A Generative Design Approach to Improving the Environmental Performance of Educational Buildings in Hot Arid Climates. (Assiut National University as a Case Study)

Q1 Engineering
Ahmad Mady, Samir Elsagheer, T. Asawa, Hatem Mahmoud
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引用次数: 0

Abstract

The architectural design process is complex, involving diverse objectives that may be contradictory, and on which orientation exerts significant influence. The artificial intelligence application, Generative Design facilitates solving multi-objective design dilemmas through the creation and evaluation of numerous design alternatives. However, its exploration in educational buildings in hot arid climates remains limited. Given the impact of spaces’ function distribution, this study aims to optimize it in the typical plans of educational buildings. Employing a multi-objective design approach to enhance environmental performance. The study is conducted and evaluated in national universities in Egypt as a case study, specifically in Assiut City. The results revealed that the optimum design for a certain objective has not equated to optimal performance for other goals, highlighting an inherent contradiction between them. Among 26,334 possible alternatives for spaces’ function distribution, the difference between the optimal scenario and the least favourable one is significant for the parameters related to study spaces: natural daylighting, and visual comfort, ranging from 10% to 24%, besides around 1% difference for parameters related to the whole building, including energy consumption, thermal comfort, and carbon emission. This research offers a framework applicable to various building types. Additionally, it encourages decision-makers to adopt a no-cost sustainable design approach.
改善干旱炎热气候条件下教育建筑环境性能的生成设计方法。(以阿苏特国立大学为例)
建筑设计过程十分复杂,涉及多种目标,这些目标可能相互矛盾,并且对设计方向产生重大影响。人工智能应用 "生成式设计 "通过创建和评估众多备选设计方案,为解决多目标设计难题提供了便利。然而,在干旱炎热气候条件下的教育建筑中,对这一应用的探索仍然有限。考虑到空间功能分布的影响,本研究旨在优化教育建筑的典型规划。采用多目标设计方法来提高环境性能。研究以埃及的国立大学为案例进行了评估,特别是在阿苏特市。研究结果表明,针对某一目标的最佳设计并不等于针对其他目标的最佳性能,这凸显了两者之间的内在矛盾。在 26334 种可能的空间功能分配方案中,最佳方案与最不利方案之间的差异在与研究空间相关的参数(自然采光和视觉舒适度)方面非常明显,从 10%到 24%不等,而与整个建筑相关的参数(包括能耗、热舒适度和碳排放)的差异约为 1%。此外,它还鼓励决策者采用无成本的可持续设计方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Future Cities and Environment
Future Cities and Environment Engineering-Architecture
CiteScore
3.10
自引率
0.00%
发文量
7
审稿时长
17 weeks
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