Modelling of an Existing Neutral Temperature District Heating Network: Detailed and Approximate Approaches
Abstract
:1. Introduction
2. Materials and Methods
2.1. The Network
- Monthly consumptions were known from (approximately) weekly readings available at each user for the year 2019.
- Single-day consumptions were then estimated by distributing monthly consumptions proportionally to the heating degree days, which, in turn, were calculated from the ambient temperature data retrieved by a nearby weather station for the year 2019 (shown in Figure 4).
- Hourly consumptions were finally obtained by assuming fixed patterns for space heating (SH) and sanitary hot water (SHW), shown in the right panel of Figure 3. The SH pattern was built by averaging the available high-frequency data measured in a few winter days. Sanitary hot water (SWH) consumptions, assumed basically constant on a daily basis throughout the year, were estimated from summer weeks, with a random pattern in the interval 06:00–23:00.
2.2. The Models
2.2.1. Approximate Model
- Monthly heat consumptions of aggregated users.
- Monthly average ambient temperature profile.
- Source temperatures. A constant supply temperature of 21.2 °C was set as a weighted average between the waste heat temperature of 25 °C (available for about 62% of the time) and the aquifer well temperature of 15 °C (available for the remaining time).
- User temperatures. An average climatic curve was set according to the description in the previous section.
- HP performance. The above COP function calibrated on the available data sheets was used.
- Network. By default, the model estimates the network main parameters (lengths, distribution of pipe diameters, heat exchange coefficients, etc.) based on the overall heat demand and assuming typical building densities and pipe sizes. In this case, however, the geometry of Figure 1 was used to obtain the correct pipe distribution and heat exchange coefficients (see below).
- Monthly consumptions were known from (approximately) weekly readings available at each user for the year 2019.
- Monthly consumptions were then evenly distributed according to the corresponding number of days to estimate the consumption of a single reference day for each month.
- Hourly loads were obtained by assuming fixed patterns for space heating (SH) and sanitary hot water (SHW), shown in the right panel of Figure 3. Consequently, the annual analysis consists of 24 h × 12 = 288 h.
- HP electricity consumptions
- Thermal energy delivered by the network (on the evaporator side of the HPs)
- Thermal losses
- Pumping consumptions
- CO2 emissions
2.2.2. Detailed Model
- A load profile for each single user needs to be provided. Since the HPs of all the users come from the same supplier, the single COP function reported in Equation (2) was used.
- All profiles are included as full hourly profiles.
2.2.3. Key Performance Indicators and Input Parameters
3. Results and Discussion
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
Ground temperature around pipes at time , °C | |
Average ground temperature, °C | |
Amplitude of the temperature variation at the ground surface, °C | |
Depth, m | |
Network pipes depth, m | |
Aquifer wells depth, m | |
Cycle period | |
Ground thermal diffusivity, m2/s | |
Day of minimum surface temperature | |
Compressor efficiency, % | |
Carnot coefficient of performance | |
Condenser temperature of the heat pump refrigerant, K | |
Evaporator temperature of the heat pump refrigerant, K | |
External fluid temperature on the heat pump condenser, °C | |
External fluid temperature on the heat pump evaporator, °C | |
Heat exchanger lift, K | |
Overall thermal losses on the supply pipe, MWh | |
Overall thermal losses on the return pipe, MWh | |
Overall thermal conductivity, kW/K | |
Network supply temperature, °C | |
Network return temperature, °C | |
Pipe thermal conductivity of diameter i and material j, W/(m·K) | |
Overall lengths of pipes with diameter i and material, m | |
Flow rate, m3/s | |
Pressure losses, | |
Fluid temperature, °C | |
Fluid velocity, m/s | |
Time constant | |
Water density, kg/m3 | |
Water specific heat capacity, J/(kg·K) | |
Pipe diameter, m | |
Annual thermal energy supplied at the condenser side of the heat pumps, MWh/y | |
Annual thermal energy carried from the network to the heat pumps evaporator, MWh/y | |
Annual electric energy consumed by the heat pumps, MWh/y | |
Annual thermal losses, MWh/y | |
Annual electric energy consumed by the network pump, MWh/y | |
CO2 | Carbon emissions, t CO2/y |
References
- Werner, S. District Heating and Cooling; Elsevier: Amsterdam, The Netherlands, 2013; Available online: http://urn.kb.se/resolve?urn=urn:nbn:se:hh:diva-24115 (accessed on 20 August 2020).
- FLEXYNETS Project (EU H2020, GA No. 649820). Available online: http://www.flexynets.eu (accessed on 7 August 2020).
- Lund, H.; Werner, S.; Wiltshire, R.; Svendsen, S.; Thorsen, J.E.; Hvelplund, F.; Mathiesen, B.V. 4th Generation District Heating (4GDH): Integrating smart thermal grids into future sustainable energy systems. Energy 2014, 68, 1–11. [Google Scholar] [CrossRef]
- Averfalk, H.; Werner, S. Economic benefits of fourth generation district heating. Energy 2020, 193, 116727. [Google Scholar] [CrossRef]
- Lund, H.; Østergaard, P.A.; Chang, M.; Werner, S.; Svendsen, S.; Sorknæs, P.; Thorsen, J.E.; Hvelplund, F.; Mortensen, B.O.G.; Mathiesen, B.V.; et al. The status of 4th generation district heating: Research and results. Energy 2018, 164, 147–159. [Google Scholar] [CrossRef]
- Østergaard, P.A.; Andersen, A.N. Booster heat pumps and central heat pumps in district heating. Appl. Energy 2016, 184, 1374–1388. [Google Scholar] [CrossRef]
- Østergaard, P.A.; Andersen, A.N. Economic feasibility of booster heat pumps in heat pump-based district heating systems. Energy 2018, 155, 921–929. [Google Scholar] [CrossRef]
- Buffa, S.; Cozzini, M.; D’Antoni, M.; Baratieri, M.; Fedrizzi, R. 5th generation district heating and cooling systems: A review of existing cases in Europe. Renew. Sustain. Energy Rev. 2019, 104, 504–522. [Google Scholar] [CrossRef]
- Wirtz, M.; Kivilip, L.; Remmen, P.; Müller, D. 5th Generation District Heating: A novel design approach based on mathematical optimization. Appl. Energy 2020, 260, 114158. [Google Scholar] [CrossRef]
- von Rhein, J.; Henze, G.P.; Long, N.; Fu, Y. Development of a topology analysis tool for fifth-generation district heating and cooling networks. Energy Convers. Manag. 2019, 196, 705–716. [Google Scholar] [CrossRef]
- Life4heatrecovery Project. Available online: http://www.life4heatrecovery.eu/en/ (accessed on 29 September 2020).
- Ma, W.; Fang, S.; Liu, G.; Zhou, R. Modeling of district load forecasting for distributed energy system. Appl. Energy 2017, 204, 181–205. [Google Scholar] [CrossRef]
- Termis Engineering|Schneider Electric. Available online: https://www.se.com/my/en/product-range-presentation/61613-termis-engineering/ (accessed on 16 November 2020).
- Comsof Heat-District Heating Network Planning & Design Software. Available online: https://comsof.com/heat/ (accessed on 16 November 2020).
- THERMOS Tool. THERMOS. 2020. Available online: https://www.thermos-project.eu/thermos-tool/thermos-tool/ (accessed on 16 November 2020).
- The PLANHEAT Tool. Planheat. Available online: https://planheat.eu/the-planheat-tool/ (accessed on 16 November 2020).
- EnergyPLAN. Available online: https://www.energyplan.eu/ (accessed on 16 November 2020).
- LEAP. Available online: https://leap.sei.org/default.asp (accessed on 16 November 2020).
- Cozzini, M.; D’Antoni, M.; Buffa, S.; Fedrizzi, R.; Bava, F. District Heating and Cooling Networks Based on Decentralized Heat Pumps: Energy Efficiency and Reversibility at Affordable Costs. HPT Mag 2018, 36, 25–29. [Google Scholar]
- Eckert, E.; Drake, R.M. Heat and Mass Transfer; McGraw-Hill Inc.: New York, NY, USA, 1959. [Google Scholar]
- Jaeger, J.C.; Carslaw, H.S. Conduction of Heat in Solids; Oxford University Press: Oxford, UK, 1959. [Google Scholar]
- Banks, D. An Introduction to Thermogeology: Ground Source Heating and Cooling; John Wiley & Sons: Hoboken, NJ, USA, 2012. [Google Scholar]
- Grassi, W. Heat Pumps: Fundamentals and Applications; Springer: Berlin/Heidelberg, Germany, 2018. [Google Scholar]
- Ben Hassine, I.; Eicker, U. Impact of load structure variation and solar thermal energy integration on an existing district heating network. Appl. Therm. Eng. 2013, 50, 1437–1446. [Google Scholar] [CrossRef]
- Velut, S.; Tummescheit, H. Implementation of a transmission line model for fast simulation of fluid flow dynamics. In Proceedings of the 8th International Modelica Conference, Technical Univeristy, Dresden, Germany, 20–22 March 2011; Linköping University Electronic Press: Linköping, Sweden, 2011; pp. 446–453. [Google Scholar]
- Van der Heijde, B.; Fuchs, M.; Tugores, C.R.; Schweiger, G.; Sartor, K.; Basciotti, D.; Müller, D.; Nytsch-Geusen, C.; Wetter, M.; Helsen, L. Dynamic equation-based thermo-hydraulic pipe model for district heating and cooling systems. Energy Convers. Manag. 2017, 151, 158–169. [Google Scholar] [CrossRef] [Green Version]
- European Residual Mix|AIB. Available online: https://www.aib-net.org/facts/european-residual-mix (accessed on 6 November 2020).
- Noussan, M.; Roberto, R.; Nastasi, B. Performance Indicators of Electricity Generation at Country Level—The Case of Italy. Energies 2018, 11, 650. [Google Scholar] [CrossRef] [Green Version]
Parameters | Approximate Model | Detailed Model |
---|---|---|
15.3 °C | 15.3 °C | |
16.9 K | 16.9 K | |
0.068 m2/day | 7 × 10−7 m2/s | |
365 days | 8760 h | |
30th day | Hour 720 | |
1 m | 1 m | |
40 m | 40 m | |
53% | 53% | |
2.15 K | 2.15 K | |
21.2 °C | Equation (8) | |
16.2 °C | Equation (8) |
Quantity | Unit | Approximate Model | Detailed Model |
---|---|---|---|
SCOP | arb. u. | 5.0 | 4.5 |
MWh/y | 1558 | 1559 | |
MWh/y | 1249 | 1206 | |
MWh/y | 309 | 350 | |
MWh/y | 1045 | 816 | |
MWh/y | 38 | 20 | |
CO2 | t CO2/y | 113 | 121 |
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Calixto, S.; Cozzini, M.; Manzolini, G. Modelling of an Existing Neutral Temperature District Heating Network: Detailed and Approximate Approaches. Energies 2021, 14, 379. https://doi.org/10.3390/en14020379
Calixto S, Cozzini M, Manzolini G. Modelling of an Existing Neutral Temperature District Heating Network: Detailed and Approximate Approaches. Energies. 2021; 14(2):379. https://doi.org/10.3390/en14020379
Chicago/Turabian StyleCalixto, Selva, Marco Cozzini, and Giampaolo Manzolini. 2021. "Modelling of an Existing Neutral Temperature District Heating Network: Detailed and Approximate Approaches" Energies 14, no. 2: 379. https://doi.org/10.3390/en14020379
APA StyleCalixto, S., Cozzini, M., & Manzolini, G. (2021). Modelling of an Existing Neutral Temperature District Heating Network: Detailed and Approximate Approaches. Energies, 14(2), 379. https://doi.org/10.3390/en14020379