Topology Generation of UAV Covert Communication Networks: A Graph Diffusion Approach with Incentive Mechanism
- URL: http://arxiv.org/abs/2508.06746v1
- Date: Fri, 08 Aug 2025 23:06:49 GMT
- Title: Topology Generation of UAV Covert Communication Networks: A Graph Diffusion Approach with Incentive Mechanism
- Authors: Xin Tang, Qian Chen, Fengshun Li, Youchun Gong, Yinqiu Liu, Wen Tian, Shaowen Qin, Xiaohuan Li,
- Abstract summary: This paper proposes a self-organizing UAV network framework combining Graph Diffusion-based Policy Optimization (GDPO) with a Stackelberg Game (SG)-based incentive mechanism.<n>The GDPO method uses generative AI to dynamically generate sparse but well-connected topologies, enabling flexible adaptation to changing node distributions and Ground User (GU) demands.<n>The Stackelberg Game (SG)-based incentive mechanism guides self-interested UAVs to choose relay behaviors and neighbor links that support cooperation and enhance covert communication.
- Score: 5.424886688842202
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the growing demand for Uncrewed Aerial Vehicle (UAV) networks in sensitive applications, such as urban monitoring, emergency response, and secure sensing, ensuring reliable connectivity and covert communication has become increasingly vital. However, dynamic mobility and exposure risks pose significant challenges. To tackle these challenges, this paper proposes a self-organizing UAV network framework combining Graph Diffusion-based Policy Optimization (GDPO) with a Stackelberg Game (SG)-based incentive mechanism. The GDPO method uses generative AI to dynamically generate sparse but well-connected topologies, enabling flexible adaptation to changing node distributions and Ground User (GU) demands. Meanwhile, the Stackelberg Game (SG)-based incentive mechanism guides self-interested UAVs to choose relay behaviors and neighbor links that support cooperation and enhance covert communication. Extensive experiments are conducted to validate the effectiveness of the proposed framework in terms of model convergence, topology generation quality, and enhancement of covert communication performance.
Related papers
- Communications-Incentivized Collaborative Reasoning in NetGPT through Agentic Reinforcement Learning [12.904732640630014]
We propose a unified agentic NetGPT framework for AI-native xG networks.<n>A NetGPT core can either perform autonomous reasoning or delegate sub-tasks to domain-specialized agents via agentic communication.<n>The framework establishes clear responsibilities and interoperable, enabling scalable, distributed intelligence across the network.
arXiv Detail & Related papers (2026-01-31T15:07:11Z) - Multi-Agent Collaborative Intrusion Detection for Low-Altitude Economy IoT: An LLM-Enhanced Agentic AI Framework [60.72591149679355]
The rapid expansion of low-altitude economy Internet of Things (LAE-IoT) networks has created unprecedented security challenges.<n>Traditional intrusion detection systems fail to tackle the unique characteristics of aerial IoT environments.<n>We introduce a large language model (LLM)-enabled agentic AI framework for enhancing intrusion detection in LAE-IoT networks.
arXiv Detail & Related papers (2026-01-25T12:47:25Z) - Hierarchical Task Offloading and Trajectory Optimization in Low-Altitude Intelligent Networks Via Auction and Diffusion-based MARL [37.79695337425523]
Low-altitude intelligent networks (LAINs) can support mission-critical applications such as disaster response, environmental monitoring, and real-time sensing.<n>These systems face key challenges, including energy-constrained UAVs, task arrivals, and heterogeneous computing resources.<n>We propose an integrated air-ground collaborative network and formulate a time-dependent integer nonlinear programming problem that jointly optimize UAV trajectory planning and task offloading decisions.
arXiv Detail & Related papers (2025-12-05T08:14:45Z) - Pinching Antennas Meet AI in Next-Generation Wireless Networks [95.7524555556776]
Next-generation (NG) wireless networks must embrace innate intelligence in support of emerging applications.<n>This article explores the "win-win" cooperation between AI and Pinching antennas (PAs)
arXiv Detail & Related papers (2025-11-03T21:32:00Z) - Koopman-based Prediction of Connectivity for Flying Ad Hoc Networks [14.81023997999862]
We use data-driven Koopman approaches to model UAV trajectory dynamics within flying ad hoc networks (FANETs)<n>By leveraging Koopman operator theory, we propose two possible approaches to efficiently address the challenges posed by the constantly changing topology of FANETs.<n>Our results show that these approaches can accurately predict connectivity and isolation events that lead to modelled communication outages.
arXiv Detail & Related papers (2025-11-03T07:02:28Z) - When UAV Swarm Meets IRS: Collaborative Secure Communications in Low-altitude Wireless Networks [68.45202147860537]
Low-altitude wireless networks (LAWNs) provide enhanced coverage, reliability, and throughput for diverse applications.<n>These networks face significant security vulnerabilities from both known and potential unknown eavesdroppers.<n>We propose a novel secure communication framework for LAWNs where the selected UAVs within a swarm function as a virtual antenna array.
arXiv Detail & Related papers (2025-10-25T02:02:14Z) - Agentic Satellite-Augmented Low-Altitude Economy and Terrestrial Networks: A Survey on Generative Approaches [76.12691010182802]
This survey focuses on enabling agentic artificial intelligence (AI) in satellite-augmented low-altitude economy and terrestrial networks (SLAETNs)<n>We introduce the architecture and characteristics of SLAETNs, and analyze the challenges that arise in integrating satellite, aerial, and terrestrial components.<n>We examine how these models empower agentic functions across three domains: communication enhancement, security and privacy protection, and intelligent satellite tasks.
arXiv Detail & Related papers (2025-07-19T14:07:05Z) - From Turbulence to Tranquility: AI-Driven Low-Altitude Network [17.660082508775957]
Low Altitude Economy (LAE) networks own transformative potential in urban mobility, emergency response, and aerial logistics.<n>These networks face significant challenges in spectrum management, interference mitigation, and real-time coordination across dynamic and resource-constrained environments.<n>This study explores three core elements for enabling intelligent LAE networks as follows machine learning-based spectrum sensing and coexistence, artificial intelligence (AI)-optimized resource allocation and trajectory planning, and testbed-driven validation and standardization.
arXiv Detail & Related papers (2025-06-02T07:12:44Z) - Internet of Agents: Fundamentals, Applications, and Challenges [66.44234034282421]
We introduce the Internet of Agents (IoA) as a foundational framework that enables seamless interconnection, dynamic discovery, and collaborative orchestration among heterogeneous agents at scale.<n>We analyze the key operational enablers of IoA, including capability notification and discovery, adaptive communication protocols, dynamic task matching, consensus and conflict-resolution mechanisms, and incentive models.
arXiv Detail & Related papers (2025-05-12T02:04:37Z) - Graph Neural Network Aided Deep Reinforcement Learning for Resource Allocation in Dynamic Terahertz UAV Networks [6.170724183076036]
Terahertz (THz) networks with flexible topologies and ultra-high data rates are expected to empower numerous in security surveillance, disaster response, and environmental applications.<n>However, dynamic topologies and ultra-high data rates hinder efficient long-term antenna features of THz cooperatively.<n>This paper proposes an algorithm for resource allocation in the dynamic THz UAV network with emphasis on self-node features.
arXiv Detail & Related papers (2025-05-08T06:36:17Z) - Graph Based Deep Reinforcement Learning Aided by Transformers for Multi-Agent Cooperation [2.8169258551959544]
We propose a novel framework that integrates Graph Neural Networks (GNNs), Deep Reinforcement Learning (DRL), and transformer-based mechanisms for enhanced multi-agent coordination and collective task execution.<n>Our approach leverages GNNs to model agent-agent and agent-goal interactions through adaptive graph construction, enabling efficient information aggregation and decision-making under constrained communication.
arXiv Detail & Related papers (2025-04-11T01:46:18Z) - Cooperative Cognitive Dynamic System in UAV Swarms: Reconfigurable Mechanism and Framework [80.39138462246034]
We propose the cooperative cognitive dynamic system (CCDS) to optimize the management for UAV swarms.
CCDS is a hierarchical and cooperative control structure that enables real-time data processing and decision.
In addition, CCDS can be integrated with the biomimetic mechanism to efficiently allocate tasks for UAV swarms.
arXiv Detail & Related papers (2024-05-18T12:45:00Z) - Distributed Autonomous Swarm Formation for Dynamic Network Bridging [40.27919181139919]
We formulate the problem of dynamic network bridging in a novel Decentralized Partially Observable Markov Decision Process (Dec-POMDP)
We propose a Multi-Agent Reinforcement Learning (MARL) approach for the problem based on Graph Convolutional Reinforcement Learning (DGN)
The proposed method is evaluated in a simulated environment and compared to a centralized baseline showing promising results.
arXiv Detail & Related papers (2024-04-02T01:45:03Z) - Generative AI for Secure Physical Layer Communications: A Survey [80.0638227807621]
Generative Artificial Intelligence (GAI) stands at the forefront of AI innovation, demonstrating rapid advancement and unparalleled proficiency in generating diverse content.
In this paper, we offer an extensive survey on the various applications of GAI in enhancing security within the physical layer of communication networks.
We delve into the roles of GAI in addressing challenges of physical layer security, focusing on communication confidentiality, authentication, availability, resilience, and integrity.
arXiv Detail & Related papers (2024-02-21T06:22:41Z) - Multi-Agent Reinforcement Learning for Power Control in Wireless
Networks via Adaptive Graphs [1.1861167902268832]
Multi-agent deep reinforcement learning (MADRL) has emerged as a promising method to address a wide range of complex optimization problems like power control.
We present the use of graphs as communication-inducing structures among distributed agents as an effective means to mitigate these challenges.
arXiv Detail & Related papers (2023-11-27T14:25:40Z) - Artificial Intelligence Empowered Multiple Access for Ultra Reliable and
Low Latency THz Wireless Networks [76.89730672544216]
Terahertz (THz) wireless networks are expected to catalyze the beyond fifth generation (B5G) era.
To satisfy the ultra-reliability and low-latency demands of several B5G applications, novel mobility management approaches are required.
This article presents a holistic MAC layer approach that enables intelligent user association and resource allocation, as well as flexible and adaptive mobility management.
arXiv Detail & Related papers (2022-08-17T03:00:24Z) - Artificial Intelligence Aided Next-Generation Networks Relying on UAVs [140.42435857856455]
Artificial intelligence (AI) assisted unmanned aerial vehicle (UAV) aided next-generation networking is proposed for dynamic environments.
In the AI-enabled UAV-aided wireless networks (UAWN), multiple UAVs are employed as aerial base stations, which are capable of rapidly adapting to the dynamic environment.
As a benefit of the AI framework, several challenges of conventional UAWN may be circumvented, leading to enhanced network performance, improved reliability and agile adaptivity.
arXiv Detail & Related papers (2020-01-28T15:10:22Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.