Abstract

Secure localization under different forms of attack has become an essential task in wireless sensor networks. Despite the significant research efforts in detecting the malicious nodes, the problem of localization attack type recognition has not yet been well addressed. Motivated by this concern, we propose a novel exchange-based attack classification algorithm. This is achieved by a distributed expectation maximization extractor integrated with the PECPR-MKSVM classifier. First, the mixed distribution features based on the probabilistic modeling are extracted using a distributed expectation maximization algorithm. After feature extraction, by introducing the theory from support vector machine, an extensive contractive Peaceman-Rachford splitting method is derived to build the distributed classifier that diffuses the iteration calculation among neighbor sensors. To verify the efficiency of the distributed recognition scheme, four groups of experiments were carried out under various conditions. The average success rate of the proposed classification algorithm obtained in the presented experiments for external attacks is excellent and has achieved about 93.9% in some cases. These testing results demonstrate that the proposed algorithm can produce much greater recognition rate, and it can be also more robust and efficient even in the presence of excessive malicious scenario.

Highlights

  • The location information of the sensor node performs a critical role for numerous applications in wireless sensor networks (WSNs) such as environment monitoring, target tracking, and automatic surveillance

  • We proposed a localization attack classification method based on the distributed expectation maximization algorithm followed by support vector machines called PECPR-MKSVM

  • For the effectiveness evaluation of combining distributed feature extraction and classifier scheme, the recognition performances on two kinds of feature datasets are compared first between the proposed classifier and four similar classifiers, such as a distributed Support Vector Machines (SVM) (MoM-DSVM), a multiple kernel SVM (SimpleMKL), a typical SVM (C-SVM), and a logistic regression (LR) classifier

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Summary

Introduction

The location information of the sensor node performs a critical role for numerous applications in wireless sensor networks (WSNs) such as environment monitoring, target tracking, and automatic surveillance. In recent years, designing secure localization schemes that provide valid location information resistant to externals attacks has received much research attention [2,3,4,5,6,7,8]. Most of these secure location mechanisms can be broadly divided into two categories: cheating node detection and robust localization algorithms. We proposed a localization attack classification method based on the distributed expectation maximization algorithm followed by support vector machines called PECPR-MKSVM.

Related Work
Network Assumptions and Statistic Based
Distributed Feature Extractor Design
Distributed Classifier Design
Experimental Setup and Results
Related works
Findings
Conclusion
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