As the feature size of semiconductor technology shrinks to 10 nm and beyond, the multiple patterning lithography (MPL) attracts more attention from the industry. In this paper, we model the layout decomposition of MPL as a generalized graph coloring problem, which is addressed by a distribution evolutionary algorithm based on a population of probabilistic model (DEA-PPM). DEA-PPM can strike a balance between decomposition results and running time, being scalable for varied settings of mask number and lithography resolution. Due to its robustness of decomposition results, this could be an alternative technique for multiple patterning layout decomposition in next-generation technology nodes.
翻译:随着半导体技术特征尺寸缩小至 10 纳米及以下,多重绘图光刻 (MPL) 越发引起行业的关注。本文将 MPL 的布局分解建模为广义图着色问题,并使用基于概率模型的分布式进化算法 (DEA-PPM) 进行求解。 DEA-PPM 可以在分解结果和运行时间之间达到平衡,可扩展到不同的掩膜数量和光刻分辨率设置。由于其稳健的分解结果,这可能是下一代技术节点多重绘图布局分解的替代技术。