A high dimensional functional time series approach to evolution outlier detection for grouped smart meters

IF 1.3 4区 工程技术 Q4 ENGINEERING, INDUSTRIAL Quality Engineering Pub Date : 2022-11-01 DOI:10.1080/08982112.2022.2135009
A. Elías, J. Morales, S. Pineda
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Abstract

Abstract Smart metering infrastructures collect data almost continuously in the form of fine-grained long time series. These massive data series often have common daily patterns that are repeated between similar days or seasons and shared among grouped meters. Within this context, we propose an unsupervised method to highlight individuals with abnormal daily dependency patterns, which we term evolution outliers. To this end, we approach the problem from the standpoint of High Dimensional Functional Time Series and we use the concept of functional depth to exploit the dynamic group structure and isolate individual meters with a different evolution. The performance of the proposal is first evaluated empirically through a simulation exercise under different evolution scenarios. Subsequently, the importance and need for an evolution outlier detection method are shown by using actual smart-metering data corresponding to photo-voltaic energy generation and circuit voltage records. Here, our proposal detects outliers that might go unnoticed by other approaches of the literature that have demonstrated to be effective capturing magnitude and shape abnormalities.
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分组智能电表演化异常点检测的高维函数时间序列方法
摘要智能计量基础设施几乎以细粒度长时间序列的形式连续收集数据。这些海量数据系列通常具有常见的日常模式,这些模式在相似的日子或季节之间重复,并在分组的仪表之间共享。在这种背景下,我们提出了一种无监督的方法来突出具有异常日常依赖模式的个体,我们称之为进化异常值。为此,我们从高维函数时间序列的角度来处理这个问题,并使用函数深度的概念来开发动态群结构,并隔离具有不同进化的单个米。该提案的性能首先通过不同进化场景下的模拟练习进行实证评估。随后,通过使用与光伏发电和电路电压记录相对应的实际智能计量数据,表明了进化异常值检测方法的重要性和必要性。在这里,我们的提案检测到了可能被文献中其他方法忽视的异常值,这些方法已被证明是有效捕捉幅度和形状异常的。
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来源期刊
Quality Engineering
Quality Engineering ENGINEERING, INDUSTRIAL-STATISTICS & PROBABILITY
CiteScore
3.90
自引率
10.00%
发文量
52
审稿时长
>12 weeks
期刊介绍: Quality Engineering aims to promote a rich exchange among the quality engineering community by publishing papers that describe new engineering methods ready for immediate industrial application or examples of techniques uniquely employed. You are invited to submit manuscripts and application experiences that explore: Experimental engineering design and analysis Measurement system analysis in engineering Engineering process modelling Product and process optimization in engineering Quality control and process monitoring in engineering Engineering regression Reliability in engineering Response surface methodology in engineering Robust engineering parameter design Six Sigma method enhancement in engineering Statistical engineering Engineering test and evaluation techniques.
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