A neural network approach for the noise identification and data quality of the VIRGO antenna

Barone, F.; Ciaramella, A.; Eleuteri, A.; Garufi, F.; Milano, L.; Tagliaferri, R.
June 2000
AIP Conference Proceedings;2000, Vol. 523 Issue 1, p465
Academic Journal
We are exploring the possibility of using neural networks for noise identification and extraction in connection with the environment monitoring and within the global architecture of Data Quality. We report here the very promising results of a test of real-time acoustic noise identification and extraction for a bench test Michelson interferometer. © 2000 American Institute of Physics.


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