基于图嵌入和强化学习的空间桁架装配序列优化

IF 1.1 Q3 ENGINEERING, CIVIL
Kazuki Hayashi, M. Ohsaki, Masaya Kotera
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引用次数: 1

摘要

我们将特拉斯视为一个由节点和边组成的图,并将图嵌入(GE)和强化学习(RL)相结合,为具有任意配置的特拉斯开发了一个生成稳定装配路径的代理。GE是一种将图的特征嵌入到向量空间中的方法。通过使用GE,考虑到相邻成员和节点的连接性,代理可以获得它们的数字信息。由于构件和节点的相对位置对结构的稳定性有很大影响,因此在考虑特拉斯的稳定性时,GE的特征提取应该是有效的。所提出的方法不仅可以使用具有任意连通性的桁架来训练代理,而且可以将训练的代理应用于具有任意连通度的桁架,确保了训练的代理适用性的通用性。在数值示例中,验证了经过训练的代理为各种桁架找到合理的装配序列的速度是元启发式方法的1000多倍。经过训练的代理被进一步实现为与3D建模软件兼容的用户友好组件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assembly Sequence Optimization of Spatial Trusses Using Graph Embedding and Reinforcement Learning
We consider a truss as a graph consisting of nodes and edges, and combine graph embedding (GE) and reinforcement learning (RL) to develop an agent for generating a stable assembly path for a truss with arbitrary configuration. GE is a method of embedding the features of a graph into a vector space. By using GE, the agent can obtain numerical information on neighboring members and nodes considering their connectivity. Since the stability of a structure is strongly affected by the relative positions of members and nodes, feature extraction by GE should be effective in considering the stability of a truss. The proposed method not only can train agents using trusses with arbitrary connectivity but also can apply trained agents to trusses with arbitrary connectivity, ensuring the versatility of the trained agents' applicability. In the numerical examples, the trained agents are verified to find rational assembly sequences for various trusses more than 1000 times faster than metaheuristic approaches. The trained agent is further implemented as a user-friendly component compatible with 3D modeling software.
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
17
期刊介绍: The Association publishes an international journal, the Journal of the IASS, four times yearly, in print (ISSN 1028-365X) and on-line (ISSN 1996-9015). The months of publication are March, June, September and December. Occasional extra electronic-only issues are included in the on-line version. From this page you can access one or more issues -- a sample issue if you are not logged into the members-only portion of the site, or the current issue and several back issues if you are logged in as a member. For any issue that you can view, you can download articles as .pdf files.
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