ML4E: Machine Learned Models for Engineers

It is difficult to create complete physical models for complex technical systems. Even if this is possible, the computing power required for these models is often problematic. One alternative is models based on machine learning methods. In recent years, these have achieved astonishing success in predicting the behavior of such complex systems.

Even if no complete model of the system exists, engineers and scientists often have a good understanding of the physical and technical conditions underlying the systems.

However, this knowledge is not utilized by the black-box approach underlying classical ML models.

The goal of our group is to find hybrid ML approaches that utilize this knowledge to improve the quality of the predictions of these models.

In particular, we consider the question:

  • How can existing physical (sub)models be integrated?
  • How can domain knowledge be taken into account when training ML models?
  • How can a robust prediction be made despite sparse data?
  • How can hybrid models increase confidence in predictions?