首页> 外文会议>Advanced Photonic Sensors and Applications >Surface roughness measurement with optical scatterometry
【24h】

Surface roughness measurement with optical scatterometry

机译:用光散射法测量表面粗糙度

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

Abstract: Scattering of light by random rough surface scan be numerically simulated by using an exact electromagnetic scattering theory. Unfortunately, the characterization of surfaces is almost impossible owing to the non-uniqueness of the inverse scattering problem and highly nonlinear relationship between the surface parameters and the scattering. Thus, existing practical methods for qualitative or quantitative characterization are almost entirely experimental. Here we apply neural networks for estimating statistically the surface parameters. Previously, we have successfully demonstrated that neural network as a statistical estimator for optical scatterometry is an efficient tool for characterizing periodic microstructures. We generate numerically random surfaces, which are characterized with the degree of roughness, i.e., rot-mean- square (rms) amplitude of the roughness and correlation length. Here we are mainly interest in the most demanding region of the rms amplitude in the so-called resonance domain, corresponding to height fluctuations and correlations up to 5 times the wavelength of light. The neural network model, which is her a self-organizing map, is first trained and calibrated with the known surface parameter and scattering data pairs. At characterization stage, using only measured intensity distributions, the neural network theory classifies surface parameters into discrete classes of the rms amplitude and the correlation length. For most cases the classification result deviates at most one class, corresponding to 0.5 wavelengths, from the correct values. !14
机译:摘要:使用精确的电磁散射理论对随机粗糙表面扫描的光散射进行了数值模拟。不幸的是,由于反散射问题的非唯一性以及表面参数与散射之间的高度非线性关系,几乎不可能对表面进行表征。因此,现有的定性或定量表征实用方法几乎完全是实验性的。在这里,我们应用神经网络来统计地估计表面参数。以前,我们已经成功地证明了神经网络作为光学散射测量的统计估计器是表征周期性微结构的有效工具。我们生成数值随机的表面,这些表面的特征在于粗糙度的程度,即粗糙度和相关长度的均方根(rms)幅度。在这里,我们主要感兴趣的是所谓共振域中均方根幅度最苛刻的区域,该区域对应于高达5倍光波长的高度波动和相关性。首先用已知的表面参数和散射数据对训练和校准神经网络模型,这是她的自组织图。在表征阶段,仅使用测得的强度分布,神经网络理论将表面参数分为均方根幅度和相关长度的离散类。在大多数情况下,分类结果与正确的值最多偏离一类,对应于0.5个波长。 !14

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号