Producing domestic energy benchmarks using a large disaggregate stock model

D. Godoy-Shimizu, Rob Liddiard, S. Evans, Sung Min Hong, Dominic Humphrey, P. Ruyssevelt, D. Mumovic, Philip Steadman
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Abstract

Within the UK, domestic buildings account for 16% of total national emissions. Considerable improvements to the performance of the existing building stock will be necessary in the context of the UK’s commitment to emissions reductions, and for this to be achieved successfully and efficiently will require an improved understanding of the current performance of the stock. This paper presents an analysis of metered gas and electricity use from 808,559 dwellings with detailed building characteristic data in London, showing how energy use can be examined using a highly detailed, fully disaggregate building stock model. New gas and electricity benchmarks have been produced for houses (split by the level of attachment) and flats, for both gas- and electrically-heated properties. The paper shows how energy use varies with form, and how the choice of units influences the relative performance of different types. Comparing gas use across the types, for example, when calculated as kWh/m2, consumption follows building compactness, but when calculated as kWh/household, the trends follow building size. Finally, the paper examines how energy use varies with building thermal performance, using the Heat Loss Parameter (HLP), a standardised measure which accounts for thermal transfer through building envelopes as well as via air flow. Practical Application: This paper presents domestic energy consumption benchmarks based on measured not modelled data, produced from a large sample of London houses and flats. Results are shown for different dwelling types and heating fuels. Additionally, the relationship between gas use and envelope thermal performance is explored. The results will hopefully be beneficial for researchers, policy-makers and designers interested in better understanding current domestic energy use, and informing decisions about future improvements to energy efficiency within the stock. This paper also provides details for anyone interested in the production of the domestic benchmarks for the CIBSE benchmarking tool.
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利用大型分类库存模型制定国内能源基准
在英国,国内建筑的排放量占全国总排放量的 16%。为了实现英国的减排承诺,有必要大力改善现有建筑的性能,而要成功、高效地实现这一目标,就必须更好地了解现有建筑的性能。本文分析了伦敦 808,559 个住宅的燃气和电力使用情况,并提供了详细的建筑特征数据,展示了如何使用高度详细、完全分类的建筑群模型来检查能源使用情况。新的燃气和电力基准是针对住宅(按附属物等级划分)和公寓(燃气和电加热)制定的。文件显示了能源使用如何随形式而变化,以及单元的选择如何影响不同类型的相对性能。例如,在比较不同类型的燃气使用量时,如果按千瓦时/平方米计算,消耗量与建筑物的紧凑程度有关,但如果按千瓦时/户计算,趋势则与建筑物的大小有关。最后,本文使用热损失参数(HLP)研究了能源使用量如何随建筑热性能而变化,热损失参数是一种标准化的测量方法,它考虑了通过建筑围护结构以及空气流动进行的热传递。实际应用:本文以伦敦住宅和公寓的大量样本为基础,介绍了基于测量数据(而非模型数据)的家庭能耗基准。结果显示了不同住宅类型和供暖燃料的情况。此外,还探讨了燃气使用和围护结构热性能之间的关系。希望这些结果能对研究人员、政策制定者和设计师有所帮助,使他们更好地了解当前的住宅能源使用情况,并为今后提高住宅能源效率提供决策依据。本文还为任何对 CIBSE 基准工具的家用基准制作感兴趣的人提供了详细信息。
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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