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PhD Position / Research Assistant (f/m/d) - Analysis for lidar-based minute-scale power forecas[...]

Internetchemie

Oldenburg

Hybrid

EUR 40.000 - 60.000

Vollzeit

Gestern
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Zusammenfassung

A leading research university offers a PhD position for a Research Assistant to focus on lidar-based forecasting of offshore wind farms. The role involves handling large datasets, developing forecasting methods, and presenting findings. Candidates should have a Master’s degree in a relevant field and strong programming skills, particularly in Python. The position includes benefits like flexible work arrangements and support for a scientific career. Applications are due by 31.01.2026 and can be submitted electronically.

Leistungen

Flexible working hours
30 days vacation
Further training opportunities
Company pension scheme
Health management

Qualifikationen

  • Degree in Physical Science, Mechanical or Aerospace Engineering, Renewable Energy or equivalent.
  • Experience in large data sets handling and analysis.
  • Skills in measurement techniques and uncertainty estimation.

Aufgaben

  • Process data by combining multiple datasets.
  • Develop forecasting methods and validate algorithms.
  • Analyse forecast uncertainties and develop mitigation methods.
  • Support offshore measurement campaigns.
  • Present scientific results at conferences.

Kenntnisse

Data analysis skills
Machine learning knowledge
Programming in Python
Measurement techniques
Fluent in English

Ausbildung

Master’s degree in Physical Science, Engineering or equivalent

Tools

Python
Statistical analysis tools
Jobbeschreibung
PhD Position / Research Assistant (f/m/d) – Analysis for lidar-based minute-scale power forecasting of Offshore Wind Farms

The increasing share of renewable energy in today’s energy system drives the need for continuous power forecasts at the minute scale. Such forecasts are important for ensuring grid stability, reducing costs associated with feed‑in management, and supporting electricity trading.

Your tasks

We use scanning Doppler wind lidars to characterise the inflow several kilometres ahead of offshore wind farms, enabling reliable forecasting of wind turbine power for up to 30 minutes. The accurate prediction of so‑called “wind ramps”, i.e. strong and sudden changes in wind speed or direction, is particularly crucial. To make lidar‑based forecasts more practical for industrial applications, they need further development, particularly concerning the forecast horizon, measurement setup, measurement trajectories, and the prediction of wind farm effects.

Among others, your tasks will comprise:

  • processing large amounts of data by combining lidar measurements, meteorological information, and operational data from wind farms
  • further developing forecasting methods and implementing and validating the developed forecasting algorithms (physics‑based and physics‑informed machine learning) for real‑time applications
  • analysing the uncertainty of input data and forecasts and developing methods to mitigate or account for these uncertainties
  • supporting the operation of extensive offshore measurement campaigns
  • presenting scientific results at international conferences and through peer‑reviewed publications to extend your specific network
  • cooperating closely with the researchers at ForWind and the other industrial and scientific partners in different research projects
Your profile

Requirements for employment include:

  • a qualifying university master’s degree in Physical Science, Mechanical or Aerospace Engineering, Renewable Energy or equivalent
  • profound knowledge and relevant experience in handling and analysing large data sets and statistical analysis
  • comprehensive skills with measurement techniques and uncertainty estimation
  • knowledge in forecasting methods and machine learning
  • extensive experience in programming with Python
  • high motivation and the ability to work jointly on a complex research topic
  • fluency in communicating and reporting in English
Your benefits

We offer you the opportunity to develop your scientific career in a young and lively academic environment. You will be working in the WindLab – one of the university’s most modern office and lab spaces – while you will also have the opportunity to do flexible and mobile work. Your pathway towards the PhD is actively supported by, e.g.

  • multidisciplinary cooperation with other researchers at ForWind and Fraunhofer IWES in Oldenburg
  • direct collaboration with industry while maintaining the links with our national and international partners in academia, including a PhD network
  • optional secondment at an international research institute
  • development of personal, scientific, and teaching skills through an individual training programme and selected teaching tasks
  • opportunities to present scientific results at international conferences and through peer‑reviewed publications to extend your specific network
  • structured supervision of the PhD process

Further, the university fosters a family‑friendly working environment and offers a family service centre and on‑campus children’s daycare.

Employment is initially limited to three years. The payment is based on the collective agreement for the public service in the German federal states, TV‑L E13, for a 75 % position.

Our standards

The Carl von Ossietzky Universität Oldenburg is dedicated to increasing the percentage of female employees in the field of science. Therefore, female candidates are strongly encouraged to apply. In accordance with § 21 Section 3 NHG, female candidates with equal qualifications will be preferentially considered.

  • Applicants with disabilities will be given preference in case of equal qualification
Further benefits
  • Secure remuneration according to collective agreement
  • 30 days vacation
  • Company pension scheme
  • Further training opportunities
  • Flexible working hours
  • Health management
  • Mobile workingCompatibility of career and family
Further information on the research environment

Wind energy research at the Carl von Ossietzky Universität Oldenburg has gained international recognition by its integration into ForWind – Center for Wind Energy Research of the Universities of Oldenburg, Hannover and Bremen and the national Wind Energy Research Alliance of the German Aerospace Center (DLR), Fraunhofer Institute for Wind Energy Systems (IWES) and ForWind. At ForWind, we value and maintain collaboration between our research groups and partner institutions, including members of the European Academy of Wind Energy. In Oldenburg, our 50 researchers from physics, meteorology, and engineering are collaborating at the Research Laboratory for Turbulence and Wind Energy Systems, which is centred on wind physics. Our mission is to develop a deeper understanding of the atmospheric and wind power plant flow physics required to meet the global demand for clean, affordable electricity. Therefore, we conduct laboratory experiments, free‑field measurements and HPC‑based numerical simulations. The main topics include the description and modelling of wind turbulence, the analysis of interactions of turbulent atmospheric wind flow and wind energy systems, as well as the control of wind turbines and wind farms. The covered scales range from small‑scale turbulence up to meteorological phenomena. Our research facilities comprise three turbulent wind tunnels, various equipment for free‑field measurements at on‑ and offshore wind farms and a high‑performance computing cluster. Almost all our projects combine analyses at more than one of these infrastructures. For instance, virtual lidar measurements can be performed in simulated three‑dimensional flow fields to verify the analysis algorithms. Our multi‑lidar systems, equipped with up to three scanning lidars, are particularly important for the abovementioned research.

Further information is available at www.forwind.de/en/ and https://uol.de/en/physics/research/we-sys.

For questions regarding this job opportunity, please contact Prof. Dr. Martin Kühn at +49(0)441/798-5061 or preferably by email at martin.kuehn@uni-oldenburg.de.

Contact

Please submit your application via email by 31.01.2026 to application.wesys@uni-oldenburg.de.

Please submit your application electronically as one PDF file to the University of Oldenburg, Faculty V, Institute of Physics, ForWind - Center for Wind Energy Research, Research Group Wind Energy Systems, Prof. Dr. Martin Kühn, Kükersweg 70, 26129 Oldenburg, Germany and include reference #ACA125.

The PDF file must include either in English or German:

  • a letter motivating your application
  • curriculum vitae
  • grade transcripts and BSc/MSc diplomas
  • employment references

A second PDF file containing your Master’s Thesis and relevant research papers (if available) is an optional attachment.

We are looking forward to receiving your application.

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