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An inverse-distance weighting genetic algorithm for optimizing the wafer exposure pattern for enhancing OWE for smart manufacturing

机译:一种优化晶圆曝光模式的逆距离加权遗传算法,用于增强智能制造

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摘要

Wafer exposure pattern will determine the number of gross dies fabricated on the wafer and also affect the yield. Although a number of studies have addressed the wafer exposure pattern problem for maximizing the number of gross dies, little research has considered both the yield and gross dies simultaneously. To fill the gap, this study aims to develop an inverse distance weighting genetic algorithm (IDWGA) that simultaneously maximizes the total number of exposed gross dies and minimizes the deviation of die-estimated measurement from the target for yield enhancement and smart manufacturing. This study developed a novel approach for estimating the die yield from a few measurement points and a three-dimensional (3D) contour plot of die estimates for verifying the measurement pattern among the dies. The proposed IDWGA can detect the die yield pattern during the wafer exposure stage and thus optimize the exposure pattern to maximize the number of gross dies and minimize potential yield loss. On the basis of realistic data, experiments were designed to estimate the validity of the proposed approach. The results have shown practical viability of the proposed approach to optimize overall wafer effectiveness for total resource management. (C) 2020 Elsevier B.V. All rights reserved.
机译:晶圆曝光模式将确定晶片上制造的毛的毛管数量,并影响产量。尽管许多研究已经解决了晶圆暴露模式问题,但最大化毛重的数量,虽然较大的毛重,但很少的研究已经考虑了同时产量和总体死亡。为了填补差距,该研究旨在开发一个逆距离加权遗传算法(IDWGA),其同时最大化暴露的毛管芯片的总数,并最大限度地减少了从屈服增强和智能制造的终止测量的模具估计测量的偏差。该研究开发了一种用于估计来自少数测量点的模具产量和模具估计的三维(3D)轮廓图来估算模具中的测量模式的小型方法。所提出的IDWGA可以在晶片曝光阶段期间检测模具产量图案,从而优化曝光图案以最大化总模的数量并最小化潜在的产量损失。在现实数据的基础上,设计实验旨在估计所提出的方法的有效性。结果表明了提出的方法优化整体资源管理的整体晶圆效果的实际可行性。 (c)2020 Elsevier B.V.保留所有权利。

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