This paper describes a usual application of back-propagation neural networks for synthesis and optimization of antenna array. The neural network is able to model and to optimize the antennas arrays, by acting on radioelectric or geometric parameters and by taking into account predetermined general criteria. The neural network allows not only establishing important analytical equations for the optimization step, but also a great flexibility between the system parameters in input and output. This step of optimization becomes then possible due to the explicit relation given by the neural network. According to different formulations of the synthesis problem such as acting on the feed law (amplitude and/or phase) and/or space position of the rad...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
Neural networks are electronic systems which can be trained to remember behavior of a modeled struct...
This paper describes a usual application of back-propagation neural networks for synthesis and optim...
A method of designing antenna arrays for a desired radiation pattern using neural networks is presen...
A method of designing antenna arrays for a desired radiation pattern using neural networks is presen...
The method to decision constructive synthesis of array antennas was conducted. The method usefull wh...
Abstarct:- This work proposes a neural adaptive synthesis system combines feedforward (FF) artificia...
Summarization: Optimizing antenna arrays to approximate desired far field radiation patterns is of e...
In this paper, we intend to study the synthesis of the multibeam arrays. The synthesis implementatio...
Abstract:- This work proposes a novel approach to arbitrary phased-array with a neural adaptive synt...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
Neural networks are electronic systems which can be trained to remember behavior of a modeled struct...
This paper describes a usual application of back-propagation neural networks for synthesis and optim...
A method of designing antenna arrays for a desired radiation pattern using neural networks is presen...
A method of designing antenna arrays for a desired radiation pattern using neural networks is presen...
The method to decision constructive synthesis of array antennas was conducted. The method usefull wh...
Abstarct:- This work proposes a neural adaptive synthesis system combines feedforward (FF) artificia...
Summarization: Optimizing antenna arrays to approximate desired far field radiation patterns is of e...
In this paper, we intend to study the synthesis of the multibeam arrays. The synthesis implementatio...
Abstract:- This work proposes a novel approach to arbitrary phased-array with a neural adaptive synt...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
In recent years, evolutionary algorithms have been successfully adopted for the optimization of vari...
Neural networks are electronic systems which can be trained to remember behavior of a modeled struct...