Carregant...
Miniatura

Embargament

Document embargat fins el 2026-12

Tipus de document

Article

Versió

Versió acceptada

Data de publicació

Tots els drets reservats

Si us plau utilitzeu sempre aquest identificador per citar o enllaçar aquest document: https://hdl.handle.net/2445/227879

Bridging Semantic Knowledge and Generative AI: A Modular Framework for Automated Reporting in Digital Commissioning Management

Títol de la revista

Director/Tutor

ISSN de la revista

Títol del volum

Resum

This paper proposes a framework integrating semantic triple stores with large language models (LLMs) to enhance automated report generation in digital commissioning systems. It addresses the challenge of efficiently extracting and analysing complex industrial data by combining RDF graphs with LLM-based natural language processing. The approach involves: 1) developing an ontology for digital commissioning; 2) structuring data as RDF triples; 3) integrating triplestores with LLMs using LangGraph and LangChain. This enables natural language querying with high semantic accuracy. Using a simulated dataset, the system achieved 100% accuracy in SPARQL query generation across diverse question types, effectively handling entity relationships, hierarchies, and query complexities. The framework bridges structured data and natural language interfaces in industrial contexts, improving efficiency and accuracy in data retrieval and reporting. Future research should explore scalability, heterogeneous datasets, and data quality challenges in real-world implementations.

Citació

Citació

RAMOS, Renato, CALVETTI, Diego, NASCIMENTO, Daniel luiz de mattos, BELLON, Fernando. Bridging Semantic Knowledge and Generative AI: A Modular Framework for Automated Reporting in Digital Commissioning Management. _International Journal of Generative Artificial Intelligence in Business_. 2026. Vol. 1, núm. 1/2, pàgs. 36-51. [consulta: 11 de abril de 2026]. [Disponible a: https://hdl.handle.net/2445/227879]

Exportar metadades

JSON - METS

Compartir registre