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Developing a parametric morphable annual daylight prediction model with improved generalization capability for the early stages of office building design

机译:开发参数化的每年日光预测模型,为办公楼设计的早期阶段提高泛化能力

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摘要

Building form and fenestration design decisions made in the early stages of design have considerable impact on the annual daylight performance of office buildings. Annual daylight performance needs to be evaluated at the conceptual design stage to support the building form and fenestration design decision-making process. However, the simulation modeling and ray-trace calculation required for annual daylight prediction are extremely time consuming, with an adverse impact on its feasibility in the early design stages. Machine learning-based models have received much attention to reduce the daylight simulation time; however, the generalization capability of these models is limited. This study develops an artificial neural network-based modeling approach to predict annual daylight performance in the early stages of the design process. A workflow to develop an annual daylight prediction model with higher generalization capability is proposed, through feature selection, feature engineering, and hyperparameter optimization, with an accompanying tool to integrate the machine learning model into the early design environment. The developed prediction model was validated against Radiance simulation results with a high accuracy setting and attained R2 scores of 0.988 and 0.996, MAE scores of 1.58 and 1.37, MAPE scores of 2.10% and 2.36% for UDI and DA300, respectively, while being 250 times faster. The proposed modeling approach can be extended by adding more types of parametric room modules.
机译:在设计的早期阶段制造的建筑形式和更新的设计决策对办公楼的年度日光表现具有相当大的影响。需要在概念设计阶段评估年度日光性能,以支持建筑形式和更新设计决策过程。然而,每年日光预测所需的仿真建模和射线计算是非常耗时的,对早期设计阶段的可行性产生不利影响。基于机器学习的模型得到了很多关注,以减少日光模拟时间;然而,这些模型的泛化能力是有限的。本研究开发了一种人工神经网络的建模方法,以预测设计过程的早期阶段的年度日光性能。通过具有伴随工具的特征选择,特征工程和封闭式电流计优化,提出了开发具有更高概念化能力的年度日光预测模型的工作流程,将机器学习模型集成到早期设计环境中。开发的预测模型与高精度设置的辐射仿真结果验证,达到了0.988和0.996的R2分数,MAE得分为1.58和1.37,Mape分别为UDI和DA300的2.10%和2.36%,同时为250次快点。通过添加更多类型的参数室模块,可以扩展所提出的建模方法。

著录项

  • 来源
    《Building and Environment》 |2021年第8期|107932.1-107932.16|共16页
  • 作者单位

    Harbin Inst Technol Sch Architecture 1510 66 West Dazhi St Harbin 150001 Peoples R China|Minist Ind & Informat Technol Key Lab Cold Reg Urban & Rural Human Settlement E Harbin 150001 Peoples R China;

    Harbin Inst Technol Sch Architecture 1510 66 West Dazhi St Harbin 150001 Peoples R China|Minist Ind & Informat Technol Key Lab Cold Reg Urban & Rural Human Settlement E Harbin 150001 Peoples R China;

    Harbin Inst Technol Sch Architecture 1510 66 West Dazhi St Harbin 150001 Peoples R China|Minist Ind & Informat Technol Key Lab Cold Reg Urban & Rural Human Settlement E Harbin 150001 Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Daylighting; Neural networks; Early design stage; Building performance;

    机译:夏蓝;神经网络;早期设计阶段;建筑绩效;

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