학술논문

Iterative static modeling of channelized reservoirs using history-matched facies probability data and rejection of training image
Document Type
article
Source
Petroleum Science, Vol 16, Iss 1, Pp 127-147 (2018)
Subject
History-matched facies probability map
Training image rejection
Iterative static modeling
Channelized reservoirs
Multiple-point statistics
History matching
Science
Petrology
QE420-499
Language
English
ISSN
1672-5107
1995-8226
Abstract
Abstract Most inverse reservoir modeling techniques require many forward simulations, and the posterior models cannot preserve geological features of prior models. This study proposes an iterative static modeling approach that utilizes dynamic data for rejecting an unsuitable training image (TI) among a set of TI candidates and for synthesizing history-matched pseudo-soft data. The proposed method is applied to two cases of channelized reservoirs, which have uncertainty in channel geometry such as direction, amplitude, and width. Distance-based clustering is applied to the initial models in total to select the qualified models efficiently. The mean of the qualified models is employed as a history-matched facies probability map in the next iteration of static models. Also, the most plausible TI is determined among TI candidates by rejecting other TIs during the iteration. The posterior models of the proposed method outperform updated models of ensemble Kalman filter (EnKF) and ensemble smoother (ES) because they describe the true facies connectivity with bimodal distribution and predict oil and water production with a reasonable range of uncertainty. In terms of simulation time, it requires 30 times of forward simulation in history matching, while the EnKF and ES need 9000 times and 200 times, respectively.