Volltext-Downloads (blau) und Frontdoor-Views (grau)

Screening Process Mining and Value Stream Techniques on Industrial Manufacturing Processes: Process Modelling and Bottleneck Analysis

  • One major result of the Industrial Digitalization is the access to a large set of digitalized data and information, i.e. Big Data. The market of analytic tools offers a huge variety of algorithms and software to exploit big datasets. Implementing their advantages into one approach brings better results and empower possibilities for process analysis. Its application in the manufacturing industry requires a high level of effort and remains to be challenging due to product complexity, human-centric processes, and data quality. In this manuscript, the authors combine process mining and value streams methods for analyzing the data from the information management system, applying the approach to the data delivered by one specific manufacturing system. The manufacturing process to be examined is the process of assembling gas meters in the manufacture. This specific and important part of the whole supply-chain process was taken as suitable for the study due to almost full-automated line with data about each process activity of the value-stream in the information system. The paper applies process mining algorithms in discovering a descriptive process model that plays the main role as a basis for further analysis. At the same time, modern techniques of the bottleneck analysis are described, and two new comprehensible methods of bottlenecks detection (TimeLag and Confidence intervals methods), as well as their advantages, will be discussed. Achieved results can be subsequently used for other sources of big data and industrial-compliant Information Management Systems.

Export metadata

Additional Services

Search Google Scholar

Statistics

frontdoor_oas
Metadaten
Author:Julia RudnitckaiaORCiD, Hari Santhosh Venkatachalam, Roland Essmann, Tomáš Hruška, Armando Walter ColomboORCiD
DOI:https://doi.org/10.1109/ACCESS.2022.3152211
ISSN:2169-3536
Parent Title (English):IEEE Access
Publisher:Institute of Electrical and Electronics Engineers (IEEE)
Document Type:Article
Language:English
Year of Completion:2022
Release Date:2025/02/24
Tag:Bottleneck analysis; Information management system; Manufacturing process; Process mining; Process modelling
Volume:10
Pagenumber:12
First Page:24203
Last Page:24214
Institute:Fachbereich Technik
Research Focus Area:Industrielle Informatik