Classification methods have been widely used during last years in order to predict patterns and trends of interest in data. In present paper, a multiclassifier approach that combines the output of some of the most popular data mining algorithms is shown. The approach is based on voting criteria, by estimating the confidence distributions of each algorithm individually and combining them according to three different methods: confidence voting, weighted voting and majority voting. To illustrate its applicability in a real problem, the drill wear detection in machine-tool sector is addressed. In this study, the accuracy obtained by each isolated classifier is compared with the performance of the multiclassifier when characterizing the patterns...
This study presents machine learning models that forecast and categorize lost circulation severity p...
AbstractAn experimental approach is presented for the measurement of wear that is common in the thre...
In this study, we present machine learning classification models that forecast and categorize los...
Classification methods have been widely used during last years in order to predict patterns and tren...
AbstractProcess parameters of stone drilling with a small diameter twist drill were used to predict ...
AbstractMonitoring drill wear is a major topic in automated manufacturing operations. This paper pre...
This directory contains the raw data acquired by Mondragon Unibertsitatea during the execution of dr...
This research presents an analysis of real production data of an automatic drilling industrial syste...
This paper provides benchmarks for the identification of best performance classifiers for the detect...
Analytical models able to predict the tool wear can provide companies instruments to optimize the cu...
An experimental approach is presented for the measurement of wear that is common in the threading of...
Metal removing process is becoming increasingly more complex, demanding, and it experiences an unpre...
The rising demand for exacting performances from manufacturing systems has led to new challenges for...
A machine tool utilisation rate can be improved by an advanced condition monitoring system using mod...
When drilling in challenging formations the drill bit experiences wear to some extent, which may lea...
This study presents machine learning models that forecast and categorize lost circulation severity p...
AbstractAn experimental approach is presented for the measurement of wear that is common in the thre...
In this study, we present machine learning classification models that forecast and categorize los...
Classification methods have been widely used during last years in order to predict patterns and tren...
AbstractProcess parameters of stone drilling with a small diameter twist drill were used to predict ...
AbstractMonitoring drill wear is a major topic in automated manufacturing operations. This paper pre...
This directory contains the raw data acquired by Mondragon Unibertsitatea during the execution of dr...
This research presents an analysis of real production data of an automatic drilling industrial syste...
This paper provides benchmarks for the identification of best performance classifiers for the detect...
Analytical models able to predict the tool wear can provide companies instruments to optimize the cu...
An experimental approach is presented for the measurement of wear that is common in the threading of...
Metal removing process is becoming increasingly more complex, demanding, and it experiences an unpre...
The rising demand for exacting performances from manufacturing systems has led to new challenges for...
A machine tool utilisation rate can be improved by an advanced condition monitoring system using mod...
When drilling in challenging formations the drill bit experiences wear to some extent, which may lea...
This study presents machine learning models that forecast and categorize lost circulation severity p...
AbstractAn experimental approach is presented for the measurement of wear that is common in the thre...
In this study, we present machine learning classification models that forecast and categorize los...