Design of a Fuzzy Logic based Framework for Comprehensive Anomaly Detection in Real-World Energy Consumption Data

Authors
Publication date 2017
Host editors
  • T. Bosse
  • B. Bredeweg
Book title BNAIC 2016: Artificial Intelligence
Book subtitle 28th Benelux Conference on Artificial Intelligence, Amsterdam, The Netherlands, November 10-11, 2016 : revised selected papers
ISBN
  • 9783319674674
ISBN (electronic)
  • 9783319674681
Series Communications in Computer and Information Science
Event 28th Benelux Conference on Artificial Intelligence, BNAIC 2016
Pages (from-to) 121-136
Publisher Cham: Springer
Organisations
  • Interfacultary Research - Institute for Logic, Language and Computation (ILLC)
Abstract
Due to the rapid growth of energy consumption worldwide, it has become a necessity that the energy waste caused by buildings is explicated by the aid of automated systems that can identify anomalous behaviour. Comprehensible anomaly detection, however, is a challenging task considering the lack of annotated real-world data in addition to the real-world uncertainties such as changing weather conditions and varying building features. Fuzzy Logic enables modelling knowledge-based non-linear systems that can handle these uncertainties, and facilitates modelling human interpretable systems. This paper proposes a new method for annotating anomalies and a novel framework for interpretable anomaly detection in real-world gas consumption data belonging to the educational buildings of the Hogeschool van Amsterdam. The proposed architecture uses the Wang and Mendel rule learning with k-means clustering and does not require prior knowledge of the data, while preserving transparency of the model behaviour. Experiments have shown that the proposed system matches the performance of existing baselines using an artificial neural network while providing additional desired features such as transparency of the model behaviour and interpretability of the detected anomalies.
Document type Conference contribution
Note Code available at https://github.com/murielhol/FuzzyEnergy
Language English
Published at https://doi.org/10.1007/978-3-319-67468-1_9
Other links https://github.com/murielhol/FuzzyEnergy
Permalink to this page
Back