利用卷积递归神经网络学习制造作业排序的优先关系

IF 2 Q3 ENGINEERING, MANUFACTURING
Xiaoliang Yan, Zhichao Wang, David W. Rosen, Shreyes N. Melkote
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引用次数: 0

摘要

网络制造即服务或基于平台的制造,通过在线市场将买家和制造零件供应商联系起来,最近出现了使制造能力民主化的目标。这种采购制造零件的方法给供应商带来了巨大的压力,要求他们高效、优化地计划零件制造,以降低生产成本,提高竞争力。制造作业的排序是工艺规划管道的重要步骤,历史上依赖于人类专家的知识。长期以来,人们一直在寻求一种自动化的操作排序方法,但鉴于世界某些地区熟练劳动力的短缺,目前迫切需要这种方法。虽然研究人员已经提出了各种自动化操作排序的算法,但这些方法的一个基本假设是,制造操作之间的优先关系(通常称为优先约束)必须手动定义,以预处理操作排序算法的输入。这一假设严重阻碍了现有操作排序算法的通用性。考虑到这一限制,在这项工作中,我们提出了一种数据驱动的方法来学习加工操作的优先关系,而不是依赖于人类的专业知识。通过将成功生产零件的优先关系嵌入到潜在递归向量中,证明了所提出的3d -卷积递归神经网络(3D-ConvRNN)模型的优先关系验证准确率为97.6%,优于3D-CNN二元分类器。此外,所提出的模型用于案例研究,以评估实际零件的简单加工操作序列,并自动生成操作优先图作为操作排序算法的输入。我们的研究结果表明,通过增加或替换手动定义的优先级约束,数据驱动的学习优先级关系的方法可以有利于自动化操作排序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning precedence relations for manufacturing operations sequencing using convolutional recurrent neural networks
Cyber manufacturing as-a-service or platform-based manufacturing, which connects buyers and manufactured parts suppliers through an online marketplace, have recently emerged with the goal of democratizing access to manufacturing capabilities. This approach to sourcing manufactured parts places intense pressure on suppliers to efficiently and optimally plan for part manufacturing to reduce production costs and become more competitive. Sequencing of manufacturing operations is an important step in the process planning pipeline, which has historically relied on the knowledge of human experts. An automated approach to operations sequencing has long been sought but is urgently warranted today given the skilled labor shortage in the certain parts of the world. While researchers have proposed various algorithms for automating operations sequencing, an underlying assumption of these methods is that precedence relations (commonly referred to as precedence constraints) among manufacturing operations must be manually defined to preprocess inputs to operations sequencing algorithms. This assumption has significantly hampered the generalizability of existing operations sequencing algorithms. Considering this limitation, in this work we present a data-driven approach to learn precedence relations for machining operations instead of relying on human expertise. By embedding the precedence relations from successfully produced parts as latent recurrent vectors, it is demonstrated that the proposed 3D-convolutional recurrent neural network (3D-ConvRNN) model yields 97.6% precedence relation validation accuracy, outperforming a 3D-CNN binary classifier. Furthermore, the proposed model is used in case studies to assess simple sequences of machining operations for realistic parts and to automatically generate operations precedence graphs as inputs to operations sequencing algorithms. Our results suggest that a data-driven approach to learning precedence relations can be beneficial for automating operations sequencing by augmenting or replacing manually defined precedence constraints.
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来源期刊
Manufacturing Letters
Manufacturing Letters Engineering-Industrial and Manufacturing Engineering
CiteScore
4.20
自引率
5.10%
发文量
192
审稿时长
60 days
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