AI Agent Access (A\^3) Network: An Embodied, Communication-Aware Multi-Agent Framework for 6G Coverage
By: Han Zeng , Haibo Wang , Luhao Fan and more
Potential Business Impact:
AI agents build strong, flexible wireless networks anywhere.
The vision of 6G communication demands autonomous and resilient networking in environments without fixed infrastructure. Yet most multi-agent reinforcement learning (MARL) approaches focus on isolated stages - exploration, relay formation, or access - under static deployments and centralized control, limiting adaptability. We propose the AI Agent Access (A\^3) Network, a unified, embodied intelligence-driven framework that transforms multi-agent networking into a dynamic, decentralized, and end-to-end system. Unlike prior schemes, the A\^3 Network integrates exploration, target user access, and backhaul maintenance within a single learning process, while supporting on-demand agent addition during runtime. Its decentralized policies ensure that even a single agent can operate independently with limited observations, while coordinated agents achieve scalable, communication-optimized coverage. By embedding link-level communication metrics into actor-critic learning, the A\^3 Network couples topology formation with robust decision-making. Numerical simulations demonstrate that the A\^3 Network not only balances exploration and communication efficiency but also delivers system-level adaptability absent in existing MARL frameworks, offering a new paradigm for 6G multi-agent networks.
Similar Papers
QoE-Aware Service Provision for Mobile AR Rendering: An Agent-Driven Approach
Networking and Internet Architecture
Makes augmented reality smoother and faster.
Agentic AI for Ultra-Modern Networks: Multi-Agent Framework for RAN Autonomy and Assurance
Networking and Internet Architecture
Makes future cell networks smarter and safer.
Leveraging AI Agents for Autonomous Networks: A Reference Architecture and Empirical Studies
Artificial Intelligence
Makes cell towers smarter for faster internet.