Compagnie

KU LeuvenVoir plus

addressAdresseOude Markt 13 Louvain, Belgique
CatégorieEnseignement

Description de l'emploi

This vacancy refers to a PhD or a Post doc position (depending on expertise and profile) in the framework of an internal KU Leuven project on the topic of 3D printing (also called additive manufacturing) using Fused Filament Fabrication (FFF). The project is a close collaboration between the departments of Computer Science and Mechanical Engineering. The selected PhD candidate will therefore have promotors from the two departments, ensuring a true multi-disciplinary nature of the research. The objective is to research process monitoring and control via a combination of physical approaches and Artificial Intelligence (AI) methods towards adaptive 3D printing.
Description of the organizational unit.
Due to the nature of the research, the candidate will be active at KU Leuven on 2 different campuses (De Nayer and Bruges) and in 2 different departments (Mechanical Engineering and Computer Science). The promotors will be Prof. dr. ir. Eleonora Ferraris (eleonora.ferraris@kuleuven.be, +3215316944) from the AML group of the Mechanical Engineering department, campus De Nayer (https://iiw.kuleuven.be/onderzoek/aml/index.html ), and Prof. dr. Mathias Verbeke, (mathias.verbeke@kuleuven.be) from the M-Group, which gathers interdisciplinary expertise from the departments of Computer Science, Electrical and Mechanical Engineering, at the Bruges campus (https://iiw.kuleuven.be/onderzoek/m-group ). In case of a PhD trajectory, upon successful completion of the doctoral project, the candidate will obtain a PhD in Mechanical Engineering at the Faculty of Engineering Technology (https://iiw.kuleuven.be/english) of KU Leuven (http://www.kuleuven.be/kuleuven/).
Website unit

Project

Outline:

Fused Filament Fabrication (FFF) is one of the best known additive manufacturing techniques for the production of thermoplastics based components. It is based on material extrusion and it is thermal energy driven. In the Advanced Manufacturing Lab (AML) of KU Leuven, campus de Nayer, code enabling to predict and simulate the build temperature of FFF (Fused Filament Fabrication) printed parts has been developed [doi:10.1007/s40964-022-00271-0]. This code, which is named 'Temperature for Fused Filament Fabrication' (T4F3), has been successfully applied to predict critical reheating temperatures for high-quality and efficient printing of PLA (polylactic acid) [doi: 10.1016/j.cirp.2022.03.046] parts and to develop the first examples of adaptive printing strategies in FFF.


Content:

In this PhD project, we aim to develop a stand-alone tool “AF3 - Adaptive Fused Filament Fabrication”, which will generate adaptive tool paths/G-code for printing free form shapes efficiently, while maintaining consistent quality, regardless of the part design or the material. This will provide deep insights into the relations between thermal history and thermally driven failures. A combined physical and data-driven (machine learning-based) approach will be used to solve less evident physical relations. With AF3 we aim at a more efficient printing process and first-time-right outcomes, thus avoiding wasting material and energy. This will further improve the sustainability of the process.

Profile

  • A Master's degree in Science or Engineering with a background in Mechanical Engineering, Material Engineering, Chemical Engineering or Computer Science, or an equivalent Master’s degree.
  • The candidate preferably has a background both in Manufacturing and AI, but eagerness to learn is certainly just as important. Understanding thermal transfer mechanisms is considered an added value.
  • Graduation with distinction is a requirement to start the PhD
  • Proficiency with programming in Python or C++
  • Expertise in additive manufacturing with focus on fused filament fabrication (FFF) is a plus.
  • Being fluent in English (both speaking and writing) is a must
  • You are creative and a team worker
  • You are curious, and application driven with interest in science

Offer

  • Ph.D.fellowship for the duration of a maximum of 4 years at competitive salary.
  • or depending on expertise and profile a post-doctoral fellowship of a maximum of 3 years at competitive salary.
  • A challenging project with a very large industrial exploitation potential
  • A multidisciplinary training and working environment
  • A highly valued academic environment and multi-cultural working group

Interested?

For more information please contact Prof. Eleonora Ferraris, mail: eleonora.ferraris@kuleuven.be or  Prof. Mathias Verbeke, mail: mathias.verbeke@kuleuven.be or Mrs. Ann Witvrouw, mail: ann.witvrouw@kuleuven.be.

KU Leuven strives for an inclusive, respectful and socially safe environment. We embrace diversity among individuals and groups as an asset. Open dialogue and differences in perspective are essential for an ambitious research and educational environment. In our commitment to equal opportunity, we recognize the consequences of historical inequalities. We do not accept any form of discrimination based on, but not limited to, gender identity and expression, sexual orientation, age, ethnic or national background, skin colour, religious and philosophical diversity, neurodivergence, employment disability, health, or socioeconomic status. For questions about accessibility or support offered, we are happy to assist you at this email address.

Refer code: 2479909. KU Leuven - Le jour d'avant - 2024-01-17 18:07

KU Leuven

Oude Markt 13 Louvain, Belgique

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