Automatic standard building category classification from smart meter data – A supervised learning approach

IF 6.6 2区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY
Synne Krekling Lien , Jayaprakash Rajasekharan
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Abstract

Increased availability of smart meter data offers better insight into buildings’ electricity usage. By classifying smart meter data by building type and presence of heating appliances, we can efficiently gain metadata about the buildings that is useful for research, grid planning, and energy efficiency policy employment. However, current smart meter classification approaches are largely based on limited datasets and building classes, or on unsupervised methods that don’t align with standard building categories and offer limited control over grouping. This article presents a supervised automatic building category classification approach for labelling smart meter data from buildings into standard building categories in the Norwegian building regulations (TEK17), and whether they have electric heating or not. 82 novel physics-based domain features are presented which can be extracted from any hourly electricity smart meter data series from buildings with a duration of months-years. The features are specifically designed to identify the building and heating type of a smart meter data series by capturing patterns such as seasonality, daily usage trends, similarities with standardized building load profiles, temperature dependency, and other domain-specific characteristics. The classification approach is trained and tested on a large dataset of 2724 buildings from 12 different building categories, both residential and non-residential, and correctly identifies the heating type and building category of unseen Norwegian smart meter data from buildings in 84 % of the test cases. The approach is generalizable to meter data from other Norwegian buildings and is also tested on buildings from other climate zones. The proposed method for smart meter data classification is proven to have high accuracy and applicability for extracting metadata for both residential and non-residential buildings in Norway.

Abstract Image

从智能电表数据中自动划分标准建筑类别--一种监督学习方法
智能电表数据的日益普及使我们能够更好地了解建筑物的用电情况。通过对智能电表数据进行建筑类型和取暖设备的分类,我们可以有效地获得有关建筑的元数据,这些数据对研究、电网规划和能效政策的制定都非常有用。然而,目前的智能电表分类方法大多基于有限的数据集和建筑类别,或基于与标准建筑类别不一致的无监督方法,对分组的控制能力有限。本文介绍了一种有监督的自动建筑类别分类方法,用于将建筑物的智能电表数据标记为挪威建筑法规(TEK17)中的标准建筑类别,以及是否有电采暖。该方法介绍了82个基于物理学的新领域特征,这些特征可从建筑物的任何小时智能电表数据系列中提取,持续时间为数月至数年。这些特征专为识别智能电表数据序列中的建筑物和供暖类型而设计,可捕捉到各种模式,如季节性、日常使用趋势、与标准化建筑物负荷曲线的相似性、温度依赖性以及其他特定领域的特征。该分类方法在一个大型数据集上进行了训练和测试,该数据集包含来自 12 个不同建筑类别(包括住宅和非住宅)的 2724 栋建筑,在 84% 的测试案例中正确识别了来自建筑物的未见挪威智能电表数据的供暖类型和建筑类别。该方法适用于挪威其他建筑的电表数据,并在其他气候区的建筑中进行了测试。事实证明,所提出的智能电表数据分类方法具有很高的准确性和适用性,可用于提取挪威住宅和非住宅建筑的元数据。
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来源期刊
Energy and Buildings
Energy and Buildings 工程技术-工程:土木
CiteScore
12.70
自引率
11.90%
发文量
863
审稿时长
38 days
期刊介绍: An international journal devoted to investigations of energy use and efficiency in buildings Energy and Buildings is an international journal publishing articles with explicit links to energy use in buildings. The aim is to present new research results, and new proven practice aimed at reducing the energy needs of a building and improving indoor environment quality.
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