利用自动计算吞吐量的统计分析改进工厂调度

Holland M. Smith, C. Nicksic
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引用次数: 1

摘要

优化工厂调度是解决自动化晶圆厂生产问题的一项强有力的技术。调度通常比旧的基于规则的调度逻辑方法更复杂,更有能力指导半导体工厂每分钟的处理优先级,但需要更大的计算能力和更高保真度的操作数字孪生。工厂调度器使用的最重要的数据之一是吞吐量——工具运行指定配方所需的处理时间。虽然吞吐量数据集以前是通过手动秒表研究编制的,但现代晶圆厂规模和产量几乎保证了综合吞吐量数据集需要基于过程工具的事件数据进行自动计算。然而,在自动计算工具事件的吞吐量时,存在许多潜在的数据质量问题,这些问题很难系统地检测到。本文描述了一种分析吞吐量数据质量的统计方法。该方法揭示了吞吐量数据中一些常见的噪声来源,并揭示了正确解释工具事件的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Factory Scheduling with Statistical Analysis of Automatically Calculated Throughput
optimized factory scheduling is a powerful technique for solving the problems of automated fab operations. Scheduling is generally more sophisticated and capable than older rule-based dispatch logic approaches for directing the minute-byminute processing priorities of semiconductor factories but requires greater computational power and a higher fidelity operations digital twin. One of the most important pieces of data a factory scheduler uses is throughput – the processing time required for a tool to run a specified recipe. While throughput data sets were formerly compiled from manual stopwatch studies, modern fab scales and volumes all but guarantee that comprehensive throughput data sets require automatic calculation based on event data from process tools. However, there are many potential data quality issues when automatically calculating throughput from tool events that can be difficult to detect systematically. In this paper we describe a statistical method for analyzing throughput data quality. The method reveals some common sources for noise in throughput data and reveals the importance of correct tool event interpretation.
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