The modeling and prediction of the ultrafast nonlinear dynamics in the optical fiber are essential for the studies of laser design, experimental optimization, and other fundamental applications. The traditional propagation modeling method based on the nonlinear Schr\"odinger equation (NLSE) has long been regarded as extremely time-consuming, especially for designing and optimizing experiments. The recurrent neural network (RNN) has been implemented as an accurate intensity prediction tool with reduced complexity and good generalization capability. However, the complexity of long grid input points and the flexibility of neural network structure should be further optimized for broader applications. Here, we propose a convolutional feature sep...
We deploy a neural network to predict the spectro-temporal evolution of simple sinusoidal temporal m...
We use a supervised machine-learning model based on a neural network to predict the temporal and spe...
Fiber nonlinearities from Kerr effect are considered as major constraints for enhancing the transmis...
The nonlinear propagation of ultrashort pulses in optical fibers depends sensitively on the input pu...
Full simulation data sets for "Predicting ultrafast nonlinear dynamics in fibre optics with a recurr...
The strongly-constrained physics-informed neural network (SCPINN) is proposed by adding the informat...
International audienceWe show how neural networks can be used to model complex and predict nonlinear...
International audienceWe review the use of machine learning techniques in ultrafast dynamics in fibe...
International audienceRecent years have seen the rapid growth of the field of smart photonics where ...
We review our recent progress on the application of machine-learning techniques in the field of ultr...
International audienceWe review our recent work on the real-time characaterization of ultrafast non-...
We combine the nonlinear Fourier transform (NFT) signal processing with machine learning methods for...
International audienceAlthough the successes of artificial intelligence in areas such as automatic t...
In this chapter, machine learning (ML) algorithm is introduced in single-step perturbation and multi...
We deploy a neural network to predict the spectro-temporal evolution of simple sinusoidal temporal m...
We use a supervised machine-learning model based on a neural network to predict the temporal and spe...
Fiber nonlinearities from Kerr effect are considered as major constraints for enhancing the transmis...
The nonlinear propagation of ultrashort pulses in optical fibers depends sensitively on the input pu...
Full simulation data sets for "Predicting ultrafast nonlinear dynamics in fibre optics with a recurr...
The strongly-constrained physics-informed neural network (SCPINN) is proposed by adding the informat...
International audienceWe show how neural networks can be used to model complex and predict nonlinear...
International audienceWe review the use of machine learning techniques in ultrafast dynamics in fibe...
International audienceRecent years have seen the rapid growth of the field of smart photonics where ...
We review our recent progress on the application of machine-learning techniques in the field of ultr...
International audienceWe review our recent work on the real-time characaterization of ultrafast non-...
We combine the nonlinear Fourier transform (NFT) signal processing with machine learning methods for...
International audienceAlthough the successes of artificial intelligence in areas such as automatic t...
In this chapter, machine learning (ML) algorithm is introduced in single-step perturbation and multi...
We deploy a neural network to predict the spectro-temporal evolution of simple sinusoidal temporal m...
We use a supervised machine-learning model based on a neural network to predict the temporal and spe...
Fiber nonlinearities from Kerr effect are considered as major constraints for enhancing the transmis...