1. Field of the Invention
The present invention relates to a technique for controlling the operation of a pump; and more particularly, the present invention relates to a method and apparatus for controlling and/or monitoring a pump, e.g., including for domestic and commercial heating or cooling water systems.
2. Brief Description of Related Art
In previous works for a hydronics pumping system sensorless control and monitoring by one or more of the inventors of the present application, a 3D sensorless converter was developed to obtain the system flow and pump differential pressure associated with any unknown hydronic pumping system, consistent with that disclosed in the aforementioned patent application Ser. No. 14/091,795. With the 3D sensorless approach, the system pressure and flow rate can be resolved directly from any pair of motor readout signals, such as speed, current, torque, power, and so on so forth, with high conversion accuracy. Consistent with that disclosed in the aforementioned provisional patent application Ser. No. 61/858,237, self-calibration sensorless adaptive pump control methods for hydronic pumping control systems were developed as well based upon the aforementioned 3D sensorless converter and adaptive control approaches disclosed in the aforementioned patent application Ser. Nos. 12/982,286 and 13/717,086. Following the approach, the adaptive pressure set point pumping control can be achieved with respect to dynamic hydronic system variation without a need for any pressure or flow sensors for pumping control.
Sensorless calibration instrumentation and data acquisition are always an interesting part of discussions regarding sensorless applications and not easy to be achieved for some applications due to lack of a pressure sensor or a flow meter in field, not to mention wiring issues. For some of the hydronic pumping applications where the flow rate monitoring is not very critical for pump control, however, a theoretical and discrete model without a need for instrumentation calibration may be easier to be used in the field.
There are several approaches that may be used for the sensorless conversion, including the discrete models calibrated with the pump and system hydronic data together with the numerical solutions. By way of example, see patent application Ser. No. 14/091,795, filed 27 Nov. 2013, entitled, “3D Sensorless Conversion Means and Apparatus for Pump Differential Pressure and Flow,” which is hereby incorporated by reference in its entirety. The discrete sensorless modeling approaches are simple and straight forward. The conversion accuracy may be preserved well with <5-10% margin of error if the conversion algorithm is well formed and calibrated properly. On the other hand, the theoretical sensorless model approaches may be formulated as well for some simple and easy pump control applications where there is no accurate flow and pressure requested for pump control and there may be the lack of calibration sensors. As a tradeoff, the flow and pressure conversion accuracy may have as low as a >10-15% margin of error. The conversion accuracy may be deteriorated very rapidly at low speed.
By way of example,
Recently, issues regarding energy saving and environmental protection in such pumping systems have been addressed dramatically. Increasingly more attention is being paid to hydronic pump control applications, including pump controls for domestic and commercial heating and cooling water pumping or circulating systems, water booster pumping systems, and so forth, like those shown in
In summary, according to the present invention, a mixed theoretical and discrete sensorless converter for corresponding pump differential pressure and system flow rate at a given pair of motor power and speed is provided by utilizing pump and system characteristics equations together with a discrete system power inversion equation. The sensorless converter means developed can be used for most hydronic pumping control and monitoring applications with satisfactory accuracy without a need for instrumentation calibration.
By way of example, an equilibrium point of pump differential pressure and system pressure may be formulated in a hydronic domain first by utilizing pump and system characteristics curves equations, which yield system pressure and flow rate at any load and time. Equivalent hydronic system characteristics associated with the pump differential pressure and flow rate to their corresponding motor power and speed reconstructed and remapped by using a discrete numerical approach may be then introduced. The pump differential pressure and flow rate by the means or technique disclosed herein can be resolved with more accuracy without a need for instrumentation calibration.
According to some embodiments, the present invention may include, or take the form of, apparatus featuring a signal processor or processing module configured at least to: process signaling containing information about an equilibrium point of pump differential pressure and system pressure formulated in a hydronic domain by utilizing pump and system characteristic curve equations so as to yield system pressure and flow rate at any particular load and time in a pump hydronic system, including using a multi-dimensional sensorless conversion technique; and determine equivalent hydronic system characteristics associated with the pump differential pressure and flow rate to their corresponding motor power and speed reconstructed and remapped by using a discrete numerical approach, based at least partly on the signaling processed.
Embodiments of the present invention may also include one or more of the following features:
The signal processor or processing module may be configured to provide corresponding signaling containing information about the equivalent hydronic system characteristics determined, e.g., including the pump differential pressure and flow rate for monitoring.
The corresponding signaling may contain information used to control or adapt the pumping hydronic system.
The signal processor or processing module may be configured to receive motor power and speed readout signaling containing information about motor power and speed and convert the equivalent hydronic system characteristics from the motor power and speed readout signaling received.
The signal processor or processing module may be configured to balance the pump differential pressure and flow rate at the equilibrium point of a pump differential pressure curve at a given speed with the equivalent hydronic system characteristics at a given load.
The signal processor or processing module may be configured to use a pump curve equation based at least partly on a pump curve model which was developed based upon a pump characteristic equation at any motor speed and system flow rate which may be represented approximately by a polynomial function of P=fp(Q,n) based upon a full speed characteristics curve and affinity laws. By way of example, the polynomial function may include a second order polynomial function of
where Pso is a pump shutoff pressure at motor full speed, and Pd and Qd are a pump pressure and a flow rate at a duty point. Alternatively, the polynomial function may also include a third or a fourth order polynomial function to represent a pump curve equation. The signal processor or processing module may also be configured to re-derive the pump curve equation accordingly.
The signal processor or processing module may be configured to use an equivalent hydronic system characteristics curve equation that includes a flow equation of Cv=Q/√{square root over (P)}, or at least some of its approximations.
The signal processor or processing module may be configured to determine a pressure equilibrium point that includes an intersection of a pump curve as well as a system curve.
The pressure equilibrium point for the system pressure and flow rate at any motor speed and power may be based at least partly on a second order pump curve approximation.
The signal processor or processing module may be configured to use a discrete conversion to an equivalent system characteristics coefficient from the corresponding motor power and speed that includes an inversely remapped discrete function of ŵ from a motor power distribution of W with respect to motor speed and an equivalent system curve based upon their corresponding calibration pump and motor data plotted.
The signal processor or processing module may be configured to use a discrete conversion of remapping and reconstruction that includes one or more 3D discrete numerical remapping methods, including 2D interpolations or 2D Splines.
The signal processor or processing module may be configured to use a discrete conversion of remapping and reconstruction that includes one or more 2D or 3D discrete or numerical inversion methods, including 1D or 2D direct inversion, minimizations or simplex.
The signal processor or processing module may be configured to use for the pumping hydronic system one or more close loop or open loop hydronic pumping systems, including primary pumping systems, secondary pumping systems, water circulating systems, and pressure booster systems.
The pumping hydronic system may include a single zone or multiple zones.
The signal processor or processing module may be configured to use pump calibration data for a close loop hydronic system that includes pump differential pressure and flow rate data.
The pump calibration data may include either system pressure data, or pump discharge section pressure and corresponding flow rate data.
The signal processor or processing module may be configured to use pump calibration data for an open loop hydronic system that includes the pump differential pressure or system pressure and flow rate with respect to corresponding motor data.
For an open loop system with a static suction pressure, the signal processor or processing module may be configured to receive associated signaling containing information about system pressure and flow rate data obtained directly in the field.
For an open loop system with a varying suction pressure, the signal processor or processing module may be configured to receive associated signaling from one pressure sensor at a pump suction side or a differential pressure sensor at the pump that may be used to calibrate pressure and flow rate contributions from suction pressure.
The signal processor or processing module may be configured to use measured motor data that includes some pair of potential motor electrical or mechanical readout signals, including motor speed, current, torque, or power.
The signal processor or processing module may be configured to process hydronic signals that include system pressure, pump differential pressure, zone pressures, system flow rates, or zone flow rates.
The signaling received may contain information related to a pump that may include a single pump, a circulator, a group of parallel ganged pumps or circulators, a group of serial ganged pumps or circulators, or their combinations.
The apparatus includes, or forms part of, the pump hydronic system.
The corresponding signaling may be provided for systems flow regulation that includes manual or automatic control valves, manual or automatic control circulators, or some combination thereof.
The signal processor or processing module may be configured to determine a pump characteristic curve based at least partly on a pump characteristics equation, as follows:
where Pso is a pump shutoff pressure at motor full speed, and Pd and Qd are a pump pressure and a flow rate at a duty point.
The signal processor or processing module may be configured to determine an equivalent hydronic system characteristics or dynamic friction coefficient of Cv, based at least partly on a flow equation, as follows:
Cv=Q/√{square root over (P)}
The signal processor or processing module may be configured to determine a pressure equilibrium point at an intersection of the pump and system characteristic curves in the hydronic domain based at least partly on solving equations, as follows:
where Pso is the pump “shut off” pressure at its full speed, and Pd and Qd are the pump pressure and the flow rate at the a duty point.
The signal processor or processing module may be configured to convert an equivalent system characteristics coefficient from motor power and speed using a discrete method, based at least partly on the equation, as follows:
Cv=ŵ(W,n) (4)
where ŵ is an inversely remapped discrete function of motor power W based upon their corresponding calibration pump and motor data.
The signal processor or processing module may be configured to receive the signaling, including from a further signal processor configured to process the signals using a 3D sensorless conversion technique.
The signal processor or processing module may be configured to process the signaling using a 3D sensorless conversion technique and generate the signaling.
The apparatus may include, or take the form of, a pump control or controller, including a PID control, having the signal processor or signal processor module, e.g., including for monitoring pump differential pressure and flow.
According to some embodiments, the present invention may takes the form of a method including steps for: processing signaling containing information about an equilibrium point of pump differential pressure and system pressure formulated in a hydronic domain by utilizing pump and system characteristic curve equations so as to yield system pressure and flow rate at any particular load and time in a pump hydronic system, including using a multi-dimensional sensorless conversion technique; and determining equivalent hydronic system characteristics associated with the pump differential pressure and flow rate to their corresponding motor power and speed reconstructed and remapped by using a discrete numerical approach, based at least partly on the signaling received.
The present invention may also, e.g., take the form of a computer program product having a computer readable medium with a computer executable code embedded therein for implementing the method, e.g., when run on a signaling processing device that forms part of such a pump controller. By way of example, the computer program product may, e.g., take the form of a CD, a floppy disk, a memory stick, a memory card, as well as other types or kind of memory devices that may store such a computer executable code on such a computer readable medium either now known or later developed in the future.
The drawing includes the following Figures, which are not necessarily drawn to scale:
In general, a pump curve is measured data of pump pressure verse flow rate, which may be expressed approximately as a pressure function P in terms of flow rate Q and motor speed n in a general polynomial form of P=fp(Q,n), based upon the pump characteristics curve at full speed as well as the affinity laws. For instance for a most practical pumping application, the pump characteristic curve may be written approximately as a second order polynomial pressure function of P as
where Pso is the pump shutoff pressure at motor full speed, Pd and Qd are the pump pressure and flow rate at the duty point in
By solving the pump characteristics equation of Eq. 1 and the equivalent hydronic system characteristics or dynamic friction coefficient of Cv defined by the flow equation of Cv=Q/√{square root over (P)}, the pressure equilibrium point at the intersection of the pump and system characteristics curves in the hydronic domain can then be derived in form of
where Pso is pump “shut off” pressure at its full speed, Pd and Qd are pump pressure and flow rate at its duty point referring to
The second order pump differential pressure function presented above in Eq. 1 uses two points of pump shut off and duty points on the pump curve at a full motor speed to represent pump differential pressure and associated flow rate at any speed. In general, it may represent most practical pump characteristics, especially for a centrifugal pump. For a better representation with higher accuracy, more points in the pump curve may be utilized to formulate or to best fit a second order function for a pump characteristics curve. For a pump characteristics curve where more than one maximum peak values may be presented, however, a higher order polynomial expression and some numerical approaches may be introduced to solve the problems, if achievable.
For a dynamic hydronic system in which flow rate is regulated by a control valve, the equivalent hydronic system characteristics coefficient Cv is a variable in general. With the input variables of motor speed and power which is the distribution depended upon load at any time, it is a quite challenge as well to formulate the theoretic relationship directly between the motor input variables with their corresponding hydronic variables. In the aforementioned provisional application, a discrete method to convert the equivalent system characteristics coefficient from motor power and speed has been proposed as
Cv=ŵ(W,n), (4)
where ŵ is the inversely remapped discrete function of motor power W based upon their corresponding calibration pump and motor data, which 3D distribution is plotted in
The theoretical and discrete sensorless converter for pump differential pressure and system flow rate has been developed by using Eqs. 2 and 3 together with the system power inversion in Eq. 4.
In this approach, the measured data that may need to be recalibrated is therefore the power distribution of W or ŵ in Eq. 4 with respect to the motor speed of n as well as the hydronics system characteristics values of Cv only. There may be no need to recalibrate the converter with a flow meter and/or a pressure sensor, based on the assumption that there should be no significant change to the pump hydronic pressure and flow rate due to aging or wearing, but the efficiency which is associated with the power conversion from the motor power to the pump hydronic one.
The mixed model in Eqs. 2 and 3 may be used for a closed loop system since all energy consumed by the system is from the contribution of system dynamic friction loss and relevant to pump differential pressure only. For an open loop system with a static suction pressure, however, the calibration for the control system may still be feasible in the field with caution.
By way of example,
By way of example, the signal processor or processing module 10a may form part of a pump controller configured with or as a mixed theoretical and discrete sensorless converter for pump differential pressure and flow, and may includes one or more of the following features:
The mixed theoretical and discrete sensorless converter may include, or take the form of, a pump sensorless converter which yields the pump differential pressure and system flow rate associated with an unknown dynamic system with respect to motor speed and power readout signals based on the pump and system characteristics curves equations as well as the discrete method to convert the equivalent system characteristics coefficient from motor power and speed.
The mixed theoretical and discrete sensorless converter may use the pump differential pressure and flow rate at the equilibrium point of the pump differential pressure curve at a given speed balanced with equivalent hydronic system characteristics curve at a load as represented in Eqs. 2 and 3, and is graphically represented in
The mixed theoretical and discrete sensorless converter may use a pump curve equation based at least partly on a pump curve model which is developed based upon the pump characteristic equation at any motor speed and system flow rate which may be represented approximately by a polynomial function of P=fp(Q,n) based upon the full speed characteristics curve and affinity laws. For a practical application example, a second order polynomial function of
may be used. One may choose a third or a fourth order polynomial function to represent a pump curve as well if needed. For that, the pump curve equation may need then to be re-derived accordingly. For a better representation with a higher accuracy, more points in the pump curve may be utilized to formulate or to best fit a second order function for a pump characteristics curve. For a pump characteristics curve where more than one maximum peak value may be presented, however, a higher order polynomial expression and some numerical approaches may be introduced to solve the problems, if achievable.
The mixed theoretical and discrete sensorless converter may use an equivalent hydronic system characteristics curve equation that includes the flow equation of Cv=Q/√{square root over (P)} or some of its approximations.
The mixed theoretical and discrete sensorless converter may use a pressure equilibrium point that includes the intersection of the pump curve as well as the system curve as shown
The mixed theoretical and discrete sensorless converter may use a discrete conversion to the equivalent system characteristics coefficient from motor power and speed that includes an inversely remapped discrete function of ŵ from a motor power distribution of W with respect to motor speed and an equivalent system curve based upon their corresponding calibration pump and motor data plotted in
The mixed theoretical and discrete sensorless converter may use a discrete conversion of remapping and reconstruction that includes all potential 3D discrete numerical remapping methods, such as 2D interpolations, 2D Splines, and so forth.
The mixed theoretical and discrete sensorless converter may use a conversion that includes all potential 2D or 3D discrete or numerical inversion methods, such as 1D or 2D direct inversion, minimizations, simplex, and so forth.
The mixed theoretical and discrete sensorless converter may use a pumping hydronic system that includes all close loop or open loop hydronic pumping systems, such as primary pumping systems, secondary pumping systems, water circulating systems, and pressure booster systems. The systems mentioned here may consist of a single zone or multiple zones.
The mixed theoretical and discrete sensorless converter may use pump calibration data for a close loop hydronic system that includes pump differential pressure and flow rate data, since all energy consumed by the system is from the contribution of system dynamic friction loss, which is only relevant to the pump differential pressure. The calibration data may include the system pressure data or pump discharge section pressure and the corresponding flow rate.
The mixed theoretical and discrete sensorless converter may use pump calibration data for an open loop hydronic system that includes the pump differential pressure or system pressure and flow rate with respect to the corresponding motor data. For an open loop system with a static suction pressure, the system pressure data and flow rate may be obtained directly in the field. For an open loop system with a varying suction pressure, however, one pressure sensor at the pump suction side or a differential pressure sensor at the pump may be used to calibrate the pressure and flow rate contributions from the suction pressure.
The mixed theoretical and discrete sensorless converter may use measured motor data that includes any pair of potential motor electrical or mechanical readout signals such as motor speed, current, torque, power, and so forth.
The mixed theoretical and discrete sensorless converter may use hydronic signals that may include system pressure, pump differential pressure, zone pressures, system flow rates, zone flow rates, and so forth.
The mixed theoretical and discrete sensorless converter may include providing control signals via transmitting and wiring technologies that may include all conventional sensing and transmitting means that are used currently. Preferably, wireless sensor signal transmission technologies would be optimal and favorable.
The mixed theoretical and discrete sensorless converter may use pumps for the hydronic pumping systems that may include a single pump, a circulator, a group of parallel ganged pumps or circulators, a group of serial ganged pumps or circulators, or their combinations.
The mixed theoretical and discrete sensorless converter may use systems flow regulation that may include manual or automatic control valves, manual or automatic control circulators, or their combinations.
By way of example, the functionality of the apparatus 10 may be implemented using hardware, software, firmware, or a combination thereof. In a typical software implementation, the apparatus 10 would include one or more microprocessor-based architectures having, e.g., at least one signal processor or microprocessor like element 10a. A person skilled in the art would be able to program such a microcontroller-based, or microprocessor-based, implementation to perform the functionality described herein without undue experimentation. For example, the signal processor or processing module 10a may be configured by a person skilled in the art without undue experimentation to process signaling containing information about an equilibrium point of pump differential pressure and system pressure formulated in a hydronic domain by utilizing pump and system characteristic curve equations so as to yield system pressure and flow rate at any particular load and time in a pump hydronic system, e.g., using a 3D sensorless conversion technique, consistent with that set forth in the aforementioned patent application Ser. No. 14/091,795. Moreover, the signal processor or processing module 10a may be configured by a person skilled in the art without undue experimentation to determine equivalent hydronic system characteristics associated with the pump differential pressure and flow rate to their corresponding motor power and speed reconstructed and remapped by using a discrete numerical approach, based at least partly on the signaling processed, consistent with that disclosed herein.
The scope of the invention is not intended to be limited to any particular implementation using technology either now known or later developed in the future. The scope of the invention is intended to include implementing the functionality of the processors 10a as stand-alone processor or processor module, as separate processor or processor modules, as well as some combination thereof.
The apparatus may also include other signal processor circuits or components 10b, e.g. including random access memory (RAM) and/or read only memory (ROM), input/output devices and control, and data and address buses connecting the same, and/or at least one input processor and at least one output processor.
It should be understood that, unless stated otherwise herein, any of the features, characteristics, alternatives or modifications described regarding a particular embodiment herein may also be applied, used, or incorporated with any other embodiment described herein. Also, the drawings herein are not drawn to scale.
Although the present invention is described by way of example in relation to a centrifugal pump, the scope of the invention is intended to include using the same in relation to other types or kinds of pumps either now known or later developed in the future.
Although the invention has been described and illustrated with respect to exemplary embodiments thereof, the foregoing and various other additions and omissions may be made therein and thereto without departing from the spirit and scope of the present invention.
This application claims benefit to provisional patent application No. 61/803,258, filed 19 Mar. 2013, which is hereby incorporated by reference in its entirety. This application is also related to a family of technologies disclosed in the following applications: U.S. application Ser. No. 12/982,289, filed 30 Dec. 2010, entitled “Method and apparatus for pump control using varying equivalent system characteristic curve, AKA an adaptive control curve,” which issued as U.S. Pat. No. 8,700,221;U.S. application Ser. No. 13/717,086, filed 17 Dec. 2012, entitled “Dynamic linear control methods and apparatus for variable speed pump control,” which claims benefit to U.S. provisional application No. 61/576,737, filed 16 Dec. 2011;U.S. application Ser. No. 14/091,795, filed 27 Nov. 2013, entitled “3D sensorless conversion method and apparatus;” andU.S. provisional application No. 61/858,237, filed 25 Jul. 2013, entitled “Sensorless adaptive pump control with self-calibration apparatus for hydronic pumping system;” which are all assigned to the assignee of the instant patent application, and all incorporated by reference in their entirety. The present invention builds on the family of technologies disclosed in the aforementioned related applications.
Number | Name | Date | Kind |
---|---|---|---|
5318409 | London et al. | Jun 1994 | A |
5615996 | Suzuki et al. | Apr 1997 | A |
5704339 | Choe | Jan 1998 | A |
5817950 | Wiklund et al. | Oct 1998 | A |
6142228 | Jogi et al. | Nov 2000 | A |
6280408 | Sipin | Aug 2001 | B1 |
6332463 | Farrugia et al. | Dec 2001 | B1 |
6532423 | Chen et al. | Mar 2003 | B2 |
6918307 | Ohlsson | Jul 2005 | B2 |
6991595 | Burke et al. | Jan 2006 | B2 |
7033147 | Yanai et al. | Apr 2006 | B2 |
7036559 | Stanimirovic | May 2006 | B2 |
7163001 | Jung et al. | Jan 2007 | B2 |
7341201 | Stanimirovic | Mar 2008 | B2 |
7668694 | Anderson et al. | Feb 2010 | B2 |
7945411 | Kernan et al. | May 2011 | B2 |
8024161 | Pekar et al. | Sep 2011 | B2 |
8065110 | Golinveaux et al. | Nov 2011 | B2 |
8140274 | Gagel et al. | Mar 2012 | B2 |
8235776 | Stanimirovic | Aug 2012 | B2 |
8353289 | Farrugia et al. | Jan 2013 | B2 |
8700221 | Cheng et al. | Apr 2014 | B2 |
20070212210 | Kernan et al. | Sep 2007 | A1 |
20090094002 | Kallenbach | Apr 2009 | A1 |
20100275678 | Herzog | Nov 2010 | A1 |
20110223038 | Ogawa et al. | Sep 2011 | A1 |
20110313517 | Reichenbach et al. | Dec 2011 | A1 |
20120173027 | Cheng et al. | Jul 2012 | A1 |
20120251340 | Ahonen | Oct 2012 | A1 |
20140046605 | McHugh | Feb 2014 | A1 |
Number | Date | Country |
---|---|---|
2005115539 | Dec 2005 | WO |
Number | Date | Country | |
---|---|---|---|
20140288716 A1 | Sep 2014 | US |
Number | Date | Country | |
---|---|---|---|
61803258 | Mar 2013 | US |