Quantification of sand fraction from seismic attributes using Neuro-Fuzzy approach

09/23/2015
by   Akhilesh K Verma, et al.
0

In this paper, we illustrate the modeling of a reservoir property (sand fraction) from seismic attributes namely seismic impedance, seismic amplitude, and instantaneous frequency using Neuro-Fuzzy (NF) approach. Input dataset includes 3D post-stacked seismic attributes and six well logs acquired from a hydrocarbon field located in the western coast of India. Presence of thin sand and shale layers in the basin area makes the modeling of reservoir characteristic a challenging task. Though seismic data is helpful in extrapolation of reservoir properties away from boreholes; yet, it could be challenging to delineate thin sand and shale reservoirs using seismic data due to its limited resolvability. Therefore, it is important to develop state-of-art intelligent methods for calibrating a nonlinear mapping between seismic data and target reservoir variables. Neural networks have shown its potential to model such nonlinear mappings; however, uncertainties associated with the model and datasets are still a concern. Hence, introduction of Fuzzy Logic (FL) is beneficial for handling these uncertainties. More specifically, hybrid variants of Artificial Neural Network (ANN) and fuzzy logic, i.e., NF methods, are capable for the modeling reservoir characteristics by integrating the explicit knowledge representation power of FL with the learning ability of neural networks. The documented results in this study demonstrate acceptable resemblance between target and predicted variables, and hence, encourage the application of integrated machine learning approaches such as Neuro-Fuzzy in reservoir characterization domain. Furthermore, visualization of the variation of sand probability in the study area would assist in identifying placement of potential wells for future drilling operations.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/20/2019

Artificial Neural Network Surrogate Modeling of Oil Reservoir: a Case Study

We develop a data-driven model, introducing recent advances in machine l...
research
09/23/2015

Well Tops Guided Prediction of Reservoir Properties using Modular Neural Network Concept A Case Study from Western Onshore, India

This paper proposes a complete framework consisting pre-processing, mode...
research
01/09/2023

Reservoir Prediction by Machine Learning Methods on The Well Data and Seismic Attributes for Complex Coastal Conditions

The aim of this work was to predict the probability of the spread of roc...
research
06/01/2018

SFA-GTM: Seismic Facies Analysis Based on Generative Topographic Map and RBF

Seismic facies identification plays a significant role in reservoir char...
research
06/17/2022

Photoelectric Factor Prediction Using Automated Learning and Uncertainty Quantification

The photoelectric factor (PEF) is an important well logging tool to dist...
research
07/07/2013

A Comparative study of Transportation Problem under Probabilistic and Fuzzy Uncertainties

Transportation Problem is an important aspect which has been widely stud...
research
05/09/2023

Seeing double with a multifunctional reservoir computer

Multifunctional biological neural networks exploit multistability in ord...

Please sign up or login with your details

Forgot password? Click here to reset