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Disputation: Mohammed Outhmane Faouzi Zizi

Doctoral candidate Mohammed Outhmane Faouzi Zizi at the Department of Geosciences, Faculty of Mathematics and Natural Sciences, is defending the thesis Seismic Data Processing in a Compressed Domain using Constrained Dictionary Learning for the degree of Philosophiae Doctor.

Mohammed Outhmane Faouzi Zizi. Photo: Private

Mohammed Outhmane Faouzi Zizi. Photo: Private

The PhD defence and trial lecture will be held in Auditorium 1, The Geology Building. In some cases, it will be possible to attend the trial lecture and dissertation digitally, in that case a link to Zoom will be posted.

Trial lecture

Tuesday 15 August, 10:15-11:00, Aud 1, The Geology Building  

Current trends in imaging and full waveform inversion

Conferral summary (in Norwegian)

Dagens seismiske marine undersøkelser genererer store dataset siden større områder dekkes, og antall sensorer økes. Slike datasett utgjør betydelige utfordringer for tradisjonelle prosesserings- og bildeteknikker. Denne avhandlingen viser effektiviteten til metoder basert på ordboklæring for å komprimere seismiske data, og som muliggjør å utføre viktige prosesseringssteg, som bølgefeltseparasjon og deghosting, direkte i det komprimerte domenet av datesettet.

Main research findings

Popular scientific article about Zizi’s dissertation:

Seismic Data Processing in a Compressed Domain using Constrained Dictionary Learning

Today's seismic exploration surveys generate vast amounts of data as larger areas are covered, and an increased number of sensors are employed. Consequently, seismic data have grown exponentially in size. Hence, such large data poses significant challenges for traditional processing and imaging methods.

Early-stage compression of seismic data can be key element to overcoming storage and data transfer barriers. Moreover, applying seismic processing steps on compressed data instead of large data would not only save storage and transfer costs but could also lead to cost-effective alternatives compared to standard seismic processing.

This doctoral thesis demonstrates the effectiveness of dictionary learning-based methods in compressing large seismic data and enabling key processing steps, such as wavefield separation and deghosting, to be carried out directly in the compressed domain. 

While sparse transforms have previously been utilized for some seismic processing steps, there has been no prior proposal for methods aimed at compressing seismic data and simultaneously processing them in the compressed domain. Thus, this thesis shows that such methods can significantly reduce costs related to data storage and transfer, and also bring computational cost reduction. Future research may focus on allowing other key processing steps in the compressed domain.

Photo and other information:

Press photo: Mohammed Outhmane Faouzi Zizi, portrait; 440px. Photo: Private

Published Aug. 1, 2023 10:01 AM - Last modified Aug. 1, 2023 10:01 AM