A cooperative game for automated learning of elasto-plasticity knowledge graphs and models with AI-guided experimentation

被引:0
|
作者
Kun Wang
WaiChing Sun
Qiang Du
机构
[1] Columbia University,Department of Civil Engineering and Engineering Mechanics
[2] Columbia University,Department of Applied Physics and Applied Mathematics, and Data Science Institute
来源
Computational Mechanics | 2019年 / 64卷
关键词
Directed multigraph; Data-driven constitutive modeling; Multi-agent deep reinforcement learning; Combinatorial optimization; Computational combinatorics;
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学科分类号
摘要
We introduce a multi-agent meta-modeling game to generate data, knowledge, and models that make predictions on constitutive responses of elasto-plastic materials. We introduce a new concept from graph theory where a modeler agent is tasked with evaluating all the modeling options recast as a directed multigraph and find the optimal path that links the source of the directed graph (e.g. strain history) to the target (e.g. stress) measured by an objective function. Meanwhile, the data agent, which is tasked with generating data from real or virtual experiments (e.g. molecular dynamics, discrete element simulations), interacts with the modeling agent sequentially and uses reinforcement learning to design new experiments to optimize the prediction capacity. Consequently, this treatment enables us to emulate an idealized scientific collaboration as selections of the optimal choices in a decision tree search done automatically via deep reinforcement learning.
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页码:467 / 499
页数:32
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