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Multi-zone optimisation of high-rise buildings using artificial intelligence for sustainable metropolises. Part 1: Background, methodology, setup, and machine learning results

机译:可持续大都市人工智能高层建筑多区优化。 第1部分:背景,方法,设置和机器学习结果

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摘要

Designing high-rise buildings is one of the complex tasks of architecture because it involves interdisciplinary performance aspects in the conceptual phase. The necessity for sustainable high-rise buildings has increased owing to the demand for metropolises based on population growth and urbanisation trends. Although artificial intelligence (AI) techniques support swift decision-making when addressing multiple performance aspects related to sustainable buildings, previous studies only examined single floors because modelling and optimising the entire building requires extensive computational time. However, different floor levels require various design decisions because of the performance variances between the ground and sky levels of high-rises in dense urban districts. This paper presents a multi-zone optimisation (MUZO) methodology to support decision-making for an entire high-rise building considering multiple floor levels and performance aspects. The proposed methodology includes parametric modelling and simulations of high-rise buildings, as well as machine learning and optimisation as AI methods. The specific setup focuses on the quad-grid and diagrid shading devices using two daylight metrics of LEED: spatial daylight autonomy and annual sunlight exposure. The parametric model generated samples to develop surrogate models using an artificial neural network. The results of 40 surrogate models indicated that the machine learning part of the MUZO methodology can report very high prediction accuracies for 31 models and high accuracies for six quad-grid and three diagrid models. The findings indicate that the MUZO can be an important part of designing high-rises in metropolises while predicting multiple performance aspects related to sustainable buildings during the conceptual design phase.
机译:设计高层建筑是架构的复杂任务之一,因为它涉及概念阶段的跨学科性能方面。由于基于人口增长和城市化趋势的大都市需求,可持续高层建筑的必要性增加。虽然人工智能(AI)技术支持迅速决策,但在解决与可持续建筑物相关的多个性能方面时,以前的研究仅检查了单层,因为建模和优化整个建筑需要广泛的计算时间。然而,由于密集的城市地区高升高的地面和天空水平之间的性能差异,不同的楼层各级需要各种设计决策。本文介绍了多区优化(MUZO)方法,以支持考虑多层水平和性能方面的整个高层建筑的决策。所提出的方法包括高层建筑的参数建模和模拟,以及机器学习和优化作为AI方法。具体设置侧重于使用LEED的两个日光度量的四网格和仿古遮蔽设备:空间日光自治和年度阳光曝光。参数模型产生了使用人工神经网络制定代理模型的样本。 40替代模型的结果表明,Muzo方法的机器学习部分可以报告31种型号的高预测精度和六个四网格和三种仿古模型的高精度。结果表明,Muzo可以是在大都市中设计高升高的重要部分,同时预测概念设计阶段期间与可持续建筑有关的多种性能方面。

著录项

  • 来源
    《Solar Energy》 |2021年第8期|373-389|共17页
  • 作者单位

    Delft Univ Technol Fac Architecture & Built Environm Chair Design Informat Julianalaan 134 NL-2628 BL Delft Netherlands;

    Izmir Inst Technol Dept Architecture Gulbahce Kampus TR-35430 Izmir Turkey;

    Delft Univ Technol Fac Architecture & Built Environm Chair Design Informat Julianalaan 134 NL-2628 BL Delft Netherlands;

    Yasar Univ Dept Int Logist Management Univ Caddesi 37-39 TR-35100 Izmir Turkey;

    Delft Univ Technol Fac Architecture & Built Environm Chair Design Informat Julianalaan 134 NL-2628 BL Delft Netherlands;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Performance-based design; Building simulation; Sustainability; High-rise building; Machine learning; Optimization;

    机译:基于绩效的设计;建立模拟;可持续性;高层建筑;机器学习;优化;
  • 入库时间 2022-08-19 02:54:58

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