Spatial beamforming using a known training sequence is a well-understood technique for canceling uncorrelated interferences from telecommunication signals. Most of on-line adaptive beamforming algorithms are based on linear algebra and linear signal models. Anyway both in the transmitter amplifier and in the array receiver nonlinearities may arise, producing distorted waveforms and reducing the performance of the demodulation process. A nonlinear spatial beamformer with sensor arrays may use a neural network to cope with communication system nonlinearities. In this work we show that a feedforward neural network trained with a LS-based algorithm may get the convergence in a time suitable to most applications
A neural network approach to the problem of finding the weights of one and two-dimensional adaptive ...
International audienceA new adaptive algorithm, called least mean squareleast mean square (LLMS) alg...
Array antenna systems are often used to enhance the received signal to interference and noise ratio ...
Non-linear version of the LCMV beamforming, realized with fast learning feedforward neural networls
This paper presents a neural network approach for beam-forming and interference cancellation. A thre...
A novel approach to the problem of finding the weights of an adaptive array is presented. In cellula...
Abstract—A new adaptive beamforming technique based on neural networks (NNs) is proposed. The NN tra...
Beamforming techniques are commonly applied to signals captured by sensor arrays to enhance signals ...
In this paper, we present an adaptive beamforming scheme for smart antenna arrays in the presence of...
In this letter, we present a neural network approach to the problem of finding the weights of one- (...
This paper presents a neural network approach for beam-forming and interference cancellation. A thre...
Fully digital phased arrays have become more common as technology advancements have driven down thei...
Currently, several algorithms can be used to perform the direction finding or angle of arrival of si...
A new antenna array beamformer based on neural networks (NNs) is presented. The NN training is perf...
The multilayer perceptron is one of the most commonly used types of feedforward neural networks and ...
A neural network approach to the problem of finding the weights of one and two-dimensional adaptive ...
International audienceA new adaptive algorithm, called least mean squareleast mean square (LLMS) alg...
Array antenna systems are often used to enhance the received signal to interference and noise ratio ...
Non-linear version of the LCMV beamforming, realized with fast learning feedforward neural networls
This paper presents a neural network approach for beam-forming and interference cancellation. A thre...
A novel approach to the problem of finding the weights of an adaptive array is presented. In cellula...
Abstract—A new adaptive beamforming technique based on neural networks (NNs) is proposed. The NN tra...
Beamforming techniques are commonly applied to signals captured by sensor arrays to enhance signals ...
In this paper, we present an adaptive beamforming scheme for smart antenna arrays in the presence of...
In this letter, we present a neural network approach to the problem of finding the weights of one- (...
This paper presents a neural network approach for beam-forming and interference cancellation. A thre...
Fully digital phased arrays have become more common as technology advancements have driven down thei...
Currently, several algorithms can be used to perform the direction finding or angle of arrival of si...
A new antenna array beamformer based on neural networks (NNs) is presented. The NN training is perf...
The multilayer perceptron is one of the most commonly used types of feedforward neural networks and ...
A neural network approach to the problem of finding the weights of one and two-dimensional adaptive ...
International audienceA new adaptive algorithm, called least mean squareleast mean square (LLMS) alg...
Array antenna systems are often used to enhance the received signal to interference and noise ratio ...