This paper investigates the incorporation of fault tolerance at the learning stage into Radial Basis Function (RBF) networks. The approach is particularly attractive since the cost of fault detection and correction in a practical VLSI implementation of such networks could be prohibitive due to the large number of neurons and connections. The RBF networks considered are applied to the task of analog function approximation. A fairly general fault model is considered wherein faulty neurons are assumed to be stuck at a random value. Two new learning methods based on regression are proposed to learn the weights and one new regression based learning method is proposed to learn the centers. Simulation results are presented which show that a consid...
Abstract — Function approximation has been found in many applications. The radial basis function (RB...
In this paper we discuss the learning problem of Radial Basis Function (RBF) Neural Networks. We pro...
Radial basis function neural networks are used in a variety of applications such as pattern recognit...
Abstract. This paper describes a method of supervised learning based on forward selection branching....
Eickhoff R, Rückert U. Enhancing Fault Tolerance of Radial Basis Functions. In: Institute of Electri...
Most of the proposed neural networks for fault diagnosis of systems are multilayer perceptrons (MLP)...
n this paper a fault diagnosis technique, which employs neural networks to analyze signatures of ana...
Eickhoff R, Rückert U. Tolerance of Radial-Basis Functions Against Stuck-At-Faults. In: Proceedings...
Artificial neural networks are networks of very simple processing elements based on an approximate m...
The ability to detect soft fault is an important task in the preventive maintenance. In this paper a...
This paper presents a novel technique which may be used to determine an appropriate threshold for in...
This paper presents a novel technique which may be used to determine an appropriate threshold for in...
The problem of training a radial basis function (RBF) neural network for distinguishing two disjoint...
this paper is to prevent the weights from having large relevances. The simulation results indicate t...
Abstract: We present various learning methods for RBF networks. The standard gradient-based learning...
Abstract — Function approximation has been found in many applications. The radial basis function (RB...
In this paper we discuss the learning problem of Radial Basis Function (RBF) Neural Networks. We pro...
Radial basis function neural networks are used in a variety of applications such as pattern recognit...
Abstract. This paper describes a method of supervised learning based on forward selection branching....
Eickhoff R, Rückert U. Enhancing Fault Tolerance of Radial Basis Functions. In: Institute of Electri...
Most of the proposed neural networks for fault diagnosis of systems are multilayer perceptrons (MLP)...
n this paper a fault diagnosis technique, which employs neural networks to analyze signatures of ana...
Eickhoff R, Rückert U. Tolerance of Radial-Basis Functions Against Stuck-At-Faults. In: Proceedings...
Artificial neural networks are networks of very simple processing elements based on an approximate m...
The ability to detect soft fault is an important task in the preventive maintenance. In this paper a...
This paper presents a novel technique which may be used to determine an appropriate threshold for in...
This paper presents a novel technique which may be used to determine an appropriate threshold for in...
The problem of training a radial basis function (RBF) neural network for distinguishing two disjoint...
this paper is to prevent the weights from having large relevances. The simulation results indicate t...
Abstract: We present various learning methods for RBF networks. The standard gradient-based learning...
Abstract — Function approximation has been found in many applications. The radial basis function (RB...
In this paper we discuss the learning problem of Radial Basis Function (RBF) Neural Networks. We pro...
Radial basis function neural networks are used in a variety of applications such as pattern recognit...