Joint Malicious Source Detection and Target Localization using Compartmental Model in Cluster-based Networks

Sudhir Kumar
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Abstract

The communication between the transmitter and the receiver is generally affected by malfunctioning sources, sensing of abnormal phenomena (outlier), non-line-of-sight (NLOS) communication, multipath fading or any other external attack. In this paper, joint malicious source detection and robust target localization method using the compartmental model is presented. Compartmental model is the sum of two exponentials which describe the variation of received signal strength with transmitter-receiver distance. Additionally, a data aggregation unaware clustering technique based on first and second order approximations of the compartmental model is presented. The effectiveness of the proposed method is verified using real field deployment in an indoor scenario.
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基于隔室模型的聚类网络联合恶意源检测与目标定位
发射机和接收机之间的通信通常受到故障源、异常现象感知(离群值)、非视距(NLOS)通信、多径衰落或任何其他外部攻击的影响。本文提出了一种基于隔室模型的联合恶意源检测和鲁棒目标定位方法。区室模型是描述接收信号强度随收发距离变化的两个指数之和。此外,提出了一种基于隔室模型的一阶和二阶近似的数据聚合无感知聚类技术。通过室内场景的实际现场部署验证了所提出方法的有效性。
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