Title :
Performance and fault-tolerance of neural networks for optimization
Author :
Protzel, Peter W. ; Palumbo, Daniel L. ; Arras, Michael K.
Author_Institution :
Bavarian Res. Center for Knowledge-Based Syst., Erlangen, Germany
fDate :
7/1/1993 12:00:00 AM
Abstract :
The fault-tolerance characteristics of time-continuous, recurrent artificial neural networks (ANNs) that can be used to solve optimization problems are investigated. The performance of these networks is illustrated by using well-known model problems like the traveling salesman problem and the assignment problem. The ANNs are then subjected to up to 13 simultaneous stuck-at-1 or stuck-at-0 faults for network sizes of up to 900 neurons. The effect of these faults on the performance is demonstrated, and the cause for the observed fault-tolerance is discussed. An application is presented in which a network performs a critical task for a real-time distributed processing system by generating new task allocations during the reconfiguration of the system. The performance degradation of the ANN under the presence of faults is investigated by large-scale simulations and the potential benefits of delegating a critical task to a fault-tolerant network are discussed
Keywords :
fault tolerant computing; mathematics computing; optimisation; recurrent neural nets; fault-tolerance; optimization; real-time distributed processing system; recurrent neural nets; stuck-at-0 faults; stuck-at-1 fault; task allocations; Artificial neural networks; Biological neural networks; Control systems; Degradation; Fault tolerance; Fault tolerant systems; NASA; Neural network hardware; Neural networks; Real time systems;
Journal_Title :
Neural Networks, IEEE Transactions on