Inverse design of photonic crystals through automatic differentiation

03/01/2020
by   Momchil Minkov, et al.
0

Gradient-based inverse design in photonics has already achieved remarkable results in designing small-footprint, high-performance optical devices. The adjoint variable method, which allows for the efficient computation of gradients, has played a major role in this success. However, gradient-based optimization has not yet been applied to the mode-expansion methods that are the most common approach to studying periodic optical structures like photonic crystals. This is because, in such simulations, the adjoint variable method cannot be defined as explicitly as in standard finite-difference or finite-element time- or frequency-domain methods. Here, we overcome this through the use of automatic differentiation, which is a generalization of the adjoint variable method to arbitrary computational graphs. We implement the plane-wave expansion and the guided-mode expansion methods using an automatic differentiation library, and show that the gradient of any simulation output can be computed efficiently and in parallel with respect to all input parameters. We then use this implementation to optimize the dispersion of a photonic crystal waveguide, and the quality factor of an ultra-small cavity in a lithium niobate slab. This extends photonic inverse design to a whole new class of simulations, and more broadly highlights the importance that automatic differentiation could play in the future for tracking and optimizing complicated physical models.

READ FULL TEXT
research
03/23/2021

Differentiable Agent-Based Simulation for Gradient-Guided Simulation-Based Optimization

Simulation-based optimization using agent-based models is typically carr...
research
11/02/2021

Source-to-Source Automatic Differentiation of OpenMP Parallel Loops

This paper presents our work toward correct and efficient automatic diff...
research
06/01/2017

Automatic Differentiation using Constraint Handling Rules in Prolog

Automatic differentiation is a technique which allows a programmer to de...
research
11/04/2021

Constrained Form-Finding of Tension-Compression Structures using Automatic Differentiation

This paper proposes a computational approach to form-find pin-jointed, b...
research
08/28/2019

Forward-Mode Differentiation of Maxwell's Equations

We present a previously unexplored forward-mode differentiation method f...
research
09/20/2022

DiffTune: Auto-Tuning through Auto-Differentiation

The performance of a robot controller depends on the choice of its param...
research
06/13/2023

Differentiating Metropolis-Hastings to Optimize Intractable Densities

We develop an algorithm for automatic differentiation of Metropolis-Hast...

Please sign up or login with your details

Forgot password? Click here to reset