GPU加速蒙特卡罗模拟SEM图像的计量

T. Verduin, S. Lokhorst, C. W. Hagen
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引用次数: 11

摘要

在这项工作中,我们讨论了尺寸计量中数值研究的计算时间。特别是,用于扫描电子显微镜(SEM)图像采集的完整蒙特卡罗模拟程序众所周知是非常缓慢的。为了减少SEM图像模拟的计算时间,我们研究了图形处理单元(gpu)在计量中的使用。我们已经成功地为SEM图像创建了一个完整的蒙特卡罗模拟程序,它完全运行在GPU上。此GPU模拟器的物理散射模型与先前基于cpu的模拟器相同,其中包括用于非弹性散射的介电函数模型以及用于低压扫描电镜应用的改进。作为性能的一个案例研究,我们考虑了一个复杂特征的模拟暴露:一条隔离的硅线,其粗糙的侧壁位于硅衬底上。将粗糙特征的表面分解为408 ~ 012个三角形。我们使用的暴露剂量为6 mC/cm2,平均相当于6 553 600个初级电子(泊松分布)。我们对300 eV、500 eV、800 eV、1 keV、3 keV和5 keV等不同的一次电子能量进行了重复模拟。首先,我们在NVIDIA的GeForce GTX480上运行模拟。在我们的基于cpu的程序上复制了完全相同的模拟,我们使用了Intel Xeon X5650。除了模拟中的统计数据外,CPU和GPU的模拟结果没有差异。GTX480生成图像的速度(取决于主电子能量)比单线程英特尔X5650 CPU快350到425倍。虽然这是一个巨大的加速,但我们实际上并没有达到最大吞吐量,因为GTX480上的可用内存量有限。尽管如此,加速可以快速获取用于计量的模拟SEM图像。我们现在有潜力调查CD-SEM计量的案例研究,否则将花费不合理的计算时间。
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GPU accelerated Monte-Carlo simulation of SEM images for metrology
In this work we address the computation times of numerical studies in dimensional metrology. In particular, full Monte-Carlo simulation programs for scanning electron microscopy (SEM) image acquisition are known to be notoriously slow. Our quest in reducing the computation time of SEM image simulation has led us to investigate the use of graphics processing units (GPUs) for metrology. We have succeeded in creating a full Monte-Carlo simulation program for SEM images, which runs entirely on a GPU. The physical scattering models of this GPU simulator are identical to a previous CPU-based simulator, which includes the dielectric function model for inelastic scattering and also refinements for low-voltage SEM applications. As a case study for the performance, we considered the simulated exposure of a complex feature: an isolated silicon line with rough sidewalls located on a at silicon substrate. The surface of the rough feature is decomposed into 408 012 triangles. We have used an exposure dose of 6 mC/cm2, which corresponds to 6 553 600 primary electrons on average (Poisson distributed). We repeat the simulation for various primary electron energies, 300 eV, 500 eV, 800 eV, 1 keV, 3 keV and 5 keV. At first we run the simulation on a GeForce GTX480 from NVIDIA. The very same simulation is duplicated on our CPU-based program, for which we have used an Intel Xeon X5650. Apart from statistics in the simulation, no difference is found between the CPU and GPU simulated results. The GTX480 generates the images (depending on the primary electron energy) 350 to 425 times faster than a single threaded Intel X5650 CPU. Although this is a tremendous speedup, we actually have not reached the maximum throughput because of the limited amount of available memory on the GTX480. Nevertheless, the speedup enables the fast acquisition of simulated SEM images for metrology. We now have the potential to investigate case studies in CD-SEM metrology, which otherwise would take unreasonable amounts of computation time.
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