Impact of Artificial Noise on Cellular Networks: A Stochastic Geometry Approach
Hui-Ming Wang, Chao Wang, Tong-Xing Zheng, and Tony Q. S. Quek

TL;DR
This paper analyzes how artificial noise affects the secrecy and reliability of cellular networks using stochastic geometry, revealing that optimized AN can enhance security without degrading network performance.
Contribution
It introduces a stochastic geometry model to evaluate the impact of artificial noise on multi-cell network secrecy and reliability, providing analytical expressions for outage probabilities.
Findings
Artificial noise can improve secrecy throughput with proper power allocation.
AN increases inter-cell interference but can be optimized for security benefits.
Analytical expressions for outage probabilities enable performance evaluation.
Abstract
This paper studies the impact of artificial noise (AN) on the secrecy performance of a target cell in multi-cell cellular networks. Although AN turns out to be an efficient approach for securing a pointto-point/single cell confidential transmission, it would increase the inter-cell interference in a multi-cell cellular network, which may degrade the network reliability and secrecy performance. For analyzing the average secrecy performance of the target cell which is of significant interest, we employ a hybrid cellular deployment model, where the target cell is a circle of fixed size and the base stations (BSs) outside the target cell are modeled as a homogeneous Poisson point process (PPP). We investigate the impact of AN on the reliability and security of users in the target cell in the presence of pilot contamination using a stochastic geometry approach. The analytical results of the…
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