Thesis Work: Offline Reinforcement Learning with Physics-Informed Data-Driven Models

ABB
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This Position reports to:
R&D Team Lead
Details
Your role and responsibilities
Advanced control solutions like Reinforcement Learning (RL) often rely on simulators that may not fully capture the real-world process due to noise, disturbances, or modeling limitations.
This thesis explores model-based offline RL, where the model is built using both physics knowledge and data. The work will investigate how we can refine physics-based simulators with data or embed physics knowledge using techniques from the area of Physics-Informed Machine Learning.
Goals:
Qualifications for the role
More about us
Supervisor Iga Pawlak, iga.pawlak@se.abb.com, will answer all your questions about the thesis topic and expectations. Recruiting Manager Linus Thrybom, +46 730 80 99 06, will answer your questions regarding hiring.
Positions are filled continuously. Please apply with your CV, academic transcripts, and a cover letter in English. We look forward to receiving your application!
Join us. Be part of the team where progress happens, industries transform, and your work shapes the world. Run What Runs the World.
A Future Opportunity
Please note that this position is part of our talent pipeline and not an active job opening at this time. By applying, you express your interest in future career opportunities with ABB.
We value people from different backgrounds. Could this be your story? Apply today or visit www.abb.com to learn more about us and see the impact of our work across the globe.
This Position reports to:
R&D Team Lead
Details
- Period: 5 months (January/February - June/July)
- Number of credits: 30 ECTS
- Number of students for this thesis work: 1
- Location: ABB Research Center (Västerås)
Your role and responsibilities
Advanced control solutions like Reinforcement Learning (RL) often rely on simulators that may not fully capture the real-world process due to noise, disturbances, or modeling limitations.
This thesis explores model-based offline RL, where the model is built using both physics knowledge and data. The work will investigate how we can refine physics-based simulators with data or embed physics knowledge using techniques from the area of Physics-Informed Machine Learning.
Goals:
- Review state-of-the-art model-based Reinforcement Learning approaches
- Investigate techniques in system identification, such as Physics-Informed Neural Networks and their applicability in real-world scenarios
- Develop and validate hybrid models using simulations or lab experiments
Qualifications for the role
- Master's student in Computer Science, Industrial Engineering, or a related field
- Background in Machine Learning, Control and Systems Engineering, or similar disciplines
- Motivation to solve real-world problems using state-of-the-art methods
- Good programming skills (Python)
- Self-driven and solution-oriented
More about us
Supervisor Iga Pawlak, iga.pawlak@se.abb.com, will answer all your questions about the thesis topic and expectations. Recruiting Manager Linus Thrybom, +46 730 80 99 06, will answer your questions regarding hiring.
Positions are filled continuously. Please apply with your CV, academic transcripts, and a cover letter in English. We look forward to receiving your application!
Join us. Be part of the team where progress happens, industries transform, and your work shapes the world. Run What Runs the World.
A Future Opportunity
Please note that this position is part of our talent pipeline and not an active job opening at this time. By applying, you express your interest in future career opportunities with ABB.
We value people from different backgrounds. Could this be your story? Apply today or visit www.abb.com to learn more about us and see the impact of our work across the globe.
JOB SUMMARY
Thesis Work: Offline Reinforcement Learning with Physics-Informed Data-Driven Models

ABB
Vasteras
7 days ago
N/A
Full-time
Thesis Work: Offline Reinforcement Learning with Physics-Informed Data-Driven Models