Options
Product lifecycle optimization by application of process mining
Citation Link: https://doi.org/10.15480/882.3127
Publikationstyp
Conference Paper
Date Issued
2020-09-23
Sprache
English
Author(s)
Herausgeber*innen
TORE-DOI
TORE-URI
First published in
Number in series
29
Start Page
295
End Page
315
Citation
Hamburg International Conference of Logistics (HICL) 29: 295-315 (2020)
Contribution to Conference
Publisher
epubli
Purpose: Active product life cycle management contributes to supply chain optimi-zation. However, in nowadays industry the high number of variants and backward loops complicate tracing the entire product lifecycle in an ERP system. Conse-quently, product lifecycle and corresponding process-organizational optimizations are difficult to implement using established analysis. The aim is to challenge process mining as an alternative to address these aspects. Methodology: This paper, therefore, applies process mining to the ERP data of a component manufacturer in the metalworking industry. For this purpose, optimiza-tion potentials are derived from a literature research and subsequently validated by the application of process mining. Thereby, the data sample comprises 202 products with 15,000 corresponding activities, which were accumulated in the period 2017 to 2019. Findings: Process mining reveals the product lifecycles and allows to take different analysis perspectives, such as a market or product category view. Firstly, potentials in a variant-driven business for PLM will be elaborated. Secondly, process-organiza-tional recommendations for the product management are developed. Thus, this pa-per offers a concrete approach to mapping and analyzing the product lifecycle by application of process mining. Originality: On the one hand, current analysis tools used in ERP systems merely as-sess the products actual status. On the other hand, PLM systems are regarded as costly due to the complexity but also a continuous process view is not its main focus. Nevertheless, there is little literature on alternatively using process mining in this context.
Subjects
Logistics
Industry 4.0
Digitalization
Innovation
Supply Chain Management
Artificial Intelligence
Data Science
DDC Class
330: Wirtschaft
380: Handel, Kommunikation, Verkehr
Publication version
publishedVersion
Loading...
Name
Messner and Dirnberger (2020) - Product Lifecycle Optimization by Application of Process Mining.pdf
Size
1.09 MB
Format
Adobe PDF