English

ENWAR: A RAG-empowered Multi-Modal LLM Framework for Wireless Environment Perception

Networking and Internet Architecture 2024-10-25 v1 Artificial Intelligence

Abstract

Large language models (LLMs) hold significant promise in advancing network management and orchestration in 6G and beyond networks. However, existing LLMs are limited in domain-specific knowledge and their ability to handle multi-modal sensory data, which is critical for real-time situational awareness in dynamic wireless environments. This paper addresses this gap by introducing ENWAR, an ENvironment-aWARe retrieval augmented generation-empowered multi-modal LLM framework. ENWAR seamlessly integrates multi-modal sensory inputs to perceive, interpret, and cognitively process complex wireless environments to provide human-interpretable situational awareness. ENWAR is evaluated on the GPS, LiDAR, and camera modality combinations of DeepSense6G dataset with state-of-the-art LLMs such as Mistral-7b/8x7b and LLaMa3.1-8/70/405b. Compared to general and often superficial environmental descriptions of these vanilla LLMs, ENWAR delivers richer spatial analysis, accurately identifies positions, analyzes obstacles, and assesses line-of-sight between vehicles. Results show that ENWAR achieves key performance indicators of up to 70% relevancy, 55% context recall, 80% correctness, and 86% faithfulness, demonstrating its efficacy in multi-modal perception and interpretation.

Keywords

Cite

@article{arxiv.2410.18104,
  title  = {ENWAR: A RAG-empowered Multi-Modal LLM Framework for Wireless Environment Perception},
  author = {Ahmad M. Nazar and Abdulkadir Celik and Mohamed Y. Selim and Asmaa Abdallah and Daji Qiao and Ahmed M. Eltawil},
  journal= {arXiv preprint arXiv:2410.18104},
  year   = {2024}
}
R2 v1 2026-06-28T19:33:14.707Z