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Two-Stage Sequence Model for Maximum Throughput in Cluster Tools

机译:群集工具中最大吞吐量的两阶段序列模型

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Cluster tool is a core manufacturing system in semiconductor industry. Optimizing the schedule of operations of a cluster tool is important because it is directly connected with its productivity. The scheduling becomes more complicated as the number of operating steps increases. There have been extensive studies to model the cluster tool operations and predict its throughput for a given configuration. However, the theoretical models cannot reflect realtime issues and the state-of-the-art throughput models are hard to be applied to predict scheduling parameters. In this work, we characterize the unique behavioral pattern of a key scheduling parameter towards the cluster tool throughput, and propose a novel deep-learning model that effectively identifies the best scheduling parameters. A two-stage model is designed that consists of an one-dimensional convolution neural network and a semantic segmentation network. Our experimental results show that the proposed model shows a superial accuracy than the state-of-the-art DNN solution for the best scheduling parameter detection.
机译:群集工具是在半导体行业核心制造体系。优化群集工具的操作的调度非常重要,因为它直接与生产力相连接。调度变得更加复杂,因为操作步骤数量的增加。已经有大量的研究来模拟集群工具操作,并预测其吞吐量为给定的配置。然而,理论模型不能反映实时的问题和国家的最先进的吞吐量模型是很难被应用到预测调度参数。在这项工作中,我们描述对群集工具吞吐量的关键调度参数的特有的行为模式,并提出了一种新的深学习模式,有效地识别出最佳的调度参数。两阶段模型的设计,其由一维卷积神经网络和一个语义分割网络。我们的实验结果表明,所提出的模型示出了superial精度高于最佳调度参数检测所述状态的最先进的DNN溶液。

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