Autor: Christopher Borgmann

Motion-Mining Compared to Traditional Lean Tools

Motion-Mining Compared to Traditional Lean Tools

Sensor-supported analysis of manual processes in manufacturing and logistics
Hendrik Appelhans, Christopher Borgmann, Carsten Feldmann
Motion-Mining® is a technology that uses motion sensors and pattern recognition to enable automated process mapping and analysis of manual work. This article evaluates the advantages and limitations of its use in manufacturing and logistics processes. To this end, Motion-Mining® is compared with traditional lean management tools used to analyze manual activities. Experiences derived from four use cases provide decision support for selecting the appropriate method for a specific use case.
Industry 4.0 Science | Volume 40 | Edition 2 | Pages 24-31
Levelling Production in the Process Industry with the Product Wheel

Levelling Production in the Process Industry with the Product Wheel

Vorgehensmodell, Erfolgsfaktoren und Case Study
Christopher Borgmann, Carsten Feldmann
Volatility in market demand leads to temporary over- and under-utilization of production assets and stocks. Levelling (heijunka) as a lean method aims at de-coupling production from market volatility. The production program is spread as even as possible over time. This achieves high asset utilization, short lead times, and low inventories. There are validated heijunka methods for the manufacturing industry, but for the process industry this remains a research gap. This article describes the Product Wheel and its validation at a building material manufacturer in order to close that gap.
Industrie 4.0 Management | Volume 36 | 2020 | Edition 5 | Pages 33-37
Levelling Production in the Process Industry

Levelling Production in the Process Industry

An Innovative Concept
Christopher Borgmann, Carsten Feldmann, Linus Hahn
There is a variety of empirically validated methods for implementing pull-systems in the manufacturing industry, but pull-based replenishment for the process industry remains a research gap. This article describes the development of a model for implementing a pull-system for an intracompany production network in the process industry and its validation in a case company.
Industrie 4.0 Management | Volume 33 | 2017 | Edition 5 | Pages 12-16