Our Project

HUMAN CENTRIC PREFERENCE-BASED OPTIMIZATION

Many industrial processes are difficult to optimize due to the lack of performance indexdefinition, unavailability of sensors (and, indeed, measurements), and difficulties in setting up objective functions. In such scenarios, expert operators' knowledge drives the tuneup phase of the industrial processes/applications. Indeed, a programming-free approach to transfer such human knowledge to the production plant can be implemented to allow anyoperator to naturally/intuitively transfer his/her expertise to the target machine/robot.

The HCP-bO project exploits preference-based optimization algorithms to address such needs. By adopting such an approach, it is possible to train analgorithm by means of experiments performed by an expert operator, guiding theoptimization process. The optimization algorithm can then elaborate a machineconfiguration depending on different objective functions. The system provides suggestions to the human operator, assisting him/her in the optimization activities. In addition, an enhanced version of this algorithm (including both qualitative and quantitative optimization capabilities) will be developed to maximize the flexibility of the optimization toolbox.

The developed algorithms (SUPSI+Santer Reply SpA) will be tested in two relevant use cases: 

  • [Tec-Eurolab]: optimization of parameters of Industrial Computed Tomography scans;

  • [SMARTZAVOD]: optimization of polymer printing and automatic post-processing parameters for hybrid 3D printer.