Abstract

In recent years, wireless sensor networks have been extensively deployed to collect various data. Due to the effect of harsh environments and the limitation of the computing and communication capabilities of sensor nodes, the quality and reliability of sensor data are affected by outliers. Thus, an effective outlier detection method is essential. The existing outlier detection methods have some drawbacks, such as extra resource consumption introduced by the size growth of a local detector, poor performance of combination methods of local detectors, and the weak adaptability of the dynamic changes of the environment, etc. We propose an isolation-based distributed outlier detection framework using nearest-neighbor ensembles (iNNE) to effectively detect outliers in wireless sensor networks. In our proposed framework, local detectors are constructed in each node by the iNNE algorithm. A new combination method taking advantage of the spatial correlation among sensor nodes for local detectors is presented. The method is based on the weighted voting idea. In addition, we introduce a sliding window to update local detectors, which enables the adaption of dynamic changes in the environment. The extensive experiments are conducted on two classic real sensor datasets. The experimental results show our framework significantly improves the detection accuracy and reduces the false alarm rate compared with other outlier detection frameworks.

Highlights

  • With the rapid development of microelectronics and wireless technology, Wireless Sensor Networks (WSNs) have been extensively widely applied to a large variety of fields, such as agriculture [1], healthcare [2], industry [3], [4], and smart home [5]

  • For node 1, as window size increases, the accuracy rate (ACC) of our framework decreases from 97.7% to 78.9%, detection rate (DR) decreases from 96.4% to 78.6%, and false alarm rate (FAR) increases from 2.3% to 21.4%

  • Whereas the ACC of our framework is 99.9%, DR is 97.7%, and FAR is 0%, which is a satisfactory result for outlier detection

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Summary

INTRODUCTION

With the rapid development of microelectronics and wireless technology, Wireless Sensor Networks (WSNs) have been extensively widely applied to a large variety of fields, such as agriculture [1], healthcare [2], industry [3], [4], and smart home [5]. Wang et al.: Isolation-Based Distributed Outlier Detection Framework Using Nearest Neighbor Ensembles. For a distributed structure, the detection algorithm constructs a local detector in each sensor node. In most distributed outlier detection frameworks, the information given by a local detector needs to be broadcasted in WSNs. the size growth of a local detector causes additional communication overhead. The procedures of the combination for local detectors in some distributed outlier detection frameworks are simple and not well described in the related paper. The main contributions of this paper are as follows: 1) An isolation-based distributed outlier detection framework using nearest neighbor ensembles is proposed.

RELATED WORK
DATASET Two datasets are used to evaluate the proposed framework
CONCLUSION
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