This application is a U.S. national stage application of International Application No. PCT/JP2012/065431 filed on Jun. 15, 2012, the disclosure of which is incorporated herein by reference.
The present disclosure relates to an air-conditioning management device, air-conditioning management method, and program.
From the viewpoint of energy saving, it is a known practice to set a target for the reduction amount or reduction rate in the annual or monthly power usage and control the operation of an air conditioner so as to achieve the target.
For example, Patent Literature 1 describes creation of an air conditioner control schedule that makes it possible to achieve the annual target of the power usage in consideration of weather forecast.
Patent Literature 1: Unexamined Japanese Patent Application Kokai Publication No. 2004-20019.
The Patent Literature 1 creates an air conditioner control schedule in consideration of weather forecast. However, no specific approach to create a control schedule from weather forecast is apparent and it is difficult to create a proper target-achievable schedule.
The present disclosure is made with the view of the above situation and an objective of the disclosure is to provide an air-conditioning management device, air-conditioning management method, and program making it possible to create a proper air conditioner operation schedule from weather forecast.
In order to achieve the above objective, the air-conditioning management device of the present disclosure comprises:
target setting means setting a target for the energy used by an air conditioner for a given period;
standard schedule creation means creating a standard operation schedule of the air conditioner that makes it possible to achieve the target set by the target setting means;
weather forecast data acquisition means acquiring multiple weather forecast data for different forecast periods; and
schedule update means updating the standard schedule using the acquired multiple weather forecast data in the order of forecast period from the longest.
The present disclosure creates an air conditioner operation schedule from multiple pieces of weather forecast for different forecast periods, making it possible to create a proper schedule in which the weather forecast is reflected.
An embodiments of the present disclosure will be described in detail hereafter with reference to the drawings. In the figures, the same or corresponding components are referred to by the same reference numbers.
An air-conditioning management device 10 according to an embodiment of the present disclosure will be described. The air-conditioning management device 10 is a system for managing the operation of an air conditioner 20 installed in a building. The air-conditioning management device 10 is connected to the air conditioner 20 as a management target and a power measuring sensor 30 as shown in
The air-conditioning management device 10 is a computer such as an air-conditioning controller, and comprises a communication interface, a RAM (random access memory), a ROM (read only memory), a CPU (central processing unit), a hard disc drive, a liquid crystal display, operation buttons, and the like. The air-conditioning management device 10 functionally comprises, as shown in
The information storage 11 stores various data, tables, and the like that are necessary for the air-conditioning management device 10 to create a schedule of the air conditioner 20. More specifically, the information storage 11 stores target data 111, average temperature data 112, actual performance data 113, an electric energy calculation reference table 114, daily schedule data 115, and current day schedule data 116.
The target data 111 are data presenting the annual target power usage of the air conditioner 20.
The average temperature data 112 are data presenting the average highest temperature and lowest temperature of each calendar day in multiple years in the past (for example, the past 30 years) as shown in
Returning to
The electric energy calculation reference table 114 is a table that is referred to for obtaining the power usage of the air conditioner 20.
Here,
On the other hand,
Returning to
Returning to
The weather forecast acquirer 13 acquires latest weather forecast data from the weather forecast system 50 via the network N1 and stores the acquired weather forecast data in the weather forecast data storage 14. Here, there are four kinds of weather forecast data depending on the forecast time span (forecast period): weather forecast data (three months) 141, weather forecast data (one month) 142, weather forecast data (one week) 143, and weather forecast data (current day) 144. The weather forecast acquirer 13 acquires the weather forecast data 141 to 144 at different times.
The weather forecast data (three months) 141 are data presenting the weather forecast for each month of the next three months. For example, the weather forecast data (three months) 141 include data presenting the results of comparison between the monthly forecast temperatures for April through June and the temperatures of the same period of a normal year, “low,” “average,” and “high,” in rate (%) as shown in
The weather forecast data (one month) 142 are data presenting the weather forecast for the first, second, and third/fourth weeks of the next one month. For example, the weather forecast data (one month) 142 include data presenting the results of comparison between the forecast temperatures for the first, second, and third/fourth weeks of April and the temperatures of the same period of a normal year, “low,” “average,” and “high,” in rate (%) as shown in
The weather forecast data (one week) 143 are data presenting the weather forecast for each day of the next week. For example, the weather forecast data (one week) 143 include data presenting reliability and forecast highest and lowest temperatures of the 1st through 7th of April as shown in
The weather forecast data (current day) 144 are data presenting the weather forecast for the current day. For example, the weather forecast data (current day) 144 include data presenting the forecast temperatures at every three hours on the 1st of April as shown in
Returning to
The schedule creator 16 creates an optimum schedule for operating the air conditioner 20 with the annual power usage presented by the target data 111 based on various data and tables stored in the information storage 11 and the weather forecast data stored in the weather forecast data storage 14. The schedule creator 16 comprises a standard schedule creator 161, a seasonal schedule updater 162, a monthly schedule updater 163, a weekly schedule updater 164, and a current day schedule updater 165.
The standard schedule creator 161 creates an annual target-achievable daily operation schedule (standard schedule) of the air conditioner 20 that serves as the standard (base) for the update in the subsequent procedures. Incidentally, the standard schedule is the schedule created without making reference to the weather forecast data.
The seasonal schedule updater 162 updates the schedule for the next three months based on the weather forecast data (three months) 141.
The monthly schedule updater 163 updates the schedule for the next one month based on the weather forecast data (one month) 142.
The weekly schedule updater 164 updates the schedule for the next one week based on the weather forecast data (one week) 143.
The current day schedule updater 165 updates the schedule for the current day based on the weather forecast data (current day) 144.
Returning to
Operation of the air-conditioning management device 10 will be described hereafter.
(Standard Schedule Creation Procedure)
First, the operation in the standard schedule creation procedure will be described. For example, on the first day of a fiscal year (for example, April 1st), a user who is the building administrator operates a not-shown operator of the air-conditioning management device 10 to enter this fiscal year's annual target of the total power usage of the air conditioner 20. The target setter 12 of the air-conditioning management device 10 creates target data 111 from the annual target entered by the user and stores the target data 111 in the information storage 11. As the target data 111 are stored in the information storage 11, the standard schedule creator 161 executes the standard schedule creation procedure to create a standard schedule for achieving the annual target as shown in
First, the standard schedule creator 161 acquires the annual target entered by the user (Step S11). For example, if the user enters an annual target “1500 kwh,” the standard schedule creator 161 can acquire this value as the annual target. Alternatively, the standard schedule creator 161 can set the value entered by the user from which a given margin (for example, 10%) is subtracted as the annual target. Alternatively, if the user enters “the previous year −10%,” the standard schedule creator 161 can acquire the actual performance value of the annual power usage in the previous year from which 10% is subtracted as the annual target.
Subsequently, the standard schedule creator 161 executes the daily power usage calculation procedure to obtain the daily power usage that makes it possible to achieve the acquired annual target (Step S12).
The daily power usage calculation procedure will be described in detail with reference to
First, the standard schedule creator 161 specifies operation conditions of the air conditioner 20 for the highest comfort (Step S121). In this embodiment, the operation conditions of the air conditioner 20 for the highest comfort comprise a set temperature of 22° C. when the air conditioner 20 operates in the heating mode and a set temperature of 24° C. when the air conditioner 20 operates in the air-conditioning mode.
Subsequently, the standard schedule creator 161 makes reference to the average temperature data 112 and electric energy calculation reference table 114 and obtains the predicted power usage of each day of the year when the air conditioner 20 operates under the specified operation conditions (set temperatures) (Step S122), Here, the predicted power usage is obtained on the assumption that the highest temperature and lowest temperature of each day of the year are equal to the highest temperature and lowest temperature presented by the average temperature data 112.
Subsequently, the standard schedule creator 161 totals the obtained, predicted power usage of each day to obtain the predicted annual total power usage when the air conditioner 20 operates under the specified operation conditions (Step S123).
Subsequently, the standard schedule creator 161 determines whether the obtained, predicted annual total power usage is equal to or lower than the annual target acquired in the Step S11 (Step S124).
If the predicted total power usage is not equal to or lower than the annual target (Step S124: No), the standard schedule creator 161 respecifies (changes) the operation conditions to lower the predicted power usage (Step S125). For example, the standard schedule creator 161 lowers the heating mode set temperature specified earlier by 1° C. or raises the air-conditioning mode set temperature by 1° C. for the days meeting given conditions.
Incidentally, in doing so, the standard schedule creator 161 makes reference to the tables giving a priority level to each combination of an outdoor temperature and a set temperature of the air conditioner 20 as shown in
Returning to
If the predicted total power usage is equal to or lower than the annual target (Step S124; Yes), a target-achievable daily schedule is created and the daily power usage calculation procedure ends.
Returning to
As described above, an operation schedule of the air conditioner 20 that makes it possible to achieve the set annual target is created through the standard schedule creation procedure. Incidentally, the schedule created here is the schedule created based on the past average temperature data 112 and the like and the weather forecast data for this fiscal year is not reflected yet.
(Schedule Update Procedure)
Subsequently, the schedule update procedure to update the schedule of the air conditioner 20 based on weather forecast data will be described with reference to the flowchart of
The schedule creator 16 executes the schedule update procedure each time the weather forecast acquirer 13 acquires latest weather forecast data from the weather forecast system 50 and updates data in the weather forecast data storage 14.
First, the seasonal schedule updater 162 of the schedule creator 16 executes the schedule update procedure (next three months) to update the schedule of the air conditioner 20 for the next three months based on the weather forecast data (three months) 141 stored in the weather forecast data storage 14 (Step S21).
Here, the schedule update procedure (next three months) will be described with reference to the flowchart of
First, the seasonal schedule updater 162 makes reference to the daily schedule data 115 and obtains the available electric energy for the next three months (Step S211).
Subsequently, the seasonal schedule updater 162 compares the total actual performance value of the power usage with the total available electric energy from the first month (April) of the fiscal year to the previous month and if the total actual performance value exceeds the total available electric energy, subtracts the excess from the total value obtained in the Step S211. On the other hand, if the total available electric energy exceeds the total actual performance value, the seasonal schedule updater 162 adds the excess to the total value obtained in the Step S211 (Step S212). The value obtained in the Step S212 is the target value of the power usage of the air conditioner 20 for the next three months.
Here, the processing of the Steps S211 and S212 will be described with reference to
In the case shown in the figure, assuming that the current month is June, the total available electric energy for the next three months (namely June through August) is 520 kwh. The total available electric energy for April through May is 30 kwh. The total actual performance value is 50 kwh. Therefore, in this case, the total actual performance value exceeds the total available electric energy by 20 kwh. With the excess of 20 kwh being subtracted, the reminder of 500 kwh is the target value of the power usage of the air conditioner 20 for the next three months.
Returning to
For example, if the weather forecast data (three months) 141 are the data as shown in
More specifically, a table associating the rates of the temperature forecast “low,” “average,” and “high” in the weather forecast data (three months) 141 with correction values as shown in
Incidentally, the correction values given in the temperature correction table shown in
Correction value=difference+variation of difference/2
in which the “difference” presents the temperature difference in comparison with a normal year. The “difference” is calculated by subtracting the numeric value of the weather forecast “low” from the numeric value of the “high” and multiplying the remainder by 0.025. However, the “difference” does not fall outside a range from −0.2 to +0.2.
Furthermore, the “variation of difference” in the above formula presents to what extent the value of the “difference” varies. The “variation of difference” is calculated by the formula below:
Variation of difference=−(numeric value of forecast “average”+numeric value of “high”*2)/100 when the “difference” is negative;
Variation of difference=0 when the “difference” is 0; and
Variation of difference=+(numeric value of forecast “average”+numeric value of “low”*2)/100 when the “difference” is positive.
Returning to
Subsequently, the seasonal schedule updater 162 reflects the daily available electric energy obtained in the Step S214 in the daily schedule data 115 (Step S215). In other words, as a result of this processing, the schedule for the next three months in the annual schedule is updated to the schedule in which the weather forecast data (three months) 141 are reflected. Then, the schedule update procedure (next three months) ends.
Returning to
Here, the schedule update procedure (next one month) will be described with reference to the flowchart of
Subsequently, the monthly schedule updater 163 corrects the average temperatures of each day in the next one month defined by the average temperature data 112 based on the weather forecast data (one month) 142 (Step S222). As shown in
Subsequently, the monthly schedule updater 163 obtains the daily available electric energy that makes it possible to achieve the target of the power usage for the next one month obtained in the Step S221 from the corrected average temperature data 112 (Step S223). Incidentally, this processing can be executed by the same scheme as in the daily power consumption calculation procedure shown in
Subsequently, the monthly schedule updater 163 reflects the daily available electric energy obtained in the Step S223 in the daily schedule data 115 (Step S224). In other words, as a result of this processing, the schedule for the next one month in the annual schedule is updated to the schedule in which the weather forecast data (one month) 142 are reflected. Then, the schedule update procedure (next one month) ends.
Returning to
Here, the schedule update procedure (next one week) will be described with reference to the flowchart of
Subsequently, the weekly schedule updater 164 corrects the average temperatures of each day in the next one week defined by the average temperature data 112 based on the weather forecast data (one week) 143 (Step S232). As shown in
Subsequently, the weekly schedule updater 164 obtains the daily available electric energy that makes it possible to achieve the target of the power usage for the next one week obtained in the Step S231 from the corrected average temperature data 112 (Step S233). Incidentally, this processing can be executed by the same scheme as in the daily power consumption calculation procedure shown in
Subsequently, the weekly schedule updater 164 reflects the daily available electric energy obtained in the Step S233 in the daily schedule data 115 (Step S234). In other words, as a result of this processing, the schedule for the next one week in the annual schedule is updated to the schedule in which the weather forecast data (one week) 143 are reflected. Then, the schedule update procedure (next one week) ends.
Returning to
Here, the schedule update procedure (current day) will be described with reference to the flowchart of
Subsequently, the current day schedule updater 165 distributes the available electric energy acquired in the Step S241 among the time windows based on the forecast temperature change through the day presented by the weather forecast data (current day) 144 (Step S242). For example, the current day schedule updater 165 weights the time windows according to the forecast temperatures and distributes the available electric energy according to the weighted ratio.
Subsequently, the current day schedule updater 165 reflects the available electric energy to each time window obtained in the Step S242 in the current day schedule data 116 (Step S243). In other words, as a result of this processing, the current day schedule in the annual schedule is updated to the schedule in which the weather forecast data (current day) 144 are reflected. Then, the schedule update procedure (current day) ends.
Returning to
As described in detail above, the air-conditioning management device 10 according to the embodiment of the present disclosure automatically creates an operation schedule of the air conditioner 20 that makes it possible to achieve the energy saving target using multiple pieces of weather forecast for different forecast periods. Thus, an operation schedule of the air conditioner 20 can properly be created from the weather forecast. Furthermore, the air-conditioning management device 10 according to the embodiment of the present disclosure makes it possible to control the air conditioner 20 properly based on the created schedule.
Furthermore, in creating an operation schedule, the air-conditioning management device 10 according to the embodiment of the present disclosure gradually refines the conditions from the conditions for the highest comfort to the user and eventually creates a target-achievable schedule. Thus, it is possible to create an operation schedule of the air conditioner 20 in consideration of the comfort to the user to the utmost extent. Furthermore, the air-conditioning management device 10 according to the embodiment of the present disclosure creates an operation schedule of the air conditioner 20 in consideration of long-term weather forecast. Thus, it is possible to create a schedule that does not diminish the comfort to the user in a long time span as much as possible.
Furthermore, the air-conditioning management device 10 according to the embodiment of the present disclosure creates a schedule for the next three months in consideration of the difference between the actual total power usage to the present and the target (available electric energy) in updating the schedule using the weather forecast data (three months) 141 for the longest forecast period. Thus, it is possible to create a schedule in which the actual usage is reflected.
Furthermore, the air-conditioning management device 10 according to the embodiment of the present disclosure starts the schedule update procedure when any of the weather forecast data 141 to 144 are acquired. Thus, it is possible to create a schedule in which the latest weather forecast data are reflected on a real time basis.
Incidentally, the present disclosure is not confined by the above-described embodiment and drawings. Needless to say, the embodiment and drawings can be modified to the extent that the gist of the present disclosure is not changed.
For example, in the above-described embodiment, a schedule is created using four kinds of weather forecast data for forecast periods of three months, one month, one week, and the current day. The present disclosure can be realized using weather forecast data for other forecast periods.
Furthermore, in the above-described embodiment, a schedule for one year is created. The present disclosure is applicable to creation of an air conditioner operation schedule for six months, for two years or the like.
Furthermore, in the above-described embodiment, a target for the electric energy used by the air conditioner is set and a schedule that makes it possible to achieve the target is created. However, it is possible to set a target for another kind of energy consumed by the air conditioner and create a schedule of the energy.
Furthermore, for example, an existing personal computer, information terminal device, or the like can be made to function as the air-conditioning management device 10 according to the present disclosure by applying the operation programs defining the operation of the air-conditioning management device 10 according to the present disclosure to the existing personal computer or the like.
The above programs can be distributed by any method and, for example, stored and distributed on a computer-readable non-transitory recording medium such as a CD-ROM (compact disk read only memory), DVD (digital versatile disk), MO (magneto optical disk), and memory card, or distributed via a communication network such as the Internet.
Various embodiments and modifications are available to the present disclosure without departing from the broad sense of spirit and scope of the present disclosure. The above-described embodiment is given for explaining the present disclosure and does not confine the scope of the present disclosure. In other words, the scope of the present disclosure is set forth by the scope of claims, not by the embodiment. Various modifications made within the scope of claims and scope of significance of the disclosure equivalent thereto are considered to fall under the scope of the present disclosure.
The present disclosure is preferably applicable to an air-conditioning controller managing an air conditioner installed in a building or the like.
10 Air-conditioning management device
11 Information storage
111 Target data
112 Average temperature data
113 Actual performance data
114 Electric energy calculation reference table
115 Daily schedule data
116 Current day schedule data
12 Target setter
13 Weather forecast acquirer
14 Weather forecast data storage
141 Weather forecast data (three months)
142 Weather forecast data (one month)
143 Weather forecast data (one week)
144 Weather forecast data (current day)
15 Actual performance acquirer
16 Schedule creator
161 Standard schedule creator
162 Seasonal schedule updater
163 Monthly schedule updater
164 Weekly schedule updater
165 Current day schedule updater
17 Air-conditioning controller
20 Air conditioner
30 Power measuring sensor
40 Power line
N1 Network
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/JP2012/065431 | 6/15/2012 | WO | 00 | 11/10/2014 |
Publishing Document | Publishing Date | Country | Kind |
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WO2013/186932 | 12/19/2013 | WO | A |
Number | Name | Date | Kind |
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20120083927 | Nakamura et al. | Apr 2012 | A1 |
Number | Date | Country |
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2003-050037 | Feb 2003 | JP |
2004-020019 | Jan 2004 | JP |
2004-116820 | Apr 2004 | JP |
2010-065960 | Mar 2010 | JP |
2012-080679 | Apr 2012 | JP |
179328 | Apr 2012 | SG |
2007128783 | Nov 2007 | WO |
Entry |
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Office Action dated Jan. 22, 2017 issued in corresponding CN patent application No. 201280073958.2 (and English translation). |
International Search Report of the International Searching Authority dated Sep. 18, 2012 for the corresponding international application No. PCT/JP2012/065431 (and English translation). |
Japanese Office Action dated Oct. 6, 2015 in the corresponding Japanese application No. 2014-521094. (Partial translation attached). |
Office Action dated Aug. 17, 2017 issued in corresponding GB patent application No. 1420269.1. |
Number | Date | Country | |
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20150142179 A1 | May 2015 | US |