Nowadays, in the field of information processing, neural networks (NNs) are very used, because they can learn adaptively how to behave in a desired way. In the field of adaptive control, NNs are the most beneficial when the system to be controlled is not known in advance, because the system can be modeled by NNs to predict its behavior. In this case, it is very important how accurate the estimation of the NN is, since if the approximation is too rough then extra calculations are needed to get better results. One of the possibilities for improving the NN model is on-line learning during the control process, but this option requires high computational time. Another possibility is the application of Robust Fixed Point Transformations (RFPT), s...
In this paper we define on-line algorithms for neural-network training, based on the construction of...
This paper considers a wide class of basis associative memory networks and their learning and networ...
Following the philosophy of adaptive optimal control, a neural network-based state feedback optimal ...
Online trained neural networks have become popular in recent years in the design of robust and adapt...
67 p.Neural networks are widely used in industry fields, like robotic and process controllers. Exten...
This thesis focuses on developing robust online training and pruning algorithms for a class of neura...
It is difficult to determine the number of nodes that should be used in a neural network. An adaptiv...
On-line adaptation using soft-computational learning methods is on the rise for use in safety-critic...
An improved compound gradient vector based a fast convergent NN online training weight update scheme...
The ever increasingly tight control performance requirement of modern mechanical systems often force...
In this paper, Neural networks (NNs) and adaptive robust control (ARC) design philosophy are integra...
Using neural networks, this paper proposes a new model-following adaptive control design technique f...
This paper proposes a position control strategy based on Artificial Neural Networks (ANN) in the fac...
Recurrent Neural Network (RNN) is a powerful tool for both theoretical modelling and practical appli...
Under U-model control design framework, a fixed-time neural networks adaptive backstepping control i...
In this paper we define on-line algorithms for neural-network training, based on the construction of...
This paper considers a wide class of basis associative memory networks and their learning and networ...
Following the philosophy of adaptive optimal control, a neural network-based state feedback optimal ...
Online trained neural networks have become popular in recent years in the design of robust and adapt...
67 p.Neural networks are widely used in industry fields, like robotic and process controllers. Exten...
This thesis focuses on developing robust online training and pruning algorithms for a class of neura...
It is difficult to determine the number of nodes that should be used in a neural network. An adaptiv...
On-line adaptation using soft-computational learning methods is on the rise for use in safety-critic...
An improved compound gradient vector based a fast convergent NN online training weight update scheme...
The ever increasingly tight control performance requirement of modern mechanical systems often force...
In this paper, Neural networks (NNs) and adaptive robust control (ARC) design philosophy are integra...
Using neural networks, this paper proposes a new model-following adaptive control design technique f...
This paper proposes a position control strategy based on Artificial Neural Networks (ANN) in the fac...
Recurrent Neural Network (RNN) is a powerful tool for both theoretical modelling and practical appli...
Under U-model control design framework, a fixed-time neural networks adaptive backstepping control i...
In this paper we define on-line algorithms for neural-network training, based on the construction of...
This paper considers a wide class of basis associative memory networks and their learning and networ...
Following the philosophy of adaptive optimal control, a neural network-based state feedback optimal ...