Application of Integration of Transfer Learning and BIM Technology in Prefabricated Building Design Optimization
Abstract
1. Introduction
2. Literature Review
2.1. Research on Optimization of Prefabricated Building Design
2.1.1. Traditional Design Methods
2.1.2. BIM Technology-Based Design Methodology
2.2. Research on Transfer Learning
2.3. Application of BIM Technology in Assembled Building
2.4. Summary Review
3. Methods
3.1. Methodological Framework
3.2. Key Elements of Optimal Design for Prefabricated Building
3.2.1. Problems in Prefabricated Building Design
3.2.2. Structural Design Collisions for Prefabricated Buildings
3.2.3. Collision in Electrical Design of Prefabricated Building
3.2.4. Collision of Water Supply and Drainage Design for Assembled Building
3.3. Concepts and Methods of Transfer Learning
3.4. Construction of the Collision Detection and Optimization Framework for Assembled Building Design Based on Transfer Learning
4. Case Study
4.1. Project Overview
4.2. Pre-Training Model
4.2.1. Reliability Analysis
4.2.2. Sensitivity Analysis
4.3. Evaluation of the Effectiveness of Collision Detection
4.4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Roof Waterproofing Level | Basement Waterproofing Level | Seismic Fortification Intensity | Seismic Category | Assembly Rate | |
---|---|---|---|---|---|
I | II (garage) | I (transformer room, generator room, and pump room) | Six degrees | Category C | Over 50% |
No. | Project Category | Sub-Items | Explanation | Code |
---|---|---|---|---|
1 | Main engineering | Masonry structure | Brick masonry wall | A01 |
2 | Concrete structure | Cast-in-place nodes and assembled concrete | A02 | |
3 | Roofing | Substrate, thermal insulation, waterproofing | A03 | |
4 | Steel structure | Prefabrication and on-site welding of all types of steel components, anticorrosion and fireproof paint coating | A04 | |
5 | Electric engineering | Cable trestle | Wireways, switchboards, equipment | B01 |
6 | Lighting system | Lamps, switches | B02 | |
7 | Building plumbing and heating | Water supply and drainage system | Indoor and outdoor water piping and equipment installation | C01 |
8 | Fire protection system | Fire hydrant configuration, fire sprinkler system | C02 | |
9 | Ventilation and air conditioning | Air supply and exhaust system | Ducts and fittings, equipment | D00 |
10 | Intelligent building | - | Cable laying, tank box, conduit installation, equipment | E00 |
Methods | MAE | Std |
---|---|---|
Convolutional neural networks (CNN) | 0.221 | 0.264 |
Deep neural networks (DNN) | 0.199 | 0.238 |
Recurrent neural networks (RNN) | 0.208 | 0.248 |
Collision Type | Initial Data | Optimized Data | Rate of Change ∆ | Predicted Results | Predicted Versus Optimized Variance Rate | |
---|---|---|---|---|---|---|
Total collisions | 1196 | 1313 | 9.78% | 1288 | −1.90% | |
Number of collisions that may lead to rework | 189 | 163 | −13.76% | 169 | 3.68% | |
Collision detection efficiency (%) | 15.6 | 17.3 | 10.90% | 16.8 | −2.89% | |
Number of collisions resolvable in the field | 884 | 832 | −5.88% | 857 | 3.00% | |
Percentage of invalid collisions (%) | 84.1 | 82.7 | −1.66% | 83.2 | 0.60% | |
Structural internal collisions (%) | 9.1 | 8.8 | −3.30% | 9.2 | 4.55% | |
Electrical internal collisions (%) | 0.89 | 0.96 | 7.87% | 0.95 | −1.04% | |
Drainage internal collisions (%) | 1.12 | 1.28 | 14.29% | 1.25 | −2.34% | |
Multi-professional collisions | Structural and electrical disciplines collisions (%) | 0.69 | 0.68 | −1.45% | 0.62 | −8.82% |
Structural and drainage collisions (%) | 0.72 | 0.78 | 8.33% | 0.79 | 1.28% | |
Electrical and drainage collisions (%) | 1.08 | 1.15 | 6.48% | 1.13 | −1.74% |
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Ouyang, T.; Liu, F.; Chen, L.; Qin, D.; Li, S. Application of Integration of Transfer Learning and BIM Technology in Prefabricated Building Design Optimization. Buildings 2025, 15, 3029. https://doi.org/10.3390/buildings15173029
Ouyang T, Liu F, Chen L, Qin D, Li S. Application of Integration of Transfer Learning and BIM Technology in Prefabricated Building Design Optimization. Buildings. 2025; 15(17):3029. https://doi.org/10.3390/buildings15173029
Chicago/Turabian StyleOuyang, Ting, Fengtao Liu, Lingling Chen, Dongyue Qin, and Sining Li. 2025. "Application of Integration of Transfer Learning and BIM Technology in Prefabricated Building Design Optimization" Buildings 15, no. 17: 3029. https://doi.org/10.3390/buildings15173029
APA StyleOuyang, T., Liu, F., Chen, L., Qin, D., & Li, S. (2025). Application of Integration of Transfer Learning and BIM Technology in Prefabricated Building Design Optimization. Buildings, 15(17), 3029. https://doi.org/10.3390/buildings15173029