Magnet.me - Het slimme netwerk waar studenten en professionals hun stage of baan vinden.
Het slimme netwerk waar studenten en professionals hun stage of baan vinden.
Je carrière begint op Magnet.me
Maak een profiel aan en ontvang slimme aanbevelingen op basis van je gelikete vacatures.
In the world of modern high-tech manufacturing, increasing demand on system performance translates into an increasing need for flexibility and precision on all levels, including robotic control and machine logistics, and leads to increased complexity.
About this position
With the old methods of hand-crafted modelling of machine logistics struggling to keep up with such requirements, formal modelling frameworks of machine logistics such as LSAT or dataflow graphs have become a valuable tool for design engineers.
Yet, current models do not account for the inherent uncertainty of real-world processes, e.g. timing variations or unplanned maintenance, which forces designers to rely on heuristics and make compromises such as designing for worst case scenario. Significant performance could thus be gained by accounting for the system’s uncertainty sources and tracking how this uncertainty propagates, for example, by computing how unexpected delays affect the timing of successive actions and the length of the production cycle.
In a model-based design of a machine’s logistics, such as those captured as LSAT or dataflow models, the scheduling of actions within given activities links closely to activity graphs found in standardized modeling languages like UML/SysML. Computing the start and end-times of nodes in such activity graphs is a key step towards analyzing the overall productivity of a flexible manufacturing system. In this project, the intern will develop and implement algorithms for the computation of timings with stochastic machine behavior.
Depending on the intern’s preference and expertise, the project may explore different approaches to compute the stochastic timing behavior of activity graphs such as MCMC sampling, importance sampling, and extreme value theory.
What we expect from you
A background in electrical engineering, applied mathematics or computer science is preferable. Knowledge of probability theory, stochastic processes and/or model-based design is also strongly suggested.
The internship will take place at TNO-ESI under a TNO internship contract.
What you'll get in return
You want an internship opportunity on the precursor of your career; an internship gives you an opportunity to take a good look at your prospective future employer. TNO goes a step further. It’s not just looking that interests us; you and your knowledge are essential to our innovation. That’s why we attach a great deal of value to your personal and professional development. You will, of course, be properly supervised during your work placement and be given the scope for you to get the best out of yourself. Furthermore, we provide:
TNO as an employer
At TNO, we innovate for a healthier, safer and more sustainable life. And for a strong economy. Since 1932, we have been making knowledge and technology available for the common good. We find each other in wonder and ingenuity. We are driven to push boundaries. There is all the space and support for your talent and ambition. You work with people who will challenge you: who inspire you and want to learn from you. Our state-of-the-art facilities are there to realize your vision. What you do at TNO matters: impact makes the difference. Because with every innovation you contribute to tomorrow’s world.
At TNO we encourage an inclusive work environment, where you can be yourself. Whatever your story and whatever unique qualities you bring to the table. It is by combining our unique strengths and perspectives that we are able to develop innovations that make a real difference in society.
More information about this vacancy?
Innovation with purpose: that is what TNO stands for. We develop knowledge not for its own sake, but for practical application. TNO connects people and knowledge to create innovations that boost the competitive strength of industry and the well-being of society in a sustainable way.
Resources:
Change language to: English
Deze pagina is geoptimaliseerd voor mensen uit Nederland. Bekijk de versie geoptimaliseerd voor mensen uit het Verenigd Koninkrijk.