The advent of Industry 4.0 has brought to extremely powerful data collection possibilities. Despite this, the potential contained in databases is often partially exploited, especially focusing on the manufacturing field. There are several root causes of this paradox, but the crucial one is the absence of a well-established and standardized Industrial Big Data Analytics procedure, in particular for the application within the assembly systems. This work aims to develop a customized Knowledge Discovery in Databases (KDD) procedure for its application within the assembly department of Bosch VHIT S.p.A., active in the automotive industry. The work is focused on the data mining phase of the KDD process, where ARIMA method is used. Various applica...
Turbulent business environments force enterprises to ever faster answers and adaptions in order to s...
Turbulent business environments force enterprises to ever faster answers and adaptions in order to s...
The quality and reliability requirements for next-generation manufacturing are reviewed, and current...
The advent of Industry 4.0 has brought to extremely powerful data collection possibilities. Despite ...
AbstractThe objective of this research is to provide decision support to assembly line planners when...
Recently due to the explosion in the data field, there is a great interest in the data science areas...
AbstractManufacturing industry has been progressively using digital tools for product development an...
Businesses have large data stored in databases and data warehouses that is beyond the scope of tradi...
The monograph proposes a suitable process application for a knowledge discovery process in industry ...
In modern manufacturing environments, vast amounts of data are collected in database management syst...
Knowledge Discovery in Databases (KDD), as any organizational process, is carried out beneath a Know...
The thesis "Actual role of knowledge discovery in databases˝ is concerned with churn prediction in m...
In recent years manufacturing enterprises are increasingly automated and collect and store large qua...
Modern manufacturing systems equipped with computerized data logging systems collect large volumes o...
Knowledge may be discovered from various sources of information. Knowledge Discovery in Database (KD...
Turbulent business environments force enterprises to ever faster answers and adaptions in order to s...
Turbulent business environments force enterprises to ever faster answers and adaptions in order to s...
The quality and reliability requirements for next-generation manufacturing are reviewed, and current...
The advent of Industry 4.0 has brought to extremely powerful data collection possibilities. Despite ...
AbstractThe objective of this research is to provide decision support to assembly line planners when...
Recently due to the explosion in the data field, there is a great interest in the data science areas...
AbstractManufacturing industry has been progressively using digital tools for product development an...
Businesses have large data stored in databases and data warehouses that is beyond the scope of tradi...
The monograph proposes a suitable process application for a knowledge discovery process in industry ...
In modern manufacturing environments, vast amounts of data are collected in database management syst...
Knowledge Discovery in Databases (KDD), as any organizational process, is carried out beneath a Know...
The thesis "Actual role of knowledge discovery in databases˝ is concerned with churn prediction in m...
In recent years manufacturing enterprises are increasingly automated and collect and store large qua...
Modern manufacturing systems equipped with computerized data logging systems collect large volumes o...
Knowledge may be discovered from various sources of information. Knowledge Discovery in Database (KD...
Turbulent business environments force enterprises to ever faster answers and adaptions in order to s...
Turbulent business environments force enterprises to ever faster answers and adaptions in order to s...
The quality and reliability requirements for next-generation manufacturing are reviewed, and current...