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首页> 外文期刊>Procedia CIRP >Fault pattern identification in multi-stage assembly processes with non-ideal sheet-metal parts based on reinforcement learning architecture
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Fault pattern identification in multi-stage assembly processes with non-ideal sheet-metal parts based on reinforcement learning architecture

机译:基于强化学习架构的非理想钣金零件多阶段装配过程中的故障模式识别

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A reinforcement learning-based architecture to address the fault detection on body in white assembly processes is introduced in this paper. During the research were addressed: (i) generation of a random defect pattern database using a multi-physics variation modeling for multi-stage assembly systems; (ii) design and implementation of a fault pattern identification reinforcement learning-based architecture, combining neural network, genetic algorithm and Q-learning algorithms; and (iii) validation based on non-ideal sheet-metal parts case study generated by the Variation Response Method toolkit. Finally, a comparative study between the different topologies is done, highlighting the influence of the Q-learning in the default identification process.
机译:本文介绍了一种基于强化学习的体系结构,用于解决白色装配过程中车身的故障检测。在研究过程中解决了:(i)使用多物理场变异模型为多阶段装配系统生成随机缺陷模式数据库; (ii)结合神经网络,遗传算法和Q学习算法设计和实现基于故障模式识别强化学习的架构; (iii)根据“变化响应方法”工具包生成的非理想钣金零件案例研究进行验证。最后,进行了不同拓扑之间的比较研究,突出了Q学习在默认识别过程中的影响。

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