A machine-learning framework for daylight and visual comfort assessment in early design stages

被引:2
|
作者
Nourkojouri, Hanieh [1 ]
Zomorodian, Zahra Sadat [1 ]
Tahsildoost, Mohammad [1 ]
Shaghaghian, Zohreh [2 ]
机构
[1] Shahid Beheshti Univ, Tehran, Iran
[2] Texas A&M Univ, College Stn, TX USA
关键词
D O I
10.26868/25222708.2021.30235
中图分类号
学科分类号
摘要
This research is mainly focused on the assessment of machine learning algorithms in the prediction of daylight and visual comfort metrics in the early design stages. A dataset was primarily developed from 2880 simulations derived from Honeybee for Grasshopper. The simulations were done for a shoebox space with a one side window. The alternatives emerged from different physical features, including room dimensions, interior surfaces reflectance, window dimensions and orientations, number of windows, and shading states. 5 metrics were used for daylight evaluations, including UDI, sDA, mDA, ASE, and sVD. Quality Views were analyzed for the same shoebox spaces via a grasshopper-based algorithm, developed from the LEED v4 evaluation framework for Quality Views. The dataset was further analyzed with an Artificial Neural Network algorithm written in Python. The accuracy of the predictions was estimated at 97% on average. The developed model could be used in early design stages analyses without the need for time-consuming simulations in previously used platforms and programs.
引用
收藏
页码:1262 / 1269
页数:8
相关论文
共 50 条
  • [41] Establishing a Machine-learning Based Framework for Optimising Electronics Assembly
    Krammer, Oliver
    Al-Ma'aiteh, Tareq, I
    Martinek, Peter
    Geczy, Attila
    2021 44TH INTERNATIONAL SPRING SEMINAR ON ELECTRONICS TECHNOLOGY (ISSE), 2021,
  • [42] Toward a unified framework for interpreting machine-learning models in neuroimaging
    Lada Kohoutová
    Juyeon Heo
    Sungmin Cha
    Sungwoo Lee
    Taesup Moon
    Tor D. Wager
    Choong-Wan Woo
    Nature Protocols, 2020, 15 : 1399 - 1435
  • [43] Deep Forest as a framework for a new class of machine-learning models
    Lev V.Utkin
    Anna A.Meldo
    Andrei V.Konstantinov
    NationalScienceReview, 2019, 6 (02) : 186 - 187
  • [44] An interpretable machine-learning framework for dark matter halo formation
    Lucie-Smith, Luisa
    Peiris, Hiranya, V
    Pontzen, Andrew
    MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY, 2019, 490 (01) : 331 - 342
  • [45] Machine-Learning Techniques for the Optimal Design of Acoustic Metamaterials
    Bacigalupo, Andrea
    Gnecco, Giorgio
    Lepidi, Marco
    Gambarotta, Luigi
    JOURNAL OF OPTIMIZATION THEORY AND APPLICATIONS, 2020, 187 (03) : 630 - 653
  • [46] Human-machine design considerations in advanced machine-learning systems
    Keates, S.
    Varker, P.
    Spowart, F.
    IBM JOURNAL OF RESEARCH AND DEVELOPMENT, 2011, 55 (05)
  • [47] Confronting machine-learning with neuroscience for neuromorphic architectures design
    Khacef, Lyes
    Abderrahmane, Nassim
    Miramond, Benoit
    2018 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2018,
  • [48] Adapting machine-learning algorithms to design gene circuits
    Tom W. Hiscock
    BMC Bioinformatics, 20
  • [49] Adapting machine-learning algorithms to design gene circuits
    Hiscock, Tom W.
    BMC BIOINFORMATICS, 2019, 20 (1)
  • [50] Machine-learning approach to the design of OSDAs for zeolite beta
    Daeyaert, Frits
    Ye, Fengdan
    Deem, Michael W.
    PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2019, 116 (09) : 3413 - 3418