Size Scaling of Cross Correlation Between Multiple Variables

Reservoir models have large uncertainty because of spatial variability and limited sample data. The ultimate aim is to use simultaneously all available data sources to reduce uncertainty and provide reliable reservoir models for resource assessment and flow simulation. Seismic impedance or some othe...

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Veröffentlicht in:Natural resources research (New York, N.Y.) N.Y.), 2002-03, Vol.11 (1), p.1-18
Hauptverfasser: Oz, Bora, Deutsch, Clayton V
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description Reservoir models have large uncertainty because of spatial variability and limited sample data. The ultimate aim is to use simultaneously all available data sources to reduce uncertainty and provide reliable reservoir models for resource assessment and flow simulation. Seismic impedance or some other attribute provides a key source of data for reservoir modeling. These seismic data are at a coarser scale than the hard well data and it not an exact measurement of facies proportions or porosity. A requirement for data integration is the cross-covariance between the well and seismic data.The size-scaling behavior of the cross correlation for different measurement scales was nvestigated. The size-scaling relationship is derived theoretically and validated by numerical studies (including an example with real data). The limit properties of the cross-correlation coefficient when the averaging volume becomes large is shown. After some averaging volume, the volume-dependent cross-correlation coefficient reaches a limit value. This plateau value is controlled mainly by the large-scale behavior of the cross and direct variograms.The cross correlation can increase or decrease with volume support depending on the relative importance of long- and short-scale covariance structures. If the direct and cross variograms are proportional, there is no change in the cross correlation as the averaging volume changes. Our study shows that the volume-dependent cross-correlation coefficient is sensitive to the shape of the cross variogram and differences between the direct variograms of the well data and seismic data.
doi_str_mv 10.1023/A:1014200702633
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subjects CLASSICAL AND QUANTUM MECHANICS, GENERAL PHYSICS
Correlation coefficient
Correlation coefficients
CORRELATIONS
Covariance
Cross correlation
Data integration
Flow simulation
MATHEMATICAL MODELS
NUMERICAL ANALYSIS
POROSITY
Reservoirs
RESOURCE ASSESSMENT
SCALING
Seismic response
SIMULATION
Uncertainty
Well data
title Size Scaling of Cross Correlation Between Multiple Variables
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