eprintid: 13825 rev_number: 2 eprint_status: archive userid: 1 dir: disk0/00/01/38/25 datestamp: 2023-11-10 03:28:23 lastmod: 2023-11-10 03:28:23 status_changed: 2023-11-10 01:52:05 type: article metadata_visibility: show creators_name: Gouda, M.F. creators_name: Salim, A.M.A. title: Litho-fluid facies modeling by using logistic regression ispublished: pub note: cited By 1 abstract: Rock-physics monitoring plays a crucial role in forecasting the facies distribution within the subsurface. However, litho-fluid estimation is challenging due to the randomness of the relationship between reservoir properties and facies distribution. As a result, some facies show similar responses to rock properties and attributes. Data-quality, as well as the elasticity difference between different facies, are the main factors affecting the efficiency of facies-discrimination. This study aims at predicting the distribution of gas-sand, wet-sand, and shale from elastic properties by using logistic regression. The effect of sand and gas distributions on fourteen elastic attributes has been tested to reduce the facies model's variables and determine the best lithology and fluid predictors. The results show that the near and far elastic impedances are the best lithology predictors, while the best fluid predictors are the Mu-Rho, Lambda-Rho/Mu-Rho, and Poisson's ratio. Accordingly, the coefficients of both models have been estimated by Markov-Chain Monte-Carlo simulation to calculate the sand and gas probabilities. Eventually, the two models have been merged by using appropriate cut-offs to turn the probabilities into facies estimates. The correct-classification-rate values of the gas-sand, wet-sand, and shale are 0.92, 0.81, and 0.91, respectively. © 2020 Slovnaft VURUP a.s. date: 2020 publisher: Slovnaft VURUP a.s official_url: https://www.scopus.com/inward/record.uri?eid=2-s2.0-85087302087&partnerID=40&md5=ea2104111b84c613e410d1b7f199081c full_text_status: none publication: Petroleum and Coal volume: 62 number: 2 pagerange: 525-541 refereed: TRUE issn: 13377027 citation: Gouda, M.F. and Salim, A.M.A. (2020) Litho-fluid facies modeling by using logistic regression. Petroleum and Coal, 62 (2). pp. 525-541. ISSN 13377027