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Enhancing Validity of Green Building Information Modeling with Artificial-neural-network-supervised Learning-Taking Construction of Adaptive Building Envelope Based on Daylight Simulation as an Example

机译:以日光模拟为例,通过人工神经网络监督学习构建自适应建筑围护结构,提高绿色建筑信息建模的有效性

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摘要

Green building information modeling (Green BIM) is focused on a project using BIM as a basic tool from the beginning of the design stage and employs building performance analysis (BPA) in the design-analysis decision-making cycle to obtain an optimized design proposal. However, there are inevitable discrepancies between the simulated performance data and the data obtained from the actual environment. Neural network learning can be used in conjunction with training to obtain a predictive ability, and the resulting predictive values are more representative of actual performance than simulation values. In this study, it is proposed that a predictive value be used instead of a simulation value in judging whether design goals have been met. To construct an adaptive building envelope based on daylight simulation, this project plans to carry out the following six steps in a two-stage process: Stage 1: Data collection and learning: (1) BIM modeling, (2) BPA performance simulation, (3) production of an actual structure and illuminance measurement, and (4) collection of sample data to perform training in supervised neural network learning. Stage 2: After obtaining a predictive ability: (5) setting targets to find an optimized adaptation plan and (6) implementation of script-oriented automatic control.
机译:从设计阶段开始,绿色建筑信息模型(Green BIM)便专注于以BIM为基本工具的项目,并在设计分析决策周期中采用建筑性能分析(BPA)以获得优化的设计建议。但是,模拟性能数据与从实际环境获得的数据之间存在不可避免的差异。神经网络学习可与训练结合使用以获得预测能力,并且所得的预测值比模拟值更能代表实际性能。在这项研究中,建议在判断是否满足设计目标时,使用预测值代替模拟值。为了基于日光模拟构建自适应建筑围护结构,该项目计划分两个阶段执行以下六个步骤:阶段1:数据收集和学习:(1)BIM建模,(2)BPA性能模拟,( 3)生成实际的结构和照度测量,以及(4)收集样本数据以在有监督的神经网络学习中进行训练。阶段2:获得预测能力后:(5)设定目标以找到优化的适应计划,以及(6)实施面向脚本的自动控制。

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