Temporal Segmentation for the Estimation and Benchmarking of Heating and Cooling Energy in Commercial Buildings in Seoul, South Korea
Abstract
:1. Introduction
2. Data
- Cooling energy (Cool): energy used for space cooling in the building through central cooling sources (e.g., chiller, cooling tower), pumps involved in cooling, individual cooling systems (e.g., electric heat pumps, gas heat pumps), and their operation and control.
- Heating energy (Heat): energy used for space heating in the building through central heating sources (e.g., boiler), pumps involved in heating, individual heating systems (e.g., electric heat pumps, gas heat pumps), and their operation and control.
- Hot water supply (Shw): energy used to produce and transport hot water for building domestic water services by central hot water sources (e.g., boilers) and pumps carrying hot water.
- Lighting (Light): Energy used by the main lighting equipment composed of separated branch circuits.
- Air movement by fan (Vent): energy used for cooling, heating, ventilation, and air circulation by fans in mechanical systems (e.g., air handling unit, outdoor unit, fan coil unit).
- Appliances (App): energy used by office appliances, auxiliary heaters, electric fans, water purifiers, and non-identifiable energy use in circuits.
- Indoor transportation (Trans): energy used by indoor transportation devices (e.g., escalators, lifts, etc.)
- Auxiliary devices (Aux): energy used by main pumps for water supply.
3. Methods
3.1. Information Gain-Based Temporal Segmentation (IGTS)
3.2. Estimation of Cooling and Heating Energy
4. Results
4.1. Temporal Segmentation for Estimation of Heating and Cooling Energy
4.2. Benchmarking Based on Estimated Heating and Cooling Energy
5. Limitations
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
References
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Index | Year Built | Total Floor Area (m2) | No. of Aboveground/Underground Floors | HVAC System | Service Water System | Commercial Facilities |
---|---|---|---|---|---|---|
bldg.#01 | 1995 | 22,471 | 19F/B7 |
|
|
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bldg.#02 | 1983 | 10,517 | 10F/B2 |
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bldg.#03 | 1968 | 2482 | 7F/B1 |
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bldg.#04 | 2008 | 31,787 | 20F/B6 |
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bldg.#05 | 1990 | 1265 | 5F/B1 |
|
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bldg.#06 | 1971 | 4034 | 4F/B1 |
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bldg.#07 | 2006 | 29,547 | 21F/B5 |
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bldg.#08 | 2012 | 2544 | 6F/B2 |
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bldg.#09 | 2008 | 1633 | 5F/B1 |
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bldg.#10 | 1967 | 2408 | 4F/B2 |
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bldg.#11 | 1995 | 7124 | 11F/B4 |
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bldg.#12 | 2007 | 19,973 | 12F/B5 |
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|
Index | Winter | Spring | Summer | Fall | Winter | |||||
---|---|---|---|---|---|---|---|---|---|---|
Start | End | Start | End | Start | End | Start | End | Start | End | |
bldg.#01 | 1 January | 22 March | 23 March | 27 May | 28 May | 18 September | 19 September | 28 October | 29 October | 31 December |
bldg.#02 | 1 January | 1 March | 2 March | 31 May | 1 June | 20 September | 21 September | 25 October | 26 October | 31 December |
bldg.#03 | 1 January | 22 March | 23 March | 17 June | 18 June | 18 September | 19 September | 30 October | 31 October | 31 December |
bldg.#04 | 1 January | 22 March | 23 March | 27 May | 28 May | 18 September | 19 September | 18 November | 19 November | 31 December |
bldg.#05 | 1 January | 22 March | 23 March | 24 June | 25 June | 6 September | 7 September | 04 November | 05 November | 31 December |
bldg.#06 | 1 January | 9 March | 10 March | 24 June | 25 June | 6 September | 7 September | 11 November | 12 November | 31 December |
bldg.#07 | 1 January | 14 February | 15 February | 13 May | 14 May | 20 September | 21 September | 4 November | 5 November | 31 December |
bldg.#08 | 1 January | 9 March | 10 March | 27 May | 28 May | 19 September | 20 September | 18 November | 19 November | 31 December |
bldg.#09 | 1 January | 12 February | 13 February | 27 May | 28 May | 19 September | 20 September | 28 October | 29 October | 31 December |
bldg.#10 | 1 January | 8 March | 9 March | 15 April | 16 April | 26 October | 27 October | 18 November | 19 November | 31 December |
bldg.#11 | 1 January | 28 February | 1 March | 27 May | 28 May | 18 September | 19 September | 18 November | 19 November | 31 December |
bldg.#12 | 1 January | 8 March | 9 March | 17 June | 18 June | 18 September | 19 September | 18 November | 19 November | 31 December |
Index | Segmentation | Total | CoolHeat (Measured) | CoolHeat (Estimated) | |||
---|---|---|---|---|---|---|---|
Energy (kWh/m2) | Rank (-) | Energy (kWh/m2) | Rank (-) | Energy (kWh/m2) | Rank (-) | ||
bldg.#01 | SW | 65.9 | 5 | 41.3 | 8 | 51.7 | 8 |
Yearly | 79.0 | 3 | 43.1 | 8 | - | - | |
bldg.#02 | SW | 30.7 | 2 | 17.1 | 4 | 25.5 | 5 |
Yearly | 40.9 | 1 | 18.9 | 4 | - | - | |
bldg.#03 | SW | 133.5 | 10 | 104.6 | 12 | 114.1 | 12 |
Yearly | 157.4 | 10 | 112.7 | 12 | - | - | |
bldg.#04 | SW | 69.8 | 6 | 59.0 | 10 | 63.5 | 10 |
Yearly | 80.2 | 5 | 63.8 | 10 | - | - | |
bldg.#05 | SW | 30.4 | 1 | 10.9 | 2 | 14.3 | 1 |
Yearly | 58.2 | 2 | 12.8 | 2 | - | - | |
bldg.#06 | SW | 67.0 | 11 | 28.2 | 7 | 49.7 | 7 |
Yearly | 90.1 | 11 | 34.4 | 7 | - | - | |
bldg.#07 | SW | 26.6 | 3 | 5.8 | 1 | 15.3 | 2 |
Yearly | 40.0 | 4 | 6.2 | 1 | - | - | |
bldg.#08 | SW | 31.2 | 4 | 17.3 | 5 | 19.1 | 4 |
Yearly | 43.9 | 6 | 20.5 | 5 | - | - | |
bldg.#09 | SW | 46.8 | 8 | 24.0 | 6 | 36.7 | 6 |
Yearly | 67.9 | 9 | 29.2 | 6 | - | - | |
bldg.#10 | SW | 85.3 | 12 | 71.1 | 11 | 77.7 | 11 |
Yearly | 102.5 | 12 | 85.0 | 11 | - | - | |
bldg.#11 | SW | 39.1 | 7 | 12.0 | 3 | 16.9 | 3 |
Yearly | 61.9 | 7 | 15.0 | 3 | - | - | |
bldg.#12 | SW | 53.5 | 9 | 42.6 | 9 | 58.2 | 9 |
Yearly | 66.9 | 8 | 47.2 | 9 | - | - |
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Ahn, K.U.; Kim, D.-W.; Lee, S.-E.; Chae, C.-U.; Cho, H.M. Temporal Segmentation for the Estimation and Benchmarking of Heating and Cooling Energy in Commercial Buildings in Seoul, South Korea. Sustainability 2022, 14, 11095. https://doi.org/10.3390/su141711095
Ahn KU, Kim D-W, Lee S-E, Chae C-U, Cho HM. Temporal Segmentation for the Estimation and Benchmarking of Heating and Cooling Energy in Commercial Buildings in Seoul, South Korea. Sustainability. 2022; 14(17):11095. https://doi.org/10.3390/su141711095
Chicago/Turabian StyleAhn, Ki Uhn, Deuk-Woo Kim, Seung-Eon Lee, Chang-U Chae, and Hyun Mi Cho. 2022. "Temporal Segmentation for the Estimation and Benchmarking of Heating and Cooling Energy in Commercial Buildings in Seoul, South Korea" Sustainability 14, no. 17: 11095. https://doi.org/10.3390/su141711095