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Auteurs principaux: Bao, Yuequan, Li, Xing, Sun, Huabin, Liu, Dawei, Tian, Yuxuan, Hu, Haiyang
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2605.12916
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author Bao, Yuequan
Li, Xing
Sun, Huabin
Liu, Dawei
Tian, Yuxuan
Hu, Haiyang
author_facet Bao, Yuequan
Li, Xing
Sun, Huabin
Liu, Dawei
Tian, Yuxuan
Hu, Haiyang
contents Artificial intelligence is increasingly used to simplify complex tasks. In engineering applications of structural health monitoring (SHM), existing specialized algorithms, while effective, often face high implementation barriers, limited interoperability and complex training procedures. To overcome these challenges, this paper proposes SHM-Agents, a generalist-specialist agent system that integrates the reasoning and planning abilities of large language models with the problem-solving strengths of specialized algorithms. SHM-Agents enables end-to-end execution of single and combined SHM tasks via natural language, supports deep learning pre-training to simplify deployment and allows flexible expansion through a modular design. Experiments on a long-span cable-stayed bridge show that SHM-Agents can accurately and efficiently perform diverse SHM tasks, including data anomaly diagnosis and recovery, signal processing, statistical analysis, modal identification, damage identification, finite element model updating, vehicle load modeling, response calculation, reliability assessment, fatigue estimation and bridge knowledge Q\&A.
format Preprint
id arxiv_https___arxiv_org_abs_2605_12916
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle SHM-Agents: A Generalist-Specialist Integrated Agent System for Structural Health Monitoring
Bao, Yuequan
Li, Xing
Sun, Huabin
Liu, Dawei
Tian, Yuxuan
Hu, Haiyang
Multiagent Systems
Machine Learning
I.2.1
Artificial intelligence is increasingly used to simplify complex tasks. In engineering applications of structural health monitoring (SHM), existing specialized algorithms, while effective, often face high implementation barriers, limited interoperability and complex training procedures. To overcome these challenges, this paper proposes SHM-Agents, a generalist-specialist agent system that integrates the reasoning and planning abilities of large language models with the problem-solving strengths of specialized algorithms. SHM-Agents enables end-to-end execution of single and combined SHM tasks via natural language, supports deep learning pre-training to simplify deployment and allows flexible expansion through a modular design. Experiments on a long-span cable-stayed bridge show that SHM-Agents can accurately and efficiently perform diverse SHM tasks, including data anomaly diagnosis and recovery, signal processing, statistical analysis, modal identification, damage identification, finite element model updating, vehicle load modeling, response calculation, reliability assessment, fatigue estimation and bridge knowledge Q\&A.
title SHM-Agents: A Generalist-Specialist Integrated Agent System for Structural Health Monitoring
topic Multiagent Systems
Machine Learning
I.2.1
url https://arxiv.org/abs/2605.12916