We introduce $\textbf{MASSE}$, the first Multi-Agent System for Structural Engineering, effectively integrating large language model (LLM)-based agents with real-world engineering workflows. Structural engineering is a fundamental yet traditionally stagnant domain, with core workflows remaining largely unchanged for decades despite its substantial economic impact and global market size. Recent advancements in LLMs have significantly enhanced their ability to perform complex reasoning, long-horizon planning, and precise tool utilization -- capabilities well aligned with structural engineering tasks such as interpreting design codes, executing load calculations, and verifying structural capacities. We present a proof-of-concept showing that most real-world structural engineering workflows can be fully automated through a training-free LLM-based multi-agent system. MASSE enables immediate deployment in professional environments, and our comprehensive validation on real-world case studies demonstrates that it can reduce expert workload from approximately two hours to mere minutes, while enhancing both reliability and accuracy in practical engineering scenarios.
翻译:本文提出首个面向结构工程的多智能体系统$\textbf{MASSE}$,该系统将基于大语言模型(LLM)的智能体与实际工程工作流进行了有效整合。结构工程作为基础性领域,尽管具有显著的经济影响和全球市场规模,其核心工作流数十年来基本保持不变,长期处于传统停滞状态。近期大语言模型的进展显著提升了其执行复杂推理、长程规划和精确工具调用的能力——这些能力与结构工程任务(如解读设计规范、执行荷载计算和验证结构承载力)高度契合。我们通过概念验证表明,大多数实际结构工程工作流可通过无需训练的、基于LLM的多智能体系统实现全自动化。MASSE支持在专业环境中即时部署,我们在实际案例研究中的全面验证表明,该系统可将专家工作量从约两小时大幅缩减至数分钟,同时在实际工程场景中提升了可靠性与准确性。