Intrusion Detection in Smart Buildings Using Energy Anomalies: A Long Short-Term Memory Model Approach

Authors

DOI:

https://doi.org/10.34190/eccws.24.1.3753

Keywords:

Intrusion Detection System, Anomaly Detection, smart buildings, energy consumption patterns, Artificial Intelligence

Abstract

The increasing prevalence of smart buildings within urban environments necessitates advanced security measures to detect and mitigate potential threats. This study leverages the data by a private company ASHRAE, the ASHRAE - Great Energy Predictor III dataset (GEPIII). The research question is: How can anomalous energy consumption be used as a proxy for identifying intrusions in smart buildings? By establishing baseline energy consumption patterns for building operations, we investigate how deviations from these patterns may signal the presence of unauthorised individuals. The anomaly detection in this study focuses on deviations in energy consumption patterns, considering not only magnitude and frequency but also duration, timing, rate of change, consistency across similar conditions, correlation with external factors like weather, aggregate daily or monthly usage, geospatial distribution within the building, and statistical outliers. In this study, we employ a Long Short-Term Memory (LSTM) neural network for our anomaly detection task, capitalising on their ability to capture dependencies in sequential data. After training our LSTM model, we conducted extensive validation to assess its performance. The dataset provides meter readings from over 1300 commercial buildings, of which we used a subset of 100 randomly selected buildings for this study due to computational resource limitations. Using IoT with interconnected sensing devices in smart buildings to collect data, combined with AI is an emerging research area in building security. Results highlight the potential of this approach to provide tools for enhancing the security of smart buildings, with implications for broader urban safety systems. Broader implications are that threats can be detected pre-emptively by using the developed model, or buildings can be designed and then a simulation can be run against the developed AI model, influencing future building codes or policy changes for the governance of urban environments.

Author Biographies

Ayse Glass, HafenCity University Hamburg

Dr. Ayse Glass, PhD in Architecture, is a researcher at HafenCity University, specializing in AI-driven design. Her work in Computational Design and AI methods has yielded publications in Urban Studies and Architecture. A member of the Turkish Architects Chamber and Deutsche Gesellschaft für Akustik, she advances innovative design solutions. 

Siphesihle Sithungu, University of Johannesburg

Siphesihle Sithungu holds a PhD in Computer Science and is currently a Senior Lecturer at the University of Johannesburg. His research interests are Bio-Inspired AI, Representation Learning and Critical Information Infrastructure Protection. Siphesihle is a committee member of IFIP TC12, Working Group 12.9 as well as multiple international conferences.

Roman Glass, Université Grenoble Alpes

Dr. Roman Glass, PhD in Management, is a Solution Architect at Bauer Media Group, specializing in AI-driven systems. His research explores Algorithmic Management, and Critical Management Theory, with publications on AI governance. A member of the European Group for Organizational Studies, Dr. Glass grounds theory to advance AI. 

Jörg Müller-Lietzkow, HafenCity University Hamburg

Prof. Dr. Jörg Müller-Lietzkow is President of HafenCity University Hamburg and conducts research on digitalization, media economics, games, smart cities, and internet policy. Previously, he was a professor in Paderborn. He advises politics and industry, was a member of the German Bundestag’s AI Enquiry Commission, and is deeply involved in digital transformation processes.

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Published

2025-06-25