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Meta-modeling game for deriving theory-consistent, microstructure-based traction-separation laws via deep reinforcement learning

机译:通过深度强化学习推导理论一致的基于微观结构的牵引分离定律的元建模游戏

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This paper presents a new meta-modeling framework that employs deep reinforcement learning (DRL) to generate mechanical constitutive models for interfaces. The constitutive models are conceptualized as information flow in directed graphs. The process of writing constitutive models is simplified as a sequence of forming graph edges with the goal of maximizing the model score (a function of accuracy, robustness and forward prediction quality). Thus meta-modeling can be formulated as a Markov decision process with well-defined states, actions, rules, objective functions and rewards. By using neural networks to estimate policies and state values, the computer agent is able to efficiently self-improve the constitutive model it generated through self-playing, in the same way AlphaGo Zero (the algorithm that outplayed the world champion in the game of Go) improves its gameplay. Our numerical examples show that this automated meta-modeling framework does not only produces models which outperform existing cohesive models on benchmark traction-separation data, but is also capable of detecting hidden mechanisms among micro-structural features and incorporating them in constitutive models to improve the forward prediction accuracy, both of which are difficult tasks to do manually. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文提出了一种新的元建模框架,该框架采用深度强化学习(DRL)来生成接口的机械本构模型。本构模型被概念化为有向图中的信息流。本构模型的编写过程简化为一系列形成图形边缘的过程,其目的是使模型得分最大化(准确性,鲁棒性和前向预测质量的函数)。因此,可以将元模型公式化为具有明确定义的状态,动作,规则,目标函数和奖励的马尔可夫决策过程。通过使用神经网络来估计策略和状态值,计算机代理能够有效地自我改进通过自我玩法生成的本构模型,就像AlphaGo Zero(在Go游戏中超越世界冠军的算法)一样。 )改善了游戏玩法。我们的数值示例表明,这种自动化的元建模框架不仅可以产生优于基准牵引分离数据的现有内聚模型的模型,而且还能够检测出微观结构特征中的隐藏机制,并将其纳入本构模型中以改进前向预测精度,这两项都是手动完成的困难任务。 (C)2018 Elsevier B.V.保留所有权利。

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