Metamodeling of the Energy Consumption of Buildings with Daylight Harvesting – Application of Artificial Neural Networks Sensitive to Orientation

Q2 Energy
Raphaela Walger da Fonseca, F. O. Pereira
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引用次数: 3

Abstract

Daylight harvesting is a well-known strategy to address building energy efficiency. However, few simplified tools can evaluate its dual impact on lighting and air conditioning energy consumption. Artificial neural networks (ANNs) have been used as metamodels to predict energy consumption with high precision, few input parameters and instant response. However, this approach still lacks the potential to estimate consumption when there is daylight harvesting, at the ambient level, where the effect of orientation can be noted. This study investigates this potential, in order to evaluate the applicability of ANNs as a tool to aid the architectonic design. The ANNs were approached as metamodels trained based on EnergyPlus thermo-energetic simulations. The network configuration focused on determining its simplest feasible form. The input parameters adopted as the main variables of the building envelope were as follows: orientation, window-to-wall ratio and visible transmission. The effects of the encoding of orientation as a network input parameter, the number of examples of each variable for network training and changing the parameters used for the training were evaluated. The networks predicted the individualized consumption according to the end use with errors below 5%, indicating their potential to be applied as a simplified tool to support the design process, considering the elementary variables of the building envelope. The discussion of results focused on guidelines and challenges to achieve this purpose when contemplating the broadening of the metamodel scope.
采光建筑能耗的元建模——面向敏感人工神经网络的应用
日光收集是解决建筑能源效率的一种众所周知的策略。然而,很少有简单的工具可以评估其对照明和空调能耗的双重影响。人工神经网络(ann)作为元模型,具有精度高、输入参数少、响应快等特点。然而,这种方法仍然缺乏估计日光收集时的消耗的潜力,在环境水平上,可以注意到朝向的影响。本研究探讨了这种潜力,以评估人工神经网络作为辅助建筑设计工具的适用性。人工神经网络作为基于EnergyPlus热能模拟训练的元模型进行处理。网络配置的重点是确定其最简单可行的形式。作为建筑围护结构主要变量的输入参数如下:朝向、窗墙比和可见光透射率。评估了方向编码作为网络输入参数、网络训练中每个变量的样例数以及改变训练参数的效果。网络根据最终用途预测个性化消费,误差低于5%,表明它们有潜力作为一个简化的工具来支持设计过程,考虑到建筑围护结构的基本变量。结果的讨论集中在考虑扩大元模型范围时实现这一目的的指导方针和挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Daylighting
Journal of Daylighting Energy-Renewable Energy, Sustainability and the Environment
CiteScore
4.00
自引率
0.00%
发文量
18
审稿时长
10 weeks
期刊介绍: Journal of Daylighting is an international journal devoted to investigations of daylighting in buildings. It is the leading journal that publishes original research on all aspects of solar energy and lighting. Areas of special interest for this journal include, but are not limited to, the following: -Daylighting systems -Lighting simulation -Lighting designs -Luminaires -Lighting metrology and light quality -Lighting control -Building physics - lighting -Building energy modeling -Energy efficient buildings -Zero-energy buildings -Indoor environment quality -Sustainable solar energy systems -Application of solar energy sources in buildings -Photovoltaics systems -Building-integrated photovoltaics -Concentrator technology -Concentrator photovoltaic -Solar thermal
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