4.7 Article

Multi-objective optimization of building energy performance and indoor thermal comfort by combining artificial neural networks and metaheuristic algorithms

期刊

ENERGY AND BUILDINGS
卷 239, 期 -, 页码 -

出版社

ELSEVIER SCIENCE SA
DOI: 10.1016/j.enbuild.2021.110839

关键词

Energy efficiency; Passive strategy; Energy performance; Thermal comfort; Multi-criteria decision; Artificial neural networks; Surrogate model; Metaheuristic algorithms

资金

  1. National Center for Scientific and Technical Research (CNRST)
  2. Research Foundation for Development and Innovation in Science and Engineering (FRDISI)

向作者/读者索取更多资源

A new efficient multi-objective optimization method based on the BPO technique has been developed to improve indoor thermal comfort and energy performance of residential buildings in a Moroccan region. Results show significant reduction in thermal needs and improvement in indoor thermal comfort, with solutions using MOPSO showing best performance. The methodology is recommended for designers, engineers, architects, and engineering offices when considering multiple design variables and objectives.
During the last few years, multi-objective optimization processes have become one of the main chal-lenges for energy efficiency in buildings. In this work, a new efficient multi-objective optimization method, based on the Building Performance Optimization (BPO) technique, has been developed to improve the indoor thermal comfort and energy performance of residential buildings, i.e. a Moroccan ground floor + first floor (GFFF) house located in Marrakech region (5th climatic zone according to the Thermal Building Code in Morocco). The most influential design variables have been well explored in order to find the optimal trade-off between these two objectives. Indeed, this technique is based on the integration of Artificial Neural Networks (ANNs), in particular Multilayer Feedforward Neural Networks (MFNN), coupled with the most commonly used metaheuristic algorithms, i.e. Non-dominated Sorting Genetic Algorithm (NSGA-II), Multi-Objective Particle Swarm Optimization (MOPSO) and Multi-Objective Genetic Algorithm (MOGA), in order to minimize computation time as much as possible. The TRNSYS software was used to establish the various dynamic thermal simulations required to create the database, from which the ANNs were able to set up their learning. The results show that this methodology is being used successfully, leading to different proposed solutions in terms of building envelope design. However, only the solutions using MOPSO are finally retained, as they have shown the greatest desired performance compared to the others. Thus, the thermal needs, particularly those for heating and cooling, have been significantly reduced to 74.52% of the total, while improving the indoor thermal comfort by 4.32% compared to the base design. Finally, we strongly recommend this methodology to the different actors in this field, including designers, engineers, architects, engineering offices, etc., when several objectives need to be contrasted while simultaneously considering several design variables. (c) 2021 Elsevier B.V. All rights reserved.

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