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Physics-informed neural networks for inverse problems in nano-optics and metamaterials (1912.01085v2)

Published 2 Dec 2019 in physics.comp-ph and physics.optics

Abstract: In this paper we employ the emerging paradigm of physics-informed neural networks (PINNs) for the solution of representative inverse scattering problems in photonic metamaterials and nano-optics technologies. In particular, we successfully apply mesh-free PINNs to the difficult task of retrieving the effective permittivity parameters of a number of finite-size scattering systems that involve many interacting nanostructures as well as multi-component nanoparticles. Our methodology is fully validated by numerical simulations based on the Finite Element Method (FEM). The development of physics-informed deep learning techniques for inverse scattering can enable the design of novel functional nanostructures and significantly broaden the design space of metamaterials by naturally accounting for radiation and finite-size effects beyond the limitations of traditional effective medium theories.

Citations (420)

Summary

  • The paper demonstrates that PINNs embed physical PDE constraints to overcome ill-posed inverse scattering challenges in nano-optics.
  • PINNs accurately retrieve effective permittivity distributions even for complex nanostructure arrangements, outperforming traditional medium theories.
  • The approach paves the way for advanced optical design, inverse parameter retrieval, and improved strategies for optical cloaking.

Insights on Physics-Informed Neural Networks for Inverse Problems in Nano-Optics and Metamaterials

The paper by Chen et al. explores the application of physics-informed neural networks (PINNs) to solve inverse scattering problems in the context of nano-optics and metamaterials. These problems are notoriously challenging due to their ill-posed nature, which arises from trying to deduce system characteristics from limited scattering data, often compounded by noise and multiple scatter interactions.

Physics-informed neural networks stand apart from conventional neural networks by embedding the governing physical equations directly into the learning process. This is primarily achieved through incorporating partial differential equation (PDE) constraints that regulate the problem, successfully melding physical principles with deep learning to enable reliable solutions for both forward and inverse problems. The ability to apply automatic differentiation techniques in frameworks like TensorFlow provides the technical basis to leverage the efficiency of PINNs in this regard.

Methodological Approaches and Results

In this paper, the authors focus on solving inverse electromagnetic problems that are central to the design of nano-optics and metamaterials. They utilize PINNs to accurately retrieve effective permittivity distributions in various finite-size scattering systems, particularly those containing multiple interacting nanostructures. The permittivity retrieval problem is tackled via an inverse medium problem formulated under the Helmholtz equation.

The authors demonstrate strong numerical results, showing that PINNs efficiently predict effective permittivity distributions that conventional effective medium theories might overlook, especially ones considering radiative coupling and finite-size effects. They extend this method to both periodic and aperiodic nanostructure arrangements, showcasing consistent success in configurations such as Vogel spirals, which are complex due to their non-symmetric scattering profiles.

Application to Inverse Design and Cloaking

The implications of this approach are significant for the inverse design of optical materials. PINNs offer intuitive paths to achieve designs that are traditionally challenging for effective medium theories, particularly when addressing strong radiation coupling.

Furthermore, the authors explore potential applications in remote sensing and parameter retrieval for optical cloaking. Under this framework, they show success in tailoring spatial permittivity distributions to minimize scattering from a given object — a technique that can lead to improved designs for optical cloaking, as demonstrated by a substantial reduction in scattering cross-section in their computational models.

Theoretical and Practical Implications

The theoretical contributions of this paper lie in showcasing PINNs as a practical tool for broadening existing techniques in inverse problem solving, particularly for systems where radiative effects are non-negligible. Practically, these findings suggest that simulated or measured scattered fields can be effectively used in PINN-based frameworks to retrieve unknown material parameters, facilitating advancements in optical design and material characterization.

Future Prospects and Developments

As PINNs continue to mature, their integration with meta-learning frameworks could automate neural network architecture optimization, thereby enhancing their utility across broader classes of inverse problems in computational photonics. These developments could eventually lead to adaptive frameworks capable of optimizing design workflows for nanostructures and metamaterials, catering to both academic research and industrial applications in optics. Through these advances, PINNs could play a pivotal role in the ongoing evolution of wave engineering and inverse problem methodologies.

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