Authors:
Ines Ben Kraiem
1
;
Faiza Ghozzi
2
;
Andre Peninou
1
and
Olivier Teste
1
Affiliations:
1
Université de Toulouse, UT2J, IRIT, Toulouse and France
;
2
Université de Sfax, ISIMS, MIRACL, Sfax and Tunisia
Keyword(s):
Sensor Networks, Anomaly Detection, Pattern-based Method.
Related
Ontology
Subjects/Areas/Topics:
Databases and Information Systems Integration
;
Enterprise Information Systems
;
Legacy Systems
;
Non-Relational Databases
Abstract:
The detection of anomalies in real fluid distribution applications is a difficult task, especially, when we seek to accurately detect different types of anomalies and possible sensor failures. Resolving this problem is increasingly important in building management and supervision applications for analysis and supervision. In this paper we introduce CoRP ”Composition of Remarkable Points” a configurable approach based on pattern modelling, for the simultaneous detection of multiple anomalies. CoRP evaluates a set of patterns that are defined by users, in order to tag the remarkable points using labels, then detects among them the anomalies by composition of labels. By comparing with literature algorithms, our approach appears more robust and accurate to detect all types of anomalies observed in real deployments. Our experiments are based on real world data and data from the literature.