This invention relates generally to a system for detecting and predicting refrigerant charge levels within a heating ventilating and air conditioning system.
Typically a heating ventilating and air conditioning system (HVAC) includes a refrigerant circuit containing a desired amount of refrigerant. Loss of refrigerant can result in premature failure of HVAC system components. It is therefore desirable to detect and monitor the amount of refrigerant contained within the refrigerant circuit.
Loss of refrigerant typically occurs over time and at a very slow rate. It is desirable to detect the loss of refrigerant and predict a future level of refrigerant in order to optimally schedule maintenance and correction of any problems with the HVAC system.
Known systems for detecting refrigerant loss are capable of detecting a significant loss in refrigerant such that the HVAC no longer functions optimally. However such systems only measure current refrigerant levels, and do not predict future levels of refrigerant to prevent a system from reaching a level where the loss of refrigerant requires immediate attention.
Current known systems for detecting refrigerant level include the use of additional sensors distributed throughout the refrigerant system or the use of complex analytical techniques that diagnose data obtained from sensors. The use of additional sensors is costly, adds complexity and is therefore not desirable.
Other known systems gather large amounts of data and utilized statistical techniques for analysis. Statistical techniques require the gathering of statistically significant levels of data that are often difficult and cumbersome to manipulate. Further, statistical techniques that analyze large quantities of data are most applicable to systems where data is plentiful but the physical properties and operation of the system are not well known. However, in a HVAC system the exact opposite condition is present. That is the physical operation and relationship between parameters of the HVAC system are well known, while the large amounts of data are not normally readily available.
Accordingly it is desirable to develop a system for detecting refrigerant level and for predicting a future level of refrigerant for an HVAC system without the use of additional sensors or gathering prohibitive amounts of data.
This invention is a method and system for detecting the current level of refrigerant within a HVAC system and for predicting a future level of refrigerant.
The method of this invention includes the steps of determining a charge indicator based on the difference between an actual value and an estimated value of a parameter providing an indication of charge within the HVAC system. A charge indicator is obtained by comparing the actual measured value of a parameter indicative of refrigerant level to the estimated value.
The estimated value is obtained from a predetermined relationship. Between specific selected operating parameters of the HVAC system and a single parameter that is indicative of refrigerant level. An example of such operating parameters includes discharge pressure, refrigerant mass flow and fan speed. The operating parameters are related to operation of an expansion valve according to a regression model using recorded data from the system. The expansion valve includes an opening that is proportionally opened or closed a desired amount based on a number of pulse counts. The number of pulse counts corresponds to the opening size within the expansion valve and is indicative of refrigerant level within the HVAC system.
The relationship between discharge pressure, refrigerant flow, fan speed and expansion valve pulse count provides for the estimation of an expected number of pulse counts for the expansion valve given the current conditions. This reflects the current number of pulse counts that the expansion valve should be at for a system with a full refrigerant charge. This estimated number of pulse counts is compared to an actual number of pulse counts for the expansion valve. The difference between the estimated and actual number of pulse counts provides an indication of the current level of refrigerant within the system.
This invention also includes a method of determining the level of refrigerant charge using principal component analysis. Simulations are performed for different operating conditions at full and low refrigerant charges. The difference between a single operating parameter at full and low refrigerant is utilized to obtain a value indicative of system response to specific operating condition. This value is compared to a value representing actual conditions to determine the current level of refrigerant.
This invention also includes a method for determining a future value of refrigerant level based on the current level of charge. The future value of refrigerant is determined by applying a change value that is indicative of the rate of change of the refrigerant level. This change value can be either a predetermined value or a value determined based on data gathered during operation of the system.
Accordingly, the system and method of this invention provides a means of determining a current refrigerant level and determining and predicting future values for the refrigerant level.
These and other features of the present invention can be best understood from the following specification and drawings, the following of which is a brief description.
Referring to
The system 10 can operate in either a heating mode or a cooling mode depending on the refrigerant flow direction. Speeds of a compressor 18 a fan 26 are adjusted to provide a desired temperature in accordance with a temperature set point. The system 10 includes a plurality of temperature sensors 40 and pressure sensors 42. Each of the sensors 40, 42 communicates to a controller 44. The controller 44 accumulates and processes data from the pressure and temperatures sensors 40,42 to adjust operation of the fans 26, 36 compressor 18, and expansion valves 24, 25.
The amount of refrigerant disposed within the refrigerant circuit 11 is proportional to the total volume of liquid refrigerant. Therefore when a low charge refrigerant condition occurs, the total volume of liquid refrigerant drops. A reduction in the amount of liquid refrigerant is first noticeable at points where phase transition occurs between liquid and vapor refrigerant. These transition points occur in the heat exchangers and occasionally in the receiver tank 22.
When the system 10 is in cooling mode, a drop in refrigerant will result in an overall increase of vapor refrigerant as compared to liquid refrigerant. The increased amount of vapor refrigerant typically causes an increase in superheat and a decrease in subcool. Superheat refers to an increase in refrigerant temperature above a boiling point at the outlet of an evaporator. Sub cool is a decrease in refrigerant temperature below the boiling point at the outlet of a condenser.
The flow of refrigerant and thereby the superheat or sub cool condition is controlled by actuating the expansion valve 24. The expansion valve 24 is controlled by pulse modulation. A number of current pulse counts are provided to the expansion valve 24 to control refrigerant flow. The number of pulse counts is increased in a superheat condition relative to the number of pulse counts for a refrigerant circuit 11 when fully charged. Further, in a sub cool condition the number of pulse counts is decreased below what is normal in order to trap more liquid refrigerant within the heat exchanger. Accordingly, the number of pulse counts used to actuate the expansion valve 24 provides an indication of the level of refrigerant.
Referring to
Referring to
Regression models utilize data representing system operation to derive a relationship between system parameters. The derived relationship is then used to determine a desired parameter. The specific data that is used to derive the relationship is selected according to a weighting factor that provides an indication of the accuracy in the correlation between the variables within the system and the predicted parameter.
The number of pulse counts of the expansion valve 24 provides a value indicative of refrigerant level. The variables used to predict the number of pulse counts include refrigerant discharge pressure, refrigerant mass flow and fan speed. Values for these system parameters are utilized within the regression analysis to determine a relationship that provides the estimation of an expected number of pulse counts for a full refrigerant charge condition. Although the refrigerant discharge pressure refrigerant mass flow and fan speed are utilized as parameters to predict and provide a relationship to pulse counts, it is within the contemplation of this invention to use other values indicative of system operation. As appreciated the accuracy of the regression model can be improved by constantly analyzing and updating the weight and correlation between parameters used to determine the relationship with the number of pulse counts.
The relationship that is determined using the regression model is utilized to determine an estimated value. This estimated value represents the expected number of pulse counts for the expansion valve 24 for a system having full refrigerant level. Actual measured data is utilized to estimate what the current number of pulse counts should be for the given conditions with a full refrigerant charge. The actual number of pulse counts is compared to the estimated value of pulse counts as is indicated at 66. A difference between the actual value and the estimated value provides a value used as a charge indicator. Preferably, for a refrigerant system with a full refrigerant charge, the difference between the estimated value and the actual value will be zero or very close to zero. An increase in the difference between actual and estimated values is indicative of the loss of refrigerant.
Another approach according to this method for calculating and determining the charge indicator uses a principal component analysis technique. The component analysis technique utilizes data of system parameters to map system reaction. Data gathered from system parameters as measured by sensors 40,42 throughout the system illustrates the reaction of the system to different operating conditions. The different operating conditions include operation at different ambient temperatures and temperature set points. The data is obtained either through experimental operation or simulations. Other system operating conditions can also be used to map system 10 operation and reaction.
System reaction is mapped by measuring operating conditions such as temperatures and pressure for full and low refrigerant charge conditions. The data obtained at a desired operating condition, at full and low refrigerant levels comprises a data pair. This data pair is compared to one another to determine a difference value. The difference value is a vector differential value. Each of these vector differential values for each measured data point is used to compile a matrix.
The matrix can be formed either by horizontal placement by column vectors or vertical placements of row vectors. A singular vector on the largest singular value of this matrix is then computed. The charge indicator is computed by collecting the sensor readouts in the same order as measured. The expected values of all the sensor readouts under full charge are calculated according to the regression model as indicated above. A residual vector is then calculated by subtracting the expected sensor readouts from actual readouts. The dot product of the residual vector and the singular vector provides the value of the charge indicator. The dot product of the residual vector provides a scalar quantity that is used as a charge indicator.
This approach uses the vector values to provide a directional bias for different deviations from the expected value. Directional bias information provides additional data and additional information on a direction of change of the system. The directional information on refrigerant loss provides an indication of the rate at which a change occurs.
The two approaches for determining the charge indicator value are used interchangeable in this method. The evaluation and detection of refrigerant level begins with the gathered sensor data as is indicated at 74. The sensor data includes temperature, and pressure data, along with fan speed and other data within the system. Preferably, the amount of sensor data utilized for the regression analysis is kept to a minimum to reduce complexity.
The data utilized for the pulse count estimation step 64 includes discharge pressure and refrigerant mass flow when the system is in heating mode. When the system 10 is in cooling mode the variables used are discharge pressure and fan speed for the condenser. As appreciated, different variables may be utilized to estimate the variable indicative of refrigerant level.
Once data has been gathered as indicated at 74, a commissioning step 72 can be initiated. The commissioning step 72 performs a calibration where the regression relationship between operating parameters in the system 10 and the expansion valve 24 is confirmed and optimized. The commissioning stage 72 is performed according to a preset schedule, or manually initiated at start up, or during maintenance.
The actual operating parameters from the system are than used to determine an estimated value for the number of pulse counts at step 64. Either the regression approach or the component analysis approach is used to determine the estimated value. The estimated value from step 64 is then compared to the actual number of pulse counts, to determine the charge value as indicated at step 66. The charge value determined in step 66 is used to determine an instantaneous charge estimation 68.
The simulation results are represented using instantaneous charge estimates, step 68. The instantaneous charge estimate does not account for trends or patterns in the level of refrigerant. Trending and determination of a future value of the charge estimate is determined separately as indicated at 70 from the instantaneous charge estimate 68 so that the accuracy of each data point can be evaluated.
In the trending step 70, the charge indicator is combined with a rate of change value to predict a future value of the charge indicator. Forecasting the future value of the charge indicator is accomplished by applying the change value to the instantaneous estimates for the charge indicator value.
A global picture of the movements of the parameter value that enables us to provide an accurate and useful forecast of future values of the charge indicator is obtained by combining the estimate through an appropriate trending technique. Preferably, a Kalman filter is used to provide a measure of data trending, however it is only one of many known trending techniques within the contemplation of this invention. The Kalman filter utilizes current data along with change parameters to provide a future estimate for the level of refrigerant. The current estimated refrigerant level and a future value according to the Kalman filter are related to each other according to the equations:
v(t)=[1−α(t−1)]v(t−1)
α(t)=α(t−1)+m+ε(t)
Where v(t) is the parameter of interest (the refrigerant charge indicator) at time t; α(t) is a rate of change in the parameter value at the time t; m is the average rate of change in α(t); and
Referring to
Referring to
The method of this invention provides instantaneous charge estimates and uses a trending technique to connect the estimate and provide a forecast of a future value. The instantaneous estimates are provided by a regression model that maps this charge pressure together with condenser fan speed and refrigerant outdoor mass flow to predict outdoor unit expansion actuator pulse count values. The difference between the predicted number of pulse count values and the actual pulse count values is mapped to provide a model of system charge. Prediction of future values is achieved to predict and incorporate prior information about the rate of change of refrigerant level as a function of time. This provides an adaptable technique for detecting the rate of change of refrigerant charge over time.
This system method provides a simple effective means of determining current refrigerant charge level and predicting the future values for refrigerant charge allowing for the optimal scheduling of maintenance for a heating ventilating and air conditioning system.
Although a preferred embodiment of this invention has been disclosed, a worker of ordinary skill in this art would recognize that certain modifications would come within the scope of this invention. For that reason, the following claims should be studied to determine the true scope and content of this invention.
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