Digital Twin for Optimizing Material Flows in Logistics Facilities

The Campus 2030+ initiative at Endress+Hauser SE+Co. KG, a strategic investment program aimed at modernizing production and logistics infrastructure, forms the practical motivation for this thesis. In increasingly dynamic and data-driven manufacturing environments, internal logistics systems must support flexible planning, transparency and tighter integration with production processes. Traditional material-flow simulation approaches, however, often rely on static models and fragmented data sources, limiting their suitability for iterative planning and decision support.

Probst, Hanna, 2025

Type of Thesis Master Thesis
Client
Supervisor Ehrenthal, Joachim
Views: 3
Studyprogram: Business Information Systems (Master)
Keywords
Confidentiality: vertraulich
Type of Thesis
Master Thesis
Authors
Probst, Hanna
Supervisor
Ehrenthal, Joachim
Publication Year
2025
Thesis Language
English
Confidentiality
Confidential
Studyprogram
Business Information Systems (Master)
Location
Olten