Performance Improvements during Mineral Processing Using Material Fingerprints Derived from Machine Learning—A Conceptual Framework
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 dat...
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doaj-f34bc1546daf4bd1905ab0bcbab0ed242020-11-25T03:16:37ZengMDPI AGMinerals2075-163X2020-04-011036636610.3390/min10040366Performance Improvements during Mineral Processing Using Material Fingerprints Derived from Machine Learning—A Conceptual FrameworkJeroen R. van Duijvenbode0Mike W.N. Buxton1Masoud Soleymani Shishvan2Resource Engineering Section, Department of Geosciences and Engineering, Delft University of Technology, Stevinweg 1, 2628 CN Delft, The NetherlandsResource Engineering Section, Department of Geosciences and Engineering, Delft University of Technology, Stevinweg 1, 2628 CN Delft, The NetherlandsResource Engineering Section, Department of Geosciences and Engineering, Delft University of Technology, Stevinweg 1, 2628 CN Delft, The NetherlandsMaterial 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 classification acts as a label for a machine learning model and contains relevant information, which may identify the root cause of measured differences in processing behaviour. Therefore, this class label can forecast the associated behaviour of mineral processing. Furthermore, insight is given into the confidence of available data originating from different analytical techniques. Taken together, this enhances the understanding of how differences in geology impact metallurgical plant performance. Targeted measurements at low-confidence unit processes and for specific attributes would upgrade the confidence in fingerprints and capabilities to predict plant performance.https://www.mdpi.com/2075-163X/10/4/366data confidencemachine learningmaterial fingerprintsmineral processingbehavioural prediction, mining |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jeroen R. van Duijvenbode Mike W.N. Buxton Masoud Soleymani Shishvan |
spellingShingle |
Jeroen R. van Duijvenbode Mike W.N. Buxton Masoud Soleymani Shishvan Performance Improvements during Mineral Processing Using Material Fingerprints Derived from Machine Learning—A Conceptual Framework Minerals data confidence machine learning material fingerprints mineral processing behavioural prediction, mining |
author_facet |
Jeroen R. van Duijvenbode Mike W.N. Buxton Masoud Soleymani Shishvan |
author_sort |
Jeroen R. van Duijvenbode |
title |
Performance Improvements during Mineral Processing Using Material Fingerprints Derived from Machine Learning—A Conceptual Framework |
title_short |
Performance Improvements during Mineral Processing Using Material Fingerprints Derived from Machine Learning—A Conceptual Framework |
title_full |
Performance Improvements during Mineral Processing Using Material Fingerprints Derived from Machine Learning—A Conceptual Framework |
title_fullStr |
Performance Improvements during Mineral Processing Using Material Fingerprints Derived from Machine Learning—A Conceptual Framework |
title_full_unstemmed |
Performance Improvements during Mineral Processing Using Material Fingerprints Derived from Machine Learning—A Conceptual Framework |
title_sort |
performance improvements during mineral processing using material fingerprints derived from machine learning—a conceptual framework |
publisher |
MDPI AG |
series |
Minerals |
issn |
2075-163X |
publishDate |
2020-04-01 |
description |
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 classification acts as a label for a machine learning model and contains relevant information, which may identify the root cause of measured differences in processing behaviour. Therefore, this class label can forecast the associated behaviour of mineral processing. Furthermore, insight is given into the confidence of available data originating from different analytical techniques. Taken together, this enhances the understanding of how differences in geology impact metallurgical plant performance. Targeted measurements at low-confidence unit processes and for specific attributes would upgrade the confidence in fingerprints and capabilities to predict plant performance. |
topic |
data confidence machine learning material fingerprints mineral processing behavioural prediction, mining |
url |
https://www.mdpi.com/2075-163X/10/4/366 |
work_keys_str_mv |
AT jeroenrvanduijvenbode performanceimprovementsduringmineralprocessingusingmaterialfingerprintsderivedfrommachinelearningaconceptualframework AT mikewnbuxton performanceimprovementsduringmineralprocessingusingmaterialfingerprintsderivedfrommachinelearningaconceptualframework AT masoudsoleymanishishvan performanceimprovementsduringmineralprocessingusingmaterialfingerprintsderivedfrommachinelearningaconceptualframework |
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