4.7 Article

Performance evaluation of population-based metaheuristic algorithms and decision-making for multi-objective optimization of building design

期刊

BUILDING AND ENVIRONMENT
卷 198, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.buildenv.2021.107855

关键词

Multi-objective optimization; Metaheuristic algorithm; Decision-making technique; Performance evaluation; Lift-up design

资金

  1. Hong Kong (HK) Research Grants Council (RGC) Collaborative Research Fund (CRF) [C7064 18G]
  2. Hong Kong (HK) Research Grants Council (RGC) General Research Fund (GRF) [16207118]
  3. Guangdong Science and Technology Fund [2020A1515111105]
  4. Guangdong Province Key Laboratory for Climate Change and Natural Disaster Studies [2020B1212060025]
  5. Innovation Group Project of Southern Marine Science and Engineering Guangdong Laboratory [311020001]

向作者/读者索取更多资源

This study evaluated the performance of four optimization algorithms and three decision-making techniques in optimizing an unconventional building design. The algorithms showed improvement with increasing population and iterations, with PSO performing well in many aspects. The decision-making techniques tended to choose similar optimal designs, and the multi-objective optimization resulted in a better trade-off solution compared to single-objective optimization.
Optimization algorithms and decision-making techniques are major components of multi-objective optimization. This study evaluated the performance of population-based metaheuristic algorithms and decision-making techniques in optimizing an unconventional building design - a lift-up design - to maximize the areas with wind and thermal comfort in a 'hot' and 'calm' climate. Four optimization algorithms (GA, PSO, GSA, FA) and three decision-making techniques (LINMAP, TOPSIS, Shannon Entropy) were employed to optimize the lift-up design. The effectiveness and efficiency of algorithms in optimization were measured using six metrics. The evaluation revealed a steady improvement of algorithms' performance as population and number of iterations increased up to the convergence at about 6000 evaluations without excessively increasing computational time. Although no algorithm scored best across all metrics, PSO was superior in many aspects. For the algorithms, the three decision-making techniques chose similar optimum designs with slight differences in a few design parameters. The optimum solution of multi-objective optimization was a better trade-off solution for the two objective functions than that of single-objective optimization. The study recommends conducting convergence tests using the performance metrics before optimization to decide a suitable population size and number of iterations for population-based metaheuristic optimization algorithms.

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