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The effect of the OPC parameters on the performance of the OPC model

机译:OPC参数对OPC模型性能的影响

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Model based optical proximity correction (MB-OPC) is essential for the production of advanced integrated circuits (ICs). As the speed and functionality requirements of IC production necessitate continual reduction of the critical dimension (CD), there is a heightened demand for more accurate and sophisticated OPC models. The OPC is applied to the design data through a rule deck. The parameters in this rule deck, which we will call "setup parameters", describe the fundamental way in which the OPC engine will distinguish which edges to move, their restrictions to movement, and how the targets for the OPC are chosen. The optimization of these setup parameters, by customizing how the OPC engine should treat specific designs, is an essential step that is performed in order to maximize the benefit of the OPC model. Improper or deficient selection of the setup parameters strongly affects the success or failure of the OPC model and engine to achieve the desired design shapes. In this paper, the ability of setup parameter optimization to compensate for a weak OPC model, or conversely, how inadequately selected setup parameters can cause a very good OPC model to function poorly is investigated. Our approach is to use two OPC models: a good OPC model and a weak OPC model. The setup parameters will be optimized for the weak OPC model to investigate any improvements in the overall OPC performance. Alternatively, setup parameters chosen poorly will be used with the good OPC model to see how this will adversely affect the OPC performance. A comparative study will be carried out in order to fully understand the effect of setup file parameters on the overall OPC performance. The general goal of this study is to help the OPC modelers and setup parameters optimizers to improve the quality and performance of the OPC solution and weigh the tradeoffs associated with different OPC solution choices.
机译:基于模型的光学邻近校正(MB-OPC)对于生产高级集成电路(IC)至关重要。由于集成电路生产的速度和功能要求必须不断减小关键尺寸(CD),因此人们对更精确,更复杂的OPC模型提出了更高的要求。 OPC通过规则平台应用于设计数据。这个规则平台中的参数(我们称为“设置参数”)描述了OPC引擎区分移动哪些边,移动限制以及如何选择OPC目标的基本方式。通过自定义OPC引擎应如何对待特定设计来优化这些设置参数是必须执行的一个基本步骤,目的是使OPC模型的收益最大化。设置参数的选择不当或不足会严重影响OPC模型和引擎获得所需设计形状的成败。在本文中,研究了设置参数优化以补偿弱OPC模型的能力,或者相反,研究了选择设置参数不充分如何导致非常好的OPC模型无法正常工作的能力。我们的方法是使用两种OPC模型:好的OPC模型和弱的OPC模型。将针对弱OPC模型优化设置参数,以调查总体OPC性能的任何改进。另外,选择不佳的设置参数将与良好的OPC模型一起使用,以了解这将如何对OPC性能产生不利影响。为了充分理解设置文件参数对整个OPC性能的影响,将进行比较研究。这项研究的总体目标是帮助OPC建模者和设置参数优化器改善OPC解决方案的质量和性能,并权衡与不同OPC解决方案选择相关的权衡。

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