Projektlogo

BPM-I4.0 - Process mining for analyzing and prescribing industrial core processes

Overview

Nowadays, companies and their processes have to be adapted ever more quickly and flexibly. Process mining methods can create transparency and a better understanding of processes. Process mining makes it possible to identify, analyze and improve business processes based on data.

Up to now, process mining research has primarily focused on structured processes. Unstructured and knowledge-intensive processes such as product development or order processing in plant and mechanical engineering have received little attention to date. Many processes in individual and small batch production are not repeated frequently enough and are subject to customer and product-specific variants, meaning that the data volumes generated are comparatively small. Additional data must therefore be integrated into process mining and taken into account when interpreting the results.

The aim of the 'BPM-I4.0' project is the holistic development, implementation and evaluation of process mining methods for the analysis and prescriptive control of industrial core processes. To this end, methods and tools for the use of process mining in industry are to be developed. These methods consist of innovative procedures, concepts and algorithms that are to be prototypically designed, implemented, evaluated, processed and generalized in the product development and order processing processes of participating companies. The results achieved should enable the participating companies to significantly improve the quality of their core processes by analyzing their process data and to proactively control process execution in order to maintain and expand their competitiveness in the medium and long term.

Key Facts

Project duration:
04/2021 - 06/2023
Funded by:
MWIKE NRW
Website:
Homepage

More Information

Principal Investigators

contact-box image

Prof. Dr. Daniel Beverungen

Dekanat Wirtschaftswissenschaften

About the person
contact-box image

Prof. Dr. Oliver Müller

Wirtschaftsinformatik, insb. Data Analytics

About the person

Project Team

contact-box image

Dr. Christian Bartelheimer

Wirtschaftsinformatik, insb. Betriebliche Informationssysteme

About the person
contact-box image

Katharina Brennig, M.Sc.

Wirtschaftsinformatik, insb. Data Analytics

About the person
contact-box image

Bernd L?hr, M.Sc. (Winfo)

Wirtschaftsinformatik, insb. Betriebliche Informationssysteme

About the person

Cooperating Institutions

GEA Westfalia Separator Group GmbH

Cooperating Institution

Go to website

Weidmüller Interface GmbH & Co. KG

Cooperating Institution

Go to website

Contact Software GmbH

Cooperating Institution

Go to website

Contact

If you have any questions about this project, contact us!

Prof. Dr. Daniel Beverungen

Dekanat Wirtschaftswissenschaften

Professor - Prodekan - Prodekan für Prozesse und Kooperation

contact-box image
+49 5251 60-5600 Q2.313

Prof. Dr. Oliver Müller

Wirtschaftsinformatik, insb. Data Analytics

Professor - Leiter

contact-box image

Selected Publications

Text-Aware Predictive Process Monitoring of?Knowledge-Intensive Processes: Does Control Flow Matter?
K. Brennig, K. Benkert, B. L?hr, O. Müller, in: Business Process Management 365体育_足球比分网¥投注直播官网s, 2023.
A Process Mining Maturity Model: Enabling Organizations to Assess and Improve their Process Mining Activities
J. Brock, B. L?hr, K. Brennig, T. Seger, C. Bartelheimer, S. von Enzberg, A. Kühn, R. Dumitrescu, in: European Conference on Information Systems (ECIS), 2023.
Process Mining of Knowledge-Intensive Processes: An Action Design Research Study in Manufacturing
B. L?hr, K. Brennig, C. Bartelheimer, D. Beverungen, O. Müller, in: International Conference on Business Process Management, 2022.
Show all publications