Clustering Residential Electricity Consumption Data to Create Archetypes that Capture Household Behaviour in South Africa

Wiebke Toussaint, Deshendran Moodley
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引用次数: 4

Abstract

Clustering is frequently used in the energy domain to identify dominant electricity consumption patterns of households, which can be used to construct customer archetypes for long term energy planning. Selecting a useful set of clusters however requires extensive experimentation and domain knowledge. While internal clustering validation measures are well established in the electricity domain, they are limited for selecting useful clusters. Based on an application case study in South Africa, we present an approach for formalising implicit expert knowledge as external evaluation measures to create customer archetypes that capture variability in residential electricity consumption behaviour. By combining internal and external validation measures in a structured manner, we were able to evaluate clustering structures based on the utility they present for our application. We validate the selected clusters in a use case where we successfully reconstruct customer archetypes previously developed by experts. Our approach shows promise for transparent and repeatable cluster ranking and selection by data scientists, even if they have limited domain knowledge.
聚集住宅用电数据,创建捕捉南非家庭行为的原型
聚类经常用于能源领域,以确定家庭的主要电力消费模式,该模式可用于构建长期能源规划的客户原型。然而,选择一组有用的集群需要大量的实验和领域知识。虽然内部聚类验证措施在电力领域建立得很好,但它们在选择有用的聚类方面受到限制。基于南非的一个应用案例研究,我们提出了一种将隐性专家知识形式化的方法,作为外部评估措施,以创建捕捉住宅用电行为可变性的客户原型。通过以结构化的方式组合内部和外部验证措施,我们能够根据它们为我们的应用程序提供的实用程序来评估集群结构。我们在一个用例中验证选定的集群,在这个用例中,我们成功地重构了以前由专家开发的客户原型。我们的方法为数据科学家提供了透明和可重复的聚类排序和选择,即使他们的领域知识有限。
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