Machine learning (ML) methods are nowadays widely used to automate geophysical study. Some of ML algorithms are used to solve lithological classification problems during uranium mining process. One of the key aspects of using classical ML methods is causing data features and estimating their influence on the classification. This paper presents a quantitative assessment of the impact of expert opinions on the classification process. In other words, we have prepared the data, identified the experts and performed a series of experiments with and without taking into account the fact that the expert identifier is supplied to the input of the automatic classifier during training and testing. Feedforward artificial neural network (ANN) has been us...
Seismic facies analysis aims to classify oil and gas reservoirs into geologically and petrophysicall...
Article dans revue scientifique avec comité de lecture. nationale.National audienceThis study is con...
International audienceThe present study uses different ANN training algorithms to predict soil type ...
When analyzing the sorption properties of coal in the context of gas hazards in underground mining, ...
Machine learning today becomes more and more effective instrument to solve many particular problems,...
Well logging, also known as a geophysical survey, is one of the main components of a nuclear fuel cy...
This paper explores the novel technique of artificial neural networks and their application to miner...
Machine learning is a subcategory of artificial intelligence, which aims to make computers capable o...
A test of the ability of a probabilistic neural network to classify deposits into types on the basis...
Abstract. This paper explores the novel technique of artificial neural networks and their applicatio...
Artificial Intelligence (AI) has numerous and varied definitions, leading to confusion and disagreem...
A multilayer feed‐forward neural network, trained with a gradient descent, back‐propagation algorith...
Machine learning today has become a more effective instrument to solve many particular problems wher...
Lithological core logging is a subjective and time consuming endeavour which could possibly be autom...
Machine learning algorithms are designed to identify efficiently and to predict accurately patterns ...
Seismic facies analysis aims to classify oil and gas reservoirs into geologically and petrophysicall...
Article dans revue scientifique avec comité de lecture. nationale.National audienceThis study is con...
International audienceThe present study uses different ANN training algorithms to predict soil type ...
When analyzing the sorption properties of coal in the context of gas hazards in underground mining, ...
Machine learning today becomes more and more effective instrument to solve many particular problems,...
Well logging, also known as a geophysical survey, is one of the main components of a nuclear fuel cy...
This paper explores the novel technique of artificial neural networks and their application to miner...
Machine learning is a subcategory of artificial intelligence, which aims to make computers capable o...
A test of the ability of a probabilistic neural network to classify deposits into types on the basis...
Abstract. This paper explores the novel technique of artificial neural networks and their applicatio...
Artificial Intelligence (AI) has numerous and varied definitions, leading to confusion and disagreem...
A multilayer feed‐forward neural network, trained with a gradient descent, back‐propagation algorith...
Machine learning today has become a more effective instrument to solve many particular problems wher...
Lithological core logging is a subjective and time consuming endeavour which could possibly be autom...
Machine learning algorithms are designed to identify efficiently and to predict accurately patterns ...
Seismic facies analysis aims to classify oil and gas reservoirs into geologically and petrophysicall...
Article dans revue scientifique avec comité de lecture. nationale.National audienceThis study is con...
International audienceThe present study uses different ANN training algorithms to predict soil type ...