首页> 外文会议>Conference on Metrology, Inspection, and Process Control for Microlithography XXXIII >Roughness Decomposition: An on-Wafer Methodology to Discriminate Mask, Metrology, and Shot Noise Contributions
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Roughness Decomposition: An on-Wafer Methodology to Discriminate Mask, Metrology, and Shot Noise Contributions

机译:粗糙度分解:围绕掩模,计量和射击贡献的晶圆方法

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In order to meet the tight Line Width Roughness (LWR) requirements for advanced metrology nodes, it is critical tobe able to identify what the fundamental sources of roughness are, so that they can be individually minimized. Infact, more and more efforts aiming to decouple mask and / or metrology contribution from wafer data have beenrecently reported . However, these approaches often rely heavily on extensive mask characterization, somethingthat is not always easily available.We propose here an alternative path to investigate and discriminate the root causes of LWR using only wafer data. Itis based on Local Critical Dimension Uniformity (LCDU) decomposition , a methodology used to identify andquantify the individual LCDU contributors. The decomposition approach requires a smart sampling of the waferprint, in which an array of contact hole is measured in different dies multiple times. For such an approach to besuccessful, it is critical to ensure that the measurement locations are individually identified. Hence, it is necessary toanchor the metrology to a reference feature. A linear nested model is then used to quantify the three mainvariability components (mask, shot noise, and metrology). This approach allows to sample thousands of features atmask, a task that would not be practically achievable through direct mask measurements.In this work, LWR decomposition is implemented for the first time. To this aim, 18nm lines at 36nm pitch, printedby EUV lithography, were used. We specifically worked with a pattern including programmed defects, used asanchoring features for the metrology. In order to limit the impact of the metrology noise, expected to be higher forlines as compared to CH, we sampled over 8000 anchored measurements per image (in the CH case, only 81measurements per image were needed). The LWR decomposition results indicated the dominance of the metrologynoise, as expected. In addition, the mask contribution was observed to be less relevant that the shot noise.To verify the accuracy of the LWR decomposition results, Power Spectral Density (PSD) analysis on wafer andmask SEM images was used. The metrology noise contribution was removed at both mask and wafer level using anun-biasing normalization of the PSD curves . The comparison with the PSD analysis confirmed the feasibility ofLWR decomposition, opening the way to a more effective diagnostic technique for roughness and stochastics.
机译:为了满足高级计量节点的紧密线宽粗糙度(LWR)要求,这是至关重要的能够识别什么粗糙的根本来源,使他们可以单独最小化。在事实上,越来越多的努力旨在与晶圆数据脱钩和/或计量贡献的努力最近报道。然而,这些方法通常依赖于广泛的面膜特征,一些东西这并不总是很容易获得。我们在这里提出了一种仅使用晶片数据来研究和区分LWR的根本原因的替代路径。它基于局部关键尺寸均匀性(LCDU)分解,一种用于识别和的方法量化单独的LCDU贡献者。分解方法需要晶圆的智能采样打印,其中阵列接触孔在多次不同的模具中测量。为了这样的方法成功,确保单独识别测量位置是至关重要的。因此,有必要将计量归入参考功能。然后使用线性嵌套模型来量化三个主要可变性组件(掩模,射击噪声和计量)。这种方法允许在千分之三的功能上进行样本面具,通过直接掩模测量不会实际实现的任务。在这项工作中,LWR分解首次实施。到此目的,18nm的线条在36nm间距,印刷通过EUV光刻,使用。我们专门使用包括编程缺陷的模式,用作锚定计量的功能。为了限制计量噪声的影响,预计将更高与CH相比,我们每张图片采样超过8000次锚定测量(在CH盒中,只有81需要每张图片的测量)。 LWR分解结果表明了计量的优势噪音,正如预期的那样。此外,观察到掩模贡献以减少射击噪声。为了验证LWR分解结果的准确性,晶片上的功率谱密度(PSD)分析和使用掩模SEM图像。使用掩模和晶片级别在两个掩模和晶片级别移除了计量噪声贡献PSD曲线的未偏置标准化。与PSD分析的比较证实了可行性LWR分解,对粗糙度和随机性的更有效的诊断技术开辟道路。

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