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    This study introduces NSGA-SMO, a new method for source and mask optimization (SMO) in photolithography. It enhances process window (PW) performance, improving lithography robustness and imaging quality for advanced critical dimensions (CD).

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    Area of Science:

    • Semiconductor Manufacturing
    • Optical Engineering
    • Computational Lithography

    Background:

    • Source and Mask Optimization (SMO) is crucial for photolithography resolution enhancement as critical dimensions (CD) shrink.
    • Traditional SMO methods focus on in-focus imaging quality, neglecting the Process Window (PW), which includes Depth of Focus (DOF) and Exposure Latitude (EL), vital for lithography robustness.
    • Evaluating PW is computationally intensive and challenging for gradient-based SMO algorithms.

    Purpose of the Study:

    • To develop a novel SMO method that directly optimizes Process Window (PW) performance.
    • To enhance the robustness of SMO results in advanced technology nodes by considering lithographic process variations.
    • To maintain high in-focus image quality while improving lithographic process margins.

    Main Methods:

    • Proposed a novel Process Window enhancement SMO method, termed NSGA-SMO, utilizing the Nondominated Sorting Genetic Algorithm II (NSGA-II).
    • Employed the Variational Lithography Model (VLIM), a fast focus-variation aerial image model, for direct PW optimization.
    • Implemented a multi-objective optimization approach to balance in-focus imaging quality and PW performance.

    Main Results:

    • NSGA-SMO demonstrated significant improvements in Depth of Focus (DOF) and Exposure Latitude (EL) compared to conventional multi-objective SMO.
    • Simulations showed over 20% improvement in DOF and EL for typical patterns.
    • For complicated patterns, NSGA-SMO achieved results up to four times superior to single-objective SMO.

    Conclusions:

    • The proposed NSGA-SMO method effectively optimizes Process Window (PW) performance in photolithography.
    • This approach enhances lithographic process robustness, crucial for advanced critical dimensions (CD).
    • NSGA-SMO offers a viable solution for improving imaging quality and process margins in high-volume manufacturing.