Artificial Intelligence based Anomaly Detection of Energy Consumption in Buildings: A Review, Current Trends and New Perspectives
Yassine Himeur, Khalida Ghanem, Abdullah Alsalemi, Faycal, Bensaali, Abbes Amira

TL;DR
This paper provides a comprehensive review of AI-based anomaly detection methods for building energy consumption, highlighting current trends, challenges, and future research directions to improve energy efficiency and sustainability.
Contribution
It is the first review to systematically classify and analyze AI-driven anomaly detection frameworks for building energy consumption, offering a detailed taxonomy and identifying key challenges.
Findings
Lack of standardized definitions for anomalies
Absence of annotated datasets for training and evaluation
Need for unified performance metrics and reproducibility platforms
Abstract
Enormous amounts of data are being produced everyday by sub-meters and smart sensors installed in residential buildings. If leveraged properly, that data could assist end-users, energy producers and utility companies in detecting anomalous power consumption and understanding the causes of each anomaly. Therefore, anomaly detection could stop a minor problem becoming overwhelming. Moreover, it will aid in better decision-making to reduce wasted energy and promote sustainable and energy efficient behavior. In this regard, this paper is an in-depth review of existing anomaly detection frameworks for building energy consumption based on artificial intelligence. Specifically, an extensive survey is presented, in which a comprehensive taxonomy is introduced to classify existing algorithms based on different modules and parameters adopted, such as machine learning algorithms, feature…
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