Complex System Diagnostics Using a Knowledge Graph-Informed and Large Language Model-Enhanced Framework
Saman Marandi, Yu-Shu Hu, Mohammad Modarres

TL;DR
This paper introduces a diagnostic framework combining Knowledge Graphs and Large Language Models to improve system diagnostics in complex, safety-critical environments like nuclear power plants, enabling interactive, accurate fault reasoning.
Contribution
It presents a novel integration of KGs and LLMs within a functional modeling framework, including automated logic construction and hierarchical fault reasoning capabilities.
Findings
Achieved over 90% accuracy in key diagnostic elements
Demonstrated effective interactive diagnostic reasoning
Supported safety-critical system diagnostics
Abstract
In this paper, we present a novel diagnostic framework that integrates Knowledge Graphs (KGs) and Large Language Models (LLMs) to support system diagnostics in high-reliability systems such as nuclear power plants. Traditional diagnostic modeling struggles when systems become too complex, making functional modeling a more attractive approach. Our approach introduces a diagnostic framework grounded in the functional modeling principles of the Dynamic Master Logic (DML) model. It incorporates two coordinated LLM components, including an LLM-based workflow for automated construction of DML logic from system documentation and an LLM agent that facilitates interactive diagnostics. The generated logic is encoded into a structured KG, referred to as KG-DML, which supports hierarchical fault reasoning. Expert knowledge or operational data can also be incorporated to refine the model's precision…
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