@inproceedings{09a94478ae544dea9ccff0f3b777a5e0,
title = "Functional network softsensor for determination of porosity and water saturation in sandstone reservoirs",
abstract = "The proposed methodology makes use of appropriate well logs and core measurements. A portion of the data available was retained for verification of the prediction of water saturation and porosity. This paper presents a novel method for estimating these two important parameters directly from conventional well measurements. The recently proposed Functional Networks technique is applied for rapid and accurate prediction of these parameters, using six and five basic well log measurements as data for estimating porosity and water saturation respectively. Functional network is a generalization of the conventional Feed Forward Neural Networks, which overcome many of the drawbacks of the conventional neural network techniques. The proposed functional network was trained using data gathered from two wells in the Middle East region. Results obtained from this case study of sandstone reservoir using the proposed intelligent technique have shown to be fast and accurate referring to core samples porosity and water saturation values.",
author = "Hamada, \{G. M.\} and Elshafei, \{M. A.\} and Adernian, \{A. M.\}",
year = "2010",
language = "English",
isbn = "9781617386671",
series = "72nd European Association of Geoscientists and Engineers Conference and Exhibition 2010: A New Spring for Geoscience. Incorporating SPE EUROPEC 2010",
publisher = "Society of Petroleum Engineers",
pages = "2750--2755",
booktitle = "Society of Petroleum Engineers - 72nd European Association of Geoscientists and Engineers Conference and Exhibition 2010 - Incorporating SPE EUROPEC 2010",
}