INVESTIGADORES
SEGNORILE Hector Hugo
congresos y reuniones científicas
Título:
Spectral analysis of signals by time-domain statistical characterization and neural network processing: Application to correction of spectral amplitude alterations in pulse-like waveforms
Autor/es:
G. H. BUSTOS; H. H. SEGNORILE
Lugar:
San Juan
Reunión:
Congreso; ARGENCON; 2022
Resumen:
We present a time-domain method to detect and correct spectral alterations of signals by employing statistical characterization of waveforms and a pattern-recognition procedure using simple Artificial Neural Networks. The proposed strategy implements very-fast routines with a computational cost proportional to the number of signal samples, being convenient for applications in embedded environments with limited computational capabilities or fast real-time control tasks. We use the proposed algorithms to correct spectral amplitude attenuations in a pulse-like waveform with a sinc profile as an application example.