Rapid Simulation of Optimally Responsive Façade during Schematic Design Phases: Use of a New Hybrid Metaheuristic Algorithm
Abstract
:1. Introduction
2. Related Work: Responsive Façade Design, Parametric Automation, and Optimization
2.1. Responsive Façade Design for Sustainable Architecture
2.2. Problems in BPS for Early-Phase Responsive Design Validation
2.3. A Need for Rapid Optimization Methods in the Early-Stage Simulation of a Moving Pattern of Adaptive Building Geometry
3. Proposed Method
3.1. Test Building Site and Design
3.2. Preliminary Sensor Tests and Hardware Installations for Data Transfer
3.3. Hybridization of Optimization Algorithms: Tabu-based Adaptive Pattern Search Simulated Annealing (T-APSSA)
4. Validation of the Method
4.1. Validation of T-APSSA for BPS Practice
4.2. Encoding T-APSSA into BPS and Test Results
5. Application to a Design Experiment and Results
5.1. Development of a Cyber-Physical BPS Interface Using VPL
5.2. Field Tests: Synchronized Data Transfer and Design Optimization
5.3. Design Case Studies for Algorithm Verification
5.3.1. Validation of Daylight Performance
5.3.2. Validation of Energy Performance and Multi-Objective Optimization
6. Conclusions and Future Work
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Nomenclature
Ω | Solution domain |
xθ | Vector representing θ-th trial solution |
∆i | Mesh size parameter of direct search |
∆q | Poll size parameter of direct search |
Ni | Mesh grid space |
dk | Spanning coordinate axis |
E | Evaluation fitness |
ξ | Tabu memory length |
t | Tabu list vector |
rTR | Radius of a circle around t |
λ | Random number |
Appendix A
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Yi, H.; Kim, M.-J.; Kim, Y.; Kim, S.-S.; Lee, K.-I. Rapid Simulation of Optimally Responsive Façade during Schematic Design Phases: Use of a New Hybrid Metaheuristic Algorithm. Sustainability 2019, 11, 2681. https://doi.org/10.3390/su11092681
Yi H, Kim M-J, Kim Y, Kim S-S, Lee K-I. Rapid Simulation of Optimally Responsive Façade during Schematic Design Phases: Use of a New Hybrid Metaheuristic Algorithm. Sustainability. 2019; 11(9):2681. https://doi.org/10.3390/su11092681
Chicago/Turabian StyleYi, Hwang, Mi-Jin Kim, Yuri Kim, Sun-Sook Kim, and Kyu-In Lee. 2019. "Rapid Simulation of Optimally Responsive Façade during Schematic Design Phases: Use of a New Hybrid Metaheuristic Algorithm" Sustainability 11, no. 9: 2681. https://doi.org/10.3390/su11092681
APA StyleYi, H., Kim, M. -J., Kim, Y., Kim, S. -S., & Lee, K. -I. (2019). Rapid Simulation of Optimally Responsive Façade during Schematic Design Phases: Use of a New Hybrid Metaheuristic Algorithm. Sustainability, 11(9), 2681. https://doi.org/10.3390/su11092681