Fractional polytropic gas sphere problems and electrical engineering models typically simulated with interconnected circuits have numerous applications in physical, astrophysical phenomena, and thermionic currents. Generally, most of these models are singular-nonlinear, symmetric, and include time delay, which has increased attention to them among researchers. In this work, we explored deep neural networks (DNNs) with an optimization algorithm to calculate the approximate solutions for nonlinear fractional differential equations (NFDEs). The target data-driven design of the DNN-LM algorithm was further implemented on the fractional models to study the rigorous impact and symmetry of different parameters on RL, RC circuits, and polytropic ga...
To enrich any model and its dynamics introduction of delay is useful, that models a precise descript...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...
Funded by Naval Postgraduate SchoolThis paper introduces a novel algorithmic framework for a deep ne...
The primary goal of this research is to propose a novel architecture for a deep neural network that ...
Abstract. In this paper, a swarm intelligence technique, better known as Particle swarm optimization...
In this paper, the influence of the optimization algorithms Adam, RMSprop, L-BFGS and SGD with momen...
This chapter offers a numerical simulation of fractional differential equations by utilizing Chebysh...
Two directions of utilizing machine learning techniques in computational mathematics are explored wi...
Recently, the development of neural network method for solving differential equations has made a rem...
A physics-informed machine learning framework is developed for the reduced-order modeling of paramet...
Fractional calculus has recently gained increasing interest in the economic and financial literature...
Discontinuous Finite Element Methods (DFEM) have been widely used for solving SN radiation transport...
The state estimation of lithium-ion battery is the basis of an intelligent battery management system...
In this study, machine learning representation is introduced to evaluate the flexoelectricity effect...
To enrich any model and its dynamics introduction of delay is useful, that models a precise descript...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...
Funded by Naval Postgraduate SchoolThis paper introduces a novel algorithmic framework for a deep ne...
The primary goal of this research is to propose a novel architecture for a deep neural network that ...
Abstract. In this paper, a swarm intelligence technique, better known as Particle swarm optimization...
In this paper, the influence of the optimization algorithms Adam, RMSprop, L-BFGS and SGD with momen...
This chapter offers a numerical simulation of fractional differential equations by utilizing Chebysh...
Two directions of utilizing machine learning techniques in computational mathematics are explored wi...
Recently, the development of neural network method for solving differential equations has made a rem...
A physics-informed machine learning framework is developed for the reduced-order modeling of paramet...
Fractional calculus has recently gained increasing interest in the economic and financial literature...
Discontinuous Finite Element Methods (DFEM) have been widely used for solving SN radiation transport...
The state estimation of lithium-ion battery is the basis of an intelligent battery management system...
In this study, machine learning representation is introduced to evaluate the flexoelectricity effect...
To enrich any model and its dynamics introduction of delay is useful, that models a precise descript...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
Physics-Informed Neural Networks (PINN) are neural networks (NNs) that encode model equations, like ...