Abstract:
History matching is applied to update reservoir parameters, such as the porosity and permeability of the sub-surface rocks, according to new indirect observations. Local ...Show MoreMetadata
Abstract:
History matching is applied to update reservoir parameters, such as the porosity and permeability of the sub-surface rocks, according to new indirect observations. Local fluid production and pressure measurements in the drilled wells are the commonly dynamic observations used in the process. Another dynamic reservoir observation is the time-lapse seismic data, consisting of several elastic parameter cubes at different production time steps. This data provide indirect spatial information about the changes in fluid saturation and pressure caused by the fluid flow of the production. Ensemble Smoother Multi-Data Assimilation is presented in the literature as a sound and stable algorithm for solving History Matching problems. The application of this algorithm to seismic data is still a significant challenge due to the dimensionality issues related to the high number of data points of the seismic. Deep learning methods have been successfully applied to learn feature representations for high-dimensional data and represent the original data into latent information with lower dimensions. In this paper, the deep learning method is exploited for feature extraction of time-lapse seismic data and integrated with ES-MDA to update the reservoir parameters. Instead of training a deep model from scratch, we propose using deep models with fully convolutional autoencoder structures trained with natural images dataset. Different from other proposals, this work can be adapted to any reservoir case through a transfer learning step. The result shows a considered improvement in the ES-MDA update process, reducing the processing time and increasing the ensemble variability between model realizations.
Date of Conference: 18-23 June 2023
Date Added to IEEE Xplore: 02 August 2023
ISBN Information: