Material attributes (e.g., chemical composition, mineralogy, texture) are identified as the causative source of variations in the behaviour of mineral processing. That makes them suitable to act as key characteristics to characterise and classify material. Therefore, vast quantities of collected data describing material attributes could help to forecast the behaviour of mineral processing. This paper proposes a conceptual framework that creates a data-driven link between ore and the processing behaviour through the creation of material “fingerprints”. A fingerprint is a machine learning-based classification of measured material attributes compared to the range of attributes found within the mine’s mineral reserves. The outcome of the classi...
Written by a collection of internationally recognised specialists, this book is a practical and info...
Efficient measurement methods for comminution properties are an important prerequisite for testing t...
The distribution patterns of trace elements are very useful for predicting mineral deposits occurre...
Material attributes (e.g., chemical composition, mineralogy, texture) are identified as the causativ...
Geochemical and mineralogical datasets from Tropicana Gold Mine, Australia, have been used to define...
Metallurgical attributes are often omitted from the mine to metal valuation models since they are ei...
Geochemical and mineralogical datasets from Tropicana Gold Mine, Australia, have been used to define...
Machine learning is a subcategory of artificial intelligence, which aims to make computers capable o...
With the increased use of digital technologies in the mining industry, the amount of centrally store...
A spatial model for process properties allows for improved production planning in mining by consider...
none4siIn response to the growing strategic and economic interest in sourcing minerals from mining r...
It is possible to have traceability in the mining industry, by parameters and signatures like partic...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
Machine learning is now applied in virtually every sphere of life for data analysis and interpretati...
The object of research is the processes of beneficiation of iron ore in the conditions of a mining a...
Written by a collection of internationally recognised specialists, this book is a practical and info...
Efficient measurement methods for comminution properties are an important prerequisite for testing t...
The distribution patterns of trace elements are very useful for predicting mineral deposits occurre...
Material attributes (e.g., chemical composition, mineralogy, texture) are identified as the causativ...
Geochemical and mineralogical datasets from Tropicana Gold Mine, Australia, have been used to define...
Metallurgical attributes are often omitted from the mine to metal valuation models since they are ei...
Geochemical and mineralogical datasets from Tropicana Gold Mine, Australia, have been used to define...
Machine learning is a subcategory of artificial intelligence, which aims to make computers capable o...
With the increased use of digital technologies in the mining industry, the amount of centrally store...
A spatial model for process properties allows for improved production planning in mining by consider...
none4siIn response to the growing strategic and economic interest in sourcing minerals from mining r...
It is possible to have traceability in the mining industry, by parameters and signatures like partic...
The ability to accurately predict the mechanical properties of metals is essential for their correct...
Machine learning is now applied in virtually every sphere of life for data analysis and interpretati...
The object of research is the processes of beneficiation of iron ore in the conditions of a mining a...
Written by a collection of internationally recognised specialists, this book is a practical and info...
Efficient measurement methods for comminution properties are an important prerequisite for testing t...
The distribution patterns of trace elements are very useful for predicting mineral deposits occurre...