Efficiency Analysis of the Photovoltaic Shading and Vertical Farming System by Employing the Artificial Neural Network (ANN) Method

IF 3.1 3区 工程技术 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Buildings Pub Date : 2023-12-29 DOI:10.3390/buildings14010094
Weihao Hao, Abel Tablada, Xuepeng Shi, Lijun Wang, Xi Meng
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Abstract

Productive facades, consisting of photovoltaic shading and vertical farming systems, have been proposed as a means to improve the thermal and visual status of residential buildings while also maintaining energy performance and providing vegetables. However, how to quickly and accurately predict electricity and vegetable output during the numerous influencing architectural and environmental factors is one of the key issues in the early stages of design, and few studies have investigated the impact of such structures on both indoor environmental qualities and production performance. In this paper, we present a novel prediction method that uses experimental data to train and test an artificial neural network (ANN). The results indicated that using the Bipolar Sigmoid activation function to process the experimental data input to the artificial neuron network gives more accurate predicted results both in the yield of photovoltaic shading and vertical farming systems. In addition, this prediction method was applied to a typical high-rise residential building in Singapore to assess the self-sufficiency potential of high-rise residential buildings integrated with productive facades. The results indicated that the upper part of the building can meet 20.0–23.1% of the annual household electricity demand of a family of four in a four-room residential unit in Singapore and almost the entire year’s vegetable demand, while the middle part can meet 18.4–21.2% and 89.1%, respectively. The results demonstrated the importance of a productive facade in reducing energy demand, enhancing food security, and improving indoor visual and thermal comfort.
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采用人工神经网络 (ANN) 方法分析光伏遮阳和垂直耕作系统的效率
由光伏遮阳和垂直耕作系统组成的生产性外墙已被提出,作为改善住宅建筑热能和视觉状况的一种手段,同时还能保持能源性能和提供蔬菜。然而,如何在影响建筑和环境因素众多的情况下快速准确地预测电力和蔬菜产量是设计初期的关键问题之一,而且很少有研究调查此类结构对室内环境质量和生产性能的影响。在本文中,我们提出了一种新的预测方法,利用实验数据来训练和测试人工神经网络(ANN)。结果表明,使用双极西格码激活函数来处理输入人工神经元网络的实验数据,能更准确地预测光伏遮阳和垂直耕作系统的产量。此外,该预测方法还被应用于新加坡一栋典型的高层住宅建筑,以评估高层住宅建筑与生产性外墙相结合的自给自足潜力。结果表明,建筑上部可满足新加坡一个四室住宅单元中四口之家全年用电需求的 20.0%-23.1%,以及几乎全年的蔬菜需求,而中部则可分别满足 18.4%-21.2%和 89.1%。研究结果表明,生产性幕墙在减少能源需求、提高食品安全以及改善室内视觉和热舒适度方面具有重要作用。
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来源期刊
Buildings
Buildings Multiple-
CiteScore
3.40
自引率
26.30%
发文量
1883
审稿时长
11 weeks
期刊介绍: BUILDINGS content is primarily staff-written and submitted information is evaluated by the editors for its value to the audience. Such information may be used in articles with appropriate attribution to the source. The editorial staff considers information on the following topics: -Issues directed at building owners and facility managers in North America -Issues relevant to existing buildings, including retrofits, maintenance and modernization -Solution-based content, such as tips and tricks -New construction but only with an eye to issues involving maintenance and operation We generally do not review the following topics because these are not relevant to our readers: -Information on the residential market with the exception of multifamily buildings -International news unrelated to the North American market -Real estate market updates or construction updates
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