Development of a data-driven model for the evaluation and optimization of process robustness in the design of deep-drawing tools

In industrial deep drawing processes, stochastic fluctuations and disturbances of the manufacturing conditions occur, which can cause uncontrolled deterioration of the product properties. The immunity to these negative influences is referred to as robustness. Robustness in deep drawing can be assessed by sensors integrated into the press line. This generates extensive amounts of data that have potential to be used for machine learning modelling and for analysing complex interactions. The field of explainable AI, which serves to explain such data-driven models is becoming increasingly relevant.

Team

  • Prof. Dr.-Ing. Noomane Ben Khalifa
  • Christine Heinzel, M.Sc.