Machine learning today becomes more and more effective instrument to solve many particular problems, where there are difficulties to apply well known and described math model. In other words - it is a great tool to describe non-linear phenomena. We tried to use this technique to improve existing process of stratigraphy, and reduce costs on site by applying computer leaded predictions on the basis of existing on-field collected data. Article describes usage of machine learning algorithms for stratigraphy boundaries classification based on geophysics logging data for uranium deposit in Kazakhstan. Correct marking of stratigraphy from geophysics logging data is complex non-linear task. To solve this task we applied several algorithms of machin...
Remotely sensed spectral imagery, geophysical (magnetic and gravity), and geodetic (elevation) data ...
Mineral exploration is the necessary first step of any mining project. Mineral prospectivity analysi...
Artificial Intelligence (AI) has numerous and varied definitions, leading to confusion and disagreem...
Machine learning today becomes more and more effective instrument to solve many particular problems,...
Machine learning algorithms are designed to identify efficiently and to predict accurately patterns ...
This thesis explored to what extent different supervised machine learning algorithms can be used to ...
Well logging, also known as a geophysical survey, is one of the main components of a nuclear fuel cy...
Machine learning describes an array of computational and nested statistical methods whereby a comput...
AbstractMachine learning algorithms (MLAs) are a powerful group of data-driven inference tools that ...
Automatic classifications of well logs using machine learning techniques has gained improved attenti...
Machine learning (ML) methods are nowadays widely used to automate geophysical study. Some of ML alg...
Random Forests, a supervised machine learning algorithm, provides a robust, data driven means of pre...
A current mineral exploration focus is the development of tools to identify magmatic districts predi...
Machine learning is a subcategory of artificial intelligence, which aims to make computers capable o...
Biplot diagrams are traditionally used for rock discrimination using geochemical data from samples. ...
Remotely sensed spectral imagery, geophysical (magnetic and gravity), and geodetic (elevation) data ...
Mineral exploration is the necessary first step of any mining project. Mineral prospectivity analysi...
Artificial Intelligence (AI) has numerous and varied definitions, leading to confusion and disagreem...
Machine learning today becomes more and more effective instrument to solve many particular problems,...
Machine learning algorithms are designed to identify efficiently and to predict accurately patterns ...
This thesis explored to what extent different supervised machine learning algorithms can be used to ...
Well logging, also known as a geophysical survey, is one of the main components of a nuclear fuel cy...
Machine learning describes an array of computational and nested statistical methods whereby a comput...
AbstractMachine learning algorithms (MLAs) are a powerful group of data-driven inference tools that ...
Automatic classifications of well logs using machine learning techniques has gained improved attenti...
Machine learning (ML) methods are nowadays widely used to automate geophysical study. Some of ML alg...
Random Forests, a supervised machine learning algorithm, provides a robust, data driven means of pre...
A current mineral exploration focus is the development of tools to identify magmatic districts predi...
Machine learning is a subcategory of artificial intelligence, which aims to make computers capable o...
Biplot diagrams are traditionally used for rock discrimination using geochemical data from samples. ...
Remotely sensed spectral imagery, geophysical (magnetic and gravity), and geodetic (elevation) data ...
Mineral exploration is the necessary first step of any mining project. Mineral prospectivity analysi...
Artificial Intelligence (AI) has numerous and varied definitions, leading to confusion and disagreem...