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Front. Inform. Technol. Electron. Eng.  2013, Vol. 14 Issue (10): 799-807    DOI: 10.1631/jzus.C1300050
    
Regularized level-set-based inverse lithography algorithm for IC mask synthesis
Zhen Geng, Zheng Shi, Xiao-lang Yan, Kai-sheng Luo
Institute of VLSI Design, Zhejiang University, Hangzhou 310027, China
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Abstract  Inverse lithography technology (ILT) is one of the promising resolution enhancement techniques, as the advanced IC technology nodes still use the 193 nm light source. In ILT, optical proximity correction (OPC) is treated as an inverse imaging problem to find the optimal solution using a set of mathematical approaches. Among all the algorithms for ILT, the level-set-based ILT (LSB-ILT) is a feasible choice with good production in practice. However, the manufacturability of the optimized mask is one of the critical issues in ILT; that is, the topology of its result is usually too complicated to manufacture. We put forward a new algorithm with high pattern fidelity called regularized LSB-ILT implemented in partially coherent illumination (PCI), which has the advantage of reducing mask complexity by suppressing the isolated irregular holes and protrusions in the edges generated in the optimization process. A new regularization term named the Laplacian term is also proposed in the regularized LSB-ILT optimization process to further reduce mask complexity in contrast with the total variation (TV) term. Experimental results show that the new algorithm with the Laplacian term can reduce the complexity of mask by over 40% compared with the ordinary LSB-ILT.

Key wordsInverse lithography technology      Complexity      Level set      Regularization     
Received: 23 February 2013      Published: 08 October 2013
CLC:  TN47  
Cite this article:

Zhen Geng, Zheng Shi, Xiao-lang Yan, Kai-sheng Luo. Regularized level-set-based inverse lithography algorithm for IC mask synthesis. Front. Inform. Technol. Electron. Eng., 2013, 14(10): 799-807.

URL:

http://www.zjujournals.com/xueshu/fitee/10.1631/jzus.C1300050     OR     http://www.zjujournals.com/xueshu/fitee/Y2013/V14/I10/799


Regularized level-set-based inverse lithography algorithm for IC mask synthesis

Inverse lithography technology (ILT) is one of the promising resolution enhancement techniques, as the advanced IC technology nodes still use the 193 nm light source. In ILT, optical proximity correction (OPC) is treated as an inverse imaging problem to find the optimal solution using a set of mathematical approaches. Among all the algorithms for ILT, the level-set-based ILT (LSB-ILT) is a feasible choice with good production in practice. However, the manufacturability of the optimized mask is one of the critical issues in ILT; that is, the topology of its result is usually too complicated to manufacture. We put forward a new algorithm with high pattern fidelity called regularized LSB-ILT implemented in partially coherent illumination (PCI), which has the advantage of reducing mask complexity by suppressing the isolated irregular holes and protrusions in the edges generated in the optimization process. A new regularization term named the Laplacian term is also proposed in the regularized LSB-ILT optimization process to further reduce mask complexity in contrast with the total variation (TV) term. Experimental results show that the new algorithm with the Laplacian term can reduce the complexity of mask by over 40% compared with the ordinary LSB-ILT.

关键词: Inverse lithography technology,  Complexity,  Level set,  Regularization 
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