Abstract
This article gives a state of the art of temporal neural networks and a comparison of three recurrent neural network which are most representative for applications of dynamic monitoring and prognosis. The criteria of selection of these networks are at two levels: a temporal criterion and an architectural criterion. Following the application of these criteria, three recurrent networks seem relevant: the RRBF, the R2BF and the DGNN. Tests using a benchmark of dynamic monitoring and a benchmark of prognosis enable us to evaluate the performances of the three temporal networks in term of computing and processing capacity time.
Translated title of the contribution | Use of temporal neural networks for prognosis and dynamic monitoring: Comparative studies of three recurrent neural networks |
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Original language | French |
Pages (from-to) | 913-950 |
Number of pages | 38 |
Journal | Revue d'Intelligence Artificielle |
Volume | 19 |
Issue number | 6 |
DOIs | |
State | Published - 2005 |
Externally published | Yes |
Keywords
- DGNN
- Dynamic monitoring
- Learning
- Prognosis
- R2BF
- Recurrent neural network
- RRBF
- Temporal neural network