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面向NOMA基对抗性叠加认知网络的信道自适应隐私增强

Channel-Adaptive Privacy Enhancement for NOMA-Based Antagonistic Overlay Cognitive Networks

作者 Moh Khalid Hasan · Shucheng Yu · Min Song
期刊 IEEE Transactions on Vehicular Technology
出版日期 2025年9月
卷/期 第 75 卷 第 2 期
技术分类 系统并网技术
技术标签 弱电网并网 跟网型GFL 构网型GFM 模型预测控制MPC
相关度评分 ★★ 2.0 / 5.0
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中文摘要

本文针对NOMA叠加认知网络中的隐私泄露风险,提出信道自适应双阶段协同干扰(CADP-CJ)策略,推导了Nakagami-m衰落下单/多用户场景的遍历保密速率闭式解,并通过仿真验证其较OMA方案提升达86%(主用户)和64%(次用户)。

English Abstract

Overlay cognitive networks based on non-orthogonal multiple access (NOMA) can introduce substantial privacy concerns, especially in antagonistic systems where primary and secondary networks lack mutual trust. This paper highlights two critical privacy challenges and investigates a NOMA-assisted purely antagonistic overlay cognitive network. As part of our privacy design, we propose a Channel-Adaptive Dual-Phase Cooperative Jamming (CADP-CJ) strategy, leveraging reverse successive interference cancellation and a dynamic top-down power allocation approach based on the available channel-state information. The ergodic secrecy rate (ESR) for both single-user and multi-user scenarios is derived in closed form by means of Taylor-McLaurin expansions and Gaussian-Chebyshev quadrature, while considering Nakagami-$m$ fading across all channels. Furthermore, the closed-form expressions for the asymptotic ESR are presented to provide deeper insights. The accuracy of our analytical results is corroborated through Monte-Carlo simulations, which also confirm that our scheme ensures a positive ESR in both single and multi-user cases. We comprehensively analyze the impact of the fading properties of the channels involved and comment on optimal jamming power using the CADP-CJ strategy. Notably, our proposed system outperforms benchmark systems, particularly those based on orthogonal multiple access, with an 86% enhancement for primary users and 64% for secondary users.
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SunView 深度解读

该文聚焦无线通信层的物理层安全与资源分配算法,属5G/6G通信范畴,与阳光电源核心电力电子业务无直接技术交集。但其信道自适应功率分配、动态干扰抑制及在弱信道条件下的鲁棒性设计思路,可间接启发iSolarCloud平台在弱网环境下的边缘智能调度与数据加密传输优化;对ST系列PCS或PowerTitan等设备的本地化AI运维模块中低带宽通信链路的安全增强具参考价值,建议关注其功率-信道联合优化方法论向能源物联网协议栈的迁移潜力。