论文标题
开发全面的FET技术启用门口的SIGE凹痕过程控制
Development of SiGe Indentation Process Control for Gate-All-Around FET Technology Enablement
论文作者
论文摘要
介绍和讨论了使用不同的非损害和在线兼容的计量技术表征硅元素(SIGE)纳米片的横向压痕的方法。制造了总共有三个牺牲锡板的闸门纳米片设备结构,并使用不同的蚀刻过程条件来诱导深度变化。与高级解释和机器学习算法结合使用光谱干涉法和X射线荧光的散射法用于量化SIGE压痕。提出了两种方法的解决方案,即平均凹痕(以单个参数为代表)和表格特定的缩进。两种具有光谱干涉仪以及X射线荧光测量值的散射法都是通过单个参数量化平均凹痕的合适技术。此外,机器学习算法通过将X射线荧光差数据与散射测量光谱相结合,从而避免了快速解决方案路径,从而避免了需要完整的光学模型解决方案。可以采用类似的机器学习模型方法进行特定于工作表的缩进监控;但是,训练需要来自横截面传输电子显微镜图像分析的参考数据。已经发现,具有光谱干涉测量光谱和传统光学模型与高级算法的传统光学模型的散射测量可以达到与特定于表格参考数据的很好匹配。
Methodologies for characterization of the lateral indentation of silicon-germanium (SiGe) nanosheets using different non-destructive and in-line compatible metrology techniques are presented and discussed. Gate-all-around nanosheet device structures with a total of three sacrificial SiGe sheets were fabricated and different etch process conditions used to induce indent depth variations. Scatterometry with spectral interferometry and x-ray fluorescence in conjunction with advanced interpretation and machine learning algorithms were used to quantify the SiGe indentation. Solutions for two approaches, average indent (represented by a single parameter) as well as sheet-specific indent, are presented. Both scatterometry with spectral interferometry as well as x-ray fluorescence measurements are suitable techniques to quantify the average indent through a single parameter. Furthermore, machine learning algorithms enable a fast solution path by combining x-ray fluorescence difference data with scatterometry spectra, therefore avoiding the need for a full optical model solution. A similar machine learning model approach can be employed for sheet-specific indent monitoring; however, reference data from cross-section transmission electron microscopy image analyses are required for training. It was found that scatterometry with spectral interferometry spectra and a traditional optical model in combination with advanced algorithms can achieve a very good match to sheet-specific reference data.