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Recognition and classification of typical load profiles in buildings with non-intrusive learning approach

机译:使用非侵入式学习方法识别和分类建筑物中的典型荷载曲线

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摘要

The recent increasing spread of Advanced Metering Infrastructure (AMI) has enabled the collection of a huge amount of building related-data which can be exploited by both energy suppliers and users to gain insight on energy consumption patterns. In this context, data analytics-based methodologies can play a key role for performing advanced characterization, benchmarking and classification of buildings according to their typical energy use in the time domain. Traditionally, energy customers are classified according to their building end-use category. However, buildings belonging to the same category can exhibit very different energy patterns making ineffective this kind of a-priori categorization. For this reason, load profiling frameworks have been developed in the last decade to identify homogenous groups of buildings with similar daily energy profiles. The present study proposes a non-intrusive customer classification process, which does not use as predictive attributes in-field load monitoring data for the classification of unknown customers, but rather monthly energy bills and additional information on customers' habits collected by means of a phone survey. The proposed classification process is developed by analysing hourly energy consumption data of 114 electrical customers of an Italian Energy Provider. The representative daily load profiles are grouped using the "Follow the Leader" clustering algorithm and a globally optimal decision tree is employed to build a supervised classification model. The model, compared to a baseline recursive partitioning tree, leads to an increase of accuracy of about 6%. Eventually, the procedure exploits energy bill data also for estimating the magnitude of typical load profiles.
机译:最近,高级计量基础架构(AMI)的传播日益广泛,这使得能够收集大量的建筑物相关数据,供能源供应商和用户利用,以获取有关能耗模式的信息。在这种情况下,基于数据分析的方法可以在时域中根据建筑物的典型能耗来执行建筑物的高级表征,基准测试和分类的关键作用。传统上,能源客户根据其建筑物最终用途类别进行分类。但是,属于同一类别的建筑物会表现出非常不同的能量模式,从而使这种先验分类无效。因此,在过去的十年中开发了负荷分析框架,以识别具有相似每日能量分布的同类建筑。本研究提出了一种非侵入式的客户分类过程,该过程不用作对未知客户进行分类的现场负荷监测数据的预测属性,而是每月的电费单和通过电话收集的有关客户习惯的其他信息调查。拟议的分类过程是通过分析意大利一家能源供应商的114个电力客户的每小时能耗数据开发的。使用“跟随领导者”聚类算法对代表性的每日负荷曲线进行分组,并采用全局最优决策树来构建监督分类模型。与基线递归分区树相比,该模型可将准确性提高约6%。最终,该程序还利用电费单数据来估算典型负载曲线的大小。

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