Artificial neural networks for photonic applications—from algorithms to implementation: tutorial

P Freire, E Manuylovich, JE Prilepsky… - Advances in Optics and …, 2023 - opg.optica.org
This tutorial–review on applications of artificial neural networks in photonics targets a broad
audience, ranging from optical research and engineering communities to computer science …

A review of machine learning-based failure management in optical networks

D Wang, C Zhang, W Chen, H Yang, M Zhang… - Science China …, 2022 - Springer
Failure management plays a significant role in optical networks. It ensures secure operation,
mitigates potential risks, and executes proactive protection. Machine learning (ML) is …

Predicting certain vector optical solitons via the conservation-law deep-learning method

Y Fang, GZ Wu, XK Wen, YY Wang, CQ Dai - Optics & Laser Technology, 2022 - Elsevier
The energy conservation law is introduced into a loss function of the physics-informed
neural network (PINN), and an energy-conservation deep-learning (ECDL) method is …

Dynamic analysis on optical pulses via modified PINNs: Soliton solutions, rogue waves and parameter discovery of the CQ-NLSE

YH Yin, X Lü - Communications in Nonlinear Science and Numerical …, 2023 - Elsevier
Under investigation in this paper is the cubic–quintic nonlinear Schrödinger equation, which
describes the propagation of optical on resonant-frequency fields in the inhomogeneous …

Applications of physics-informed neural network for optical fiber communications

D Wang, X Jiang, Y Song, M Fu, Z Zhang… - IEEE …, 2022 - ieeexplore.ieee.org
Due to the capability of the physics-informed neural network (PINN) to solve complex partial
differential equations automatically, it has revolutionized the field of scientific computing …

Prediction of soliton evolution and equation parameters for NLS–MB equation based on the phPINN algorithm

SY Xu, Q Zhou, W Liu - Nonlinear Dynamics, 2023 - Springer
To enhance the precision and efficiency of result prediction, we proposed a parallel hard-
constraint physics-informed neural networks (phPINN) by combining the parallel fully …

[HTML][HTML] Hybrid modeling of lithium-ion battery: Physics-informed neural network for battery state estimation

S Singh, YE Ebongue, S Rezaei, KP Birke - Batteries, 2023 - mdpi.com
Accurate forecasting of the lifetime and degradation mechanisms of lithium-ion batteries is
crucial for their optimization, management, and safety while preventing latent failures …

Physics-informed neural network for optical fiber parameter estimation from the nonlinear Schrödinger equation

X Jiang, D Wang, X Chen… - Journal of Lightwave …, 2022 - ieeexplore.ieee.org
For any system that follows rigorous mathematical and physical theories like fiber-optic
system, system parameter estimation is crucial for system detection and monitoring. In this …

Multiscale physics-informed neural networks for stiff chemical kinetics

Y Weng, D Zhou - The Journal of Physical Chemistry A, 2022 - ACS Publications
In this paper, a multiscale physics-informed neural network (MPINN) approach is proposed
based on the regular physics-informed neural network (PINN) for solving stiff chemical …

Predicting the dynamic process and model parameters of vector optical solitons under coupled higher-order effects via WL-tsPINN

BW Zhu, Y Fang, W Liu, CQ Dai - Chaos, Solitons & Fractals, 2022 - Elsevier
We propose the two-subnet physical information neural network with the weighted loss
function (WL-tsPINN) to study the higher-order effects of ultra-short pulses in birefringence …