Automated Interpretation of Non-Destructive Evaluation Contour Maps Using Large Language Models for Bridge Condition Assessment
Viraj Nishesh Darji, Callie C. Liao, Duoduo Liao

TL;DR
This study explores using large language models to interpret NDE contour maps for bridge safety, demonstrating potential improvements in efficiency and accuracy in structural assessments.
Contribution
It introduces a framework for integrating LLMs into bridge inspection workflows and evaluates their effectiveness in analyzing NDE data.
Findings
Four LLMs provided superior image descriptions.
LLM-generated summaries improved overall assessment quality.
LLMs can enhance decision-making speed in bridge maintenance.
Abstract
Bridge maintenance and safety are essential for transportation authorities, and Non-Destructive Evaluation (NDE) techniques are critical to assessing structural integrity. However, interpreting NDE data can be time-consuming and requires expertise, potentially delaying decision-making. Recent advancements in Large Language Models (LLMs) offer new ways to automate and improve this analysis. This pilot study introduces a holistic assessment of LLM capabilities for interpreting NDE contour maps and demonstrates the effectiveness of LLMs in providing detailed bridge condition analyses. It establishes a framework for integrating LLMs into bridge inspection workflows, indicating that LLM-assisted analysis can enhance efficiency without compromising accuracy. In this study, several LLMs are explored with prompts specifically designed to enhance the quality of image descriptions, which are…
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