我要吃瓜

Article

Surrogate-assisted evolutionary multi-objective optimisation of office building glazing

Details

Citation

Brownlee AEI & Vanmosuinck ERO (2025) Surrogate-assisted evolutionary multi-objective optimisation of office building glazing. Industrial Artificial Intelligence, 3 (1), Art. No.: 4. https://doi.org/10.1007/s44244-025-00025-1

Abstract
The quantity and positioning of glazing on a building's facade has a strong influence on the building's heating, lighting, and cooling performance. Evolutionary algorithms have been effective in finding glazing layouts that optimise the trade-offs between these properties. However, this is time-consuming, needing many calls to a building performance simulation. Surrogate fitness functions have been used previously to speed up optimisation without compromising solution quality; our novelty is in the application of a surrogate to a binary encoded, multi-objective, building optimisation problem. We propose and demonstrate a process to choose a suitable model type for the surrogate: a multilayer perceptron (MLP) is found to work best in this case. The MLP is integrated with the Non-Dominated Sorting Genetic Algorithm II (NSGA-II) algorithm, and experimental results show that the surrogate leads to a significant (400x) speedup. This allows the algorithm to find solutions that are better than the algorithm without a surrogate in the same timeframe. Updating the surrogate at intervals improves the solution quality further with a modest increase in run time.

Keywords
simulation; optimisation; evolutionary algorithm; surrogate

Journal
Industrial Artificial Intelligence: Volume 3, Issue 1

StatusPublished
Publication date31/12/2025
Publication date online31/05/2025
Date accepted by journal15/04/2025
URL
eISSN2731-667X
ISBN2994-8495

People (1)

Dr Sandy Brownlee

Dr Sandy Brownlee

Senior Lecturer in Computing Science, Computing Science and Mathematics - Division

Files (1)