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

Q1 Mathematics
Biswaranjan Sarangi, Biswajit Tripathy
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引用次数: 1

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.
基于自编码器的GAN无线传感器网络异常点检测技术提高网络寿命
在无线传感器网络(WSN)中,传感器节点被期望在人类无法进入和敌对的环境中自主运行,因此,传感器节点和通信链路容易出现故障和潜在的恶意攻击。由于传感器节点故障、不可靠的通信链路以及物理和逻辑恶意攻击而导致的传感器读数与通常的感测数据模式显著不同的传感器读数被视为异常值。本文提出了一种基于深度学习的异常点检测技术,即基于自编码器神经网络的生成式对抗网络。无线传感器网络的两层结构使该技术具有鲁棒性。仿真结果表明,与现有应用于wsn的最新技术相比,该方法提高了检测精度,延长了网络寿命。分析了异常点检测算法对信道故障的鲁棒性和对不同类型的故障通信信道分布的鲁棒性。
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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
33
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