FraunhoferFraunhoferICNAPICNAP

ICNAP Login

The image features a manufacturing environment with a male worker in a blue overalls and white shirt operating a control panel. He wears ear protection and safety glasses. On the left side, there are text blocks describing processes such as "Return of parameter sets and optimization results" and "Configuration of the experimental design..." separated by graphics. The center presents a graphical representation of "Multi-Objective Bayesian Optimization," depicting an objective function curve with shaded areas indicating variation. Below, there are categorized sections outlining 'Educt Parameters', 'Process Parameters', and a 'Production Process' with diagrams. The bottom right displays a panel listing aspects of 'Process Assessment' including 'Product Quality', 'Energy Consumption', and 'Water Consumption'. The color palette includes blue, black, and white, emphasizing the technical nature of the content.

evolve – Cost-efficient Optimization of Production Processes via Multi-objective Bayesian Optimization


Summary

The Evolve project developed a software application for process optimization using Bayesian Optimization, targeting two use cases: ultrashort pulse laser structuring and plant suspension cell cultivation in bioreactors. The software aims to minimize production time and surface roughness in laser structuring, and to optimize nutrient consumption, growth rate, and biomass yield in cell cultivation. Emphasizing multi-objective optimization and usability in production engineering, the software reduced the number of required experiments and improved parameter configurability and result plausibility. The project will next focus on incorporating disturbance variables and tailoring the Bayesian algorithm and objective functions to specific processes.

Topic Fields
Sensor SystemsData Analytics
Published2023
Involved Institutes
Project TypeICNAP Research/Transfer Project
Result Type
Responsibles

© Fraunhofer 2025

ContactTerms of useData ProtectionEditorial Notes