Multi-Stage Sensitivity Analysis of the Energy Demand for the Cooling of Grain Warehouses in Cold Regions of China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Multi-Stage Sensitivity Analysis Method
2.1.1. Standardized Regression Coefficient (SRC) and Partial Rank Regression Coefficient (PRRC)
2.1.2. Sobol Sensitivity Analysis Approach
2.1.3. Local Sensitivity Analysis (LSA)
2.2. Sensitivity Analysis Process
- Step 1
- Sample collection: Simlab 2.2, a free statistical software for uncertainty and sensitivity analyses [33,34], will be used to sample variables via Sobol and LHS (Latin hypercube sampling). The collected sample data were stored in Excel, and the sample input files were read through the Toolbox plug-in.
- Step 2
- Establishment of a grain warehouse energy model: The Grasshopper plug-in for the Rhino platform was used to construct a grain warehouse energy model. This visual programming environment provides an intuitive interface and flexible components, enabling effortless parametric design and simulation analysis through plug-ins [35,36]. Honeybee [37], a plug-in, was adopted to simulate the grain warehouse energy.
- Step 3
- Sensitivity analysis: Another plug-in, Colibri, exports simulation results to Excel for further data processing and analysis [38]. LHS samples and output results were imported into SPSS 22 to establish a multiple regression model for regression analysis. In addition, LHS and Sobol samples and corresponding energy use results were entered into Simlab for sensitivity analysis. The sensitivity analysis was conducted in two steps. First, three GSA methods, namely SRC, PRCC, and Sobol method, were employed to rank the sensitivity of energy use of granary cooling. The results were compared to identify the main influence parameters. Then, LAS was performed on the top-ranked design parameters to determine the influence trend of the parameters.
3. Model Construction
3.1. Sample Collection
3.2. Building the Energy Use Model for the Grain Warehouse
4. Results and Discussion
4.1. GSA Results
4.1.1. Correlation Analysis Results
4.1.2. Sensitivity Analysis Results by SRC and PRCC
4.1.3. Sensitivity Analysis Results Based on the SOBOL Method
4.1.4. Comparison of Three GSA Results
4.2. LSA Results
4.2.1. Comprehensive Local Sensitivity Analysis
4.2.2. Local Sensitivity Factor Analysis
4.3. Limitations and Future Works
- This study primarily examines granaries in cold regions, and the factors influencing the energy-efficient design of granary buildings in other climatic regions need to be further investigated. However, the proposed sensitivity analysis methodology is still applicable to other climate zones.
- Although sensitivity analyses have been conducted for grain warehouses, the factors influencing the energy-efficient design of other granary building types have not yet been studied, such as squat silos and silos. Given the different granary building types, the sensitivity analyses results should be different.
- The current work is based on the energy performance of granary buildings and overlooks other performance indicators. It is important to balance multiple performance criteria in practical applications [53,54,55,56]. Future research may need to consider additional performance indicators for granary buildings, such as cost and grain storage environment.
5. Conclusions
- (1)
- The GAS results indicate that the most influential parameters on cooling energy demand are cooling set-point temperature, roof solar absorptance, roof insulation thickness, exterior wall insulation thickness, window type, and orientation. Parameters such as roof and exterior wall solar absorptance are positively correlated with the cooling energy demand of the granary. In contrast, parameters including the cooling set-point temperature, roof thickness, and exterior wall insulation thickness are negatively correlated with the cooling energy demand of the granary.
- (2)
- The LAS results show that the cooling energy demand of grain warehouses increases significantly as the cooling set-point temperature decreases, with the greatest increase occurring at temperatures below 18 °C. A smaller solar absorptance of the roof leads to a greater effect on the reduction of the cooling energy demand of grain warehouses. When the thickness of the roof thermal insulation is less than 120 mm, the greatest reduction in cooling energy demand in grain warehouses is achieved. To reduce cooling energy consumption, it is recommended to use traditional or new thermal insulation with closed windows, ensuring that the long side of the granary is oriented between 10 degrees northwest and northeast.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Category | Parameter Name | Type | Ranges | References | |
---|---|---|---|---|---|
Shape parameters | Building length (BL) | continuous | 36~66 m | [41] | |
Building width (BW) | continuous | 21~30 m | [41] | ||
Loading height (LH) | continuous | 6~12 m | [41] | ||
Building orientation (BO) | continuous | 0~90° | |||
Roof slope (RS) | continuous | 3~45° | [42] | ||
Envelope parameters | Wall thickness (T) | discrete | 370 mm, 490 mm, 620 mm, 740 mm | ||
Window type (WD_T) | Color steel doors and windows | discrete | 6.6 w/(m2.k) | ||
Door type (D_T) | Traditional insulation and airtight doors and windows | 0.5 w/(m2.k) | |||
New thermal insulation and airtight doors and windows | 0.22 w/(m2.k) | ||||
Wall insulation type (W_T) | EPS | discrete | 0.024 w/(m.k) | [43] | |
Roof insulation type (R_T) | XPS | 0.032 w/(m.k) | |||
PU | 0.039 w/(m.k) | ||||
Wall thermal insulation thickness (W_THI) | continuous | 0~200 mm | |||
Roof thermal insulation thickness (R_THI) | continuous | 40~300 mm | |||
Wall solar absorptance (W_SA) | continuous | 0.05~0.95 | [21] | ||
Roof solar absorptance (R_SA) | continuous | 0.05~0.95 | [21] | ||
Equipmentparameter | Cooling Set-point Temperature (C_ST) | continuous | 15~25 °C |
Ranking | SRC | PRCC | Sobol (First-Order Effect) |
---|---|---|---|
1 | C_ST | C_ST | C_ST |
2 | R_SA | R_SA | R_SA |
3 | R_THI | R_THI | WD_T |
4 | W_THI | W_THI | R_THI |
5 | WD_T | W_SA | W_THI |
6 | W_SA | RS | BO |
7 | R_T | WD_T | RS |
8 | RS | R_T | LH |
9 | T | W_T | T |
10 | D_T | T | BW |
11 | W_T | LH | R_T |
12 | BO | BW | W_T |
13 | BL | BL | W_SA |
14 | LH | D_T | D_T |
15 | BW | BO | BL |
C_ST | R_SA | R_THI | W_THI | WD_T | BO | |
---|---|---|---|---|---|---|
Sensitivity factor | 0.835 | 0.367 | 0.222 | 0.236 | 0.101 | 0.008 |
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Zhang, H.; Ye, J.; Li, K.; Niu, S.; Liu, X. Multi-Stage Sensitivity Analysis of the Energy Demand for the Cooling of Grain Warehouses in Cold Regions of China. Agriculture 2024, 14, 193. https://doi.org/10.3390/agriculture14020193
Zhang H, Ye J, Li K, Niu S, Liu X. Multi-Stage Sensitivity Analysis of the Energy Demand for the Cooling of Grain Warehouses in Cold Regions of China. Agriculture. 2024; 14(2):193. https://doi.org/10.3390/agriculture14020193
Chicago/Turabian StyleZhang, Hua, Junya Ye, Kunming Li, Shujie Niu, and Xiao Liu. 2024. "Multi-Stage Sensitivity Analysis of the Energy Demand for the Cooling of Grain Warehouses in Cold Regions of China" Agriculture 14, no. 2: 193. https://doi.org/10.3390/agriculture14020193
APA StyleZhang, H., Ye, J., Li, K., Niu, S., & Liu, X. (2024). Multi-Stage Sensitivity Analysis of the Energy Demand for the Cooling of Grain Warehouses in Cold Regions of China. Agriculture, 14(2), 193. https://doi.org/10.3390/agriculture14020193