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2021

Automated Anomaly Detection In Energy Consumption Time Series Of Buildings Through Pattern Recognition Techniques

Abstract

In recent years, the technological development in virtually every sector has often made it possible to consider real-world data – thanks to the ever-growing ease in collecting and storing these information – as an increasingly valuable resource to guide experts and decision-makers in a multitude of tasks. Among these, the analysis of energy consumption in large buildings is one of the areas of research that is subject to continuous innovation and refinements, as more and more data is made available through the installation of systems that ultimately aim at reducing inefficiencies by guiding the users towards a more “energetically responsible” behavior and by detecting potentially anomalous events during building operation. While collecting and storing data has seemingly become effortless, their analysis often still requires a certain degree of expert knowledge for intervention, due to the fact that it is basically impossible to define an unanimous criteria for “correct” or “incorrect” energy behavior at a whole building-level and it is even harder to investigate the individual causes of inefficiencies at a sub-meter-level starting from aggregate data. This work proposes a methodology for anomaly detection and diagnosis in large non-residential buildings that is built upon one of the newest and most promising techniques for time series analysis, the Matrix Profile (MP). Starting from an extensive review of the existing works that have contributed to the development of the Matrix Profile, its critical issues in the research field of energy data analytics are examined and a variation of the original technique, called Contextual Matrix Profile (CMP), is adopted for analysis on daily load profiles of power demand data measured by a monitoring system connected to a Medium Voltage/Low Voltage (MV/LV) transformation cabin of a university campus (i.e., Politecnico di Torino). Conventional supervised and unsupervised learning techniques, such as clustering and regression trees, are employed for the purpose of grouping together examined days with similar power demand profiles and set up the required input parameters for the CMP, while the anomaly detection step is based on the CMP output and on the combined results of two techniques – the “elbow” method and the boxplot – in order to find out the optimal number of days to be marked as “anomalous”. The root causes of unexpected behaviors in anomalous days are then investigated by defining a metric that ranks sub-loads in terms of their impact on the anomaly at a meter-level. Climatic conditions are also taken into account with the aim of providing possible explanations for the behavior of sub-loads that, during their operation, are particularly influenced by factors related to seasonality, such as external air temperature.

References

  • Simone Deho'. Application of data analytics processes for the detection of anomalous energy patterns in buildings. Rel. Alfonso Capozzoli, Marco Savino Piscitelli, Roberto Chiosa. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Energetica E Nucleare, 2021

A Data Analytics-Based Energy Information System (EIS) Tool to Perform Meter-Level Anomaly Detection and Diagnosis in Buildings

Abstract

Recently, the spread of smart metering infrastructures has enabled the easier collection of building-related data. It has been proven that a proper analysis of such data can bring significant benefits for the characterization of building performance and spotting valuable saving opportunities. More and more researchers worldwide are focused on the development of more robust frameworks of analysis capable of extracting from meter-level data useful information to enhance the process of energy management in buildings, for instance, by detecting inefficiencies or anomalous energy behavior during operation. This paper proposes an innovative anomaly detection and diagnosis (ADD) methodology to automatically detect at whole-building meter level anomalous energy consumption and then perform a diagnosis on the sub-loads responsible for anomalous patterns. The process consists of multiple steps combining data analytics techniques. A set of evolutionary classification trees is developed to discover frequent and infrequent aggregated energy patterns, properly transformed through an adaptive symbolic aggregate approximation (aSAX) process. Then a post-mining analysis based on association rule mining (ARM) is performed to discover the main sub-loads which mostly affect the anomaly detected at the whole-building level. The methodology is developed and tested on monitored data of a medium voltage/low voltage (MV/LV) transformation cabin of a university campus.

References

  • Chiosa, R., Piscitelli, M. S., & Capozzoli, A. (2021). A data analytics-based energy information system (eis) tool to perform meter-level anomaly detection and diagnosis in buildings. Energies, 14(1), 237.