论文标题
通过机器学习的物质波平纹图现实的面具生成
Realistic mask generation for matter-wave lithography via machine learning
论文作者
论文摘要
快速生产具有纳米分辨率的大面积模式对于已建立的半导体行业和实现下一代量子设备的工业规模生产至关重要。具有二元全息掩模的可稳定原子光刻被认为是当前最新技术状态的更高分辨率/低成本替代方案:极端紫外线(EUV)光刻。但是,最近表明,亚稳定原子与掩模材料(SIN)的相互作用导致波前的强烈扰动,而不是基于经典的标量波。这意味着即使在1D中也无法在分析上解决逆问题(基于所需模式创建掩码)。在这里,我们提出了一种机器学习方法,以掩盖产生的目标是亚稳定性原子。我们的算法结合了遗传优化和深度学习来获得面具。一种新型的深神经结构经过训练,可以产生面膜的初始近似值。然后,该近似值用于生成遗传优化算法的初始种群,该算法可以收敛到任意精度。我们证明了Fraunhofer近似极限内系统维度的任意1D模式的产生。
Fast production of large area patterns with nanometre resolution is crucial for the established semiconductor industry and for enabling industrial-scale production of next-generation quantum devices. Metastable atom lithography with binary holography masks has been suggested as a higher resolution/low-cost alternative to the current state of the art: extreme ultraviolet (EUV) lithography. However, it was recently shown that the interaction of the metastable atoms with the mask material (SiN) leads to a strong perturbation of the wavefront, not included in existing mask generation theory, which is based on classical scalar waves. This means that the inverse problem (creating a mask based on the desired pattern) cannot be solved analytically even in 1D. Here we present a machine learning approach to mask generation targeted for metastable atoms. Our algorithm uses a combination of genetic optimisation and deep learning to obtain the mask. A novel deep neural architecture is trained to produce an initial approximation of the mask. This approximation is then used to generate the initial population of the genetic optimisation algorithm that can converge to arbitrary precision. We demonstrate the generation of arbitrary 1D patterns for system dimensions within the Fraunhofer approximation limit.