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Monitoring Measurement Tools: New Methods for Driving Continuous Improvements in Fleet Measurement Uncertainty

机译:监视测量工具:不断改善车队测量不确定性的新方法

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Ever shrinking measurement uncertainty requirements are difficult to achieve for a typical metrology toolset, especially over the entire expected life of the fleet. Many times, acceptable performance can be demonstrated during brief evaluation periods on a tool or two in the fleet. Over time and across the rest of the fleet, the most demanding processes often have measurement uncertainty concerns that prevent optimal process control, thereby limiting premium part yield, especially on the most aggressive technology nodes. Current metrology statistical process control (SPC) monitoring techniques focus on maintaining the performance of the fleet where toolset control chart limits are derived from a stable time period. These tools are prevented from measuring product when a statistical deviation is detected. Lastly, these charts are primarily concerned with daily fluctuations and do not consider the overall measurement uncertainty. It is possible that the control charts implemented for a given toolset suggest a healthy fleet while many of these demanding processes continue to suffer measurement uncertainty issues. This is especially true when extendibility is expected in a given generation of toolset. With this said, there is a need to continually improve the measurement uncertainty of the fleet until it can no longer meet the needed requirements at which point new technology needs to be entertained. This paper explores new methods in analyzing existing SPC monitor data to assess the measurement performance of the fleet and look for opportunities to drive improvements. Long term monitor data from a fleet of overlay and scatterometry tools will be analyzed. The paper also discusses using other methods besides SPC monitors to ensure the fleet stays matched; a set of SPC monitors provides a good baseline of fleet stability but it cannot represent all measurement scenarios happening in product recipes. The analyses presented deal with measurement uncertainty on non-measurement altering metrology toolsets such as scatterometry, overlay, atomic force microscopy (AFM) or thin film tools. The challenges associated with monitoring toolsets that damage the sample such as the CD-SEMs will also be discussed. This paper also explores improving the monitoring strategy through better sampling and monitor selection. The industry also needs to converge regarding the metrics used to describe the matching component of measurement uncertainty so that a unified approach is reached regarding how to best drive the much needed improvements. In conclusion, there will be a discussion on automating these new methods so they can complement the existing methods to provide a better method and system for controlling and driving matching improvements in the fleet.
机译:对于典型的计量工具集,尤其是在整个车队的整个预期寿命中,很难实现不断缩小的测量不确定性要求。在很多情况下,可以在简短的评估期内通过使用车队中的一两个工具来证明可接受的性能。随着时间的推移以及整个车队的其余部分,最苛刻的过程通常会担心测量不确定性,从而妨碍最佳过程控制,从而限制了零件的良率,特别是在最具攻击性的技术节点上。当前的计量统计过程控制(SPC)监视技术着重于维护车队的性能,其中工具集控制图限制是从稳定的时间段得出的。当检测到统计偏差时,将阻止这些工具测量产品。最后,这些图表主要关注每日波动,而不考虑整体测量的不确定性。为给定工具集实施的控制图可能表明车队状况良好,而其中许多要求苛刻的过程继续遭受测量不确定性问题的困扰。当期望在给定的工具集世代中具有可扩展性时,尤其如此。有了这样的说法,有必要不断改善车队的测量不确定性,直到它不再满足所需的要求为止,此时必须采用新技术。本文探索了分析现有SPC监控器数据的新方法,以评估机队的测量性能并寻找推动改进的机会。来自一组叠加和散射测量工具的长期监控器数据将进行分析。本文还讨论了使用除SPC监视器以外的其他方法来确保机队保持匹配。一组SPC监视器提供了良好的车队稳定性基线,但不能代表产品配方中发生的所有测量情况。提出的分析处理了非测量变更计量工具集的测量不确定性,例如散射测量,叠加,原子力显微镜(AFM)或薄膜工具。还将讨论与损坏样本的监视工具集(例如CD-SEM)相关的挑战。本文还探讨了通过更好的采样和监视器选择来改进监视策略。行业还需要就用于描述测量不确定度的匹配成分的度量标准进行收敛,以便就如何最佳地推动急需的改进达成统一的方法。总之,将对这些新方法的自动化进行讨论,以便它们可以补充现有方法,以提供更好的方法和系统来控制和驱动车队中的匹配改进。

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