Options
Influence of patterns and data-analytics on production logistics
Citation Link: https://doi.org/10.15480/882.1460
Publikationstyp
Conference Paper
Publikationsdatum
2017-10
Sprache
English
First published in
Proceedings of the Hamburg International Conference of Logistics (HICL);23
Number in series
23
Start Page
233
End Page
254
Citation
Digitalization in supply chain management and logistics
Contribution to Conference
Publisher Link
Publisher
epubli
The flow of information is an essential part of Industry 4.0, as more reliable process data is available and subsequent hardware changes provide for processing power to enable large-scale data analysis. Due to the fact that most data analytics and big data frameworks presume that Data-Mining- and Data-Analytics-Activities are conducted in form of projects, this paper focuses on the integration of data analytics and data mining into operational processes and the resulting consequences of the organization. Therefore a framework to implement data analytics workflows in production logistics to improve decision-making and processes is presented. By integrating data analytics workflows in production logistics applying the presented framework, more resources can be devoted to proactively discover and counteract possible bottlenecks or constrictions instead of resorting to firefighting and taskforce-activities. The methodology to derive such framework consists of developing and implementing data analytics use-cases along the supply chain in production logistics according to current big-data and data-analytics frameworks in cooperation with a large automotive supplier and modifying current
frameworks and approaches to fit the company’s requirements.
frameworks and approaches to fit the company’s requirements.
Schlagworte
knowledge discovery in database
data analytics
process model
supply chain analytics
DDC Class
330: Wirtschaft
Loading...
Name
kormann_altendorfer-kaiser_patterns_data-analytics_hicl_2017.pdf
Size
643.96 KB
Format
Adobe PDF