半导体制造中的虚拟计量:关注迁移学习

Rebecca Clain, Valeria Borodin, Michel Juge, A. Roussy
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引用次数: 3

摘要

目前,用于半导体制造的虚拟计量模型的目标是可扩展。虚拟计量(VM)系统旨在覆盖广泛的生产环境。然而,由于配方、工具和腔室的可能组合有很多,单独对每个上下文建模变得很棘手。这项工作提出了一种基于碎片化生产环境中迁移学习范式的虚拟机建模方法。该方法利用二维卷积神经网络(2D-CNN)架构,即空间金字塔池网络(SPP-net),在不同大小的输入域中执行从源域到目标域的迁移学习。我们在2016年预后和健康管理竞赛提供的基准数据集上实施了几种迁移学习策略。在数值分析的基础上,讨论了该方法的主要关键点。
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Virtual metrology for semiconductor manufacturing: Focus on transfer learning
Nowadays, virtual metrology models for semiconductor manufacturing aim to be scalable. A Virtual Metrology (VM) system is intended to cover a wide spectrum of production contexts. However, due to the large numbers of possible combinations of recipes, tools and chambers, it becomes intractable to model each context separately. This work presents a VM modeling approach based on the paradigm of transfer learning in a fragmented production context. The approach exploits a 2-Dimensional Convolutional Neural Network (2D-CNN) architecture, namely Spatial Pyramid Pooling Network (SPP-net), to perform the transfer learning from source to target domains with input of different sizes. We implemented several transfer learning strategies on a benchmark dataset provided by the Prognostics and Health Management competition in 2016. The main key points of the proposed approach are discussed based on the findings gathered from the numerical analysis.
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