Robust iterative methods for solving large sparse systems of linear algebraic equations often suffer from the problem of optimizing the corresponding tuning parameters. To improve the performance of the problem of interest, specific parameter tuning is required, which in practice can be a time-consuming and tedious task. This paper proposes an optimization algorithm for tuning the numerical method parameters. The algorithm combines the evolution strategy with the pre-trained neural network used to filter the individuals when constructing the new generation. The proposed coupling of two optimization approaches allows to integrate the adaptivity properties of the evolution strategy with a priori knowledge realized by the neural network. The u...
Computational simulations used in many fields have parameters that define models that are used to ev...
There are many applications and problems in science and engineering that require large-scale numeric...
The objectives of this study are the analysis and design of efficient computational methods for deep...
Robust iterative methods for solving large sparse systems of linear algebraic equations often suffer...
Differential evolution (DE) is a simple and efficient population-based stochastic algorithm for solv...
We present a novel Deep Learning-based algorithm to accelerate - through the use of Artificial Neura...
This chapter proposes an optimization technique of Artificial Neural Network (ANN) controller, of si...
Numerical optimization of complex systems benefits from the technological development of computing p...
AbstractMany transient simulations spend a significant portion of the overall runtime solving a line...
Deep learning is a very popular gradient based search technique nowadays. In this field of machine l...
General problems of interest in computational fluid dynamics are investigated by means of optimizati...
In the real world, we encounter a number of problems which require iterative methods rather than heu...
In recent decades, researches on optimizing the parameter of the artificial neural network (ANN) mod...
In order to simulate complex combustion systems, the kinetic mechanisms describing the chemical proc...
Solving a linear system $Ax=b$ is a fundamental scientific computing primitive for which numerous so...
Computational simulations used in many fields have parameters that define models that are used to ev...
There are many applications and problems in science and engineering that require large-scale numeric...
The objectives of this study are the analysis and design of efficient computational methods for deep...
Robust iterative methods for solving large sparse systems of linear algebraic equations often suffer...
Differential evolution (DE) is a simple and efficient population-based stochastic algorithm for solv...
We present a novel Deep Learning-based algorithm to accelerate - through the use of Artificial Neura...
This chapter proposes an optimization technique of Artificial Neural Network (ANN) controller, of si...
Numerical optimization of complex systems benefits from the technological development of computing p...
AbstractMany transient simulations spend a significant portion of the overall runtime solving a line...
Deep learning is a very popular gradient based search technique nowadays. In this field of machine l...
General problems of interest in computational fluid dynamics are investigated by means of optimizati...
In the real world, we encounter a number of problems which require iterative methods rather than heu...
In recent decades, researches on optimizing the parameter of the artificial neural network (ANN) mod...
In order to simulate complex combustion systems, the kinetic mechanisms describing the chemical proc...
Solving a linear system $Ax=b$ is a fundamental scientific computing primitive for which numerous so...
Computational simulations used in many fields have parameters that define models that are used to ev...
There are many applications and problems in science and engineering that require large-scale numeric...
The objectives of this study are the analysis and design of efficient computational methods for deep...