Kislov et al., 2017 - Google Patents
Use of artificial neural networks for classification of noisy seismic signalsKislov et al., 2017
- Document ID
- 16899697214442905547
- Author
- Kislov K
- Gravirov V
- Publication year
- Publication venue
- seismic Instruments
External Links
Snippet
Automatic identification of noisy seismic events is still a problem. The process involves the analysis of complex relationships between data from different sources. Moreover, there are disturbing factors such as poor signal-to-noise ratio, the presence of accidental bursts of …
- 230000001537 neural 0 title abstract description 26
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