Title :
Segment-Based Anomaly Detection with Approximated Sample Covariance Matrix in Wireless Sensor Networks
Author :
Miao Xie ; Jiankun Hu ; Song Guo
Author_Institution :
Sch. of Eng. & Inf. Technol., Univ. of New South Wales, Canberra, ACT, Australia
Abstract :
In wireless sensor networks (WSNs), it has been observed that most abnormal events persist over a considerable period of time instead of being transient. As existing anomaly detection techniques usually operate in a point-based manner that handles each observation individually, they are unable to reliably and efficiently report such long-term anomalies appeared in an individual sensor node. Therefore, in this paper, we focus on a new technique for handling data in a segment-based manner. Considering a collection of neighbouring data segments as random variables, we determine those behaving abnormally by exploiting their spatial predictabilities and, motivated by spatial analysis, specifically investigate how to implement a prediction variance detector in a WSN. As the communication cost incurred in aggregating a covariance matrix is finally optimised using the Spearman´s rank correlation coefficient and differential compression, the proposed scheme is able to efficiently detect a wide range of long-term anomalies. In theory, comparing to the regular centralised approach, it can reduce the communication cost by approximately 80 percent. Moreover, its effectiveness is demonstrated by the numerical experiments, with a real world data set collected by the Intel Berkeley Research Lab (IBRL).
Keywords :
covariance matrices; telecommunication security; wireless sensor networks; IBRL; Intel Berkeley Research Lab; Spearman rank correlation coefficient; WSN; approximated sample covariance matrix; communication cost reduction; data handling technique; differential compression; long-term anomaly detection; neighbouring data segments; prediction variance detector; random variables; regular centralised approach; segment-based anomaly detection; sensor node; spatial analysis; spatial predictabilities; wireless sensor networks; Correlation; Covariance matrices; Detectors; Equations; Manganese; Temperature measurement; Wireless sensor networks; Spearman’s rank correlation coefficient; Wireless sensor network; anomaly detection; differential compression; distributed computing; spatial analysis;
Journal_Title :
Parallel and Distributed Systems, IEEE Transactions on
DOI :
10.1109/TPDS.2014.2308198