INTERNSHIP DETAILS

Internship: Physics enhanced machine learning for vibration prediction of wind turbine gearboxes

CompanyZF Group
LocationAntwerp
Work ModeOn Site
PostedMarch 27, 2026
Internship Information
Core Responsibilities
Interns will simulate the dynamic behavior of gearboxes using data-driven and physics-based models, and research new techniques to enhance these models. They will also evaluate developed approaches and implement Gearbox Digital Twin functionality.
Internship Type
full time
Company Size
61434
Visa Sponsorship
No
Language
English
Working Hours
40 hours
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About The Company
ZF is a global technology company supplying advanced mobility products and systems for passenger cars, commercial vehicles and industrial technology. Its comprehensive product range is primarily aimed at vehicle manufacturers, mobility providers and start-up companies in the fields of transportation and mobility. ZF electrifies a wide range of vehicle types. With its products, the company contributes to reducing emissions, protecting the climate as well as enhancing safe mobility. Alongside the automotive sector – passenger cars and commercial vehicles – ZF also serves market segments such as construction and agricultural machinery, wind power, marine propulsion, rail drives and test systems. With some 153,000 employees worldwide, ZF reported sales of €38.8 billion in fiscal year 2025. The company operates 162 production locations in 29 countries. For further press information and photos please visit: www.zf.com Imprint: https://www.zf.com/site/meta/en/imprint.html Data Protection: https://www.zf.com/master/media/en/corporate/m_zf_com/meta/data_protection_social_media/Data_Protection_Notice_Social_Media_EN.pdf
About the Role

Req ID 79252 | Antwerpen, Belgium, ZF Wind Power Antwerpen NV

  

What´s Next? Join ZF!

 

ZF Wind Power is a division of ZF Friedrichshafen AG that specializes in designing and manufacturing gear systems for wind turbines. Together with its partners, it develops, unique gearbox designs and services to guarantee the highest quality at competitive costs.

Advanced technology and service solutions contribute to the transformation of the global energy system, in which reliable, robust & efficient products and systems conserve precious resources. This way we empower a sustainable future together with our partners.

 

It is time to take the right path into your future. With ZF, a leading global technology group.

We are looking for interns for ZF Wind Power in our location in Antwerp, starting as soon as possible for the next six months.

 

Your tasks as an intern in the noise and vibration research and development team:

  • Simulation of dynamic behavior of gearboxes using data driven (mach. learning) & physics based (multi-body) models.
  • Research on new techniques to enhance data driven models with physical knowledge or vice versa.
  • Evaluation of developed approaches with respect to their robustness and potential for generalization.
  • Implementation of Gearbox Digital Twin functionality and automated calculation tools for gearboxes

 

Your profile as an intern in the noise and vibration research and development team:

  • Study in Mechanical Engineering (major), with a specialization in Data Science or comparable field of study.
  • Programming skills (Python), first experience with machine learning and very good English skills.
  • Basic knowledge of drive train and gear technology is an advantage.
  • Basic knowledge and/or first experience with multi-body modelling is an advantage
  • Team spirit, analytical skills, quick comprehension, solution-oriented and independent working style.

 

Find out more: www.zf.com/windpower 

 

Be part of our ZF team as Internship: Physics enhanced machine learning for vibration prediction of wind turbine gearboxes and apply now!

Contact

Helena Paul

+49 7541 77 969121

Key Skills
Mechanical EngineeringData SciencePythonMachine LearningDrive Train TechnologyGear TechnologyMulti-body ModellingAnalytical SkillsSolution-orientedIndependent Working Style