Integration of production data into reservoir models
- 1 March 2001
- journal article
- Published by Geological Society of London in Petroleum Geoscience
- Vol. 7 (s) , S65-S73
- https://doi.org/10.1144/petgeo.7.s.s65
Abstract
The problem of mapping reservoir properties, such as porosity and permeability, and of assessing the uncertainty in the mapping has been largely approached probabilistically, i.e. uncertainty is estimated based on the properties of an ensemble of random realizations of the reservoir properties all of which satisfy constraints provided by data and prior geological knowledge. When the constraints include observations of production characteristics, the problem of generating a representative ensemble of realizations can be quite difficult partly because the connection between a measurement of water-cut or GOR at a well and the permeability at some other location is by no means obvious. In this paper, the progress towards incorporation of production data and remaining challenges are reviewed.Keywords
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