光学接近校正,方法和限制

Y. Hou, Qiang Wu
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引用次数: 4

摘要

自2000年代初以来,基于模型的光学接近校正(MB-OPC)已被半导体行业用于改善光刻中的线宽均匀性和图案保真度。基于规则的OPC (RB-OPC)基于规则的OPC (RB-OPC)是基于规则的OPC的改进,它依靠一个偏差表来纠正由于光学接近效应(OPE)引起的线宽变化,它使用航空图像来计算图案边缘与设计的偏差。MB-OPC的流程包括模型数据收集、模型设置和校准、配方设置、OPC校正和OPC后验证检查。由于OPC工艺还包括辅助图案的添加,如衬线、亚分辨率辅助特征(SRAF)和锤头等,因此OPC工艺还可以帮助改善光刻工艺窗口。尽管有以上优点,OPC也可能有建模错误,这可能导致模式失败和重新装配。建模误差基本上是由于光刻过程的物理建模不完善,这意味着需要更好的建模。更好的建模包括更好的光刻胶表征和建模,更好的掩模3D (M3D)散射效应建模,以及更好的显影工艺表征等。它还与图像化工艺设置的质量有关,例如衬底膜堆栈的优化、掩模偏置和光抗蚀剂工艺、反应离子蚀刻(RIE)偏置等。一旦OPC模型被最佳设置,校正配方设置将不那么具有挑战性,可以专注于困难的领域,如少数线结构,复杂的2D特征等。在本文中,我们提出了一种模型校准和配方设置的方法,并将提供有效使用光学接近校正的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optical Proximity Correction, Methodology and Limitations
Since the early 2000's, model based Optical Proximity Correction (MB-OPC) has been used by the semiconductor industry to improve the linewidth uniformity and pattern fidelity in photolithography. Designed to be improved from its predecessor, the rule based OPC (RB-OPC), which relies on a table of biases to correct linewidth variation due to Optical Proximity Effect (OPE), it uses aerial image to calculate pattern edge deviation from the design. The flow of the MB-OPC includes the model data collection, model setup and calibration, recipe setup, OPC correction and post-OPC verify check. Since the OPC process also include the addition of assist patterns, such as serif, Sub-Resolution Assist Features (SRAF), and hammer heads, etc., the OPC process can also help improve lithography process window. Albeit above advantages, OPC can have modeling errors which may cause pattern failures and re-toolings. The modeling error is understood to basically originate from non-perfect physical modeling of the lithography process, which implies the need for better modeling. Better modeling includes better photoresist characterization and modeling, better Mask 3D (M3D) scattering effect modeling, and better developing process characterization, etc. It is also related to the quality of patterning process setup, such as the optimization of the substrate film stack, mask bias, and the photoresist process, and Reactive Ion Etch (RIE) bias, etc. Once the OPC model is optimally setup, the correction recipe setup will be less challenging and can focus on difficult areas, such as few line structures, complicated 2D features, etc. In this paper, we propose a methodology in model calibration and recipe setup and will provide recommendation on the effective use of optical proximity correction.
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