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Customized knowledge discovery in databases methodology for the control of assembly systems
Journal article   Open access   Peer reviewed

Customized knowledge discovery in databases methodology for the control of assembly systems

Edoardo Storti, Laura Cattaneo, Adalberto Polenghi and Luca Fumagalli
Machines (Basel), Vol.6(4, December 2018), pp.1-21
2018
Scopus ID: 2-s2.0-85068467445
Web of Science ID: WOS:000455619900003

Abstract

Knowledge discovery in databases Industrial big data Assembly systems ARIMA Data Mining
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 applications to different lines of the assembly systems show the effectiveness of the customized KDD for the exploitation of production databases for the company, and for the spread of such a methodology to other companies too.
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https://doi.org/10.3390/machines6040045View
Published (Version of record) Open CC BY V4.0

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UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#9 Industry, Innovation and Infrastructure

Source: SDGs in the Output

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