Options
Data source taxonomy for supply network structure visibility
Citation Link: https://doi.org/10.15480/882.1472
Publikationstyp
Conference Paper
Date Issued
2017-10
Sprache
English
TORE-DOI
First published in
Proceedings of the Hamburg International Conference of Logistics (HICL);23
Number in series
23
Start Page
117
End Page
137
Citation
Digitalization in supply chain management and logistics
Contribution to Conference
Publisher Link
Publisher
epubli
The supply network structure of manufacturers is complex and non-transparent. In order to achieve a higher visibility and consequently increase the performance, the existing lack of data has to be closed. This paper answers the questions, how to identify, describe and compare suitable data sources for an end-to-end visibility. Following the design science research process, two artifacts are developed based on conceptual-to-empirical approaches. The initial conceptualizations result from literature reviews. The conceptual representation of supply network structure data sources clarifies the relevant data entities and attributes. It supports the identification process of relevant data sources. The data source taxonomy (i.e. classification scheme) describes data sources using fourteen dimensions and up to four potential characteristics. It assists a standardized description. Both artifacts are demonstrated in case studies with German automotive Original Equipment Manufacturers. The findings add to the knowledge base of supply network visibility with a focus on the network structure. A large part of the existing literature about supply chain visibility is too vague on the data perspective. Therefore, this paper closes an important gap regarding the supply chain digitalization by introducing two applicable results, which enable a new course of action for practitioners and researchers.
Subjects
data source taxonomy
supply chain visibility
supply network structure
design science research
DDC Class
330: Wirtschaft
Loading...
Name
zrenner_hassan_otto_gomez__supply_network_hicl_2017.pdf
Size
605.41 KB
Format
Adobe PDF