Optimization Analysis of an Energy-Saving Renovation Scheme for Building Envelopes of Existing Rural Houses Based on a Comprehensive Benefit Evaluation
Abstract
:1. Introduction
2. Building Description and Research Methods
2.1. Natural Geographical Environment
2.2. Heating Situation
2.3. Benchmark Building Model
2.4. Rural House Envelope Situation and Building Load Statistics
2.5. Research Methods
2.5.1. Simulation Study Tools
2.5.2. Orthogonal Experiment and Design
2.5.3. Entropy Value Method
- (1)
- Data standardization, that is, the absolute value of the index, is converted into relative values, as shown in Formulas (1) and (2).After data standardization, the original data matrix is constructed, as shown in Formula (3).
- (2)
- The ratio of each index under each scheme is shown in Formula (4).
- (3)
- The information entropy of each index is shown in Formula (5).
- (4)
- Information entropy redundancy is determined as shown in Formula (6).
- (5)
- The weight of each index is determined as shown in Formula (7).
- (6)
- The composite score is calculated as shown in Formula (8).
3. Optimization Analysis of Retrofit Scheme
3.1. Renovation Method and Calculation Method
3.2. Analysis of Orthogonal Array Test Results
3.3. Optimization Schemes Comparison
3.3.1. Optimum Indexes
- (1)
- The amount of energy saving corresponding to the envelope structure renovation schemes is (kW·h), as shown in Formula (13).
- (2)
- The incremental cost, C (RMB), of the building energy-saving renovation scheme includes the cost of thermal insulation material, labor cost, and mechanical cost. This paper determines the investment cost of the building envelope renovation and additional sunspace based on the national unified basic quota for building engineering and the consumption quota for building decoration engineering in Shaanxi Province, without considering the regional price difference. The incremental cost can intuitively show the specific costs of residents in the renovation process. Through the analysis of incremental cost, residents can understand the cost composition of the renovation project, including labor, material, equipment, etc. This helps residents to better understand the actual cost of the renovation project and assess its economic feasibility. When formulating comprehensive renovation plans for energy saving, residents can reasonably allocate funds according to the results of incremental cost analyses and give priority to the transformation of high-cost and low-energy saving projects, so as to obtain better energy saving effects. The prices of the selected materials are shown in Table 3 and Table 5.
- (3)
- Return on investment is the ratio of the incremental cost (C) to energy saving (). In the renovation scheme, the return on investment can be used to evaluate the cost effectiveness and cost performance of the scheme. If the return on investment of a renovation scheme is higher, it means that the investment benefit of the scheme is good, the investment cost can be recovered in a short time, and it can bring greater profits for investors. On the contrary, if the return on investment of a renovation scheme is low, it means that the investment benefit of the scheme is poor, it may take a long time to recover the investment cost, and it may not bring large profits for investors. Therefore, the return on investment can be used as an important basis to judge whether a renovation plan has feasibility and economic benefits. It can be used to judge the cost-effectiveness of a renovation scheme, indicating the cost performance of the scheme, as expressed by R (RMB/kW·h) in Formula (14).
- (4)
- For CO2 emission reduction—m (kg), see Formula (15).
- (5)
- Unguaranteed hours, UH (h)—indoor comfort is measured by the sum of unguaranteed hours, for which the annual indoor temperature is 14 degrees below the calculated temperature and above 30 degrees and is screened through the analysis results of the EnergyPlus software. It is unguaranteed that the smaller the hour value is, the better the renovation effect is.
3.3.2. Comprehensive Evaluation of Optimization Scheme
4. Results and Discussion
5. Conclusions
- When a single renovation scheme is adopted for the renovation of building envelope structures, the order of energy saving effects is roof renovation > external wall insulation > replace external windows > additional sunspace. For the combined renovation scheme, we should consider the insulation of the external wall, thus reducing the indoor heat transfer from the external wall. Secondly, we should consider the insulation of the roof and replacing the external window, and finally, consider the impact of the window-to-wall ratio when replacing outer windows. The energy saving rate of the combined renovation scheme is much higher than that of any single renovation scheme.
- The weights of energy saving, incremental cost, return on investment, and carbon emission reduction are 0.1915, 0.2104, 0.2312, 0.1755 and 0.187, respectively. The analysis of the comprehensive score obtained the best renovation scheme for the rural house: the thickness of the XPS board is 100 mm for external wall insulation; the thickness of the XPS board is 80 mm for roof insulation; the window-to-wall ratio of additional sunspace is 0.6; and a broken bridge aluminum hollow window 6 + 12A + 6 (mm) is selected for external window type. After using this scheme, the heating energy consumption of the rural house is significantly reduced during the heating period, and the energy saving effect is the best in January with the lowest average temperature. The heating energy consumption is 1935.22 kW·h, which is 2397.09 kW·h lower than that before the renovation.
- The renovation of the building envelope structures of existing rural houses is a necessary measure to reduce building energy consumption, but its influencing factors are numerous, involving economic, social, and environmental factors as well as residents and other benefits of different subjects. The application of the entropy value method can avoid the blind use of recommended values and experience values in energy-saving design, overcome the randomness of subjective weighting, and select the best energy-saving renovation scheme scientifically, which has certain reference significance for future energy-saving constructions in Tongchuan City.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Structure Position | Configuration | Heat Transfer Coefficient [W/(m²·K)] |
---|---|---|
External wall | 20 mm cement mortar + 240 mm solid clay brick + 20 mm cement mortar | 2.13 |
Interior wall | 200 mm solid clay brick | 1.269 |
Roofing | 100 mm thick reinforced concrete floor + 30 mm thick cement mortar leveling layer | 3.81 |
External window | Single glass plastic steel window | 4.70 |
Ground | 20 thick cement mortar + 120 thick reinforced concrete | 0.34 |
Interior door | 25 mm ordinary single-layer wooden door | 0.175 |
External door | metal door | 6.40 |
Project | Unit | Statistic |
---|---|---|
Building area | m2 | 115.00 |
Accumulated heat load in the heating season | kW·h | 15,860.44 |
Cumulative heat load index of heating season | kW·h/m2 | 137.92 |
Heat load index of heating season | W/m2 | 50.25 |
Insulation Material | Density (kg/m3) | Thermal Conductivity (W/(m·K)) | Material Unit Price (RMB/m3) |
---|---|---|---|
Expanded polystyrene foam plastic board (EPS) | 20 | 0.041 | 360 |
Extruded polystyrene foam plastic board (XPS) | 35 | 0.033 | 450 |
Polyurethane hard-made foam plastic (PUR) | 35 | 0.028 | 650 |
Rock cotton insulation board (RW) | 120 | 0.051 | 330 |
Building Envelope | Insulation Material | Formula | h(op) (mm) | NPVmax (RMB/m2) |
---|---|---|---|---|
Exterior wall | EPS | 103 | 44.82 | |
XPS | 87 | 42.95 | ||
PUR | 52 | 35.31 | ||
RW | 109 | 43.53 | ||
Roof | EPS | 98 | 61.13 | |
XPS | 82 | 53.64 | ||
PUR | 58 | 47.21 | ||
RW | 102 | 61.17 |
Renovation Site | Insulator | Window-to-Wall Ratio or Thickness | Material Unit PRICE (RMB/m2) | Heat Transfer Coefficient [W/(m2·K)] | Heating Energy Consumption (kW·h) | Energy Saving Rate (%) |
---|---|---|---|---|---|---|
Additional sunspace | 100 mm EPS board for thermal insulation wall, (6 + 9A + 6) mm hollow toughened glass as the window | 0.6 | 101 | 3.4 | 15,224.44 | 5.54 |
0.7 | 112 | 3.4 | 15,180.03 | 5.11 | ||
0.8 | 123 | 3.4 | 15,137.20 | 6.55 | ||
0.9 | 134 | 3.4 | 15,097.55 | 4.16 | ||
External window | Plastic steel hollow window | 6 + 9A + 6 (mm) | 144 | 4.7 | 15,200.65 | 5.54 |
6 + 12A + 6 (mm) | 167 | 3.7 | 14,981.77 | 5.11 | ||
Broken bridge aluminum hollow window | 6 + 9A + 6 (mm) | 155 | 4.2 | 15,049.97 | 6.55 | |
6 + 12A + 6 (mm) | 188 | 3.1 | 14,821.58 | 4.16 |
Schemes | External Wall (Factor A) | Roof (Factor B) | Window-to-Wall Ratio (Factor C) | External Window Type (Factor D) |
---|---|---|---|---|
1 | 100 mm EPS | 100 mm EPS | 0.6 | Plastic steel hollow window 6 + 9A + 6 (mm) |
2 | 100 mm EPS | 80 mm XPS | 0.7 | Plastic steel hollow window 6 + 12A + 6 (mm) |
3 | 100 mm EPS | 60 mm PUR | 0.8 | Broken bridge aluminum hollow window 6 + 9A + 6 (mm) |
4 | 100 mm EPS | 100 mm RW | 0.9 | Broken bridge aluminum hollow window 6 + 12A + 6 (mm) |
5 | 90 mm XPS | 100 mm EPS | 0.7 | Broken bridge aluminum hollow window 6 + 9A + 6 (mm) |
6 | 90 mm XPS | 80 mm XPS | 0.6 | Broken bridge aluminum hollow window 6 + 12A + 6 (mm) |
7 | 90 mm XPS | 60 mm PUR | 0.9 | Plastic steel hollow window 6 + 9A + 6 (mm) |
8 | 90 mm XPS | 100 mm RW | 0.8 | Plastic steel hollow window 6 + 12A + 6 (mm) |
9 | 50 mm PUR | 100 mm EPS | 0.8 | Broken bridge aluminum hollow window 6 + 12A + 6 (mm) |
10 | 50 mm PUR | 80 mm XPS | 0.9 | Broken bridge aluminum hollow window 6 + 9A + 6 (mm) |
11 | 50 mm PUR | 60 mm PUR | 0.6 | Plastic steel hollow window 6 + 12A + 6 (mm) |
12 | 50 mm PUR | 100 mm RW | 0.7 | Plastic steel hollow window 6 + 9A + 6 (mm) |
13 | 110 mm RW | 100 mm EPS | 0.9 | Plastic steel hollow window 6 + 12A + 6 (mm) |
14 | 110 mm RW | 80 mm XPS | 0.8 | Plastic steel hollow window 6 + 9A + 6 (mm) |
15 | 110 mm RW | 60 mm PUR | 0.7 | Broken bridge aluminum hollow window 6 + 12A + 6 (mm) |
16 | 110 mm RW | 100 mm RW | 0.6 | Broken bridge aluminum hollow window 6 + 9A + 6 (mm) |
Influencing Factors | ||||
---|---|---|---|---|
Mean value | A | B | C | D |
1 | 6665.52 | 6544.610 | 6855.288 | 6971.210 |
2 | 6498.965 | 6774.635 | 6804.128 | 6751.590 |
3 | 7238.155 | 7107.608 | 6761.305 | 6827.378 |
4 | 6738.91 | 6714.698 | 6720.830 | 6591.373 |
Range | 739.19 | 562.998 | 134.458 | 379.837 |
Significance of factors | A > B > D > C |
Scheme | The Saving Energy (kW·h) | Incremental Cost (RMB) | Return on Investment (RMB/kW·h) | Carbon Emission Reduction (kg) | Unguaranteed Hours (h) | Comprehensive Score | Sort |
---|---|---|---|---|---|---|---|
1 | 9181.61 | 13,120.81 | 1.43 | 4689.49 | 3978 | 0.7914 | 3 |
2 | 9215.71 | 14,007.34 | 1.52 | 4706.90 | 3996 | 0.6542 | 6 |
3 | 8856.47 | 14,947.18 | 1.69 | 4523.42 | 3936 | 0.4547 | 11 |
4 | 9525.78 | 14,857.41 | 1.56 | 4865.27 | 3999 | 0.6533 | 7 |
5 | 9543.23 | 13,972.68 | 1.46 | 4874.18 | 3998 | 0.7885 | 4 |
6 | 9498.02 | 13,778.26 | 1.45 | 4851.09 | 3952 | 0.8593 | 1 |
7 | 8912.77 | 15,644.61 | 1.76 | 4552.18 | 3987 | 0.3056 | 16 |
8 | 9491.68 | 14,333.49 | 1.51 | 4847.86 | 3955 | 0.7734 | 5 |
9 | 9076.14 | 14,426.00 | 1.59 | 4635.62 | 4012 | 0.5165 | 10 |
10 | 8657.42 | 14,919.42 | 1.72 | 4421.76 | 3942 | 0.3710 | 14 |
11 | 8265.67 | 13,725.43 | 1.66 | 4221.67 | 3967 | 0.3494 | 15 |
12 | 8490.09 | 13,242.55 | 1.56 | 4336.30 | 4063 | 0.3823 | 13 |
13 | 9462.34 | 14,876.28 | 1.57 | 4832.87 | 4005 | 0.6186 | 8 |
14 | 8972.25 | 14,288.74 | 1.59 | 4582.56 | 3959 | 0.5691 | 9 |
15 | 8976.22 | 14,470.55 | 1.61 | 4584.59 | 4072 | 0.3888 | 12 |
16 | 9102.31 | 12,766.31 | 1.40 | 4648.99 | 3964 | 0.8331 | 2 |
Weight | 0.1959 | 0.2104 | 0.2312 | 0.1755 | 0.1870 |
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Cao, P.; Sun, Q.; Li, H.; Jiao, Y. Optimization Analysis of an Energy-Saving Renovation Scheme for Building Envelopes of Existing Rural Houses Based on a Comprehensive Benefit Evaluation. Buildings 2024, 14, 454. https://doi.org/10.3390/buildings14020454
Cao P, Sun Q, Li H, Jiao Y. Optimization Analysis of an Energy-Saving Renovation Scheme for Building Envelopes of Existing Rural Houses Based on a Comprehensive Benefit Evaluation. Buildings. 2024; 14(2):454. https://doi.org/10.3390/buildings14020454
Chicago/Turabian StyleCao, Ping, Qingshi Sun, Huajun Li, and Yuanhang Jiao. 2024. "Optimization Analysis of an Energy-Saving Renovation Scheme for Building Envelopes of Existing Rural Houses Based on a Comprehensive Benefit Evaluation" Buildings 14, no. 2: 454. https://doi.org/10.3390/buildings14020454
APA StyleCao, P., Sun, Q., Li, H., & Jiao, Y. (2024). Optimization Analysis of an Energy-Saving Renovation Scheme for Building Envelopes of Existing Rural Houses Based on a Comprehensive Benefit Evaluation. Buildings, 14(2), 454. https://doi.org/10.3390/buildings14020454