This application claims priority from Italian Patent Application no. 102022000011294, filed May 27, 2022, which is incorporate herein by reference in its entirety.
The invention relates to the field of systems that provide a user with information on their domestic energy consumption in order to make tangible the impact of their choices and habits and raise consumer awareness.
These systems are not limited to measuring set environmental values and consumption, but have the objective of making estimates and possibly calculating and suggesting to the consumer virtuous scenarios in which energy consumption is minimised. Sometimes such systems may be configured to automatically set a temperature profile that minimises energy consumption.
In document WO18203075 A1, on the basis of a mathematical model of the home heating system, the hourly temperature setting that meets a given consumption level is identified. The system inputs are the temperatures set by the user, the outdoor temperature, the envelope heat losses and the thermal capacity of the building. Envelope heat losses and capacity are input data that an operator may set based on the characteristics of the building such as: dimensions, number of occupants, energy efficiency, geographic location. The method, therefore, requires configuration by a qualified user and is not completely automatic; moreover, the correctness of the results depends on the configuration and approximations connected to the classification method of the thermal characteristics.
Document US2013231792 A1 calculates the expected energy consumption based on occupancy hours of a building by different users and weather forecasts, and optimises the cost for heating based on the hourly cost of the energy by shifting the consumption to the times with the least cost.
Document US2015148976 A1 describes how to monitor an HVAC system to identify inefficiencies and maintenance needs. As a monitoring method it determines the line that interpolates the points given by HVAC system activation periods on one axis and temperature delta (indoor minus outdoor) over the second axis. However, readings and calculated parameters are only aimed at monitoring the correct functioning of the system.
Document US2010283606 A1 describes a system that measures the consumption for heating, and alerts the user via a display when the consumption exceeds a target consumption or a historical consumption threshold.
Document WO13149210 A1 describes a method for informing the user about the air conditioning performance; the information for the user comprises the set temperatures, the consumption and the variations in consumption between a first reference time interval and a second time interval. When a variation is detected, the system analyses the parameters to identify a possible cause; in particular, the cause may be attributed to the weather conditions, the number of occupants in the building, the hourly setting of the temperatures or manual variations made by the user. The identification of a cause is made according to a statistical method that chooses the parameter that has detected a corresponding deviation as the most probable cause. The limitation of this solution is that if the outdoor temperatures increase, and the user at the same time increases the target temperature, the system does not detect an increase in the consumptions and therefore does not report a possible waste of energy, or if the building usage decreases by 30% and the user reduces the consumption by 10%, the system does not detect an opportunity for further savings.
Document US2018238572A1 collects data from several buildings in an area to estimate the consumption need and compare it with the forecast of photovoltaic production in the same zone. It calculates characteristic parameters indicated with 1/R associated with the envelope heat losses and a thermal conductance “C” representative of the thermal capacity; the calculation is based on historical series of indoor and outdoor temperature for each building and uses the formula:
then it includes a configuration step to be performed on each building, where it estimates various parameters of the building.
Document US2014358291A1, starting from known outdoor environmental parameters, it learns the indoor parameters that the user considers to determine a comfort condition. The learning step is a simple storage of user indications. The document does not teach how to estimate the consumption of a building more reliably.
Document US20210285671A1 describes a complex air conditioning system for large buildings which uses a neural network dedicated to the building in order to determine the comfort conditions wherein the input to the neural network are the changes to the settings made by the users.
Document CN107797459 like the previous one describes the use of a neural network dedicated to modelling a single building to identify the comfort values of the environmental variables and calculating a control input that keeps the environmental parameters in the comfort range.
Therefore, the prior art does not teach a method for estimating the effects of the outdoor and indoor temperature on energy consumption in a reliable way for buildings of different types and that does not need a configuration step of parameters of the building.
The purpose of the present invention is to solve at least some of the known problems with a method and an apparatus for estimating energy consumption based on the characteristics of the building and on scenarios that include outdoor conditions and user settings.
In the following, “indoor and outdoor environmental variable” comprise at least the temperature, and optionally at least the humidity or wind conditions. Reference shall be made to the indoor temperature “Tint” or outdoor temperature “Text”, meaning by these a representative value of the temperature respectively inside or outside the building, that may be a reprocessing of an actual measurements or of a forecast.
In the following, the term “building” comprises the indoor spaces, the envelope and the climate conditioning system, the indoor spaces are the set of conditioned indoor spaces, comprising both homes and office spaces or in general buildings to be conditioned; hereinafter “climate conditioning”, “conditioning” or “air conditioning” shall be used interchangeably to include both heating and cooling and possibly regulation of humidity.
The letter “E” symbolizes the energy supplied to a building, “ECOND” symbolizes the energy used for climate conditioning ECOND may comprise “EABS” the energy absorbed by the conditioning system and/or “EHVAC” the energy output of the conditioning system.
The term “processor” shall be used to generally indicate at least one programmable processor able to implement the described method steps and optionally comprising, a distributed computing capacity colloquially known as cloud computing, and/or a computer and/or a microcontroller, and/or a tablet and/or smart phone.
For estimating with adequate precision the energy required for the conditioning, taking into account both the outdoor and indoor temperature, at least one finite element model would be needed that would require the knowledge of many parameters among which a 3D model of the house, relevant materials used, the trend of the weather variables, etc. The complex problem is herein simplified with a method which requires less input parameters to provide reliable estimates for the purposes.
According to an aspect of the invention the energy required for the conditioning is estimated based on the indoor and outdoor environmental variables wherein the method to build the estimator uses data collected over a large number of buildings, trains a model on these data and then adapts the model to a building to be conditioned, which may be termed a “target building” for brevity.
The advantage of the method is both in the capability to process a large number of data in the training phase and in the adaptation to a specific building, such adaption requires configuring only a limited number of characterisation parameters and, at least in some variants, does not require manual data entry for the configuration.
In particular, the model adaptation step:
In an aspect of the invention the proposed method comprises:
The term “training” refers to the supervised learning step of a computer implemented model.
More precisely, in an embodiment, the steps of the method comprise:
The outdoor and indoor environmental variables comprise at least the outdoor temperature Text, and the indoor temperature Tint, respectively.
The at least one characteristic parameter k is a quantity linked to the thermal characteristics of the envelope, the spaces and/or of the conditioning system, and/or of the method of use of the conditioning system.
The comfort level is a calculated value representative of the indoor temperature reached in the time intervals when the conditioning has been active and depends both on the indoor temperature and on the duration of such conditioning time intervals; therefore, it reflects the propensity of the user to prefer the thermal comfort over the possibility of reducing energy consumption during the data collection period.
In the method training phase the training data comprise, the outdoor environmental variables, the indoor environmental variables or a comfort level, the energy E and at least one characteristic parameter k calculated from the outdoor and indoor environmental variables and from the energy E collected in a different period.
Optionally in the method training phase the training data comprise as an alternative to the indoor variables a comfort level obtained from a pre-processing of the indoor variables.
According to the prior art, the input data for the training of a model are all chosen independently of each other to maximise the information content; instead, in the disclosed method an input for the training is the characteristic parameter k that is related to the training data and thus not independent.
The at least one characteristic parameter k, is associated with a thermal characteristic of the building. Therefore, the method may be defined as a “grey box” because, with respect to the pure training of a mathematical model, done without introducing a prior knowledge of the physical phenomenon, a partial knowledge of the physics is herein introduced.
In phase 2 the energy E to be supplied is estimated for different scenarios of indoor and outdoor environmental variables, the estimate may be communicated to the user and may be used by the user, or by the processor or by a conditioning management system to regulate the indoor environmental variables (i.e. the comfort level) consistently with a target on expenditure or energy E consumption.
Phase 1 requires data relating to a plurality of buildings, at least a few tens, preferably a few hundreds; in contrast, Phase 2 is performed on a target building to be conditioned.
A method that comprises phases 1 and 2 enables extracting information from data relating to a plurality of buildings, and use the data to model the characteristics of a target building to be conditioned; the model provides reliable estimates of the energy E to be supplied without necessarily requiring the configuration of the parameters of the building.
The characteristic parameter k represents, even with simplifications, the thermal insulation coefficient of the building.
According to some embodiments, once the energy variation between a first scenario and a second scenario different from the first by outdoor environmental variables and comfort level is known, it is possible to decouple the effect on energy of the outdoor environmental variables from that of the indoor environmental variables or of the comfort level. For this purpose, the following steps are performed:
Further features of the present invention shall be better understood by the following description of possible embodiments, in accordance with the claims and described by way of a non-limiting examples, making use of the annexed figures.
The energy needed for the conditioning of a building depends on many factors, the main ones of which may be summarized in 4 macro-groups:
The thermal characteristics are summarised in the at least one characteristic parameter “k”.
The method is illustrated with the aid of the references to
The comfort level is a quantity associated with the indoor environmental variables, preferably with the temporal setting rather than with the measured values. According to a preferred embodiment, the comfort level is associated with the indoor temperature setting. Some examples of how to associate the comfort level with the indoor environmental variables shall be provided below.
Phase 1 adopts a supervised training method also called “supervised machine learning”. The computer system that implements this step of the method may be a process dedicated to the building or may be provided on the cloud. For the optimisation it is possible to use a gradient boosting algorithm, or other known algorithms.
In step 1, historical series acquired on at least tens, for example at least 20, or optionally at least hundreds, for example at least 200, or preferably thousands of buildings, are selected as characterisation and training data. Data is preferably collected when the contribution of other inputs may be assumed to be negligible compared to the thermal input of the climate conditioning system; therefore, averaged values are used over selected periods for the heating processes within the colder season for the heating processes and over periods in the warmer season for the cooling processes. The plurality of buildings includes buildings located in geographical areas representative of the implementation area, and preferably comprising different types of conditioning systems, among which are boilers and heat pumps.
According to a possible embodiment in phase 1 and 2, the characteristic parameter k is calculated as a ratio of the energy provided E to the difference between the indoor Tint and outdoor Text temperature of the building for the duration of the first time period during which, the supplied energy E and the indoor Tint and outdoor Text temperatures are averaged
Where P is the instant power supplied and E is the corresponding energy, Tint(t) and Text(t) are the indoor and outdoor temperatures in the time instant the power P is referred to. The indoor Tint and outdoor Text temperatures are an integral of the trend over time divided by the time period. The integral may be conveniently replaced with an average or with a weighted average.
According to a preferred embodiment, for the calculation of the characteristic parameter k in phases 1 and 2, the indoor temperature Tint value is the average value as sampled over the first period.
The thermal energy of the building E is made up of energy for the conditioning system ECOND plus energy from exogenous thermal inputs “EFREE” (persons, household appliances, windows and doors opening):
E=E
COND
+E
FREE
Optionally, the exogenous thermal inputs EFREE may be estimated using standard values proposed in the literature. According to a possible embodiment, the exogenous inputs may be estimated by the processor in a period in which the climate conditioning system is switched off. According to some possible embodiments, the component of the exogenous thermal inputs EFREE is added to the energy used for the conditioning system ECOND to obtain the energy of the building E in the training data, and it is subtracted from the building energy E estimated by the model, to obtain only the energy used for the air conditioning system ECOND.
E
COND
E−E
FREE
If an estimate for the exogenous thermal inputs EFREE is available, embodiments which takes them into account may be combined with the one or more other characteristics described in other embodiments.
For the objectives of the method, it is also possible to neglect the minor thermal inputs EFREE and to approximate the energy of the building E with the energy for the climate conditioning system ECOND:
E≈E
COND
In the description, reference is made to the energy used for the conditioning ECOND without loss of generality with respect to the possible inclusion of the exogenous thermal inputs EFREE. Therefore, the expression “energy used for the conditioning ECOND” may be replaced with the expression thermal energy of the building E.
The energy used for the conditioning system ECOND may be identified both with the energy absorbed by the conditioning system EABS (system input) and with the thermal energy that the system exchanges with the building EHVAC (energy supplied or output of the system). Both approaches are possible. Between the energy absorbed by the conditioning system EARS (system input) and the thermal energy that the system exchanges with the building EHVAC, there is the relationship:
E
HVAC
=E
ABS*eff
Where eff represents the efficiency of the air condition system.
If a measure of the supplied energy EHVAC is used in the calculations, the characteristic parameter k is an estimate of the insulation coefficient of the building; if instead the energy absorbed by the conditioning system EABS is used, the characteristic parameter “keff” corresponds to the insulation coefficient multiplied by the efficiency “eff” of the conditioning system. With “keff” specific reference is made to the characteristic parameter k multiplied by the efficiency:
For simplicity, in the following, characteristic parameter k means the result of the formula:
so the same term k for the characteristic parameter is used to represent both the implementation methods in which the required energy for the conditioning ECOND is identified with the absorbed energy EABS and those in which it is identified with the supplied energy EHVAC. The choice of using the input energy EARS or the output energy EHVAC may be combined with one or more other characteristics described in optional embodiments.
The absorbed energy EABS may be measured; the output energy EHVAC may be calculated starting from the absorbed energy EARS and from the efficiency eff. Alternatively, the output energy EHVAC may also be measured indirectly by detecting the temperature difference on the exchanger and integrating it over time utilizing known methods.
The efficiency eff of the conditioning may be considered as constant and known for heating systems such as gas boilers or electrical systems, while for heat pump systems, it is advisable to calculate the efficiency as a continuous or piecewise variable according to the temperature difference between hot source and cold source. These temperatures may be approximated to the indoor and outdoor temperature which are known. In cases where the efficiency variations are not-negligible, it is preferable to consider the energy supplied EHVAC.
It should be noted that the following relation,
P
COND(t)=k·[Tint(t)−Text(t)]
is strictly valid only in stationary conditions in which there are no thermal inertia effects.
It has been found that it is very advantageous to use quantities averaged over a sufficiently long period, so that the averages reflects more closely the stationary values rather than the transitory values, in this case the effect of the thermal capacity may be neglected and it has been seen that the other characteristics of the thermal system, for the intended objects, may be represented by the characteristic parameter k.
Suitable time intervals may be, as an example, one or more days or preferably one or more weeks, or even one or more months. To obtain better accuracy, it is preferable to choose a time period Δt in which the air conditioning system has worked with a certain continuity so that the influence of the transitories is not predominant in the calculation of the average values. As an example, it has been seen that with values averaged over a month, results in line with the objectives are obtained. Therefore, in the following, each temperature value is to be understood as a value averaged in the period to which the energy for the air conditioning refers.
As stated above, the comfort level is associated with the indoor environmental variables, preferably with the temporal temperature settings rather than with the measured Tint values. According to a preferred embodiment, the comfort level is associated with the indoor temperature settings. The association may take place through tables, rules or a calculation, and must follow the same rule for the plurality of buildings and for the target building. Increasing comfort levels are associated, in the case of heating, with increasing indoor temperatures, in the case of cooling, decreasing indoor temperatures.
By way of example, a calculation may be a weighted average of the indoor temperature set over a time period. By way of example, the time periods may be one month.
In the weighted average, preferably within the time period, a greater weight is assigned to the temperature set or detected in the time intervals in which the conditioning system is active within the period. According to some embodiments a zero weight may be assigned to the temperature set in the time intervals in which the conditioning system is not active, therefore according to some embodiments the comfort level is a weighted average of the indoor temperature Tint set in the conditioning time intervals. Alternatively, a lower limit and an upper limit may be imposed on the indoor temperature values used to obtain the comfort level; the values beyond this limit are discarded or set equal to the limit. A lower limit may be 16° C., an upper limit may be for example 26° C.
Optionally, the comfort level is associated with a vector of indoor environmental variables comprising, in addition to the indoor temperature, also humidity or ventilation, this may be useful for a cooling system that also regulates the humidity. Without loss of generality, the comfort level may be an average of the measured or set indoor temperature Tint.
According to other possible variants, the outdoor environmental variables, in addition to the outdoor temperature Text may comprise one or more of the following variables:
Advantageously, this data may be subject to a preliminary pre-processing step. It is much preferable that the data used for the estimation in phase 2, even if collected in a second period, comprise the same variables as those used for the training.
Once the model has been obtained through the training, it is appropriate to verify it according to the prior art, using part of the data collected over the plurality of buildings that has not been used for the identification as verification data; the partition between identification data and verification data being prior art.
The training data may also comprise a parameter that indicates the setting of the conditioning system, e.g. the seasonal mode.
The characteristic parameter k is not necessarily a single value for each building, if several temperature sensors inside a building are present it is possible to calculate a characteristic parameter k associated with each indoor temperature sensor. This may be done in both phase 1 and phase 2 in the adaptation step. Therefore, the simulations of the model may be replicated possibly using more values for the characteristic parameter k, each one is associated with an energy contribution and the total energy being the sum of the contributions. This may be useful if the same conditioning system operates in spaces of a building where there are different temperatures, perhaps due to indoor spaces with different dispersion properties. The choice of using a greater number of characteristic parameters k may be combined with the one or more other characteristics described in optional embodiments.
Preferably phases 1 and 2 comprise the same number of parameters k.
In the description, each reference to a characteristic parameter k may be replaced with several values of k, calculated for different measurements of the indoor temperature Tint.
The method described enables to estimate the energy required for the conditioning ECOND as a function of outdoor temperature values Text and the comfort level; by way of a non-limiting example the outdoor temperature Text may be taken as the value provided by weather forecasts and the comfort level associated with the average indoor temperature Tint set.
The estimated climate conditioning energy ECOND may be communicated to the user providing an estimate of the expected consumptions at the time when a profile of temperatures is set.
The processor may also compare the actual climate conditioning energy with that which would have been obtained, with the same outdoor environmental variables (e.g. outdoor temperature) with different values for the comfort level.
According to a preferred implementation, the processor compares the climate conditioning energy ECOND between two scenarios with different values both of the outdoor environmental variables and the comfort level and is able to decouple the energy variation caused by the various outdoor environmental variables from that caused by the different comfort levels. i.e., the processor may calculate the energy variation caused only by the different outdoor temperature (Text) and that caused only by the different comfort level. In particular, the following climate conditioning energy values ECOND are defined:
The processor may compare pairs of energy values between which only one among the outdoor environmental variables and comfort level varies, thus obtaining the influence on the energy attributable to each variable.
According to a possible embodiment, the processor is configured to estimate the energy required with a weather scenario chosen from those of a past period or chosen from those provided for a future period and with current comfort level.
According to a further possible embodiment, the processor is configured to identify a comfort level setting which respects a maximum consumption of air conditioning energy for a given scenario of outdoor environmental variables.
The processor may provide the user with an efficiency score of the building which is represented by the characteristic parameter k. The processor may repeat the calculation of the characteristic parameter k over time, any differences may be attributed to changes in the efficiency of the conditioning system, possibly the processor may monitor the efficiency of the conditioning system and signal the need for a maintenance intervention when a new value of the characteristic parameter indicates a reduced efficiency of the building.
According to a further embodiment, it is possible to detect efficiency losses of the conditioning system by comparing the conditioning energy ECOND actually used with an estimated one, obtained in the same scenario of outdoor environmental variables and comfort level. A discontinuous increase in the estimation error is an important indication of a loss of efficiency of the system and therefore of a possible failure.
According to a possible embodiment, the processor has access to the information relating to other buildings, and provides the user with a comparison between his/her energy consumption and that of buildings comparable or similar by characteristic parameter k or by value of the outdoor environmental variables.
If the processor in addition has also access to the geographical area in which the other aforementioned buildings are located, the processor may provide comparisons with nearby users that therefore have similar weather conditions.
The processor that implements the method may have as input means: at least sensors for receiving indoor and outdoor environmental variables and energy measurements directly detected and as output means at least those for communicating the estimated energy for the conditioning or an ideal setting profile of indoor variables.
The input or output means may provide interfaces with other devices such as for example an electronic thermostat or also the conditioning system itself for communicating set or detected temperature values or receiving target consumption values, or also user interfaces for the setting of the indoor environmental variables and/or of the maximum consumption value; the interfaces with the user may be dedicated or implemented with an application on a personal device, or can be interfaces with the cloud for receiving weather forecasts of the outdoor environmental variables, or receiving and sending data to other buildings to make comparisons. The output means may be email messages sent to the user by the cloud.
According to further possible variants, the processor may additionally or alternatively perform the following functions:
Number | Date | Country | Kind |
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102022000011294 | May 2022 | IT | national |