帧(网络)
强化学习
钢筋
计算机科学
工程类
人工智能
机械工程
结构工程
作者
Bochao Fu,Yuqing Gao,Wei Wang
摘要
Abstract As artificial intelligence technology advances, automated structural design has emerged as a new research focus in recent years. This paper combines finite element method (FEM) and deep reinforcement learning (DRL) to establish a physics‐informed framework, named FrameRL, for automated steel frame structure design. FrameRL models the design process of steel frames as a reinforcement learning (RL) process, enabling the agent to simulate a structural engineer's role, interacting with the environment to learn the methods and policies for structural design. Through computer experiments, it is demonstrated that FrameRL can design a safe and economical structure within 1 s, significantly faster than manual design processes. Furthermore, the design performance of FrameRL is compared with traditional optimization algorithms in three typical design cases and a high‐rise steel frame case, demonstrating that FrameRL can efficiently complete structural design based on learned design experiences and policies.
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