Outlier Detection Technique for Wireless Sensor Network Using GAN with Autoencoder to Increase the Network Lifetime

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Author(s)

Biswaranjan Sarangi 1,* Biswajit Tripathy 2

1. Biju Patnaik University of Technology (BPUT), Department of CSE, Rourkela, 769015, Odisha, India

2. GITA Autonomous College, Department of CST, Bhubaneswar, 752054, Odisha, India

* Corresponding author.

DOI: https://doi.org/10.5815/ijcnis.2023.01.03

Received: 17 Jul. 2022 / Revised: 6 Oct. 2022 / Accepted: 14 Nov. 2022 / Published: 8 Feb. 2023

Index Terms

WSN, Outlier, GAN, Autoencoder, Network-lifetime

Abstract

In wireless sensor networks (WSN), sensor nodes are expected to operate autonomously in a human inaccessible and the hostile environment for which the sensor nodes and communication links are therefore, prone to faults and potential malicious attacks. Sensor readings that differ significantly from the usual pattern of sensed data due to faults in sensor nodes, unreliable communication links, and physical and logical malicious attacks are considered as outliers. This paper presents an outlier detection technique based on deep learning namely, generative adversarial networks (GANs) with autoencoder neural network. The two-level architecture proposed for WSN makes the proposed technique robust. The simulation result indicates improvement in detection accuracy compared to existing state-of-the-art techniques applied for WSNs and increase of the network lifetime. Robustness of outlier detection algorithm with respect to channel fault and robustness concerning different types of distribution of faulty communication channel is analyzed.

Cite This Paper

Biswaranjan Sarangi, Biswajit Tripathy, "Outlier Detection Technique for Wireless Sensor Network Using GAN with Autoencoder to Increase the Network Lifetime", International Journal of Computer Network and Information Security(IJCNIS), Vol.15, No.1, pp.26-38, 2023. DOI:10.5815/ijcnis.2023.01.03

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