A Systematic Approach to the Optimal Design of Feed Forward Neural Networks Applied to Log-Synthesis
Publikationen: Konferenzbeitrag › Paper › (peer-reviewed)
Autoren
Organisationseinheiten
Abstract
G001 A SYSTEMATIC APPROACH TO THE OPTIMAL DESIGN OF FEED FORWARD NEURAL NETWORKS APPLIED TO LOG-SYNTHESIS Abstract 1 Neural networks are increasingly used in geophysical applications. Optimizing neural networks is still a matter of experience and trial and error where network initialization and network size are the most challenging issues. We expanded conventional learning rules to a completely forward connected network including input neurons for automatic normalization of the data. In addition we developed a method for the network initialization based on the statistical properties of the input and output data generating an initial network state that ascertains a fast
Details
Originalsprache | Englisch |
---|---|
Status | Veröffentlicht - 2004 |
Veranstaltung | 66th EAGE Conference & Exhibition 2004 - Paris, Frankreich Dauer: 7 Juni 2004 → 10 Juni 2004 |
Konferenz
Konferenz | 66th EAGE Conference & Exhibition 2004 |
---|---|
Land/Gebiet | Frankreich |
Ort | Paris |
Zeitraum | 7/06/04 → 10/06/04 |