L2O-ILT: Learning to Optimize Inverse Lithography Techniques

IEEE TRANSACTIONS ON COMPUTER-AIDED DESIGN OF INTEGRATED CIRCUITS AND SYSTEMS(2024)

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摘要
Inverse lithography technique (ILT) is one of the most widely used resolution enhancement techniques (RETs) to compensate for the diffraction effect in the lithography process. However, ILT suffers from runtime overhead issues with the shrinking size of technology nodes. In this article, our proposedL2O-ILT framework unrolls the iterative ILT optimization algo-rithm into a learnable neural network with high interpretability, which can generate a high-quality initial mask for fast refinement. Experimental results demonstrate that our method achieves better performance on both mask printability and runtime than the previous methods.
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关键词
Lithography,Optimization,Optical imaging,Optical diffraction,Computational modeling,Kernel,Adaptive optics,Design for manufacture,mask optimization,learning to optimize
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