This dissertation evaluates the artificial neural technique for evolving a smart antenna system. The AI techniques pose a challenging research in the field of communication. As such the antennas help to communicate with the digital processor to choose the desired signals and reject the others. It makes its own decision even to find the level of interferences and noises to be discarded by amplitude elimination process through the use of perceptron optimization algorithms like LMS (Least Mean Squares). This method helps to enhance the performance of signal processing efficiently. The design of hardware and software are quite complex. This is due to the fact, that the behaviour of the system is not fully understood being a real-time dependent ...
A neural network approach to the problem of finding the weights of one and two-dimensional adaptive ...
A neural network approach to the problem of finding the weights of one and two-dimensional adaptive ...
Neural networks are electronic systems which can be trained to remember behavior of a modeled struct...
This dissertation evaluates the artificial neural technique for evolving a smart antenna system. The...
Currently, several algorithms can be used to perform the direction finding or angle of arrival of si...
Currently, several algorithms can be used to perform the direction finding or angle of arrival of si...
Currently, several algorithms can be used to perform the direction finding or angle of arrival of si...
As the growing demand for mobile communications is constantly increasing, the need for better covera...
In the paper, original control system of adaptive antennas, which is based on Kalman filter, is pres...
The capacity enhancement promised by switched beam smart antenna is a function of efficient selectio...
Summarization: Optimizing antenna arrays to approximate desired far field radiation patterns is of e...
As technology developed this decade proves communication is the most important factor for the data i...
45-52Adaptive beamforming and direction of arrival (DOA) estimation are among the prime areas of re...
In this paper, a single neuron neural network beamformer is proposed. A perceptron model is designed...
Smart Antenna technologies will change the economics of 3G radio networks. They provide either a maj...
A neural network approach to the problem of finding the weights of one and two-dimensional adaptive ...
A neural network approach to the problem of finding the weights of one and two-dimensional adaptive ...
Neural networks are electronic systems which can be trained to remember behavior of a modeled struct...
This dissertation evaluates the artificial neural technique for evolving a smart antenna system. The...
Currently, several algorithms can be used to perform the direction finding or angle of arrival of si...
Currently, several algorithms can be used to perform the direction finding or angle of arrival of si...
Currently, several algorithms can be used to perform the direction finding or angle of arrival of si...
As the growing demand for mobile communications is constantly increasing, the need for better covera...
In the paper, original control system of adaptive antennas, which is based on Kalman filter, is pres...
The capacity enhancement promised by switched beam smart antenna is a function of efficient selectio...
Summarization: Optimizing antenna arrays to approximate desired far field radiation patterns is of e...
As technology developed this decade proves communication is the most important factor for the data i...
45-52Adaptive beamforming and direction of arrival (DOA) estimation are among the prime areas of re...
In this paper, a single neuron neural network beamformer is proposed. A perceptron model is designed...
Smart Antenna technologies will change the economics of 3G radio networks. They provide either a maj...
A neural network approach to the problem of finding the weights of one and two-dimensional adaptive ...
A neural network approach to the problem of finding the weights of one and two-dimensional adaptive ...
Neural networks are electronic systems which can be trained to remember behavior of a modeled struct...