期刊论文详细信息
Energy Informatics
Anomaly detection in quasi-periodic energy consumption data series: a comparison of algorithms
article
Zangrando, Niccolò1  Fraternali, Piero1  Petri, Marco1  Pinciroli Vago, Nicolò Oreste1  Herrera González, Sergio Luis1 
[1] Dipartimento di Elettronica
关键词: Anomaly detection;    Time series;    Machine learning;   
DOI  :  10.1186/s42162-022-00230-7
来源: Springer
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【 摘 要 】

The diffusion of domotics solutions and of smart appliances and meters enables the monitoring of energy consumption at a very fine level and the development of forecasting and diagnostic applications. Anomaly detection (AD) in energy consumption data streams helps identify data points or intervals in which the behavior of an appliance deviates from normality and may prevent energy losses and break downs. Many statistical and learning approaches have been applied to the task, but the need remains of comparing their performances with data sets of different characteristics. This paper focuses on anomaly detection on quasi-periodic energy consumption data series and contrasts 12 statistical and machine learning algorithms tested in 144 different configurations on 3 data sets containing the power consumption signals of fridges. The assessment also evaluates the impact of the length of the series used for training and of the size of the sliding window employed to detect the anomalies. The generalization ability of the top five methods is also evaluated by applying them to an appliance different from that used for training. The results show that classical machine learning methods (Isolation Forest, One-Class SVM and Local Outlier Factor) outperform the best neural methods (GRU/LSTM autoencoder and multistep methods) and generalize better when applied to detect the anomalies of an appliance different from the one used for training.

【 授权许可】

CC BY   

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