Postdoc on Machine Learning-Enhanced CFD for Wind-Energy Aerodynamic Optimization
Role details
Job location
Tech stack
Job description
This research focuses on advancing cutting-edge aerodynamic design methodologies to significantly enhance wind energy harvesting in urban settings. The primary objective is to develop a high-fidelity CFD-machine learning (CFD-ML) framework capable of efficiently analyzing and optimizing rooftop aerodynamic duct structures for building-integrated wind energy systems. The aim is to push the boundaries of current technology by identifying optimal aerodynamic configurations that maximize wind capture efficiency and mitigate turbulence under diverse urban layouts and meteorological conditions. To achieve this, the project explores advanced machine learning approaches, including surrogate modeling and reinforcement learning, to accelerate CFD optimization and enable adaptive control strategies for complex urban wind conditions. From an industrial standpoint, the objective is to deliver a cost-effective and efficient solution that facilitates continuous decentralized power generation in densely populated urban areas.
The research outcomes are expected to contribute to both fundamental scientific knowledge and practical innovations in renewable energy. In close collaboration with IBIS Power, the project will contribute to the further development of PowerNEST, a modular rooftop system that integrates wind and solar energy. At this stage, the focus is on optimizing the aerodynamic design of the PowerNEST duct structure, which accelerates and guides the airflow toward the integrated turbines. The turbines are represented using simplified actuator models and are not explicitly included in the optimization process. This project will play a key role in translating advanced CFD-ML methodologies into practical design and control strategies, helping unlock the full potential of urban wind energy integration. The selected candidate will be affiliated with Eindhoven University of Technology (TU/e) in the Netherlands, with active engagement in the Eindhoven Institute for Renewable Energy Systems (EIRES) initiatives., A meaningful job in a dynamic and ambitious university, in an interdisciplinary setting and within an international network. You will work on a beautiful, green campus within walking distance of the central train station. In addition, we offer you:
- A contract for 1 year for 1,0 fte, with good future perspectives.
- Salary in accordance with the Collective Labour Agreement for Dutch Universities, scale 10 (min. € 4,241 max. € 5,538).
- A year-end bonus of 8.3% and annual vacation pay of 8%.
- High-quality training programs on general skills, didactics and topics related to research and valorization.
- An excellent technical infrastructure, on-campus children's day care and sports facilities.
- Partially paid parental leave and an allowance for commuting, working from home and internet costs.
- A TU/e Postdoc Association that helps you to build a stronger and broader academic and personal network, and offers tailored support, training and workshops.
- A Staff Immigration Team is available for international candidates, as are a tax compensation scheme (the 30% facility) and a compensation for moving expenses.
Requirements
Do you have experience in Research?, Do you have a Master's degree?, Are you an innovative researcher with a strong background in CFD, scientific machine learning (ML), wind energy, and advanced optimization? Join our team to develop cutting-edge solutions for aerodynamic design optimization of wind energy systems in complex urban environments., * A PhD degree in Aerospace Engineering, Mechanical Engineering, or a related engineering discipline.
- Solid knowledge of fluid mechanics, computational fluid dynamics (CFD), and optimization using machine learning techniques.
- A team player who enjoys coaching PhD and Master's students and working in a dynamic, interdisciplinary team.
- A proven ability to manage complex projects to completion on schedule.
- Excellent (written and verbal) proficiency in English, good communication and leadership skills., * Copy of the candidate's PhD Thesis (in English, or in the original language accompanied by an English abstract or summary).