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Reinforcement learning for optimum design of a plane frame under static loads

机译:静电负载下平面框架优化设计的加固学习

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摘要

A new method is presented for optimum cross-sectional design of planar frame structures combining reinforcement learn-ing (RL) and metaheuristics. The method starts from RL jointly using artificial neural network so that the action taker, or the agent, can choose a proper action on which members to be increased, reduced or kept their size. The size of the neural network is compressed into small numbers of inputs and outputs utilizing story-wise decomposition of the frame. The trained agent is used in the process of generating a neighborhood solution during optimization with simulated annealing (SA) and particle swarm optimization (PSO). Because the proposed method is able to explore the solution space efficiently, better optimal solutions can be found with less computational cost compared with those obtained solely by metaheuristics. Utilization of RL agent also leads to high-quality optimal solutions regardless of variation of parameters of SA and PSO or initial solution. Furthermore, once the agent is trained, it can be applied to optimization of other frames with different numbers of stories and spans.
机译:提出了一种新的方法,用于平面框架结构的最佳横截面设计,组合增强型学习(RL)和型血管法。该方法从RL共同使用人工神经网络开始,以便动作接受者或代理商可以选择要增加的成员的适当动作,减少或保持其尺寸。神经网络的大小被压缩成少量输入和输出利用帧的故事分解。培训的代理用于在利用模拟退火(SA)和粒子群优化(PSO)期间在优化期间生成邻域解决方案的过程中。因为所提出的方法能够有效地探索解决方案空间,所以与仅通过血向量获得的那些相比,可以利用较少的计算成本找到更好的最佳解决方案。无论SA和PSO或初始解决方案的参数变化,RL代理的利用还导致高质量的最佳解决方案。此外,一旦训练了代理,就可以应用于具有不同数量的故事和跨度的其他帧的优化。

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