TY - GEN
T1 - Time-lapse Cross-equalization by deep learning
AU - Alali, Abdullah
AU - Kazei, Vladimir
AU - Altaf, Basmah
AU - Zhang, Xiangliang
AU - Alkalifah, Tariq
N1 - KAUST Repository Item: Exported on 2020-12-25
PY - 2020/6/1
Y1 - 2020/6/1
N2 - Ideally, time-lapse seismic data from different vintages should be identical except at the target area (i.e.,
the reservoir). However, it is almost impossible to have identical data because of many factors, such
as different positioning of the sources and receivers and near-surface velocity variation, which result
in 4D noise and reduce the repeatability of the data. To increase the 4D signal and reduce the noise,
time-lapse cross equalization methods aim to match the monitor data to the baseline. Here, we propose
to implement the cross equalization intelligently using deep learning models. We specifically use a
convolutional autoencoder trained on the base data to later predict the matching using another fully
connected neural network in the latent space. We implement the approach on a synthetic data and show
an improvement in the repeatability by imaging the reservoir and computing the normalized root mean
square.
AB - Ideally, time-lapse seismic data from different vintages should be identical except at the target area (i.e.,
the reservoir). However, it is almost impossible to have identical data because of many factors, such
as different positioning of the sources and receivers and near-surface velocity variation, which result
in 4D noise and reduce the repeatability of the data. To increase the 4D signal and reduce the noise,
time-lapse cross equalization methods aim to match the monitor data to the baseline. Here, we propose
to implement the cross equalization intelligently using deep learning models. We specifically use a
convolutional autoencoder trained on the base data to later predict the matching using another fully
connected neural network in the latent space. We implement the approach on a synthetic data and show
an improvement in the repeatability by imaging the reservoir and computing the normalized root mean
square.
UR - http://hdl.handle.net/10754/666644
UR - https://www.earthdoc.org/content/papers/10.3997/2214-4609.202011720?crawler=true
M3 - Conference contribution
BT - 82nd EAGE Conference & Exhibition 2020
PB - European Association of Geoscientists & Engineers
ER -