About This Item

Share This Item

The AAPG/Datapages Combined Publications Database

AAPG Special Volumes

Abstract


 
Chapter from: CA 3: Stochastic Modeling and Geostatistics 
Edited by 
Jeffrey M. Yarus and Richard L. Chambers

Author:
John H. Doveton

Methodology and Concepts

Published 1994 as part of Computer Applications 3
Copyright © 1994 The American Association of Petroleum Geologists.  All Rights Reserved.
 

Chapter 6

*
Theory and Applications 
of Vertical Variability Measures 
from Markov Chain Analysis

John H. Doveton
Kansas Geological Survey
Lawrence, Kansas, U.S.A.



*
ABSTRACT

Finite Markov chain analysis has been used widely by sedimentologists in the search for fundamental patterns of lithological repetition that are statistically significant. The probability structure of a Markov model describes the relationship between adjacent events in a first-order process, but can be expanded to incorporate higher order memories. Simulations of stratigraphic successions from transition probabilities often are effective provided that any ancillary long-term trends also are accommodated. Markov stratigraphy can be used to produce multiple realizations of the internal structure of hydrocarbon reservoirs for use in fluid flow models. In addition, Markovian sequences have been modeled by synthetic seismograms. The discrimination of reflection frequency characteristics between synthetic seismograms from known facies types allows a lithostratigraphic classification of field seismic records. The Markovian statistics of vertical variability are applicable to selected problems of lateral prediction and simulation. The switch from the vertical to lateral direction is made possible by Walther's law, which states that lithologies that overlie one another must also have been deposited in adjacent tracts. Exceptions to Walther's law are caused by erosional breaks, but these are absorbed as a noise term within the probability model. Simulation of two- and three-dimensional models from Markovian vertical transitions must take into account the marked differences in scale and orientation that exist between the vertical and horizontal dimensions; however, some initial experiments indicate that results may be useful in applications ranging from pore network and rock fabric simulation to the modeling of local and regional geology. A finite Markov chain necessarily limits a simulation to a discretely stepped presentation of stratigraphic architecture; however, the discrete structure allows effective representations of bed boundaries and other sharp discontinuities. Geostatistical random functions can then be used to model internal variability of the Markovian events to refine the simulation.

Pay-Per-View Purchase Options

The article is available through a document delivery service. Explain these Purchase Options.

Watermarked PDF Document: $14
Open PDF Document: $24