoint


19


, and provides the control signal


64


to the motor drive


60


in order to operate the pump system


12


commensurate with the setpoint


19


. In this regard, the controller


66


may be adapted to control the system


12


to maintain a desired fluid flow rate, outlet pressure, motor (pump) speed, torque, suction pressure, or other performance characteristic. Setup information


68


may be provided to the controller


66


, which may include operating limits (e.g., min/max speeds, min/max flows, min/max pump power levels, min/max pressures allowed, NPSHR values, and the like), such as are appropriate for a given pump


14


, motor


16


, and piping and process conditions.




The controller


66


comprises a cavitation detection system


70


, which is adapted to detect and/or diagnose cavitation in the pump


14


, according to an aspect of the invention. Furthermore, the controller


66


selectively provides the control signal


64


to the motor drive


60


via a PID control component


71


according to the setpoint


19


(e.g., in order to maintain or regulate a desired flow rate) and/or a cavitation signal


72


from the cavitation detection component


70


according to detected cavitation in the pump, whereby operation of the pumping system


12


may be changed or modified according to the cavitation signal


72


. The cavitation detection system


70


may detect the existence of cavitation in the pump


14


, and additionally diagnose the extent of such cavitation according to pressure and flow data from the sensors


24


,


40


, and


38


(e.g., and pump speed data from the sensor


46


), whereby the cavitation signal


72


is indicative of the existence and extent of cavitation in pump


14


.




Referring also to

FIG. 2

, the cavitation detection system


70


may comprise a stand-alone diagnostic device


150


. The diagnostic component or device


150


is operatively associated with the motor


16


and the pump


14


, in order to receive pressure, flow, and pump speed signals from the sensors


24


,


40


,


38


, and


46


, whereby pressure and flow (e.g., and pump speed) information is provided to a classifier (e.g., neural network) in the cavitation detection system


70


, as illustrated and described hereinafter with respect to

FIGS. 4-7

. In addition, the diagnostic component


150


may include a display


154


for displaying information to an operator relating to the operation of the motorized pumping system


12


. The diagnostic component


150


may further include an operator input device


160


in the form of a keypad, which enables a user to enter data, information, function commands, etc. For example, the user may input information relating to system status via the keypad


160


for subsequent transmission to a host computer


166


via a network


168


. In this regard, the control system


18


may also be operatively connected to the network


168


for exchanging information with the diagnostic component


150


and/or the host computer


166


, whereby cavitation signals or cavitation information from the cavitation detection system


70


may be provided to one or both of the controller


66


and/or the host computer


166


. In addition, the keypad


160


may include up and down cursor keys for controlling a cursor, which may be rendered on the display


154


. Alternatively or in addition, the diagnostic component


150


may include a tri-state LED (not shown) without the display


154


or the keypad


160


. Alternatively, the diagnostic component


150


could be integrated into the motor


16


and/or the pump


14


.




The diagnostic component


150


may further include a communications port


164


for interfacing the diagnostic component


150


with the host computer


166


via a conventional communications link, such as via the network


168


and/or a wireless transmitter/receiver


105


. According to an aspect of the present invention, the diagnostic component


150


may be part of a communication system including a network backbone


168


. The network backbone


168


may be a hardwired data communication path made of twisted pair cable, shielded coaxial cable or fiber optic cable, for example, or may be wireless or partially wireless in nature (e.g., via transceiver


105


). Information is transmitted via the network backbone


168


between the diagnostic component


150


and the host computer


166


(e.g., and/or the control system


18


) which are coupled to the network backbone


168


. The communication link may support a communications standard, such as the RS232C standard for communicating command and parameter information. However, it will be appreciated that any communication link or network link such as DeviceNet suitable for carrying out the present invention may be employed.




Referring as well to

FIG. 3

, the cavitation detection system


70


may reside in the host computer


166


, for example, wherein the cavitation detection system


70


is implemented in whole or in part in software executing in the host computer


166


. In this regard, it will be appreciated that the cavitation detection system


70


may receive pressure and flow information or data from the sensors


24


,


40


, and


38


(e.g., as well as speed information from sensor


46


) via a data acquisition board in the host computer


166


and/or via communications from the controller


66


via the network


168


, in order to perform detection and/or diagnosis of cavitation in the pumping system


12


.




Referring also to

FIGS. 4 and 5

, the cavitation detection system


70


according to the invention may comprise a classifier system such as a neural network


200


for detecting pump cavitation according to flow and pressure data. The classifier neural network


200


receives flow and pressure signals from flow and pressure sensors


38


,


40


, and


24


associated with the pumping system


12


of

FIGS. 1-3

, which are then used as inputs to the neural network


200


. The network


200


processes the pressure and flow information or data and outputs a cavitation signal


72


, which indicates the existence of cavitation. In addition, the signal


72


may classify the extent of cavitation in the pump


14


. The neural network


200


may, but need not, receive motor (pump) speed information from the speed sensor


46


, which may also be used in detecting and diagnosing the existence and extent of cavitation in the pumping system


12


. For example, the speed information from the sensor


46


may be employed by the neural network


200


in order to facilitate or improve the detection and/or diagnosis of pump cavitation where the pump


14


is driven at different speeds (e.g., via a variable frequency motor drive


60


). It will be appreciated that while the exemplary implementations of the present invention are primarily described in the context of employing a neural network, the invention may employ other nonlinear training systems and/or methodologies (e.g., for example, back-propagation, Bayesian, Fuzzy Set, nonlinear regression, or other neural network paradigms including mixture of experts, cerebellar model arithmetic computer (CMACS), radial basis functions, directed search networks, and functional link nets).




Referring also to

FIG. 5

, the cavitation detection system


70


may further comprise a pre-processing component


202


receiving the pressure and flow data from the sensors


24


,


40


, and


38


, respectively, which provides one or more attributes


204


to the neural network


200


, wherein the attributes


204


may represent information relevant to cavitation which may be extracted from the measured pressure, flow, and/or speed values associated with the pumping system


12


. The attributes


204


may thus be used to characterize pump cavitation by the neural network


200


. The neural network


200


, in turn, generates a cavitation signal


72


which may comprise a cavitation classification


206


according to another aspect of the invention. The neural network classifier


200


thus evaluates data measured in the diagnosed pumping system


12


(e.g., represented by the attributes


204


) and produces a diagnosis (e.g., cavitation signal


72


) assessing the presence and severity of cavitation in the system


12


. The neural network in this regard, may employ one or more algorithms, such as a multi-layer perception (MLP) algorithm in assessing pump cavitation.




As illustrated further in

FIG. 6

, the cavitation signal


72


output by the classifier neural network


200


is indicative of both the existence and the extent of cavitation in the pumping system


12


. For instance, the exemplary signal


72


comprises a classification


206


of pump cavitation having one of a plurality of class values, such as


0


,


1


,


2


,


3


, and


4


. In the exemplary classification


206


of

FIG. 6

, each of the class values is indicative of the extent of cavitation in the pumping system


12


, wherein class


0


indicates that no cavitation exists in the pumping system


12


. The invention thus provides for detection of the existence of cavitation (e.g., via the indication of class values of


1


through


4


in the cavitation signal


72


), as well as for diagnosis of the extent of such detected cavitation, via the employment of the neural network classifier


200


in the cavitation detection system


70


. It will be noted at this point that the cavitation classification


206


is but one example of a classification possible in accordance with the present invention, and that other such classifications, apart from those specifically illustrated and described herein, are deemed as falling within the scope of the present invention.




Referring now to

FIG. 7

, the exemplary neural network


200


comprises an input layer


210


having neurons


212


,


214


,


216


, and


218


corresponding to the suction pressure, discharge pressure, flow rate, and pump speed signals, respectively, received from the sensors


24


,


40


,


38


, and


46


of the pumping system


12


. One or more intermediate or hidden layers


220


are provided in the network


200


, wherein any number of hidden layer neurons


222


may be provided therein. The neural network


200


further comprises an output layer


230


having a plurality of output neurons corresponding to the exemplary cavitation classification values of the class


206


illustrated and described hereinabove with respect to FIG.


6


. Thus, for example, the output layer


230


may comprise output neurons


232


,


234


,


236


,


238


, and


240


corresponding to the class values


0


,


1


,


2


,


3


and


4


, respectively, whereby the neural network


200


may output a cavitation signal (e.g., signal


72


) indicative of the existence as well as the extent of cavitation in the pumping system (e.g., system


12


) with which it is associated.




In this regard, the number, type, and configuration of the neurons in the hidden layer(s)


220


may be determined according to design principles known in the art for establishing neural networks. For instance, the number of neurons in the input and output layers


210


and


230


, respectively, may be selected according to the number of attributes (e.g., pressures, flow, speed, etc.) associated with the system


70


, and the number of cavitation classes


206


. In addition, the number of layers, the number of component neurons thereof, the types of connections among neurons for different layers as well as among neurons within a layer, the manner in which neurons in the network


200


receive inputs and produce outputs, as well as the connection strengths between neurons may be determined according to a given application (e.g., pumping system) or according to other design considerations.




Accordingly, the invention contemplates neural networks having many hierarchical structures including those illustrated with respect to the exemplary network


200


of

FIG. 7

, as well as others not illustrated, such as resonance structures. In addition, the inter-layer connections of the network


200


may comprise fully connected, partially connected, feed-forward, bi-directional, recurrent, and off-center or off surround interconnections. The exemplary neural network


200


, moreover, may be trained according to a variety of techniques, including but not limited to back propagation, unsupervised learning, and reinforcement learning, wherein the learning may be performed on-line and/or off-line. For instance, where transitions between classes are continuous and differences between classes of cavitation are slight, it may be difficult to use unsupervised learning for the purpose of cavitation detection, in which case supervised learning may be preferred, which may advantageously employ back propagation. In this regard, training of the classifier may be done on a sufficient amount of training data covering many cavitation degrees (e.g., severities) and operating conditions of the pumping system. Furthermore, the training of the network


200


may be accomplished according to any appropriate training laws or rules, including but not limited to Hebb's Rule, Hopfield Law, Delta Rule, Kohonen's Learning Law, and/or the like, in accordance with the present invention.




An exemplary method


302


of detecting cavitation in a pumping system is illustrated in

FIG. 8

in accordance with another aspect of the present invention. The various methodologies of the invention may comprise measuring pump flow and pressure data, providing the flow and pressure data to a classifier system, and detecting pump cavitation according to the flow and pressure data using the classifier system. While the exemplary method


302


is illustrated and described herein as a series of blocks representative of various events and/or acts, the present invention is not limited by the illustrated ordering of such blocks. For instance, some acts or events may occur in different orders and/or concurrently with other acts or events, apart from the ordering illustrated herein, in accordance with the invention. Moreover, not all illustrated blocks, events, or acts, may be required to implement a methodology in accordance with the present invention. In addition, it will be appreciated that the exemplary method


302


and other methods according to the invention may be implemented in association with the pumps and systems illustrated and described herein, as well as in association with other systems and apparatus not illustrated or described.




Beginning at


304


, pump flow and pressure sensor data are read at


306


. For example, readings may be taken at


306


from flow and pressure sensors operatively associated with the pump so as to sense at least one flow and at least one pressure, respectively, associated with the pumping system. More than one pressure reading may be obtained at


306


, such as by measuring suction pressure data and discharge pressure data associated with an inlet and an outlet, respectively, of the pumping system. In this regard, it will be appreciated that other sensor values associated with a pumping system may be measured at


306


, such as pump speed. In this manner, the cavitation may be detected and/or diagnosed at various speeds.




Thereafter at


308


, the measured pumping system parameters (e.g., pressures, flow, speed, etc.) are provided to a classifier system, such as a neural network. For instance, the flow and pressure data (e.g., and pump speed data) may be provided as inputs to a neural network, wherein the neural network may be trained using back propagation of other learning techniques (e.g., reinforcement learning, unsupervised learning) in either on-line or off-line learning. The neural network of the classifier system, moreover, may be trained using one or more learning rules or laws, including but not limited to Hebb's Rule, Hopfield Law, the Delta Rule, and/or Kohonen's Law. At


310


, a cavitation signal is provided by the classifier, which is indicative of cavitation in the pumping system, whereafter the method


302


returns to again measure and process flow and pressure data at


306


-


310


as described above.




It will be appreciated that the classifier may further diagnose the extent of pump cavitation according to the flow and pressure data. In this regard, the detection of pump cavitation at


310


according to the flow and pressure data may comprise providing a cavitation signal from the classifier system indicative of the existence and extent of pump cavitation. The method


302


may further comprise changing the operation of the pump according to the cavitation signal, such as where the cavitation signal is provided to a controller associated with the pumping system. In this manner pump cavitation and the adverse effects may be avoided or reduced in accordance with the invention. In order to ascertain the extent of pump cavitation, the cavitation signal or other output from the neural network of the classifier system, may comprise a classification of pump cavitation having one of a plurality of class values, wherein each of the plurality of class values is indicative of the extent of cavitation in the pumping system, and wherein at least one of the plurality of class values is indicative of no cavitation in the pumping system.




Although the invention has been shown and described with respect to certain illustrated aspects, it will be appreciated that equivalent alterations and modifications will occur to others skilled in the art upon the reading and understanding of this specification and the annexed drawings. In particular regard to the various functions performed by the above described components (assemblies, devices, circuits, systems, etc.), the terms (including a reference to a “means”) used to describe such components are intended to correspond, unless otherwise indicated, to any component which performs the specified function of the described component (e.g., that is functionally equivalent), even though not structurally equivalent to the disclosed structure, which performs the function in the herein illustrated exemplary aspects of the invention. In this regard, it will also be recognized that the invention includes a system as well as a computer-readable medium having computer-executable instructions for performing the acts and/or events of the various methods of the invention.




In addition, while a particular feature of the invention may have been disclosed with respect to only one of several implementations, such feature may be combined with one or more other features of the other implementations as may be desired and advantageous for any given or particular application. As used in this application, the term “component” is intended to refer to a computer-related entity, either hardware, a combination of hardware and software, software, or software in execution. For example, a component may be, but is not limited to, a process running on a processor, a processor, an object, an executable, a thread of execution, a program, and a computer. Furthermore, to the extent that the terms “includes”, “including”, “has”, “having”, and variants thereof are used in either the detailed description or the claims, these terms are intended to be inclusive in a manner similar to the term “comprising.”



Claims
  • 1. A system for detecting cavitation in a motorized pumping system, comprising:a measuring system adapted to measure pump flow and pressure data associated with the pumping system; and an adaptive classifier system adapted to detect pump cavitation existence and extent according to the flow and pressure data.
  • 2. The system of claim 1, wherein the classifier system comprises a neural network.
  • 3. The system of claim 2, wherein the neural network is trained using back propagation.
  • 4. The system of claim 1, wherein the measuring system comprises sensors for measuring suction pressure data and discharge pressure data associated with an inlet and an outlet, respectively, of the pumping system.
  • 5. The system of claim 1, further comprising a speed sensor for measuring pump speed, wherein the classifier system is adapted to detect pump cavitation according to the flow, pressure, and speed data.
  • 6. The system of claim 2, wherein the neural network is adapted to provide a cavitation signal indicative of the existence and extent of cavitation in the pumping system, further comprising a system adapted to change the operation of the pumping system according to the cavitation signal.
  • 7. A system for detecting cavitation in a motorized pumping system, comprising: an adaptive classifier system adapted to detect pump cavitation existence and extent according to flow and pressure data.
  • 8. The system of claim 7, wherein the classifier system comprises a neural network receiving flow and pressure signals from flow and pressure sensors associated with the pumping system.
  • 9. The system of claim 8, wherein the neural network is trained using back propagation.
  • 10. The system of claim 9, wherein the neural network receives suction pressure data and discharge pressure data from suction and discharge pressure sensors associated with an inlet and an outlet, respectively, of the pumping system.
  • 11. The system of claim 10, wherein the neural network further receives pump speed data from a speed sensor associated with the pumping system and wherein the neural network is adapted to detect pump cavitation according to the flow, pressure, and speed data.
  • 12. The system of claim 11, wherein the neural network is adapted to provide a cavitation signal indicative of the existence and extent of cavitation in the pumping system.
  • 13. The system of claim 11, further comprising means for changing the operation of the pumping system according to the cavitation signal.
  • 14. A method of detecting cavitation in a pumping system having a motorized pump, comprising:measuring pump flow and pressure data; providing the flow and pressure data to an adaptive classifier system; and detecting pump cavitation existence and extent according to the flow and pressure data using the classifier system.
  • 15. The method of claim 14, wherein providing the flow and pressure data to a classifier system comprises providing flow and pressure data as inputs to a neural network.
  • 16. The method of claim 15, wherein measuring pump flow and pressure data comprises reading flow and pressure sensors operatively associated with the pump so as to sense at least one flow and at least one pressure, respectively, associated with the pumping system.
  • 17. The method of claim 16, wherein measuring pump pressure data comprises reading suction pressure data and discharge pressure data associated with an inlet and an outlet, respectively, of the pumping system.
  • 18. The method of claim 17, further comprising teaching the classifier system.
  • 19. The method of claim 18, further comprising:measuring pump speed data; providing the speed data to the classifier system; and detecting pump cavitation existence and extent according to the flow, pressure, and speed data using the classifier system.
  • 20. The method of claim 19, wherein detecting pump cavitation according to the flow, pressure, and speed data using the classifier system comprises providing a cavitation signal from the classifier system to the pumping system.
  • 21. The method of claim 20, further comprising changing the operation of the pump according to the cavitation signal.
  • 22. The method of claim 14, wherein detecting pump cavitation according to the flow, pressure using the classifier system comprises providing a cavitation signal from the classifier system to the pumping system.
  • 23. The method of claim 22, further comprising changing the operation of the pump according to the cavitation signal.
  • 24. The method of claim 22, wherein providing the flow and pressure data to a classifier system comprises providing flow and pressure data as inputs to a neural network, and wherein detecting pump cavitation according to the flow and pressure data comprises providing a cavitation signal from the classifier system indicative of the existence and extent of pump cavitation.
  • 25. The method of claim 24, further comprising:measuring pump speed data; providing the speed data to the classifier system; and detecting pump cavitation according to the flow, pressure, and speed data using the classifier system.
  • 26. The method of claim 24, further comprising changing the operation of the pump according to the cavitation signal.
  • 27. The method of claim 15, wherein detecting pump cavitation according to the flow and pressure data using the classifier system comprises providing a cavitation signal from the classifier system to the pumping system.
  • 28. The method of claim 27, further comprising changing the operation of the pump according to the cavitation signal.
  • 29. The method of claim 15, further comprising:measuring pump speed data; providing the speed data to the classifier system; and detecting pump cavitation existence and extent according to the flow, pressure, and speed data using the classifier system.
  • 30. The method of claim 14, further comprising diagnosing the extent of pump cavitation according to the flow and pressure data using the classifier system.
  • 31. The method of claim 30, wherein detecting pump cavitation according to the flow, pressure, and speed data using the classifier system comprises providing a cavitation signal from the classifier system to the pumping system.
  • 32. The method of claim 31, further comprising changing the operation of the pump according to the cavitation signal.
  • 33. The method of claim 32, further comprising:measuring pump speed data; providing the speed data to the classifier system; and detecting pump cavitation existence and extent according to the flow, pressure, and speed data using the classifier system.
  • 34. The method of claim 31, wherein the cavitation signal comprises a classification of pump cavitation having one of a plurality of class values, wherein each of the plurality of class values is indicative of the extent of cavitation in the pumping system, and wherein at least one of the plurality of class values is indicative of no cavitation in the pumping system.
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