Stability of CD off-target: analysis

Photomask Japan Pub Date : 2021-08-23 DOI:10.1117/12.2599510
P. Nesládek, F. Schurack, Olga Hortenbach, Michael Finken
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Abstract

Narrowed CD specifications coupled with very tight cycle time requirements have resulted in search for improvement opportunities in CD stability and tuning options for mask fabrication unit processes, including pattern generation, resist development and etch, which may yield narrower scattering band of CD off-target (CDO) of final products. Targeting models are already in productive use at AMTC, accounting for different mask and blank types, clear field, resist type, pattern type and many other parameters. This targeting model is static however, and changes in the CD performance of contributing factors must be adjusted manually when CD drift inevitably occurs. In the past, several approaches to introduce time-based corrections were pursued. Correction of step function of the resulting CDO caused by e.g. resist lot change is the easier task, due to the fact that such factors can be closely analyzed prior to productive use by test, and offset accounting for the individual factor can be introduced. More troubles cause factors, whose effects on CDO is smooth and can be observed as long-term drift in the CDO. The CD drift is frequently of very different origin and effects of several factors are overlapping in time. By measuring the final CD on the products, we can see only the ‘envelope’ of all the effects. To target such factors, we need to identify their root cause and ideally an easy-to-monitor indicator. In this paper we show an analysis approach to identify the most significant and vital indicators to process bias. Analysis of production data covering several manufacturing steps including metrology over more than three years was performed. Using machine learning methods, a “big data” set is reduced, and the most appropriate model is selected using statistical methods. Criteria for selection of factors were significance level in analysis of variance and the distribution of residuals was used for model comparison. Based on these factors a model of the etch contribution to the CD was established, describing the variation of the etch process for a virtual mask with constant clear field, resist sensitivity and absorber composition and thickness. This model is based on the process data collected at the etch process during processing of each mask processed with the same recipe. Monitoring this time trend of the “modelled etch bias” gives very fast feedback about the stability of the etch process and evolution of the etch contribution to CD. This data is used to trigger appropriate corrective actions to further stabilize the manufacturing process.
CD脱靶稳定性分析
缩小的CD规格加上非常严格的周期时间要求,导致在CD稳定性和掩模制造单元工艺的调整选项方面寻求改进机会,包括图案生成、抗蚀剂开发和蚀刻,这可能会产生更窄的CD脱靶(CDO)最终产品的散射带。目标模型已经在AMTC生产使用,考虑不同的掩模和空白类型,清除场,抗蚀类型,模式类型和许多其他参数。然而,这个目标模型是静态的,当不可避免地发生CD漂移时,必须手动调整影响CD性能的因素。过去,采用了几种方法来引入基于时间的校正。由于这些因素可以在生产使用之前通过测试进行密切分析,并且可以引入对单个因素的抵消会计,因此可以更容易地校正由例如抵制批次变化引起的CDO的阶跃函数。麻烦因素较多,对CDO的影响较为平稳,可以观察到其在CDO中的长期漂移。CD漂移的来源往往不同,而且几个因素的影响在时间上是重叠的。通过测量产品上的最终CD,我们只能看到所有影响的“信封”。为了针对这些因素,我们需要确定它们的根本原因,最好是一个易于监测的指标。在本文中,我们展示了一个分析方法来识别最重要和重要指标过程偏差。对三年多来包括计量在内的几个制造步骤的生产数据进行了分析。使用机器学习的方法,一套“大数据”是减少,使用统计方法来选择最合适的模型。选取因素的标准为方差分析的显著性水平,模型比较采用残差分布。基于这些因素,建立了刻蚀对CD的贡献模型,描述了具有恒定净场、电阻灵敏度、吸收剂成分和厚度的虚拟掩膜的刻蚀过程的变化。该模型是基于在蚀刻过程中收集的工艺数据,并使用相同的配方加工每个掩模。监测“模拟蚀刻偏差”的时间趋势,可以非常快速地反馈蚀刻过程的稳定性和蚀刻对CD贡献的演变。该数据用于触发适当的纠正措施,以进一步稳定制造过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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