论文标题
不确定性下光子纳米夹的最佳设计
Optimal design of photonic nanojets under uncertainty
论文作者
论文摘要
光子纳米夹(PNJS)在超分辨率光学显微镜,拉曼显微镜以及荧光显微镜中具有有希望的应用作为光学探针。在这项工作中,我们考虑使用具有固定透镜几何形状和均匀平面波照明的异质透镜折射率的PNJ设计。特别是,我们考虑存在异质镜头的制造误差,并提出了在不确定性(OUU)下进行优化的计算框架,以实现PNJ的强大最佳设计。我们制定了一种规避风险的随机优化问题,目的是最大程度地减少目标函数的平均值和方差,该目标受到控制镜头邻居中2D横向电气(2D TE)电磁场的Helmholtz方程的约束。设计变量被视为空间变化的场变量,在该变量中,我们使用有限元方法进行离散化,对促进其稀疏性施加了总变化惩罚,并采用基于伴随的BFGS方法来解决结果高维优化问题。我们证明,与确定性优化方案相比,我们提出的OUU计算框架可以实现更强大的最佳设计,以显着减轻制造不确定性的影响。
Photonic nanojets (PNJs) have promising applications as optical probes in super-resolution optical microscopy, Raman microscopy, as well as fluorescence microscopy. In this work, we consider optimal design of PNJs using a heterogeneous lens refractive index with a fixed lens geometry and uniform plane wave illumination. In particular, we consider the presence of manufacturing error of heterogeneous lens, and propose a computational framework of Optimization Under Uncertainty (OUU) for robust optimal design of PNJ. We formulate a risk-averse stochastic optimization problem with the objective to minimize both the mean and the variance of a target function, which is constrained by the Helmholtz equation that governs the 2D transverse electric (2D TE) electromagnetic field in a neighborhood of the lens. The design variable is taken as a spatially-varying field variable, where we use a finite element method for its discretization, impose a total variation penalty to promote its sparsity, and employ an adjoint-based BFGS method to solve the resulting high-dimensional optimization problem. We demonstrate that our proposed OUU computational framework can achieve more robust optimal design than a deterministic optimization scheme to significantly mitigate the impact of manufacturing uncertainty.