Enabling Grounded Answers Through Knowledge Graphs and Retrieval Augmented Generation

2025-01-0488

9/16/2025

Authors
Abstract
Content
In modern defense manufacturing, achieving technological superiority hinges on both rapid decision-making and unparalleled precision engineering. Advanced machining systems, such as 5-axis CNC machines, play a pivotal role by enabling the production of intricate, free-form geometries with micron-level accuracy. However, these advances often necessitate deep domain expertise for optimal tool selection and machining parameter configuration. This paper introduces GraphLLM, a model-agnostic approach that integrates structured knowledge graphs with large language models (LLMs) to enhance the accuracy and reliability of technical responses. By automatically extracting domain-specific entities and relationships from documents, GraphLLM mitigates LLM hallucinations and improves performance, especially in technically challenging or out-of-distribution queries. Experimental evaluations across various LLaMA models demonstrate significant uplifts of 25%, highlighting the framework’s potential to provide grounded answers for decision-making in advanced manufacturing.
Meta TagsDetails
DOI
https://doi.org/10.4271/2025-01-0488
Citation
Hoang, D., Gorsich, D., Castanier, M., and Imani, F., "Enabling Grounded Answers Through Knowledge Graphs and Retrieval Augmented Generation," 2025 NDIA Michigan Chapter Ground Vehicle Systems Engineering and Technology Symposium, Novi, Michigan, United States, August 12, 2025, https://doi.org/10.4271/2025-01-0488.
Additional Details
Publisher
Published
9/16/2025
Product Code
2025-01-0488
Content Type
Technical Paper
Language
English