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Explorative Multidimensional Analysis for Energy Efficiency: DataViz versus Clustering Algorithms

机译:能源效率的探索性多维分析:DataViz与聚类算法

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We propose a simple tool to help the energy management of a large building stock defining clusters of buildings with the same function, setting alert thresholds for each cluster, and easily recognizing outliers. The objective is to enable a building management system to be used for detection of abnormal energy use. We start reviewing energy performance indicators, and how they feed into data visualization (DataViz) tools for a large building stock, especially for university campuses. After a brief presentation of the University of Turin’s building stock which represents our case study, we perform an explorative analysis based on the Multidimensional Detective approach by Inselberg, using the Scatter Plot Matrix and the Parallel Coordinates methods. The k-means clustering algorithm is then applied on the same dataset to test the hypotheses made during the explorative analysis. Our results show that DataViz techniques provide quick and user-friendly solutions for the energy management of a large stock of buildings. In particular, they help identifying clusters of buildings and outliers and setting alert thresholds for various Energy Efficiency Indices.
机译:我们提出了一种简单的工具,可以帮助大型建筑物的能源管理定义具有相同功能的建筑物簇,为每个簇设置警报阈值,并轻松识别异常值。目的是使建筑物管理系统能够用于检测异常的能源使用。我们开始审查能源绩效指标,以及它们如何输入到大型建筑存量,尤其是大学校园的数据可视化(DataViz)工具中。在简要介绍了代表我们的案例研究的都灵大学建筑材料之后,我们使用了散点图矩阵和平行坐标方法,基于Inselberg的多维侦查方法进行了探索性分析。然后,将k均值聚类算法应用于同一数据集,以测试探索性分析过程中做出的假设。我们的结果表明,DataViz技术为大量建筑物的能源管理提供了快速且用户友好的解决方案。特别是,它们有助于识别建筑物群和异常值,并为各种能效指标设置警报阈值。

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