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Design exploration of quantitative performance and geometry typology for indoor arena based on self-organizing map and multi-layered perceptron neural network

机译:基于自组织图和多层感知器神经网络的室内竞技场量化性能和几何学类型设计探索

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摘要

During the early design process, simulations allow numeric assessment and 3D models allow visual inspection for qualitative criteria. However, exploring different design alternatives based on both is challenging. To support the design exploration of quantitative performance and geometry typology of various design alternatives during the early design stages of indoor arenas, this paper proposed a novel design method of SOM-MLPNN by combing self-organizing map (SOM) and multi-layer perceptron neural network (MLPNN), based on the inspiration of local linear mapping based on self-organizing map (SOM-LLM). In SOM-LLM or SOM-MLPNN, the SOM can support designers to explore the whole design space according to geometry typologies and provides reference/labelled inputs for LLM/MLPNN to approximate multiple quantitative performance data for various design alternatives. Both SOM-LLM and SOM-MLPNN are applied and compared in a design of indoor arena. Besides the development of the method, original contributions include 1) proposing two operations (using a large size of SOM network and using a small amount of input data to train the SOM network) to save the computational time and increase the accuracy in data approximation and 2) proposing a series of data visualizations to interpret the results and support design explorations in different ways.
机译:在早期设计过程中,仿真可以进行数值评估,而3D模型则可以通过目视检查定性标准。然而,基于两者探索不同的设计替代方案具有挑战性。为了支持室内竞技场早期设计阶段各种设计方案的定量性能和几何类型的设计探索,提出了一种结合自组织图(SOM)和多层感知器神经网络的SOM-MLPNN设计方法。网络(MLPNN),基于基于自组织映射(SOM-LLM)的局部线性映射的灵感。在SOM-LLM或SOM-MLPNN中,SOM可支持设计人员根据几何类型探索整个设计空间,并为LLM / MLPNN提供参考/标记输入,以近似多种设计方案的定量性能数据。 SOM-LLM和SOM-MLPNN在室内竞技场的设计中均得到了应用和比较。除了方法的发展外,最初的贡献还包括:1)提出两项操作(使用大型SOM网络和使用少量输入数据来训练SOM网络),以节省计算时间并提高数据逼近的准确性;以及2)提出一系列数据可视化以解释结果并以不同方式支持设计探索。

著录项

  • 来源
    《Automation in construction》 |2020年第6期|103163.1-103163.19|共19页
  • 作者

  • 作者单位

    South China Univ Technol Sch Architecture Guangzhou Peoples R China|South China Univ Technol State Key Lab Subtrop Bldg Sci Guangzhou Peoples R China|Delft Univ Technol Dept Architectural Engn & Technol Chair Design Informat Delft Netherlands;

    South China Univ Technol Sch Architecture Guangzhou Peoples R China|South China Univ Technol State Key Lab Subtrop Bldg Sci Guangzhou Peoples R China;

    Delft Univ Technol Dept Architectural Engn & Technol Chair Design Informat Delft Netherlands;

    Tech Univ Dresden Fac Civil Engn Inst Bldg Construct Dresden Germany;

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

    Comprehensive design exploration; Complex indoor arena; SOM-LLM (local linear mapping based on self-organizing map); SOM-MLPNN (multi-layer perceptron neural network based on self-organizing map);

    机译:全面的设计探索;复杂的室内竞技场;SOM-LLM(基于自组织映射的局部线性映射);SOM-MLPNN(基于自组织映射的多层感知器神经网络);

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