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Cluster analysis and prediction of residential peak demand profiles using occupant activity data

机译:使用居住者活动数据进行聚类分析和预测住宅高峰需求曲线

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Researching the dynamics of residential electricity consumption at finely-resolved timescales is increasingly practical with the growing availability of high-resolution data and analytical methods to characterize them. One methodological approach that is popular for exploring consumption dynamics is load profile clustering. Despite an abundance of available algorithmic techniques, clustering load profiles is challenging because clustering methods do not always capture the temporal aspects of electricity consumption and because clusters are difficult to explain without additional descriptive household data. These challenges limit the use of cluster analysis to better understand behavioral and other drivers of electricity usage patterns.We address these challenges by applying a novel clustering approach to a unique data set of high-resolution electricity and occupant time-use data from UK households. We cluster cumulative rather than raw load profiles to capture their full shape. Our clustering approach identifies two distinct patterns of electricity consumption during evening weekdays (5-9 p.m.), which are primarily differentiated by the timing of their peak demand. Next, we apply several classification algorithms to assess the potential for using time-use activity data to predict membership in these distinct usage clusters. The methods we use are suited to this predictive modeling context and are able to identify key activities driving patterns of electricity demand. We discuss how such an approach can inform more targeted strategies for residential peak demand reduction and response interventions as well as improve our understanding of constraints and opportunities for demand-side flexibility in the residential sector.
机译:随着高分辨率数据和表征这些数据的分析方法的日益普及,研究在精细分辨的时间尺度上的住宅用电动态越来越实用。负载分布聚类是一种流行的探索消费动态的方法。尽管有大量可用的算法技术,但群集负载配置文件仍具有挑战性,因为群集方法无法始终捕获电力消耗的时间方面的信息,并且如果没有其他描述性家庭数据也很难解释群集。这些挑战限制了使用聚类分析来更好地了解用电模式的行为和其他驱动因素。我们通过将新颖的聚类方法应用于来自英国家庭的高分辨率电力和居住时间数据的独特数据集,来应对这些挑战。我们将累积而不是原始负荷曲线聚类以捕获其完整形状。我们的聚类方法确定了工作日晚上(下午5点至晚上9点)的两种不同的用电量模式,这些模式的主要区别在于其用电高峰时段。接下来,我们应用几种分类算法来评估使用时间使用活动数据来预测这些不同使用集群中成员身份的潜力。我们使用的方法适用于这种预测性建模环境,并且能够识别驱动电力需求模式的关键活动。我们将讨论这种方法如何为住宅高峰需求减少和响应干预措施提供更有针对性的策略,以及如何增进我们对住宅部门需求侧灵活性的制约因素和机会的理解。

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