4.6 Article

Multi-View Data Analysis Techniques for Monitoring Smart Building Systems

Journal

SENSORS
Volume 21, Issue 20, Pages -

Publisher

MDPI
DOI: 10.3390/s21206775

Keywords

evolutionary clustering; multi-view clustering; multi-instance learning; closed patterns; streaming data; formal concept analysis; smart buildings

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In smart buildings, various systems work together and sensors collect massive amounts of data, making monitoring tasks challenging due to the heterogeneous nature of the data. The MV Multi-Instance Clustering algorithm shows promise in analyzing sensor data and detecting deviations in system behavior within the smart building domain.
In smart buildings, many different systems work in coordination to accomplish their tasks. In this process, the sensors associated with these systems collect large amounts of data generated in a streaming fashion, which is prone to concept drift. Such data are heterogeneous due to the wide range of sensors collecting information about different characteristics of the monitored systems. All these make the monitoring task very challenging. Traditional clustering algorithms are not well equipped to address the mentioned challenges. In this work, we study the use of MV Multi-Instance Clustering algorithm for multi-view analysis and mining of smart building systems' sensor data. It is demonstrated how this algorithm can be used to perform contextual as well as integrated analysis of the systems. Various scenarios in which the algorithm can be used to analyze the data generated by the systems of a smart building are examined and discussed in this study. In addition, it is also shown how the extracted knowledge can be visualized to detect trends in the systems' behavior and how it can aid domain experts in the systems' maintenance. In the experiments conducted, the proposed approach was able to successfully detect the deviating behaviors known to have previously occurred and was also able to identify some new deviations during the monitored period. Based on the results obtained from the experiments, it can be concluded that the proposed algorithm has the ability to be used for monitoring, analysis, and detecting deviating behaviors of the systems in a smart building domain.

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