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Determining key variables influencing energy consumption in office buildings through cluster analysis of pre- and post-retrofit building data

机译:通过对改造前和改造后数据的聚类分析来确定影响办公楼能耗的关键变量

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This study aims to determine key building variables influencing energy consumption in air-conditioned office buildings. The study is based in Singapore which entails tropical climatic conditions. The analysis is based on assessment of several energy audit reports concerning pre- and post-retrofit data from 56 office buildings. A list of 14 building variables, extracted from these reports form the superset. These are systematically analyzed further to derive key variables influencing energy consumption and retrofitting decisions. For this purpose, a robust iterative process is developed utilizing k-means clustering. This process tests all combinations of the 14 variables against change in energy use intensity (EUI, measured as kWh/m(2).year) for pre- and post-retrofit conditions. The results indicate that the best set of variables consists of: 1) gross floor area (GFA), 2) non-air-conditioning energy consumption, 3) average chiller plant efficiency, and 4) installed capacity of chillers. This information can be utilized to explore energy saving potential of office buildings that need to be retrofitted. The resultant clusters can also be used to benchmark buildings based on pre-retrofit conditions and energy saving potential. (C) 2017 Elsevier B.V. All rights reserved.
机译:这项研究旨在确定影响空调办公楼能耗的关键建筑变量。该研究基于新加坡,涉及热带气候条件。该分析基于对有关56栋办公楼改造前后数据的几项能源审计报告的评估。从这些报告中提取的14个建筑变量的列表构成了超集。对这些进行了系统地分析,以得出影响能耗和改造决策的关键变量。为此,利用k均值聚类开发了鲁棒的迭代过程。此过程针对改造前后的条件对能源使用强度的变化(EUI,以kWh / m(2).year衡量)测试了这14个变量的所有组合。结果表明,最佳变量集包括:1)总建筑面积(​​GFA),2)非空调能耗,3)平均冷水机组效率以及4)冷水机组的安装容量。该信息可用于探索需要翻新的办公楼的节能潜力。所得的群集也可用于根据改造前的条件和节能潜力来对建筑物进行基准测试。 (C)2017 Elsevier B.V.保留所有权利。

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