AI-Supported Platform for System Monitoring and Decision-Making in Nuclear Waste Management with Large Language Models

Chang, Dongjune, Kim, Sola, Park, Young Soo

arXiv.org Artificial Intelligence 

Argonne National Laboratory ABSTRACT Nuclear waste management requires rigorous regulatory compliance assessment, demanding advanced decision - support systems capable of addressing complex legal, environmental, and safety considerations. This paper presents a multi - agent Retrieval - Augmented Generation (RAG) system that integrates large language models (LLMs) with document retrieval mechanisms to enhance decision accuracy through structured agent collaboration. Through a structured 10 - round discussion model, agents collaborate to assess regulatory compliance and safety requirements while maintaining document - grounded responses. A case study of a proposed temporary nuclear waste storage site near Winslow, Arizona, demonstrates the framework ' s effectiveness. Results show the Regulatory Agent achieves consistently higher relevance scores in maintaining alignment with legal frameworks, while the Safety Agent effectively manages complex risk assessments requi ring multifaceted analysis. The system demonstrates progressive improvement in agreement rates between agents across discussion rounds while semantic drift decreases, indicating enhanced decision - making consistency and response coherence. The system ensure s regulatory decisions remain factually grounded, dynamically adapting to evolving regulatory frameworks through real - time document retrieval. By balancing automated assessment with human oversight, this framework offers a scalable and transparent approach to regulatory governance. Future research will explore multi - modal data integration and reinforcement learning to enhance response coherence and decision efficiency. These findings underscore the potential of AI - driven, multi - agent systems in advancing ev idence - based, accountable, and adaptive decision - making for high - stakes environmental management scenarios.