A cross-border community for researchers with openness, equality and inclusion
Intent-Networking: A BDIx-DAI Cognitive Control Framework Implemented on the O-RAN Architecture
ID:4 View protection:Participant Only Updated time:2025-11-04 14:04:23 Views:175 Oral (In-person)

Start Time:No start time yet

Duration:No duration yet

Session:[No session yet] [No session block yet]

No file yet

Abstract
Current Open Radio Access Network (O-RAN) near- real-time RIC applications (xApps) rely on reactive, single- objective machine learning, struggling with conflicting net- work goals. We propose Intent-Networking, a cognitive control framework using lightweight Belief–Desire–Intention–eXtended (BDIx) agents as xApps that translate high-level operator intents into verifiable, explainable plans via E2SM-RC, integrating symbolic reasoning with pluggable Machine Learning (ML) for proactive arbitration. We provide a standards-compliant reference architecture, formal model, and novel algorithms with a containerized prototype (open-sourcing in progress). On a high-fidelity OAI-based emulator, our multi-agent BDIx xApp reduces ultra-Reliable Low-Latency Communication (uRLLC) p99 latency by 23 % (8.1 → 6.2 ms) and average radio power by 17 % (125 → 104 W) versus state-of-the-art reactive ML xApps, while improving inter-slice fairness (Jain: 0.81 → 0.94) and achieving a DIF explainability score of 0.9 at 2.5 % CPU/cell. 

 
Keywords
Intent-Networking, O-RAN, BDIx Agents, xApp, Near-RT RAN Intelligent Controller (RIC), 5G, 6G, Autonomous Networking, Cognitive Control, Explainable AI.
Speaker
Ioannou Iacovos
CYENS;European University of Cyprus

Post comments
Verification Code Change Another
All comments
Important Dates
  • Conference date

    12-29

    2025

    -

    12-31

    2025

  • 12-16 2025

    Draft paper submission deadline

  • 12-30 2025

    Presentation submission deadline

  • 12-30 2025

    Registration deadline

Sponsored By

United Societies of Science

Organized By

扎尔卡大学

Contact info