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  4. Human–AI Teaming in Structural Analysis: A Model Context Protocol Approach for Explainable and Accurate Generative AI
 
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Human–AI Teaming in Structural Analysis: A Model Context Protocol Approach for Explainable and Accurate Generative AI

Journal
Buildings
ISSN
2075-5309
Date Issued
2025-09-04
Author(s)
ÁVILA VEGA, CARLOS FABIÁN  
Facultad de Ciencias, Ingeniería y Construcción  
Daniel Ilbay
RIVERA TAPIA, EDGAR DAVID  
Facultad de Ciencias, Ingeniería y Construcción  
DOI
https://doi.org/10.3390/buildings15173190
Abstract
<jats:p>The integration of large language models (LLMs) into structural engineering workflows presents both a transformative opportunity and a critical challenge. While LLMs enable intuitive, natural language interactions with complex data, their limited arithmetic reasoning, contextual fragility, and lack of verifiability constrain their application in safety-critical domains. This study introduces a novel automation pipeline that couples generative AI with finite element modelling through the Model Context Protocol (MCP)—a modular, context-aware architecture that complements language interpretation with structural computation. By interfacing GPT-4 with OpenSeesPy via MCP (JSON schemas, API interfaces, communication standards), the system allows engineers to specify and evaluate 3D frame structures using conversational prompts, while ensuring computational fidelity and code compliance. Across four case studies, the GPT+MCP framework demonstrated predictive accuracy for key structural parameters, with deviations under 1.5% compared to reference solutions produced using conventional finite element analysis workflows. In contrast, unconstrained LLM use produces deviations exceeding 400%. The architecture supports reproducibility, traceability, and rapid analysis cycles (6–12 s), enabling real-time feedback for both design and education. This work establishes a reproducible framework for trustworthy AI-assisted analysis in engineering, offering a scalable foundation for future developments in optimisation and regulatory automation.</jats:p>
Subjects

generative AI-assiste...

Model Context Protoco...

human–machine interac...

computational efficie...

LLM–FEM integration

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