PhD in Deep Learning for Acoustic Diagnostics and Prognostics of Complex Systems 100 %
PhD in Deep Learning for Acoustic Diagnostics and Prognostics of Complex Systems 100 %

PhD in Deep Learning for Acoustic Diagnostics and Prognostics of Complex Systems 100 %

Winterthur Vollzeit Kein Home Office möglich
ZHAW Zürcher Hochschule für Angewandte...

Are you excited to contribute to state-of-the-art research in data science and machine learning? Are you equally excited to see your research results implemented in industry? Are you fascinated by understanding engineered technical machines and combining this with deep learning techniques? School: School of Engineering Starting date: 1.9.2024 Your role In collaboration with the Aerospace Structures & Materials (ASM) Department at the Delft University of Technology (TU Delft) and the company Hitachi Energy, we are now looking for an outstanding Ph.D. student. The focus of the Ph.D. will be on physics-informed deep learning algorithms for acoustic diagnostics and prognostics of complex systems. This includes exploring how novel neural network algorithms can exploit physics and engineering knowledge of the system together with available acoustic data to improve acoustic diagnostics and prognostics. You will develop innovative approaches using state of the art statistical, machine learning and deep learning methods algorithms for detection, diagnostics and prognostics of incipient failures in industrial assets. You will combine engineering knowledge with data-science techniques (physics-informed machine learning). You will closely collaborate with our industry partners in order to implement your algorithms in the operational environment. The focus of your work will be on algorithm research and development, with relatively little data management/engineering. You will have the opportunity to co-supervise student research projects. You will be supported by experienced colleagues from the team in order to further develop your technical and scientific skills. Your daily work will typically allow for a high level of flexibility and freedom. The Ph.D. project will be part of a research project funded for max. 4 years. As part of our team, you will enjoy an exciting and rewarding international working environment, combining close industrial collaboration with multidisciplinary innovative research. The compensation will be according to the guidelines of the Swiss National Science Foundation ( The supervision of this Ph.D. project will be carried out by Dr. Manuel Arias Chao at the ZHAW and the Air Transport & Operations (ATO) group at TU Delft. The promotor of the PhD is Prof. Dr. Dimitrios Zarouchas from the Aerospace Structures & Materials Department at TU Delft. Upon successful completion of the PhD program, the doctoral degree will be awarded by the Delft University of Technology. Your profile You have a master degree in engineering, physics, computer science, statistics, applied mathematics or a related discipline. You have programming experience in Python. Experience with TensorFlow and PyTorch is an advantage. You have experience with applying data analytical and machine learning methods. Experience with deep leaning algorithms is advantageous. You have high oral and written communication skills in English. You are curious to learn and develop new methods and algorithms and apply them in real industrial systems. You are motivated to develop your personal research skills, coached by experienced researchers. We encourage applications from proactive and self-motivated candidates with analytical thinking and strong problem-solving passion and abilities, good communication skills and original thinking. #J-18808-Ljbffr

ZHAW Zürcher Hochschule für Angewandte...

Kontaktperson:

ZHAW Zürcher Hochschule für Angewandte... HR Team

PhD in Deep Learning for Acoustic Diagnostics and Prognostics of Complex Systems 100 %
ZHAW Zürcher Hochschule für Angewandte...
ZHAW Zürcher Hochschule für Angewandte...
Ähnliche Positionen bei anderen Arbeitgebern
Europas größte Jobbörse für Gen-Z
discover-jobs-cta
Jetzt entdecken
>