The characterisation of formation heterogeneities requires a multidisciplinary study of data acquired using a large number of numerical geophysical and geological measurements and a rigorous evaluation of the precision and accuracy of the data. Another essential aspect of the appraisal of any measurement is the quality assessment and quality control of the data. In this work multivariate statistical techniques and an Artificial Neural Network (ANN) are used provide lithofacies characterisation and to identify heterogeneities in complex formations as well as to evaluate the boundaries they generate. The precision and accuracy of the data from different sources are very important and are considered here by using sample support in the integrat...
Intelligent and statistical techniques were used to extract the hidden organic facies from well log ...
The article describes the use of an artificial neural network to calculate porosity in the West Sibe...
The Kloštar oil field is situated in the northern part of the Sava Depression within the Croatian pa...
The characterisation of formation heterogeneities requires a multidisciplinary study of data acquire...
Lithofacies definition in the subsurface is an important factor in modelling, regardless of the scal...
Accurate determination of lithology based on well logging data is an important task in the study of ...
The main goal of the study was to enhance and improve information about the Ordovician and Silurian ...
Objectives/Scope: Estimating reservoir petrophysical parameters such as porosity, permeability is vi...
Artificially intelligent and predictive modelling of geomechanical properties is performed by creati...
Borehole-log data acquisition accounts for a significant proportion of exploration, appraisal and fi...
The main goal of the study was to enhance and improve information about the Ordovician and Silurian ...
In boreholes with partial or no core recovery, interpretations of lithology in the remainder of the ...
Estimation of reservoir parameters is important in reservoir evaluation and estimation of petroleum ...
Timely and effective interpretation of bore hole geophysical and formation well logs is vital in dev...
A novel approach based on the concept of Bayesian neural network learning theory is developed and ap...
Intelligent and statistical techniques were used to extract the hidden organic facies from well log ...
The article describes the use of an artificial neural network to calculate porosity in the West Sibe...
The Kloštar oil field is situated in the northern part of the Sava Depression within the Croatian pa...
The characterisation of formation heterogeneities requires a multidisciplinary study of data acquire...
Lithofacies definition in the subsurface is an important factor in modelling, regardless of the scal...
Accurate determination of lithology based on well logging data is an important task in the study of ...
The main goal of the study was to enhance and improve information about the Ordovician and Silurian ...
Objectives/Scope: Estimating reservoir petrophysical parameters such as porosity, permeability is vi...
Artificially intelligent and predictive modelling of geomechanical properties is performed by creati...
Borehole-log data acquisition accounts for a significant proportion of exploration, appraisal and fi...
The main goal of the study was to enhance and improve information about the Ordovician and Silurian ...
In boreholes with partial or no core recovery, interpretations of lithology in the remainder of the ...
Estimation of reservoir parameters is important in reservoir evaluation and estimation of petroleum ...
Timely and effective interpretation of bore hole geophysical and formation well logs is vital in dev...
A novel approach based on the concept of Bayesian neural network learning theory is developed and ap...
Intelligent and statistical techniques were used to extract the hidden organic facies from well log ...
The article describes the use of an artificial neural network to calculate porosity in the West Sibe...
The Kloštar oil field is situated in the northern part of the Sava Depression within the Croatian pa...