Multivariate Statistical Approach for Anomaly Detection and Lost Data Recovery in Wireless Sensor Networks
-
Roberto Magán-Carrión; José Camacho; Pedro García-Teodoro
- Abstract:
- Data loss due to integrity attacks or malfunction constitute a principal concern in wireless sensor networks (WSNs). The present paper introduces a
novel data loss/modification detection and recovery scheme in this context. Both elements, detection and data recovery, rely on a multivariate statistical analysis approach that exploits spatial density, a common feature in network environments such as WSNs. To evaluate the proposal, we consider
WSN scenarios based on temperature sensors, both simulated and real. Furthermore, we consider three different routing algorithms, showing the strong
interplay among (a) the routing strategy, (b) the negative effect of data loss on the network performance, and (c) the data recovering capability of the
approach. We also introduce a novel data arrangement method to exploit the spatial correlation among the sensors in a more efficiently manner. In this
data arrangement, we only consider the nearest nodes to a given affected sensor, improving the data recovery performance up to 99%. According to the
results, the proposed mechanisms based on multivariate techniques improve the robustness of WSNs against data loss.
- Research areas:
- Year:
- 2015
- Type of Publication:
- Article
- Keywords:
- Data recovery; Anomaly detection; multivariate analysis; Wireless sensor networks
- Journal:
- International Journal of Distributed Sensor Networks
- Volume:
- 2015
- Pages:
- 1-20
- Month:
- May
- DOI:
- 10.1155/2015/672124
Hits: 4430