Automated Optimum Design of Light Steel Frame Structures in Chinese Rural Areas Using Building Information Modeling and Simulated Annealing Algorithm
Abstract
:1. Introduction
2. Research Background
3. Preparation for the Proposed Framework
3.1. Parametric Structural Component Modeling
3.2. Parametric Library of Structural Components for Rural Buildings
- Two digits at the first level represent the professional type.
- Two digits at the second level represent the structural system.
- Two digits at the third level represent the component category.
- Three digits at the fourth level represent the sectional dimension.
- Three digits at the fifth level represent the component length.
4. The Proposed Framework for the Structural Design of the Rural Buildings
4.1. Model Generation Module
4.2. Model Transformation I Module
4.3. Structural Optimization Module
4.3.1. Mathematical Model and Boundary Conditions of Intelligent Structural Optimization
4.3.2. Intelligent Structural Optimization Based on the Two-Stage Simulated Annealing Algorithm
- Stage 1:
- Stage 2:
4.4. Model Transformation II Module
5. Illustrative Examples
5.1. Example I
5.2. Example II
6. Conclusions
- (1)
- Under the guidance of the corresponding standardized component coding, the parametric library of structural components for rural buildings based on the state standard established on the BIM platform can realize the integrated management of BIM components, which is convenient for the subsequent retrieval of components and rapid modeling of structure.
- (2)
- The model transformation method based on the component as the basic unit prevents data loss and conversion errors. It realizes the transformation of the BIMBase three-dimensional model and SATWE two-dimensional model and provides a data basis for subsequent structural intelligent optimization.
- (3)
- An optimization method for rural light steel frame structures based on a two-stage SA algorithm is proposed. The example results show that the material consumption and key structural indexes of the algorithm optimization scheme are comparable to those of the manual optimization scheme. The proposed optimization algorithm reduces the iteration time of the simulated annealing algorithm to search for the optimal result and has good convergence and better optimization performance.
- (4)
- The intelligent structural design reduces the computational time by six times compared to the conventional design for both example I and example II (i.e., 0.5 h versus 3 h/1.5 h versus 8 h). The proposed framework requires less adjustment and is shown to be automated, effective and efficient.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Run | Optimized Weight (kg) | Time (min) | Mean | Standard Deviation | ||
---|---|---|---|---|---|---|
Weight (kg) | Time (min) | Weight (kg) | Time (min) | |||
1 | 2440.13 | 51 | 2426.17 | 52 | 21.00 | 6 |
2 | 2410.57 | 48 | ||||
3 | 2427.81 | 56 |
Run | Weight (kg) | Time (min) | Mean | Standard Deviation | ||||
---|---|---|---|---|---|---|---|---|
Stage 1 | Stage 2 | Stage 1 | Stage 2 | Weight (kg) | Time (min) | Weight (kg) | Time (min) | |
1 | 2590.43 | 2382.29 | 7 | 19 | 2371.55 | 27 | 15.48 | 2 |
2 | 2583.17 | 2371.95 | 6 | 21 | ||||
3 | 2575.84 | 2360.41 | 6 | 22 |
Key Design Indexes | Empirical Primary Selection Scheme | Manual Optimization Scheme | Algorithmic Intelligent Optimization Scheme |
---|---|---|---|
Total steel consumption (kg) | 2702.70 | 2335.07 | 2360.41 |
Maximum interlayer displacement angle under X-directional earthquake | 1/738 | 1/715 | 1/722 |
Maximum interlayer displacement angle under Y-directional earthquake | 1/642 | 1/631 | 1/633 |
First mode and cycle | X-directional side vibration (0.5601 s) | X-directional side vibration (0.5849 s) | X-directional side vibration (0.5823 s) |
Second mode and cycle | Y-directional side vibration (0.5372 s) | Y-directional side vibration (0.5586 s) | Y-directional side vibration (0.5547 s) |
Third mode and cycle | Torsional vibration (0.4307 s) | Torsional vibration (0.4503 s) | Torsional vibration (0.4491 s) |
Run | Optimized Weight (kg) | Time (min) | Mean | Standard Deviation | ||
---|---|---|---|---|---|---|
Weight (kg) | Time (min) | Weight (kg) | Time (min) | |||
1 | 3079.82 | 127 | 3072.58 | 127 | 11.69 | 7 |
2 | 3074.36 | 133 | ||||
3 | 3063.57 | 124 |
Run | Weight (kg) | Time (min) | Mean | Standard Deviation | ||||
---|---|---|---|---|---|---|---|---|
Stage 1 | Stage 2 | Stage 1 | Stage 2 | Weight (kg) | Time (min) | Weight (kg) | Time (min) | |
1 | 3220.38 | 3049.25 | 12 | 57 | 3054.54 | 70 | 3.93 | 3 |
2 | 3215.47 | 3054.49 | 14 | 55 | ||||
3 | 3198.72 | 3059.89 | 11 | 61 |
Structural Design Key Indicators | Empirical Primary Selection Scheme | Manual Optimization Scheme | Algorithmic Intelligent Optimization Scheme |
---|---|---|---|
Total steel consumption (kg) | 3535.11 | 2959.91 | 3049.25 |
Maximum interlayer displacement angle under X-directional earthquake | 1/323 | 1/300 | 1/323 |
Maximum interlayer displacement angle under Y-directional earthquake | 1/385 | 1/367 | 1/385 |
First mode and cycle | X-directional side vibration (0.5183 s) | X-directional side vibration (0.5473 s) | X-directional side vibration (0.5392 s) |
Second mode and cycle | Y-directional side vibration (0.5074 s) | Y-directional side vibration (0.5334 s) | Y-directional side vibration (0.5310 s) |
Third mode and cycle | Torsional vibration (0.4342 s) | Torsional vibration (0.4535 s) | Torsional vibration (0.4480 s) |
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Zhou, T.; Sun, K.; Chen, Z.; Yang, Z.; Liu, H. Automated Optimum Design of Light Steel Frame Structures in Chinese Rural Areas Using Building Information Modeling and Simulated Annealing Algorithm. Sustainability 2023, 15, 9000. https://doi.org/10.3390/su15119000
Zhou T, Sun K, Chen Z, Yang Z, Liu H. Automated Optimum Design of Light Steel Frame Structures in Chinese Rural Areas Using Building Information Modeling and Simulated Annealing Algorithm. Sustainability. 2023; 15(11):9000. https://doi.org/10.3390/su15119000
Chicago/Turabian StyleZhou, Ting, Kezhao Sun, Zhihua Chen, Zhexi Yang, and Hongbo Liu. 2023. "Automated Optimum Design of Light Steel Frame Structures in Chinese Rural Areas Using Building Information Modeling and Simulated Annealing Algorithm" Sustainability 15, no. 11: 9000. https://doi.org/10.3390/su15119000
APA StyleZhou, T., Sun, K., Chen, Z., Yang, Z., & Liu, H. (2023). Automated Optimum Design of Light Steel Frame Structures in Chinese Rural Areas Using Building Information Modeling and Simulated Annealing Algorithm. Sustainability, 15(11), 9000. https://doi.org/10.3390/su15119000