使用基于人工智能的预测为半导体制造过程选择机器的分支选择和数据优化

Peter Stich, Rebecca Busch, M. Wahl, Christian Weber, M. Fathi
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引用次数: 1

摘要

在半导体工业中,制造步骤的顺序由每个特定器件的配方决定。虽然单个制造步骤可能只有一台机器可用,但在执行相同任务的机器之间存在选择的步骤,因此不同批次的路径可以变化。虽然应该没有任何差别,但实际上,收益取决于选择。本文提出了一种基于人工智能的策略,用于在有选择的情况下选择应该采取的分支。这种优化的选择将导致更高的总产量。更详细地说,我们将描述我们的分支选择方法,这是基于对现有生产数据和当前工艺参数的统计分析。我们将描述生成指导选择过程的产量指标的第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Branch selection and data optimization for selecting machines for processes in semiconductor manufacturing using AI-based predictions
In the semiconductor industry, the sequence of the manufacturing steps is given by the recipe for each specific device. Whereas only one machine may be available for an individual manufacturing step, there are steps where there exists a choice between machines performing the same task, so that the path for different batches can vary. Although there should not be any difference, in reality, the yield depends on the choice. This paper presents an AI-based strategy for selecting which branch should be taken, whenever there is a choice. This optimized selection will lead to a higher overall yield. In more detail, we will describe our branch selection approach which is based on statistical analysis of existing production data as well as the current process parameters. We will describe the first steps for generating a yield indicator which guides the selection process.
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