Skip to main content
U.S. Department of Energy
Office of Scientific and Technical Information

Use of artifical neural nets to predict permeability in Hugoton Field

Conference ·
OSTI ID:425905
; ;  [1]
  1. Amoco MidContinent Business Unit, Denver, CO (United States)

One of the most difficult tasks in petrophysics is establishing a quantitative relationship between core permeability and wireline logs. This is a tough problem in Hugoton Field, where a complicated mix of carbonates and clastics further obscure the correlation. One can successfully model complex relationships such as permeability-to-logs using artificial neural networks. Mind and Vision, Inc.`s neural net software was used because of its orientation toward depth-related data (such as logs) and its ability to run on a variety of log analysis platforms. This type of neural net program allows the expert geologist to select a few (10-100) points of control to train the {open_quotes}brainstate{close_quotes} using logs as predicters and core permeability as {open_quotes}truth{close_quotes}. In Hugoton Field, the brainstate provides an estimate of permeability at each depth in 474 logged wells. These neural net-derived permeabilities are being used in reservoir characterization models for fluid saturations. Other applications of this artificial neural network technique include deterministic relationships of logs to: core lithology, core porosity, pore type, and other wireline logs (e.g., predicting a sonic log from a density log).

OSTI ID:
425905
Report Number(s):
CONF-960527--
Country of Publication:
United States
Language:
English

Similar Records

Use of artifical neural nets to predict permeability in Hugoton Field
Conference · Sun Dec 31 23:00:00 EST 1995 · AAPG Bulletin · OSTI ID:6859758

Reservoir characterization of the giant Hugoton gas field, Kansas
Journal Article · Fri Oct 31 23:00:00 EST 1997 · AAPG Bulletin · OSTI ID:563425

Predicting permeability from porosity using artificial neural networks
Journal Article · Thu Nov 30 23:00:00 EST 1995 · AAPG Bulletin · OSTI ID:160235