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Fault tolerance of artificial neural networks with applications in critical systemsThis paper investigates the fault tolerance characteristics of time continuous recurrent artificial neural networks (ANN) that can be used to solve optimization problems. The principle of operations and performance of these networks are first illustrated by using well-known model problems like the traveling salesman problem and the assignment problem. The ANNs are then subjected to 13 simultaneous 'stuck at 1' or 'stuck at 0' faults for network sizes of up to 900 'neurons'. The effects of these faults 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.
Document ID
19920013042
Acquisition Source
Legacy CDMS
Document Type
Technical Publication (TP)
Authors
Protzel, Peter W.
(NASA Langley Research Center Hampton, VA, United States)
Palumbo, Daniel L.
(NASA Langley Research Center Hampton, VA, United States)
Arras, Michael K.
(Institute for Computer Applications in Science and Engineering Hampton, VA., United States)
Date Acquired
September 6, 2013
Publication Date
April 1, 1992
Subject Category
Computer Systems
Report/Patent Number
NAS 1.60:3187
NASA-TP-3187
L-16969
Report Number: NAS 1.60:3187
Report Number: NASA-TP-3187
Report Number: L-16969
Accession Number
92N22285
Funding Number(s)
PROJECT: RTOP 307-50-10-12
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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