Title :
Mining Building Energy Management System Data Using Fuzzy Anomaly Detection and Linguistic Descriptions
Author :
Wijayasekara, Dumidu ; Linda, Ondrej ; Manic, Milos ; Rieger, Craig
Author_Institution :
Comput. Sci. Dept., Univ. of Idaho, Idaho Falls, ID, USA
Abstract :
Building Energy Management Systems (BEMSs) are essential components of modern buildings that are responsible for minimizing energy consumption while maintaining occupant comfort. However, since indoor environment is dependent on many uncertain criteria, performance of BEMS can be suboptimal at times. Unfortunately, complexity of BEMSs, large amount of data, and interrelations between data can make identifying these suboptimal behaviors difficult. This paper proposes a novel Fuzzy Anomaly Detection and Linguistic Description (Fuzzy-ADLD)-based method for improving the understandability of BEMS behavior for improved state-awareness. The presented method is composed of two main parts: 1) detection of anomalous BEMS behavior; and 2) linguistic representation of BEMS behavior. The first part utilizes modified nearest neighbor clustering algorithm and fuzzy logic rule extraction technique to build a model of normal BEMS behavior. The second part of the presented method computes the most relevant linguistic description of the identified anomalies. The presented Fuzzy-ADLD method was applied to real-world BEMS system and compared against a traditional alarm-based BEMS. Six different scenarios were tested, and the presented Fuzzy-ADLD method identified anomalous behavior either as fast as or faster (an hour or more) than the alarm based BEMS. Furthermore, the Fuzzy-ADLD method identified cases that were missed by the alarm-based system, thus demonstrating potential for increased state-awareness of abnormal building behavior.
Keywords :
building management systems; data mining; energy consumption; energy management systems; fuzzy set theory; pattern clustering; BEMS; building energy management system data; data mining; energy consumption; fuzzy anomaly detection; fuzzy logic rule extraction technique; fuzzy-ADLD-based method; linguistic descriptions; nearest neighbor clustering algorithm; occupant comfort; Clustering algorithms; Floors; Pragmatics; Temperature measurement; Temperature sensors; Anomaly detection; building energy management systems (BEMSs); clustering; fuzzy systems; linguistics;
Journal_Title :
Industrial Informatics, IEEE Transactions on
DOI :
10.1109/TII.2014.2328291