Low-altitude wireless networks (LAWNs) have emerged as a viable solution for maritime communications. In these maritime LAWNs, unmanned aerial vehicles (UAVs) serve as practical low-altitude platforms for wireless communications due to their flexibility and ease of deployment. However, the open and clear UAV communication channels make maritime LAWNs vulnerable to eavesdropping attacks. Existing security approaches often assume eavesdroppers follow predefined trajectories, which fails to capture the dynamic movement patterns of eavesdroppers in realistic maritime environments. To address this challenge, we consider a low-altitude maritime communication system that employs intelligent jamming to counter dynamic eavesdroppers with uncertain positioning to enhance the physical layer security. Since such a system requires balancing the conflicting performance metrics of the secrecy rate and energy consumption of UAVs, we formulate a secure and energy-efficient maritime communication multi-objective optimization problem (SEMCMOP). To solve this dynamic and long-term optimization problem, we first reformulate it as a partially observable Markov decision process (POMDP). We then propose a novel soft actor-critic with conditional variational autoencoder (SAC-CVAE) algorithm, which is a deep reinforcement learning algorithm improved by generative artificial intelligence. Specifically, the SAC-CVAE algorithm employs advantage-conditioned latent representations to disentangle and optimize policies, while enhancing computational efficiency by reducing the state space dimension. Simulation results demonstrate that our proposed intelligent jamming approach achieves secure and energy-efficient maritime communications.
翻译:低空无线网络已成为海上通信的一种可行解决方案。在这些海上低空无线网络中,无人机凭借其灵活性和易于部署的特点,成为实用的低空无线通信平台。然而,开放且清晰的无人机通信信道使得海上低空无线网络容易受到窃听攻击。现有的安全方法通常假设窃听者遵循预定义的轨迹,这未能捕捉现实海上环境中窃听者的动态移动模式。为应对这一挑战,我们考虑一种采用智能干扰的低空海上通信系统,以对抗位置不确定的动态窃听者,从而增强物理层安全性。由于该系统需要平衡保密速率与无人机能耗这两个相互冲突的性能指标,我们构建了一个安全节能的海上通信多目标优化问题。为解决这一动态长期优化问题,我们首先将其重新表述为部分可观测马尔可夫决策过程。随后,我们提出了一种新颖的基于条件变分自编码器的软演员-评论家算法,这是一种通过生成式人工智能改进的深度强化学习算法。具体而言,该算法利用优势条件潜在表示来解耦和优化策略,同时通过降低状态空间维度来提升计算效率。仿真结果表明,我们提出的智能干扰方法实现了安全节能的海上通信。