2022
DOI: 10.1364/ao.437655
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Sampling-based imaging model for fast source and mask optimization in immersion lithography

Abstract: Current source and mask optimization (SMO) research tends to focus on advanced inverse optimization algorithms to accelerate SMO procedures. However, innovations of forward imaging models currently attract little attention, which impacts computational efficiency more significantly. A sampling-based imaging model is established with the innovation of an inverse point spread function to reduce computational dimensions, which can provide an advanced framework for fast inverse lithography. Simulations show that th… Show more

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Cited by 6 publications
(1 citation statement)
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“…Wang et al employed PSO to evaluate the intensity distribution of the source, in which pattern fidelity was adopted as the fitness function to evaluate the simulation results [20]. In research works, heuristic algorithms have been proven to exhibit considerable potential for improving the performance of lithographic imaging [30], [35]- [37]. Nevertheless, the existing heuristic algorithms that are generally applied in optimization models make it difficult to deviate from the local optimum in the case of a complex merit function [38], [39].…”
Section: Introductionmentioning
confidence: 99%
“…Wang et al employed PSO to evaluate the intensity distribution of the source, in which pattern fidelity was adopted as the fitness function to evaluate the simulation results [20]. In research works, heuristic algorithms have been proven to exhibit considerable potential for improving the performance of lithographic imaging [30], [35]- [37]. Nevertheless, the existing heuristic algorithms that are generally applied in optimization models make it difficult to deviate from the local optimum in the case of a complex merit function [38], [39].…”
Section: Introductionmentioning
confidence: 99%