Measuring Carbon in Cities and Their Buildings through Reverse Engineering of Life Cycle Assessment
Abstract
:1. Introduction
- -
- Product Stage:
- A1.
- Raw material extraction
- A2.
- Transport to manufacturing site
- A3.
- Manufacturing
- -
- Construction Process Stage:
- A4.
- Transport to construction site
- A5.
- Construction Process
- -
- Use Stage:
- B1.
- Use
- B2.
- Maintenance
- B3.
- Repair
- B4.
- Replacement
- B5.
- Refurbishment
- B6.
- Operational energy use
- B7.
- Operational water use
- -
- End of Life Stage:
- C1.
- De-Construction demolition
- C2.
- Transport
- C3.
- Waste processing
- C4.
- Disposal
- -
- (Supplementary Information Beyond Building Life Cycle:
- D.
- Benefits and loads beyond system boundary: Reuse-Recovery-Recycling Potential).
- (1)
- Studies for prediction, scope, also for carbon footprint [43], and optimization [44,45,46], or modeling/digital twins for design and energy [47,48,49,50,51]. Those are studies mainly focused on energy performance, design comparison for a building, parametric design, or optimization of a building for specific parameters.
- (2)
- (3)
- Studies based on a comparison between a design solution and a reference solution named conventional solution, usually defined in construction catalogs [54].
- (4)
2. Materials and Methodology
Percentage of new construction/refurbished houses in a block: (100 × n)/m)%
- -
- Absolute % Reduction. (Table 2 Column 8 First Value, intervals):
- -
- Relative %. Percentage from Sum of pre-existing houses carbon emissions (In this case 9 houses are the existing houses) that the 25% of new/refurbished houses with the average carbon emissions GWPT per range A, B and C, would represent (Table 2 Column 8 Second Value):
- and likewise:
3. Results
TypeH | GWPT | GWPW Estimated | GWPF Estimated | GWPT n | |GWPW| n | GWPF n | GWPW Pred | GWPF Pred | CO2eq/m2 5 | A 6 |
---|---|---|---|---|---|---|---|---|---|---|
1 | 91,205 | 7630 | 6430 | 0.011 | 0.09 2 | 0.05 | 6463 | 6111 | 493 | 185 |
2 | 73,100 | 7630 | 6430 | 0.15 | 0.048 2 | 0.12 | 7007 | 5664 | 430 | 170 |
3 | 82,080 | 7630 | 6430 | 0.08 | 0.07 2 | 0.08 | 6722 | 5919 | 456 | 180 |
4 | 92,530 | 7630 | 6430 | 0 | -- 3 | 0.05 | -- | 6111 | 487 | 190 |
5 | 86,580 | 7630 | 6430 | 0.05 | 0.08 2 | 0.066 | 6593 | 6009 | 468 | 185 |
6 | 91,205 | 7630 | 6430 | 0.011 | 0.09 2 | 0.05 | 6463 | 6111 | 493 | 185 |
7 | 82,260 | 7630 | 6430 | 0.084 | 0.07 2 | 0.08 | 6722 | 5919 | 457 | 180 |
8 | 72,480 | 7630 | 6430 | 0.163 | 0.04 2 | 0.12 | 7007 | 5664 | 453 | 160 |
9 | 90,095 | 7630 | 6430 | 0.020 | 0.09 2 | 0.05 | 6463 | 6111 | 487 | 185 |
10 | −30,000 | −5330 | 50 | 1 | 0.43 | -- 1(1) | 2057 | 52.9 4 | −166 | 180 |
11 | −30,000 | −5330 | 50 | 1 | 0.43 | -- 1(1) | 2057 | -- 1 | −162 | 185 |
12 | −30,000 | −5330 | 50 | 1 | 0.43 | -- 1(1) | 2057 | -- 1 | −162 | 185 |
Class | GWPT | GWPW | GWPF | GWPT n | GWPW n | GWPF n | %GWPTRed 1 | Layer Wall 2 | EPD 3 | CO2eq/m2 |
---|---|---|---|---|---|---|---|---|---|---|
C | 83,120 to 65,440 | 7630 | 6430 | 0 to 0.14 | 0 to 0.76 | 0 to 0.35 | 0 to 21%/−29.2% | Standard d. 4 | 158 min | 449 to 353 |
B | 65,440 to 37,230 | −2270 | 4190 | 0.14 to 0.38 | 0.76 | 0.35 | 21% to 55%/−20% | Straw 5 | 7.63 | 353 to 201 |
A | 37,230 to −32,670 | −5330 | 52.9 | 0.38 to 1 | 0.76 to 1 | 0.35 to 1 | 55% to 139%/-0.9% | Straw new 5 | 7.63 | 201 to −177 |
4. Discussion
- Carbon emissions Measurements:
- 1.1.
- Real (in-situ, in real-time) carbon emissions measurement seems to be more accurate, and coherent to the approach of this paper, if derived from direct measurements, for target reductions, than the measures of KgCO2eq per m2 that are used in this paper for reference.However, it is proven, through the previous studies aforementioned and this paper´s results, the potential of the method to relate the GWP of the building and GHG, and the utility for building design choice, as the study is based on comparisons and abstract targets. This paper also provides measured raw data real Values of GWP and GHG, according to the data processing and modeling methods of this paper. With a different Data Base, raw data of GWP and GHG, a data set could be similarly related and modeled. The European reports that provide raw data on carbon emissions [2,63], highlight in one of its sections the importance of the reduction of Carbon removal from the LULUCF sector, due to wood fires and wood extraction for construction and energy. Verbatim reproduction from the document, in order to show the sort of data (Raw Data literal exact transcription for Spain, full content in Supplementary Material, Figure S4) is as follows:“Spain, 2021, ESP, 47486932, 8.609, 0.181, 233.650, 20.310, 9.520, 208.148, 19.870, 10.554, 4.383, 0.134, 4.920, 0.150, 18.575, 0.391, 705.016, 15100.203, 17219.338, 4858.969, 83.655, 1654.140, 2121.383, 7685.895, 112.529, 32708…”
- 1.2.
- Likewise the variant Type 14 in the seven houses street hypothesis of this paper´s Supplementary Material leads to reduction in carbon emissions, other system construction variants of the design of the house, could most probably, lead to greater reductions of Carbon emission. According to the results, a reduction of 19.64%, occurs when one of the seven houses of a block include biogenic solutions instead of conventional solutions, in the hypothetical case of a group of seven houses in a street.
- 1.3.
- In the fifteen houses hypothesis, if at least 53% of the houses of a block of 15 houses would choose a biogenic solution for the external layer of the façade walls (Types 8 to 15), the GHG of the emissions of the block (extendible to the city emissions) would be reduced greatly by design. Percentage to add to the 27.3% carbon emissions reduction from 1990 to 2021, or 21.7% change in total GHG emissions 1990–2017 in Europe and United Kingdom (EU-28), 29.5% for Denmark, values in Table 7.3 in [1]. Red%GWPST presents similar values.
- Reverse Engineering and Models:According to previous studies related to the subject compiled in this paper´s review, some researchers had concluded that the prediction model under multi-criteria evaluation shows better accuracy. However, for this study case, the third model, achieves high accuracy, probably because the model is structure-related [64] instead of energy related (contrary to the totality of the studies presented before in the References and Section 1 in this paper for multi-criteria modelization).
- LCA
- 3.1.
- Design ProcessThe shape of the building envelope, material selection, and other aspects of the design of a building, directly affect its carbon emissions: a house design of more than 78% wood biogenic solutions would reduce those Carbon emissions to 184 KgCO2eq/m2 [65], therefore the cities, housing typology, low-carbon, approach seems adequate.LCA is typically studied separately, (once the design is defined), from the design process, rather than being integrated. The present study tries to show how to implement LCA within the design process as a fundamental issue that is necessary to be addressed to be able to promote a low impact built-environment. This approach has been taken to assess what the obstacles are that limit the use of LCA as an early-design tool. Moreover, allowing this LCA integration into the design process will assist in: helping designers to identify and avoid unnecessary impacts during the design process and knowing what the environmental impacts of buildings will be in an early stage.
- 3.2.
- Carbon emissions and LCAAnnually, the embodied carbon of building structures, substructures, and enclosures is responsible for 11% of global GHG emissions, as stated in 2019; in 2021, some reports state that 10% corresponds to the “Building construction industry”, which is “the portion (estimated) of overall industry devoted to manufacturing building construction materials such as steel, cement, and glass” [1].
- 3.3.
- Database possible inconsistenciesDetailed information can be founded in Supplementary Material of this paper (Figure S3), related to the database used [66].
5. Conclusions
Abbreviation/Term | Definition/Description | Units |
---|---|---|
Type | The types corresponding to different houses construction compositions are numbered: 1, 2, 3,… | No |
GWPT | Global Warming Potential Total, of each house Type | CO2eq |
GWPW estimated | Global Warming Potential Partial, external layer of Façade, of a house Type Estimated through analysis of LCA Calculation with Reverse Engineering | CO2eq |
GWPF estimated | Global Warming Potential Partial, Foundation, of a house Type. Estimated through analysis of LCA Calculation with Reverse Engineering | CO2eq |
GWPT n | Global Warming Potential Total of a house Type, normalized | No |
GWPW n | Global Warming Potential Partial, external layer of Façade, of a house Type normalized | No |
GWPF n | Global Warming Potential Partial, Foundation of a house Type normalized | No |
GWPW Pred | Global Warming Potential Partial, external layer of Façade, of a house Type. Predicted through quadratic regression function with Reverse Engineering and others | CO2eq |
GWPF Pred | Global Warming Potential Partial, Foundation, of a house Type. Predicted through quadratic regression function with Reverse Engineering and others | CO2eq |
CO2eq/m2 or GHGe/Kg | Carbon emissions per square meter of a house | CO2eq/m2 |
A | Area of each house | m2 |
Class | The different classes of houses depending on their range reduction or intervals of GWP | No |
GWPW | Global Warming Potential Partial, external layer of Façade, of a house Type | CO2eq |
GWPF | Global Warming Potential Partial, Foundation, of a house Type | CO2eq |
%GWPTRed | The first value is: Percentage reduction or the difference between maximum or reference GWP Total and the GWP Total of a house in each range intervals values (A, B, or C) from maximum or reference GWPT The second value is: Percentage Reduction or the difference between Sum of existing houses and total houses GWPT, from the GWPT Sum of exixting houses. In this case, 12 houses with 25% of new/refurbished houses Class A (−30.000 GWPT), and Class A, Class B, and Class C (average values) | No |
GWPT Re | Global Warming Potential Total, of house Type Reference Value | CO2eq |
GWPT Ra | Global Warming Potential Total of houses of the different ranges or intervals values | CO2eq |
GWPT Mx | Global Warming Potential Total, of the house Type with Maximum Value | CO2eq |
GWPT Mn | Global Warming Potential Total, of the house Type with Minimum Value | CO2eq |
Layer Wall | Main component for each range of GWPT, for external layer of Façade Wall | No |
EPD | GWP reference value for design in EPD of each main component of each Class | CO2eq |
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Bragança, L.; Verde Muniesa, M.C. Measuring Carbon in Cities and Their Buildings through Reverse Engineering of Life Cycle Assessment. Appl. Syst. Innov. 2023, 6, 76. https://doi.org/10.3390/asi6050076
Bragança L, Verde Muniesa MC. Measuring Carbon in Cities and Their Buildings through Reverse Engineering of Life Cycle Assessment. Applied System Innovation. 2023; 6(5):76. https://doi.org/10.3390/asi6050076
Chicago/Turabian StyleBragança, Luís, and María Concepción Verde Muniesa. 2023. "Measuring Carbon in Cities and Their Buildings through Reverse Engineering of Life Cycle Assessment" Applied System Innovation 6, no. 5: 76. https://doi.org/10.3390/asi6050076
APA StyleBragança, L., & Verde Muniesa, M. C. (2023). Measuring Carbon in Cities and Their Buildings through Reverse Engineering of Life Cycle Assessment. Applied System Innovation, 6(5), 76. https://doi.org/10.3390/asi6050076