Highly automated modern manufacturing processes are yielding large databases with records on hundreds of process variables and product characteristics. This large amount of information calls for new approaches to production process analysis. In this paper, we discuss why a data mining framework can be appropriate for this goal, and we propose a visual data mining strategy to mine large and high-dimensional off-line data sets. The strategy allows users to achieve a deeper process understanding through a set of linked interactive graphical devices, and is illustrated within an industrial process case study. Copyright © 2003 John "Wiley &Sons, Ltd
Developments in the field of data analytics provides a boost for small-sized factories. These factor...
Digitalization reshapes production in a sense that production processes are required to be more flex...
Large amount of data is collected in event logs from information systems, reflecting the actual exec...
Highly automated modern manufacturing processes are yielding large databases with records on hundred...
This paper proposes a data-driven procedure to improve productivity in make-to-stock manufacturing. ...
Large volumes of structured, semi-structured and unstructured data are produced daily by industrial ...
Purpose - Data mining (DM) is used to improve the performance of manufacturing quality control activ...
This paper presents a survey of quality improvement of various products in process industries and pr...
Process mining and visual analytics are two disciplines that emerged over the last decade. The goal ...
Advanced manufacturing such as aerospace, semi-conductor, and flat display device often involves com...
Process mining in manufacturing is a newly expanding field of research in the application of data mi...
Industry 4.0 determined the emergence of technologies that enable data-driven production planning an...
n the past decade, the analysis of data has faced the challenge of dealing with very large and compl...
Abstract In industries like steel production, interlinked production processes leave no time for ass...
Today’s manufacturing industry is shaped by the Industry 4.0 vision, which is to increase the number...
Developments in the field of data analytics provides a boost for small-sized factories. These factor...
Digitalization reshapes production in a sense that production processes are required to be more flex...
Large amount of data is collected in event logs from information systems, reflecting the actual exec...
Highly automated modern manufacturing processes are yielding large databases with records on hundred...
This paper proposes a data-driven procedure to improve productivity in make-to-stock manufacturing. ...
Large volumes of structured, semi-structured and unstructured data are produced daily by industrial ...
Purpose - Data mining (DM) is used to improve the performance of manufacturing quality control activ...
This paper presents a survey of quality improvement of various products in process industries and pr...
Process mining and visual analytics are two disciplines that emerged over the last decade. The goal ...
Advanced manufacturing such as aerospace, semi-conductor, and flat display device often involves com...
Process mining in manufacturing is a newly expanding field of research in the application of data mi...
Industry 4.0 determined the emergence of technologies that enable data-driven production planning an...
n the past decade, the analysis of data has faced the challenge of dealing with very large and compl...
Abstract In industries like steel production, interlinked production processes leave no time for ass...
Today’s manufacturing industry is shaped by the Industry 4.0 vision, which is to increase the number...
Developments in the field of data analytics provides a boost for small-sized factories. These factor...
Digitalization reshapes production in a sense that production processes are required to be more flex...
Large amount of data is collected in event logs from information systems, reflecting the actual exec...