This application claims priority under 35 U. S. C § 119 to Korean Patent Application No. 10-2022-0009560 filed in the Korean Intellectual Property Office on Jan. 21, 2022, the entire content of which is hereby incorporated by reference.
The present disclosure relates to a method and an apparatus for real-time analysis of a district heating network based on time sequence data of heat demand. This invention was supported by the Energy Efficiency & Resources Core Technology Program of the Korea Institute of Energy Technology Evaluation and Planning (KETEP) and was funded by the Ministry of Trade, Industry & Energy, Republic of Korea (No. 20192010106990).
The content described in this section merely provides background information for the present disclosure and does not constitute prior art.
The district heating network is a heat supplying system that utilizes pressurized hot water as a heat transfer medium to supply thermal energy generated by a central heat source to consumers in urban scale regions. The analysis system of the conventional district heating network provides only information (temperature, flow rate, pressure) measured at the heat source of the district heating network and at the consumer. That is, the conventional district heating network analysis system provides information only on the starting point and very end point of the pipes. Therefore, a user of such analysis system (e.g. operator of the district heating network) cannot know the state at various points in the middle of the district heating pipe network. The user of the conventional analysis system may use information measured at the consumers to check only whether heat is being supplied at the consumer but cannot check the fluid flow and heat flow state inside the pipes that traverse the heat source and consumer. As a result, it is difficult for the operator of the district heating network to provide optimized operation for the actual state of the district heating network.
Properties such as pressure and temperature of the district heating pipe network are necessary elements for evaluating heat loss and lifespan of the pipes. Despite this, the conventional district heating pipe network control system is not able to provide information on such properties. Thus it is difficult for the operator of the district heating pipe network to evaluate the state of the pipes or manage based on results of such evaluations.
Accordingly, the present disclosure has been made to improve the above-mentioned problems. The real-time district heating network analysis method and analysis device according to an embodiment of the present disclosure can provide the physical state of all sections of the district heating network pipes in time sequence data.
In addition, the district heating network real-time analysis method and analysis apparatus according to an embodiment of the present disclosure may provide information on the physical state of the district heating network in real-time.
The problems to be solved by the proposed invention are not limited to the above-mentioned problems, and other problems not mentioned will be clearly understood by a person of ordinary skill in the art from the following description.
According to an embodiment of the proposed disclosure, a method for analyzing a district heating network including pipes and fluids inside the pipes includes a process of a processor receiving pipe data representing a structure of the pipes; a process of the processor receiving input data on at least one of the physical state of district heating network and the flow of fluids; a calculation process in which the processor calculates data for at least one of the physical state of the district heating network and the flow of fluids using the pipe data and the input data.
According to an embodiment of the present disclosure, an apparatus for analyzing a district heating network including pipes and fluids inside the pipes includes a processor that receives the pipe data representing the structure of the pipes, input data on at least one of the physical state of the district heating network and the flow of the fluids, and calculates calculation data on at least one of the physical state of the district heating network and the flow of fluids using the pipe data and the input data.
As described above, the district heating network analysis method and analysis apparatus according to an embodiment of the present disclosure have the effect of providing real-time information on the physical state of the district heating network in real-time.
In addition, a district heating network analysis method and analysis apparatus according to an embodiment of the present disclosure may provide information on the physical state of the district heating network in real-time.
Hereinafter, some embodiments of the present disclosure are described in detail through exemplary drawings. In the following description, like reference numerals designate like elements, although the elements are shown in different drawings. Furthermore, in the following description of various exemplary embodiments of the present disclosure, a detailed description of known functions and configurations incorporated therein has been omitted for clarity and for brevity.
Additionally, various terms such as first, second, A, B, (a), (b), etc., are used solely to differentiate one component from the other but not to imply or suggest the substances, order, or sequence of the components. Throughout this specification, when a part ‘includes’ or ‘comprises’ a component, the part is meant to further include other components, not to exclude other components unless specifically stated to the contrary. The terms such as ‘unit’, ‘module’, and the like refer to one or more units for processing at least one function or operation, which may be implemented by hardware, software, or a combination thereof.
Referring to
As shown in
In step S210, the processor 330 receives pipe data indicating the structure of the pipe. The pipe data may include data on at least one of a cross-sectional area, a length, or a heat loss coefficient of at least one section of the pipe. Here, the cross-sectional area refers to the cross-sectional area of the hollow inside the pipe cut in a direction perpendicular to the flow path of the fluid. When the pipe is formed in a cylindrical shape, the data on the cross-sectional area may correspond to, for example, the inner diameter of at least some sections of the pipe.
Referring to
In the pipe data receiving step S210 according to an embodiment of the present disclosure, a pipe data acquisition unit 310 obtains node (n1, n2, n3, n4) data on the nodes n1, n2, n3, and n4 of the pipe (S211). The nodes n1, n2, n3, and n4 may include points at which the cross-sectional area of the pipe changes. When at least one valve 12a is installed in the pipe, the nodes n1, n2, n3 and n4 may further include a valve (12a) installation point. In addition, a point at which separated flow areas are merged along the flow direction of the fluid or flow areas are separated along the flow direction of the fluid may be further included. A plurality of unit pipes c1, c2, c3, c4, and c5 are defined by several nodes n1, n2, n3, and n4. For example, the pipe may be divided into a plurality of sections based on each of the nodes n1, n2, n3, and n4, and each respective section may be defined as a unit pipes c1, c2, c3, c4, and c5.
Subsequently, the pipe data acquisition unit 310 obtains unit pipe (c1, c2, c3, c4, c5) data on cross-sectional area, length, and heat loss coefficient of at least one of the unit pipes c1, c2, c3, c4 and c5. The unit pipe (c1, c2, c3, c4, c5) data may further include data on the interconnection relationships of the plurality of unit pipes c1, c2, c3, c4, and c5. The cross-sectional area, length and heat loss coefficient of the unit pipes c1, c2, c3, c4, and c5 may not change for a long period of time. Therefore, some of the unit pipe (c1, c2, c3, c4, c5) data may be obtained by the user simply inputting the cross-sectional areas and the like of the unit pipes c1, c2, c3, c4 and c5 into the pipe data acquisition unit 310.
The pipe data acquisition unit 310 may obtain confluence point data about a confluence point at which a plurality of flow areas separated from each other are merged along the flow direction of the fluid (S213). In the confluence point data acquisition step S213 according to an embodiment of the present disclosure, the confluence point data may include data on which of at least one node n1, n2, n3, and n4 is a confluence point. In order to obtain these data, the pipe data acquisition unit 310 obtains data on the starting point and the ending point of the plurality of unit pipes c1, c2, c3, c4, c5. Here, the starting point means a point at which the fluid flows in, and the ending point means a point at which the fluid flows out. Because the unit pipes c1, c2, c3, c4, and c5 are defined with at least one node n1, n2, n3, and n4 as the boundary, the starting point and ending point of any unit pipe c1, c2, c3, c4, and c5 are all nodes n1, n2, n3, n4. Data on the starting point of the unit pipes c1, c2, c3, c4, and c5 may be data indicating which node (n1, n2, n3, n4) is the starting point of each respective unit pipe c1, c2, c3, c4, and c5 for all unit pipes c1, c2, c3, c4, and c5. Likewise, data on the ending point of the unit pipes c1, c2, c3, c4, and c5 may be data indicating which node (n1, n2, n3, n4) is the ending point of each respective unit pipe c1, c2, c3, c4, and c5 for all unit pipes c1, c2, c3, c4, and c5.
The pipe data obtaining unit 310 may use data on the flow velocity to obtain data on the starting point and the ending point. If the fluid flows from the first node n1, n2, n3, and n4 to the second node n1, n2, n3, and n4 in the unit pipe c1, c2, c3, c4, c5 whose boundary is defined by the first node n1, n2, n3, and n4 and the second node n1, n2, n3, and n4, the first node n1, n2, n3, and n4 is the starting point of that unit pipe c1, c2, c3, c4, c5 and the second node n1, n2, n3, and n4 may be determined as the ending point. The pipe data acquisition unit 310 may determine which of the at least one node n1, n2, n3, n4 is the confluence point and which is the divergence point based on the data on the starting point and the ending point. For example, the pipe data acquisition unit 310, for any node n1, n2, n3, and n4, may use a method that determines that node n1, n2, n3, n4 as a divergence point when that node is the starting point of two of the unit pipes c1, c2, c3, c4, c5, and determines that node n1, n2, n3, n4 as a confluence point when that node is the ending point of two of the unit pipes c1, c2, c3, c4, c5. However, the process of obtaining confluence point and divergence point data is not limited to the present disclosure.
In step S214, the processor 330 receives node (n1, n2, n3, n4) data, unit pipe (c1, c2, c3, c4, and c5) data, and confluence point and divergence point data. The processor 330 may generate calculation data for the physical properties and flow of the fluid of the district heating network 10 through the following calculation process using the pipe data and the input data. Here, the input data is data on at least one of the flow of the fluid or the physical state of the district heating network 10. In steps S221 and S222, the processor 330 receives input data.
Referring back to
In step S221, the processor 330 receives real-time data from the real-time data transmitting device 15 installed in the district heating network 10 with a preset time as the period. Real-time data is data that reflects in real-time the fluid flow and/or physical state of the heating device 11 and consumer 13 which are the starting point and ending point of the district heating network 10. Real-time data may include, for example, real-time pressure data and real-time flow rate data. Here, the real-time pressure data refers to data on the pressure of the fluid at at least one point of each pipe. Real-time flow rate data refers to data on the flow rate of the fluid at at least one point in a pipe.
In the process of receiving real-time data, the processor 330 may receive the latest data stored in the database of heating facilities configured to heat the fluid in the district heating network 10. The data received in this way may be about the state of the high-temperature and high-pressure fluid heated by the heating facility. The processor 330 may receive the latest data stored in the consumer's heating facility database. The data received in this way may be about the temperature and flow rate of the fluid in the supply pipe 12 and the return pipe 14 of the consumer. However, the receiving process of the present disclosure is not limited to this embodiment. For example, in the process of receiving data, the processor 330 may directly receive the data from the temperature sensor 15b and pressure sensor 15a installed on the heating facility side and the data measured by the heat measurement device 15c installed in the consumer and the like. In addition, real-time data may include data on the opened/closed state of valves 12a installed in pipes. Using the data on the opened/closed state of the valve 12a, the processor can calculate data tracking the real-time opened/closed state of the valve 12a.
In addition, the data calculated by the processor 330 of the present disclosure using the real-time data corresponds to the state of the district heating network 10 at the time of generating the real-time data. Thus, the analysis method according to an embodiment of the present disclosure has an effect of analyzing in real-time the state of the district heating network 10, which frequently changes due to heat consumed, ambient environment, or temperature and fluid supply pressure of the heating facility. In step S240, which will be described below, the storage device 340 stores calculation data generated by the processor 330 over time in a time-sequence manner.
In step S222, the processor 330 receives at least a portion of the analysis data. Analysis data refers to data stored by the storage device 340 in step S240 of the present disclosure. Analysis data may include information calculated using data input by a processor 330 in the present disclosure. Therefore, the analysis method of the present disclosure can provide not only actual measured data, but also more accurate and diverse information on the district heating network 10 by using the data previously calculated by the processor 330.
The fluid flow and/or physical state of the district heating network 10 may change over time. For example, at the starting point of a unit pipe c1, c2, c3, c4, c5 the temperature of fluid may be T1 at time t1 and may be T2 at time t1+Δt. In this case, if the time taken for the fluid to pass through the unit pipe c1, c2, c3, c4, or c5 is t1+Δt the temperature of the fluid, which passes the ending point of the unit pipe c1, c2, c3, c4, or c5 at time t1+Δt, passing the starting point at time t1 is T1. If only the temperature of the fluid passing the starting point at time t1+Δt is used to calculate the temperature of the fluid passing the ending point at t1+Δt, an inaccurate value will be calculated. Due to temperature difference with the ambient environment, heat is lost from the fluid over time. Accordingly, the temperature of the fluid arriving at the ending point at time t1+Δt may be different from the temperature of the fluid at the starting point at time t1.
Analysis data according to an embodiment of the present disclosure is generated using real-time data received with a preset time as the period. Accordingly, the analysis data may include information about the fluid flow and/or physical state of the district heating network 10 at various points in time. Accurate information about the state of the district heating network 10 that changes over time can be obtained using these data.
The input data may also include, data on the ambient temperature of the pipe (hereinafter referred to as ‘ambient temperature data’). When the pipe is buried in the ground, the ambient temperature of the pipe may mean the underground temperature. The data on the underground temperature may be data generated in real-time by a temperature sensor or the like installed around the pipe. In the calculation process of the present disclosure, the processor 330 calculates calculation data for the fluid flow and/or physical state of the district heating network 10 based on the above-described pipe data and input data. According to the analysis method of the present disclosure, information corresponding to the flow of fluid in all sections of the pipe can be obtained even with limited data on some points of the pipe.
Referring to
The first calculation data includes elapsed time data indicating the time taken to pass through the reference section of the pipe for each of at least one reference section. Such elapsed time data for each reference point is saved to the database as time sequence data per time point. The reference point may be a point at which high-temperature fluid is supplied to the supply pipe 12 (hereinafter ‘supply point (p)’). The supply point (p), for example, may be a point where the fluid is output from the heating section 11 inside the heating facility. Between the supply point (p) and the reference point there are one or more reference sections connected with/by nodes and the sum of elapsed time per point of such reference sections may be the elapsed time for a fluid to reach the reference point from the supply point (p). Using elapsed time data, if time taken for the fluid to flow to a certain point from the supply point (p) is known, it is possible to know the time the fluid that reached the certain point started from the supply point (p) and the temperature and pressure of the fluid supplied at that time point can be known from the database.
The manager or control device of the district heating network 10 can adjust the temperature and flow rate of the fluid to an appropriate value at the temperature of the heat source or the supply point (p) using the elapsed time data. If at any point in time the temperature of the fluid passing the analysis point is higher than the optimal value, it may be determined that the temperature of the fluid was increased more than required at the supply point (p) and the resulting energy consumption of the heating section is increased and simultaneously that heat loss occurring while the fluid moves to the consumer also increases. On the other hand, if at any point in time the temperature of the fluid passing through the analysis point is lower than the optimal value, the supply amount of the fluid at the supply point (p) should be increased and this will increase energy consumption of the fluid supply pump of the supply point. In addition, the first data calculated by the processor 330 may include calculated pressure data on the fluid pressure and head data on the head of the fluid at at least one point of the pipe.
In step S232, the processor 330 calculates second calculation data for the movement of heat inside the district heating network 10 based on the input data and the first calculation data. In the analysis method according to an embodiment of the present disclosure, the processor 330 may include a first processor 331 performing a first calculation process and a second processor 332 performing a second calculation process. The second calculation data may include temperature data on the temperature of the fluid at at least one point in the pipe. The processor 330 uses ambient temperature data and pipe data to calculate temperature data. In one embodiment of the present disclosure, the processor 330 uses confluence point data to calculate temperature data. When the ending point of a unit pipe c1, c2, c3, c4, c5 is not a confluence point, only the temperature of the fluid at the starting point of the unit pipe c1, c2, c3, c4, c5 and the heat lost to the outside of the pipe need to be considered in order to obtain the temperature of the fluid at the ending point. In this case, the processor may calculate the temperature data using Equation 2 below.
However, when the ending point of a unit pipe c1, c2, c3, c4, c5 is a confluence point, both the temperature and flow rate of the fluid in the two unit pipes c1, c2, c3, c4, c5 sharing a node must be considered in order to obtain the temperature of the fluid at the ending point. Therefore, the processor 330 may vary the temperature calculation algorithm at that node n1, n2, n3, or n4 according to whether the node n1, n2, n3, or n4 to be analyzed is a confluence point. For example, if a node is not a confluence point, the processor may calculate data on the temperature at that point using Equation 2. In contrast, when a certain node is fluid confluence point of a first unit pipe and a second unit pipe, the processor can calculate the temperature of the fluid at the confluence point using Equation 3.
Accordingly, even if pipes of the district heating network 10 have a structure including a plurality of unit pipes c1, c2, c3, c4, c5, the processor 330 can calculate data accurately reflecting the state of the district heating network 10. In addition, the second calculation data may include heat loss data on the heat loss of at least one of the unit pipes c1, c2, c3, c4, c5. The processor 330 may use unit pipe c1, c2, c3, c4, c5 data and temperature data in order to calculate heat loss data. The processor 330 can calculate in real-time the heat loss of all unit pipes constituting the district heating network 10, and may perform evaluation on the heat loss of the heat pipe network by storing in the storage device 340 the total sum in time sequence manner.
The calculation process described above can be performed independently of the supply pipe 12 and the return pipe 14. When analyzing for the return pipe 14 the multiple emission sections 13 of the district heating network 10 becomes the initial starting point of the fluid and the heating section 11 becomes the final ending point of the fluid. For example, the processor 330 may perform an analysis on the return pipe 14 in the same method as the analysis of the supply pipe 12.
In step S240, the storage device 340 receives and stores the analysis data. Here, the analysis data is at least some of the pipe data, the input data, or the calculation data, and relates to the physical state of the district heating network 10 and/or the fluid flow. At least some of this analysis data may be transmitted back to the processor 330 as pipe data and/or input data. The storage device 340 may store analysis data in a time-sequence manner. As described above, the analysis method of the present disclosure can obtain accurate information about the state of the district heating network 10 that changes over time by using time-sequence data stored in a storage device 340.
The storage step S240 according to an embodiment of the present disclosure may include a process of temporarily storing data to be updated among a first storage device 341 storing analysis data and a second storage device 342 storing analysis data. The second storage device 342 may for example store only analysis data received for three days, and update stored data by deleting data that was stored the longest time ago and storing new analysis data if new analysis data is received. The analysis data stored in the second storage device 342 is used in the calculation process. The first storage device 341 may permanently store the analysis data received from the second storage device 342.
In step S250, the display unit 350 may receive the analysis data and visually display the physical state of the district heating network 10 corresponding to the analysis data. Administrators of the district heating network 10 can monitor the information shown in the display unit 350 and control or manage the district heating network 10 based on the information. Specifically, the display unit 350 may receive the data stored in the second storage device 342 to indicate the state of the district heating network 10 corresponding to that data. By such indicating process, the operator can conduct real-time monitoring of the district heating network 10 and conduct analysis on past data of the district heating network 10.
The operator of the district heating network 10 can utilize the information displayed in the display unit in various ways. The operator can control the operation of the district heating network 10 or evaluate the state of the district heating network 10 based on the information displayed. For example, the operator can use information on the pressure or head of the fluid inside the pipe to monitor in real-time whether the fluid is being supplied smoothly to the user. The operator may adjust power input to the pump (not shown) according to information on the amount of the pressure lost in any section of the pipe. Information on the temperature of each point of the district heating network 10 may be used by the operator to evaluate the stress change or durability of the pipe at each point.
Such operation process may be performed by a control unit (not shown) of the district heating network 10 by an algorithm made with a programming language. For example, the control unit may receive analysis data stored in the storage device and use it to generate control signals to control the operation of the device installed in the district heating network 10. In the case that the flow rate supplied to the consumer is determined to be less than the expected value based on the analysis data, the control unit may control the pump, valve 15a on the district heating network 10 or the like such that the flow rate supplied to the supply pipe 12 passing through the consumer is increased.
Referring to
The processor 330 may include a first processor 331 and a second processor 332. The first processor 331 uses pipe data and input data to calculate the first calculation data for the flow of the fluid. The second processor 332 uses pipe data, input data, and the first calculation data to calculate the second calculation data for movement of heat inside the district heating network 10.
The real-time data transmitting device 15 transmits at least some of the input data in real-time to the processor 330 with a preset time as a period. The processor 330 can use the real-time data transmitted by the real-time data transmitting device to calculate the data corresponding to the state of the district heating network 10 that changes over time. The storage device 340 can store at least some of the input data and the calculation data in a time-sequence manner.
The above description is only an example of the technical idea of the present embodiment, and those having ordinary skill in the art to which this embodiment belongs should appreciate that various modifications, additions, and substitutions are possible, without departing from the technical idea and scope of the present disclosure. Therefore, embodiments of the present disclosure have been described for the sake of brevity and clarity. The scope of the technical idea of the present embodiments is not limited by the illustrations. Accordingly, one of ordinary skill should understand that the scope of the present disclosure is not to be limited by the above explicitly described embodiments but by the claims and equivalents of the claims.
Number | Date | Country | Kind |
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10-2022-0009560 | Jan 2022 | KR | national |
Number | Name | Date | Kind |
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10262518 | Hyland | Apr 2019 | B2 |
20220349773 | Kristensen | Nov 2022 | A1 |
Number | Date | Country |
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3531368 | Aug 2019 | EP |
2004-252659 | Sep 2004 | JP |
10-2013-0017368 | Feb 2013 | KR |
10-2013-0089111 | Aug 2013 | KR |
10-2018-0087965 | Aug 2018 | KR |
10-1886229 | Aug 2018 | KR |
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Number | Date | Country | |
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20230235897 A1 | Jul 2023 | US |