Quartz grinding specific rate of breakage (Sj) classification by discriminant analysis
Specific rate of breakage (Sj) is an important parameter for grinding kinetics behavior due to it is reverse related with the process energy consumption. Size grinding media, viscosity medium, and fine particle formation are some of modifiable variable for to reduce the energy in the grinding proce...
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Universidad Industrial de Santander
2020-03-01
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Online Access: | https://revistas.uis.edu.co/index.php/revistauisingenierias/article/view/10166 |
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doaj-3de13d6fdc2e4eea93555707b11ef3a82020-11-25T02:57:38ZengUniversidad Industrial de SantanderRevista UIS Ingenierías1657-45832145-84562020-03-01192Quartz grinding specific rate of breakage (Sj) classification by discriminant analysisLaura Colorado-Arango0Sindy Llano-Gómez1Adriana Osorio-Correa2Universidad de AntioquiaUniversidad de AntioquiaUniversidad de Antioquia Specific rate of breakage (Sj) is an important parameter for grinding kinetics behavior due to it is reverse related with the process energy consumption. Size grinding media, viscosity medium, and fine particle formation are some of modifiable variable for to reduce the energy in the grinding process. Nowadays, there is no model that explains the relationship among Sj and parameters described above. A classification model based on linear discriminant analysis for quartz wet grinding was proposed to identify conditions with the high Sj. Three grinding kinetic behavior groups have been found through cluster analysis and two discriminant functions that explicate difference among groups. The first function was the most powerful differentiating dimension with 89.01% of prediction percentage, and the second one represented an additional significant dimension with 10.99% of prediction. https://revistas.uis.edu.co/index.php/revistauisingenierias/article/view/10166ball millingdiscriminant analysisgrindingquartzspecific rate of breakage |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Laura Colorado-Arango Sindy Llano-Gómez Adriana Osorio-Correa |
spellingShingle |
Laura Colorado-Arango Sindy Llano-Gómez Adriana Osorio-Correa Quartz grinding specific rate of breakage (Sj) classification by discriminant analysis Revista UIS Ingenierías ball milling discriminant analysis grinding quartz specific rate of breakage |
author_facet |
Laura Colorado-Arango Sindy Llano-Gómez Adriana Osorio-Correa |
author_sort |
Laura Colorado-Arango |
title |
Quartz grinding specific rate of breakage (Sj) classification by discriminant analysis |
title_short |
Quartz grinding specific rate of breakage (Sj) classification by discriminant analysis |
title_full |
Quartz grinding specific rate of breakage (Sj) classification by discriminant analysis |
title_fullStr |
Quartz grinding specific rate of breakage (Sj) classification by discriminant analysis |
title_full_unstemmed |
Quartz grinding specific rate of breakage (Sj) classification by discriminant analysis |
title_sort |
quartz grinding specific rate of breakage (sj) classification by discriminant analysis |
publisher |
Universidad Industrial de Santander |
series |
Revista UIS Ingenierías |
issn |
1657-4583 2145-8456 |
publishDate |
2020-03-01 |
description |
Specific rate of breakage (Sj) is an important parameter for grinding kinetics behavior due to it is reverse related with the process energy consumption. Size grinding media, viscosity medium, and fine particle formation are some of modifiable variable for to reduce the energy in the grinding process. Nowadays, there is no model that explains the relationship among Sj and parameters described above. A classification model based on linear discriminant analysis for quartz wet grinding was proposed to identify conditions with the high Sj. Three grinding kinetic behavior groups have been found through cluster analysis and two discriminant functions that explicate difference among groups. The first function was the most powerful differentiating dimension with 89.01% of prediction percentage, and the second one represented an additional significant dimension with 10.99% of prediction.
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topic |
ball milling discriminant analysis grinding quartz specific rate of breakage |
url |
https://revistas.uis.edu.co/index.php/revistauisingenierias/article/view/10166 |
work_keys_str_mv |
AT lauracoloradoarango quartzgrindingspecificrateofbreakagesjclassificationbydiscriminantanalysis AT sindyllanogomez quartzgrindingspecificrateofbreakagesjclassificationbydiscriminantanalysis AT adrianaosoriocorrea quartzgrindingspecificrateofbreakagesjclassificationbydiscriminantanalysis |
_version_ |
1724710123932221440 |