Bosch Group

Renningen

Master Thesis on Data-Based Modelling of Electric Drives for Reinforcement Learning-Based Controller Design

FULL TIME ON-SITE MID
Posted 23 days ago

Summary

Role Overview

This thesis project focuses on developing an innovative electric drive model for direct switching controller design using reinforcement learning. The goal is to overcome performance gaps between simulated and real-world applications by creating a more sophisticated model.

Key Responsibilities

  • Conduct a comprehensive literature review on data-based modeling and control of electric drives.
  • Develop a concept for electric drive system excitation to generate training data.
  • Elaborate an electric drive model capturing switching behavior using physics-based and data-based techniques.
  • Train and evaluate a direct switching controller using reinforcement learning and developed models (optional).
  • Document all work thoroughly.
  • Systematically organize tasks and apply analytical thinking to solve complex problems.

Requirements Snapshot

  • Master's degree in Cybernetics, Computer Science, Engineering, Mathematics, or comparable.
  • Profound knowledge of machine learning and control theory.
  • Experience with Matlab/Simulink and Python, ideally in DL frameworks.
  • Ability to work autonomously and systematically.
  • Very good English language proficiency.

Expected Impact

The successful completion of this thesis is expected to result in an innovative electric drive model that enables the design of more sophisticated and efficient direct switching controllers using reinforcement learning, bridging the gap between simulation and real-world performance.

Why Apply

  • Opportunity to work on cutting-edge research in electric drive control and reinforcement learning.
  • Develop practical skills in advanced modeling and control techniques.
  • Contribute to the advancement of electric drive technology with a tangible research outcome.

This summary was generated from the original job posting (AI-assisted, human-reviewed). For full details, visit the company's site.