AbstractRecurrent neural networks for solving linear matrix equations are proposed. The proposed recurrent neural networks consist of two bidirectionally connected layers and each layer consists of an array of neurons. The proposed recurrent neural networks are shown to be asymptotically stable in the large and capable of computing inverse matrices and solving Lyapunov matrix equations. The operating characteristics of the proposed recurrent neural networks are demonstrated via several illustrative examples
Recurrent neural networks can learn complex transduction problems that require maintaining and activ...
A real time recurrent learning (RTRL) algorithm with an adaptive-learning rate for nonlinear adaptiv...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...
AbstractRecurrent neural networks for solving linear matrix equations are proposed. The proposed rec...
The aim of this dissertation is the application of recurrent neural networks (RNNs) to solving some...
AbstractAs the efficient calculation of eigenpairs of a matrix, especially, a general real matrix, i...
An implicit recurrent neural network model (IRNN) is proposed in this paper for solving on-line time...
Linear matrix inequalities (LMIs) play a very important role in postmodern control by providing a fr...
This paper proposes a novel linear recurrent neural network for multivariable system identification,...
In this work a novel approach to the training of recurrent neural nets is presented. The algorithm e...
This paper presents an efficient approach based on recurrent neural network for solving nonlinear op...
This paper describes a special type of dynamic neural network called the Recursive Neural Network (R...
Abstract—This brief discusses a class of discrete-time recurrent neural networks with complex-valued...
A recurrent neural network solving the approximate nonnegative matrix factorization (NMF) problem is...
The Recurrent Neural Networks (RNNs) represent an important class of bio-inspired learning machines ...
Recurrent neural networks can learn complex transduction problems that require maintaining and activ...
A real time recurrent learning (RTRL) algorithm with an adaptive-learning rate for nonlinear adaptiv...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...
AbstractRecurrent neural networks for solving linear matrix equations are proposed. The proposed rec...
The aim of this dissertation is the application of recurrent neural networks (RNNs) to solving some...
AbstractAs the efficient calculation of eigenpairs of a matrix, especially, a general real matrix, i...
An implicit recurrent neural network model (IRNN) is proposed in this paper for solving on-line time...
Linear matrix inequalities (LMIs) play a very important role in postmodern control by providing a fr...
This paper proposes a novel linear recurrent neural network for multivariable system identification,...
In this work a novel approach to the training of recurrent neural nets is presented. The algorithm e...
This paper presents an efficient approach based on recurrent neural network for solving nonlinear op...
This paper describes a special type of dynamic neural network called the Recursive Neural Network (R...
Abstract—This brief discusses a class of discrete-time recurrent neural networks with complex-valued...
A recurrent neural network solving the approximate nonnegative matrix factorization (NMF) problem is...
The Recurrent Neural Networks (RNNs) represent an important class of bio-inspired learning machines ...
Recurrent neural networks can learn complex transduction problems that require maintaining and activ...
A real time recurrent learning (RTRL) algorithm with an adaptive-learning rate for nonlinear adaptiv...
Neural networks consist of highly interconnected and parallel nonlinear processing elements that are...