--> Probabilistic Uncertainty Modelling to De-Risk Fault Seal Analysis
[First Hit]

AAPG ACE 2018

Datapages, Inc.Print this page

Probabilistic Uncertainty Modelling to De-Risk Previous HitFaultNext Hit Seal Analysis

Abstract

Construction of a geological model for Previous HitfaultNext Hit seal analysis requires Previous HitinterpretationNext Hit of Previous HitfaultNext Hit and horizon surfaces, and definition of the relationship between these features (i.e. Previous HitfaultNext Hit cut-off lines). The resultant model can be populated with lithological information, typically derived from interpreted well logs, allowing Previous HitfaultNext Hit sealing capacity to be estimated. In each case, several factors, including the limits of data resolution and human bias, will result in errors in Previous HitinterpretationNext Hit that will affect the accuracy of subsequent Previous HitfaultNext Hit seal prediction.

Here we describe a new, rapidly-applicable, software tool which stochastically models cut-off line position and percentage shale content (Vsh), allowing the uncertainty in Previous HitfaultNext Hit displacement and seal capacity to be quantified. The method uses a Monte Carlo simulation to randomly sample normally distributed variations of the input data. Uncertainty in the structural model is incorporated by applying a deviation value to the elevation of cut-off lines on Previous HitfaultNext Hit surfaces. Data quality is often poorer at depth due to signal attenuation and depth conversion errors. Variations in data confidence with depth are accounted for by using a depth dependent deviation. Modelling shale percentage uncertainty is performed by defining a deviation value for the Vsh curve resulting in variations in the proportion of shale at each point in the Previous HitstratigraphicNext Hit sequence.

The results are presented as a map of probability of an across-Previous HitfaultNext Hit lithological juxtaposition or Previous HitfaultNext Hit sealing proxy value (e.g. shale gouge ratio). The outputs are displayed as an along-strike projection of the Previous HitfaultTop, colour-mapped for the mean, mode or a percentile (e.g. P10, P50, P90). Moreover, the results present the likelihood of an outcome to occur, allowing risk to be quantified. This is demonstrated using real-world models from hydrocarbon basins around the world, including offshore Canada and New Zealand.