Artificial neural networks (ANNs) are powerful computational tools that are designed to replicate the human brain and adopted to solve a variety of problems in many different fields. Fault tolerance (FT), an important property of ANNs, ensures their reliability when significant portions of a network are lost. In this paper, a fault/noise injection-based (FIB) genetic algorithm (GA) is proposed to construct fault-tolerant ANNs. The FT performance of an FIB-GA was compared with that of a common genetic algorithm, the back-propagation algorithm, and the modification of weights algorithm. The FIB-GA showed a slower fitting speed when solving the exclusive OR (XOR) problem and the overlapping classification problem, but it significantly reduced ...
Artificial neural networks are currently used for many tasks, including safety critical ones such as...
We propose a new learning algorithm to enhance fault tolerance of multi-layer neural networks (MLN)....
The influence of the activation function on fault tolerance property of the feedforward neural netwo...
Abstract Artificial neural networks (ANNs) are powerful computational tools that are designed to rep...
Artificial neural networks are networks of very simple processing elements based on an approximate m...
A method is proposed to estimate the fault tolerance of feedforward Artificial Neural Nets (ANNs) an...
Artificial neural networks (ANNs) are new technology emerged from approximate simulation of human br...
this paper is to prevent the weights from having large relevances. The simulation results indicate t...
Ph.D. ThesisAvailable from British Library Document Supply Centre- DSC:9120.156(YU-YCST--92/10) / BL...
This thesis starts with a brief introduction to neural networks and the tuning of neural networks us...
In this paper we first show that standard BP algorithm cannot yeild to a uniform information distrib...
We propose a new learning algorithm to enhance fault tolerance of multi-layer neural networks (MLN)....
Wide attention was recently given to the problem of fault-tolerance in neural networks; while most a...
Machine malfunctions are pestilence to all production lines. One fault or malfunction leads to anoth...
In this paper, we describe a genetic algorithm (GA) based approach for learning connection weights f...
Artificial neural networks are currently used for many tasks, including safety critical ones such as...
We propose a new learning algorithm to enhance fault tolerance of multi-layer neural networks (MLN)....
The influence of the activation function on fault tolerance property of the feedforward neural netwo...
Abstract Artificial neural networks (ANNs) are powerful computational tools that are designed to rep...
Artificial neural networks are networks of very simple processing elements based on an approximate m...
A method is proposed to estimate the fault tolerance of feedforward Artificial Neural Nets (ANNs) an...
Artificial neural networks (ANNs) are new technology emerged from approximate simulation of human br...
this paper is to prevent the weights from having large relevances. The simulation results indicate t...
Ph.D. ThesisAvailable from British Library Document Supply Centre- DSC:9120.156(YU-YCST--92/10) / BL...
This thesis starts with a brief introduction to neural networks and the tuning of neural networks us...
In this paper we first show that standard BP algorithm cannot yeild to a uniform information distrib...
We propose a new learning algorithm to enhance fault tolerance of multi-layer neural networks (MLN)....
Wide attention was recently given to the problem of fault-tolerance in neural networks; while most a...
Machine malfunctions are pestilence to all production lines. One fault or malfunction leads to anoth...
In this paper, we describe a genetic algorithm (GA) based approach for learning connection weights f...
Artificial neural networks are currently used for many tasks, including safety critical ones such as...
We propose a new learning algorithm to enhance fault tolerance of multi-layer neural networks (MLN)....
The influence of the activation function on fault tolerance property of the feedforward neural netwo...