This invention relates generally to modeling building climate control systems, and more particularly to predicting internal temperature and humidity conditions for operating heating, ventilation, and air conditioning (HVAC) systems.
It is important to accurately predict internal temperature and humidity conditions for a climate controlled building. Accurate predictions can support optimal operation and evaluation of a heating, ventilation, and air conditioning (HVAC) system, and facilitate the efficient operation of the HVAC system for a changing internal and external climatic environment over a planning time interval.
In a building climate control systems with a HVAC system, a number of control signals are usually applied to the system based on comfort for occupants. Comfort is usually dependent on temperature and humidity. For each day, the HVAC operation plans should keep the temperature and humidity of air in building zones within a certain range under various outside and inside environmental conditions.
There are a number of factors that affect the internal temperature and humidity of buildings. Among these factors, the HVAC system cooling and thermal output and ventilation rates are controllable by a HVAC controller. Some factors are predictable, such as the outside air temperature and humidity. Some factors are controllable, such as HVAC operations. Some factors, such as building thermal characteristics and occupancy pattern, are relatively constant for a specific building, but not accurately measurable because human activity generates extra heat and moisture. All these inputs to the building control system lead to difficulty in an accurate prediction of the internal building temperature and humidity.
Most of known building models use temperature models and humidity models that operate independently. Because temperature and humidity dynamics are usually coupled, the performance of those models is usually suboptimal when temperature and humidity are considered independently.
It is desired to improve the performance of models for building climate control systems.
Embodiments of the invention provide an integrated temperature and humidity model for operating a building climate control system. The model is based on joint temperature and humidity dynamics. A sensible cooling rate and a latent cooling rate can be estimated using the temperature and humidity at an inlet and outlet of an evaporator.
The saturation specific humidity is approximated using a linear function of zone temperatures. The ventilation outlet specific humidity is approximated using indoor and outdoor humidity.
When a changing ventilation fan speed is considered, an iterative procedure is used for fast training.
The model yields an accurate joint prediction of building temperature and humidity for operating the climate control system.
As shown in
Temperatures Tz and TIsurf 101-102 and humidities hz and hIsurf 102-103 in the zone 110 and for the interior fabrics are acquired. A mass transfer process
to operate the climate control system 320 is a weighted combination of a difference of the humidities of the zone and the interior fabrics plus a difference between the temperatures of the zone and the interior fabrics. The weights k1 and k2 can be determined empirically.
The embodiments of our invention collect data to construct and train an integrated temperature and humidity model for operating a building climate control system, see
In
Table 1 shows some typical example values for some of the parameters.
The integrated temperature and humidity model considers building thermal capacity of the zone, human activities in the zone, and outside climatic conditions. Jointly, the model also considers absorption and desorption of moisture of interior fabrics of the building, moisture condensation at the evaporator of indoor units, air exchange by ventilation systems, and human activities related moisture generation.
Generally, the interior fabrics of a building, as known in the art, are architecturally defined as walls, floor, carpeting, ceiling construction, furnishing, etc. The surface of the inside wall is a good approximation of the interior fabrics. Hence, measuring the temperature, and moisture absorption, desorption and absorbtion is sufficient.
The corresponding equation for our integrated temperature and humidity model is represented by equations. (1-4) below.
A ventilation outlet 202 transports outside air into the zone. There are heat Q and moisture h exchanges 203 between zone air and internal fabrics of the zone. There also are heat and moisture exchanges 204 between outside air and zone air and moisture generation process related to machines, furniture, equipment 205 and human activities 205.
The equations (1-4) represent the dynamics of our integrated temperature and humidity model.
Equation (1) determines the thermal flow (rate of change of temperature over time) of the outside wall surface
Equation (2) determines the thermal flow of the inside wall surface
Equation (3) determines the thermal flow of the inside air
Equations (1-3) are based on Kirchhoffs and Ohm's laws, where temperature and heat flow are treated as counterparts for voltage and current.
Equation (4) determines the rate of change over time of the inside air
Equation (4) is our adaptation of a humidity model, e.g., the BRE admittance model, Building Research Establishment (BRE), Watford, U.K, see the Appendix.
The conventional BRE admittance model does not consider the impact of the temperature on the humidity, the impact of condensation on the zone humidity at the evaporator, nor the impact of ventilation system. In other words, the humidity is modeled with the (erroneous) assumption that the inside and outside temperatures are always constant and equal, and that the ventilation rate is non-varying. All of these are invalid assumptions we correct.
The impact on inside humidity takes effect by changing a mass transfer process (humidity) between the inside air and interior fabrics. The mass transfer equation between the inside air and interior fabrics, with both humidity difference and temperature difference as driving forces, is
Our integrated temperature and humidity model, in the form of equations (1-4), is a nonlinear model. Linear approximation can provide a more stable and faster training process.
However, the relation between saturation specific humidity hsat and inside air temperature TZ is nonlinear.
The nonlinear relation can be expressed using
where Psat is the saturation vapor pressure at a corresponding zone temperature, and hsat is saturation specific humidity at corresponding zone temperature to obtain convergence.
Within a zone temperature range, the saturation specific humidity hsat can be approximated as a linear function of TZ. With a linear approximation for saturation specific humidity under a normal zone temperature, we have equation (4) updated to equation (8)
The data collection, training and prediction can be performed by a processor 350 including memory and input/output interfaces connected to the climate control system, and sensors in an environment.
The first step is to train 304 the temperature model 310 using equations (1-3) to predict temperatures in the zone, as well as, and the airflow at the evaporator {dot over (m)}, air temperature TZ, and wall surface temperature TIsurf from the temperature model.
The second step is to train 305 the humidity model 320 using measured and predicted data 301-303, and {dot over (m)}, TZ, and TIsurf 311 from the first step.
Sensible cooling and latent load estimations are used for the integration of the temperature and humidity models of the embodiments of the invention, because the total energy consumed by the HVAC system on cooling is a composite of sensible cooling that cools down inside air, and latent cooling that causes a phase change and condensates vapor into water from the inside air.
A sensible cooling rate is estimated using
QS=Sd(Te2−Te1), (9)
and a latent cooling amount is estimated using
QL=min(0,Sd(Hr2−Hr1)). (10)
The ventilation system influences the system humidity by the transport of outside air, to the inside, that has varying temperature and humidity.
For the ventilation system, the air temperature Tvent at the outlet of the ventilation unit can be expressed as a linear function of the indoor air temperature TZ, and the outdoor air temperature Toutdoor.
The ventilation outlet enthalpy Event (total thermodynamic energy) can be estimated using the outdoor enthalpy Eoutside, and the indoor enthalpy EZ.
Equations (11-12) represent the approximation for air temperature and enthalpy from outlets of an example ventilation system
a. Tvent=TOutside−A(TOutside−Tz); (11)
and
b. Event=EOutside−B(EOutside−Ez), (12)
where A and B are user supplied constants.
Under normal zone temperature and normal fluctuation range of indoor and outdoor temperatures, a linear approximation for ventilation outlet specific humidity hvent can be obtained.
Equation (13) represents the linear approximation function for hvent of the indoor specific humidity hz, and the outdoor specific humidity houtside using a, b, c as weighting coefficients
hvent=ahOutside+bhz+c. (13)
In equations (11-13), EOutside, hOutside, and TOutside can be obtained from weather forecasts.
In a ventilation system with a changing fan speed Svent, the humidity model becomes nonlinear
and the computational complexity increases.
An iterative procedure can be performed with the following steps during humidity model related training, modeling and prediction:
The embodiments of the invention provide an accurate model that can jointly predicts building temperature and humidity for time intervals. The joint predictions can be used to operate a climate control system. In other words, the model is used to transform physical climatic conditions, i.e., temperature and humidity to control signals for the system.
The model has an empirical estimation error of ˜0.025% and ˜1.5% for zone temperature and relative humidity, respectively. For a building with ten zones, the prediction error for relative humidity is about 2˜5%. The prediction error for zone temperature is less than 1%. These results outperforms models that based on either just the temperature or just the humidity.
Although the invention has been described by way of examples of preferred embodiments, it is to be understood that various other adaptations and modifications may be made within the spirit and scope of the invention. Therefore, it is the object of the appended claims to cover all such variations and modifications as come within the true spirit and scope of the invention.
where
Number | Name | Date | Kind |
---|---|---|---|
5115967 | Wedekind | May 1992 | A |
5197666 | Wedekind | Mar 1993 | A |
6699120 | Darum | Mar 2004 | B1 |
7460984 | Clark et al. | Dec 2008 | B1 |
20100262298 | Johnson et al. | Oct 2010 | A1 |
Entry |
---|
S.M. Cornick et al., “A Comparison of Empirical Indoor Relative Humidity Models with Measured Data,” NRCC-49235 Institute for Research in Construction, http://irc.nrc-onrc.gc.ca; Journal of Building Physics, V. 31, No. 3, Jan. 2008, pp. 243-268. |
R Jones, “Indoor Humidity Calculation Procedures,” Building Serv. Eng. Res. Technol. 16(3) 119-126 (1995). |
Number | Date | Country | |
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20140000836 A1 | Jan 2014 | US |